MPAC Property Devaluation Studies Are Not Worth the Paper They Are Written On!

Municipal Property Assessment Corporation

2012 study of wind turbine impacts on

residential property assessments

Author:  “Gulden, Wayne”

 

Last week [April 2014] the Ontario Municipal Property Assessment Corporation (MPAC) released the 2012 version of their continuing study (following one in 2008) of wind turbines and property values in Ontario, entitled Impact of Industrial Wind Turbines on Residential Property Assessment In Ontario. To sum it up, they still find no evidence that wind turbines cause property value declines.

The study consists of a 31-page main section [backup link] along with 12 appendices. MPAC seems to have their own language and it isn’t easily penetrated by a layman. I’ve read over it carefully several times and there are still aspects of it that escape me. The appendices are generally beyond anyone who is not a professional. On page 4 they state their goals for this version of the study:

Specifically, the study examined the following two statements:

1. Determine if residential properties in close proximity to IWTs are assessed equitably in relation to residential properties located at a greater distance. In this report, this is referred to as Study 1 – Equity of Residential Assessments in Proximity to Industrial Wind Turbines.

2. Determine if sale prices of residential properties are affected by the presence of an IWT in close proximity. In this report, this is referred to as Study 2 – Effect of Industrial Wind Turbines on Residential Sale Prices.

Their two main conclusions, on page 5, are:

Following MPAC’s review, it was concluded that 2012 CVAs of properties located within proximity of an IWT are assessed at their current value and are equitably assessed in relation to homes at greater distances. No adjustments are required for 2012 CVAs. This finding is consistent with MPAC’s 2008 CVA report.

MPAC’s findings also concluded that there is no statistically significant impact on sale prices of residential properties in these market areas resulting from proximity to an IWT, when analysing sale prices.

Actually, there are three parts to this study, with the third contained in Appendix G [backup link]. Early in 2013 one Ben Lansink published a pretty solid study that showed property value declines of anywhere from 22% to 59% and averaging about 37% on residential properties close (all within 1 km) to IWTs, which I posted on at the time. Apparently Lansink’s work was solid enough that MPAC felt obliged to attack it.

For me to critique all three parts would make for a very long posting, so I’m going to divide it up. Obviously the details will follow in my subsequent postings, but for the impatient let me summarize below.

Part 1, are MPAC’s evaluations close to IWTs as accurate (equitable, in their words) as those further away? This section is only of tangential interest to me, as the central question isn’t MPAC’s accuracy, but rather the effect of IWTs on prices. It seems that, given MPAC’s explanations, their appraisals are accurate. Still, there are some items in this part that are of interest. For example, it seems that MPAC has been playing games to get the appraisals to agree with the market while hiding the effect of wind turbines. They studied turbines 1.5mw and larger, not older turbines and the areas in Ontario where the impact has already been felt.

Part 2, do IWTs have an effect on properties closer to them? This section is of central interest. Unfortunately there are only 5 pages in Part 2, leaving lots of details missing. Things like the sales prices within the close-in areas. MPAC’s major tool for doing mass appraisals (4.7 million in Ontario) is multiple regression analysis and we’ve had lots of experience with how that can be manipulated to obtain the answer your sponsor wants. Instead of providing us the prices and letting us judge for ourselves what any effects might be, they opaquely run those prices through their regressions and voila! claim there’s nothing to see here!

But whoever wrote Part 2 must not have been talking to whoever wrote Part 1. On page 18, well within part 1, there’s Figure 2. It’s purpose there is to show how close the appraisals are to the sales data (the paired blue and green bars) for the different distances from the IWTs.

 

gulden-mpac-raw-data 

Note the blindingly obvious. Prices (and appraisals) within 5 km of IWTs are substantially lower than those further away. I’ve added the horizontal lines so we can better determine the values, which are noted to the side. Michael McCann, among others, has done a number of studies on IWTs and prices, and his overall conclusion is a decline of 25-40%, with almost 100% in some cases. Does anyone want to calculate the decline from 228,000 to 171,000? Perhaps the disparity is due to something as simple as the spread between rural and urban properties, but don’t you think MPAC would at least mention something? Nope. Nada.

Part 3, what are the problems with Lansink’s study? Appendix G is more or less readable and provides an excellent example of what David Michaels book, Doubt is Their Product, talks about. MPAC throws up, by my count, 7 objections to Lansink’s methodology; of which exactly zero actually indicate that Lansink’s numbers are wrong. Sewing confusion seems to be the most logical explanation. As an example, objection #4 of the 7 is that for some of the pre-IWT prices Lansink used, gasp!, MPAC’s own appraisals. Perhaps whoever wrote Appendix G didn’t bother reading the conclusions in Part 1.

There’s more details, of course, in the following.

Critique of Part 1

Critique of Part 2

Critique of the Lansink hatchet job

MPAC 2012, Study 1

Part 1 of MPAC’s 2012 study asks if MPAC has as equitably assessed properties close to IWTs as properties further away. This part, although of only tangential interest to wind opponents like myself, occupies the central part of the entire study. We think the larger question is: do IWTs reduce property values, not whether MPAC is clever and honest enough to correctly recognize those reductions.

MPAC is in the business of mass assessments, nearly 5 million in Ontario. Given this volume they have no choice but to use computers and computer-friendly techniques to do their assessments. That translates to a significant reliance on multiple regression analysis. They determine what sorts of characteristics influence the selling prices and then use the computers to find out how much influence each characteristic has. In their experience, 85% of the selling price can be calculated using 5 characteristics, or variables: location, building area, construction quality, lot size and age of the home adjusted for renovations and additions. Note that distance to a wind turbine is not one of their characteristics and MPAC seems determined to keep it so. But also note that location could be used in lieu of distance – more on this later.

MPAC uses the ASR, Assessment-to-Sales Ratio, to determine if their assessments are accurate. It is simply the assessment divided by selling price, with a ratio of 1.0 being a perfect match. MPAC expects ratios between 0.95 and 1.05, and presents what seems to be an endless series of charts demonstrating this, primarily in the appendices. While obviously MPAC (actually everyone) has an interest in accuracy their emphasis on it seems misplaced in a study entitled Impact of Industrial Wind Turbines on Residential Property Assessment In Ontario, which to me and most residents is quite a different question.

Just think of the ramifications if MPAC decided to include distance from an IWT in their regressions. I have little doubt it would make Ontario’s lawyers very happy. It would also put Ontario’s very-pro-IWT ruling party in a difficult political spot. And don’t forget that the board of MPAC is appointed by the Minister of Finance, who is a member of the ruling party’s cabinet.

Upstream I mentioned that MPAC could use the location variables that already exist in their regressions to finesse their way out of this problem. I point to Wolfe Island as an example of how this might work. The western half of WI is now home to 86 IWTs, a project that had been in development since roughly 2000. If this half constitutes a “neighborhood” then MPAC could reduce the values in that neighborhood in a uniform manner and never have to recognize the elephant in the room. As it happens, I posted on MPAC’s actions on Wolfe Island about 18 months ago. In the 7 years when the wind project went from being developed to operational, the roughly 700 properties on Wolfe received the following number and average reductions:

  • 2005/06: 130, 9.3%
  • 2006/07: 33, 15.2%
  • 2007/08: 12, 28.8%
  • 2008/09: 34, 12.4%
  • 2009/10: 44, 29.0%
  • 2010/11: 22, 30.0%
  • 2011/12: 27, 24.0%

That’s a total of 302 reductions, which seems like a rather large percentage of the properties there.

A Wolfe Island couple, the Kenneys, asked for a reduction which they say MPAC was willing to grant, although MPAC wouldn’t let IWTs be used as the reason. It ended up in court, and a local paper [backup link] had a reasonably good account of it. Perhaps MPAC’s reluctance to admit the obvious is that once they admit it they must then include distance in their regressions and doing that (and the legal and political repercussions) is just too unpleasant. So they limp along, using the location instead.

Their favored overall chain of logic seems to be: since the ratios in neighborhoods close to IWTs aren’t much different from those further away, and since those ratios indicate their assessments are accurate, and since MPAC doesn’t include distance to an IWT in their regressions, ergo distance from an IWT isn’t a factor in reducing values. Part 1 of this study is a necessary part of this chain. So the real main purpose of this part of the study (and the study as a whole) seems to be to publicize MPAC’s skills at keeping the assessments in line with reality, and at the same time deflect how MPAC is going about doing this. MPAC is, after all, in a tight spot. The reality is that home prices take a dive when close to IWTs. MPAC somehow has to lower the assessments around IWTs to keep the ASRs in line while keeping their bosses happy.

Unfortunately, the wind industry will be using this study for quite a different purpose – to bolster their argument that IWTs don’t impact home prices in the first place.

MPAC 2012, Study 2

I fear that this part will be a difficult one for most people to follow, not to mention being lengthy. Feel free to skip it. But I think it is important to document what this Study contains, and MPAC made no effort to make understanding it easier. I recommend you print out Study 2′s 5 pages (pdf pages 26 to 30) and have them at hand as you read this.

The purpose of Study 2 is to “study the effect of proximity to industrial wind turbines on residential sale prices.” In summary, Study 2 finds that “With the exceptions noted above, no distance variables entered any regression equations for any of the other market areas.” Say what?

It seems that people who are in the business of estimating real estate prices tend to fall into one of two camps. First are those who make their living providing services to the people who actually own the properties, with real estate brokers being the most obvious examples. These people tend to focus on one property at a time and generally use comps or repeat sales to obtain their estimates. Second are those who make their living providing services to people who don’t actually own the property. Academics and mass appraisers (like MPAC) are the most obvious examples. These people tend to focus on many properties at a time and generally use statistical techniques like multiple regression analysis to obtain their estimates. The second class tends to think in terms of rejecting the null hypothesis – you assume there is no difference between two sets (in this case close-in prices and far-away prices) unless you have “statistical significance”. As a snarky aside, getting to statistical significance in real estate can be quite a challenge, given the wide variance among prices, and can be even more difficult when your sponsor/boss doesn’t want you to do so.

So of course MPAC used their main tool, regression equations that run multiple regression analyses. They created three new variables based on distance from an IWT and entered these into regression equations to see if the new variables were statistically significant. If they aren’t statistically significant they don’t “enter” into the regression equations. As for the exceptions (which we’ll get to shortly), out of 30 possibly significant variables, only 4 were significant and 3 of them were positive! Whew!

So right off the bat MPAC is using a tool that doesn’t provide the answers the actual owners of potentially affected properties really care about. A binary statistical significance indicator does not provide an answer to the “how much” and “how likely” questions a homeowner is going to have. In this case, MPAC has skipped through the study so opaquely that I can’t even have much confidence in my critique. There’s just too many omissions, too many unexplained leaps, too many dangling statements.

There are just 5 pages in Study 2. The first of these (page 25 of the study) lists the three new distance variables and sets their criteria for statistical significance at either 5% or 10%. For those unfamiliar with that concept, the significance is a measure of the odds two populations are in fact just randomly part of the same larger population. In this case, a 5% significance means that there is only a 5% chance that the prices of the close-in homes are the same as the far-away home prices. In other words, there’s a 95% chance that the close-in prices are different from the far-away prices. What if there’s only an 80% chance your home value will drop? Not significant, from MPAC’s perspective.

The second page (page 26) is dominated by Table 9. For MPAC’s purposes Ontario is divided into 130 “market areas”. These areas presumably have some common basis that allows them to be treated as a unit for their regression equations. Unfortunately I couldn’t find where the areas were or how many homes were in each. Of the 130 MPAC found 15 that had large enough turbines in them to be of interest. These 15 are listed in Table 9, along with the numbers of sales within each of the 3 distance variables for both pre-construction and post-construction. MPAC didn’t bother adding them up either horizontally or in total, but I did. The numbers inside the grid add up to 3136, which would be the total sales within 5 km in all the areas. But if you add up their numbers along the bottom you come up with 3143. It turns out that their 142 should be 139 and their 1584 should be 1580. Now this isn’t much of an error, except that any pre-teen with a spreadsheet and 10 minutes wouldn’t have made it.

At the bottom of page 26 they introduce pre-construction and post-construction periods, and that only two of the 15 have enough sales to test both distances and periods. Most of the remaining 13 have “sufficient sales within 1 KM to test the value impact within that distance”. Also that the “sales period to develop valuation ranges from December 2008 to December 2011&”. And that Table 10 provides a summary.

The third page (page 27) is dominated by Table 10. It lists the remaining 10 market areas that presumably have “sufficient sales within 1 KM to test the value impact within that distance”. 2 of these have enough sales to test both distance and periods while the other 8 have enough sales to test just the distance. For each of the 10 areas MPAC list square footage etc and median adjusted prices. Are these the prices for the entire area or just within 1 km? MPAC doesn’t say. What is the criterion for “sufficient”? MPAC doesn’t say. Nor does MPAC include what should obviously be included – both tables. I suspect they are for the entire area, in which case they are useless for our purposes, at least without the close-in comparison.

Presuming the criteria for inclusion into Table 10 is the 1 km test mentioned on page 26, one has to wonder how 26RR010 and 31RR010 got into it, as Table 9 shows they had zero sales within 1 km. Snark alert – maybe the missing 7 sales from Table 9 took place in these areas? And if 1 km isn’t the criterion, what is? MPAC never says.

At the bottom of page 27 they mention that some sales at the 5 km distance were in urban as opposed to rural market areas and thus were eliminated. They don’t say how many, nor what their effects on the regressions might be. They also reiterate their statistical significance levels.

On the fourth page (page 28) they present two more tables, 11 and 12. Table 11 lists the 8 market areas that had sufficient sales (within 1 km?) to test the distance variables while Table 12 lists the 2 market areas that had sufficient sales to test both distance and periods. These tables made absolutely no sense to me until I noticed Appendix F.

For all 10 areas they entered the 3 distances and ran their regressions. In Appendix F they list all the “excluded” variables, in this case all the distance-related variables that didn’t get to statistical significance. They apparently are called “excluded” since, being “insignificant” they don’t enter into MPAC’s final pricing calculations. If you look at the “sig” column you will not see any value less than .100, or the 10% significance level MPAC mentioned on pages 25 and 27. I assume by omission (and that’s all I can do here) that any of the 3 distance variables that are NOT listed in Appendix F are in fact significant.

On my first pass through Appendix F I came up with 6 omitted, and thus assumed significant, variables. Two of the omissions were for zero sales, for areas that shouldn’t even be there by the <1 km criterion. But, maybe the < 1 km variable was never even entered on the exclusion listing in Appendix F, so maybe I had erroneously assumed it was not excluded when in fact it didn’t exist in the first place. So maybe the criterion for inclusion in Table 10 wasn’t significant sales less than 1 km, but rather significant sales less than 5 km out. Just a typo, right? At least Table 11 now is consistent with Tables 9 and 10.

Finally! Out of the 30 tests (10 areas times 3 tests) I count 4 that are significant. Those 4 make up the “non-DNE” entries in Tables 11. MPAC provided absolutely no guidance or explanation about any of this, apparently writing for a very small audience.

Table 12 shows the 2 areas that had enough sales to test both distance and periods. You’d think that they’d be creating 6 variables for each of them instead of the 3 variables the other 8 areas received. Looking at Appendix F all you see is the same 3 as everyone else got. And all of those variables were excluded. But Table 12 shows 2 of the variables being significant for 26RR010. Perhaps Appendix F was based on a 5% significance level and Table 12 was based on 10%. Who knows?

I can only guess that the dollar amounts in Tables 11 and 12 are the effects of being in those areas upon the prices. So, in the Kingston area (05RR030), if you live within 1 km of an IWT, you can expect the value of your home to increase by $36,435! Very impressive – 5 digit accuracy, especially with a sample size of 7.

Finally, thank goodness, we come to the fifth page (page 29). It is the Summary of Findings and contains more words than the rest of the Study put together. This section mostly lists the significant variables and adds some fairly cryptic commentary.

Some Commentary

As I read through and dissected this Study I couldn’t escape the sense that MPAC didn’t want to put much effort into it. Any narrative or explanations or even public-friendly conclusions are absent. The tables that are included are ok, once you take the time to figure them out, but what about all the stuff they should have included but didn’t? Things like the median prices in the areas represented by the 30 variables. Or an Appendix F1 that shows the included variables, allowing us to see the t-scores etc for ourselves. Etc., etc.

These missing items cause this Study to be terribly opaque. I hope my explanation above is accurate, but I can’t be sure due to all the missing items. Maybe the Study reaches valid conclusions, but I sure can’t verify that. Perhaps MPAC thinks we should just trust them to be an honest pursuer of the truth. Sorry, that no longer flies, if it ever did. You have to wonder, is there some reason other than laziness or stinginess that this Study seems so empty? In addition to the opacity the Study includes several cryptic items that MPAC never explains. For example, from the summary, what do these sentences actually mean?

“Upon review of the sales database, it was determined that the IWT variables created for this study were highly correlated with the neighbourhood locational identifier. This strong correlation resulted in coefficients that did not make appraisal sense, and thus have been negated for the purposes of this study.”

If you look at the excluded variables in Appendix F you notice that most of them are named “NBxxxx”. Probably those are neighborhood identifiers the somehow overlay the market areas. MPAC never mentions how many there are or what the criteria are for forming one. But pretty obviously the areas around an IWT could easily coincide with their neighborhoods. So what gets negated? Some of the coefficients? All of them? MPAC provides no further information.

As an aside, I found it interesting to scan over the other excluded variables to see what sorts of things MPAC puts into their regressions. Many of them make no sense and they seem to vary greatly from market to market. I can’t help but think of a bunch of regression-heads sitting at their desks hurriedly making up variables and desperately running regressions in an effort to get the ASRs closer to one (ASRs are covered in Study 1).

I’ll leave (thankfully, believe me) this Study behind with the final thought that it seems so slapped together, so opaque, so disjointed that perhaps even MPAC themselves weren’t sure what significance it holds. Unfortunately, the wind industry won’t care about any of that, and will use this study to continue harming Ontario residents.

MPAC 2012 and Lansink

Ben Lansink is a professional real estate appraiser based in Ontario. In February 2013 he published a study of two areas (Melancthon and Clear Creek, Ontario) where 12 homes all within 1 km of an IWT were sold on the open market. He used previous sales and MPAC assessments to establish what the prices were before the IWTs arrived and then compared that with the open market prices after they went into operation. The declines were enormous, averaging above 30%. The following (thankfully clickable) spreadsheet snapshot gives a good summary of his results.

 

lansink-spreadsheet 

In quite a departure from MPAC’s style, Lansink lists every sale, every price, every time-related area price increase rate and every source. Lansink establishes an initial price at some time before the IWTs were installed, applies a local-area inflation rate over the period between the sales, and compares the “should-have-been” price with what the actual sales prices was after the IWTs were installed. In all 12 cases the final price was lower than the initial price, leading to an actual loss on the property. When the surrounding real estate price increases were factored in, the resulting adjusted losses are even greater. The compulsive reader might notice that the numbers above vary slightly from Lansink’s. In order to check his numbers I reran all his calculations in the above chart and there are some rounding errors – like on the order of < $10. I posted on Lansink’s study when it came out, along with a second posting on a previous version of his study.

These numbers are pretty easy to understand, and for most actual property owners are a hard-to-refute indication of what awaits us should we be unfortunate enough to own property within 1 km of an IWT. It is powerful enough and inconvenient enough that MPAC felt the need to single it out for a hatchet job, which is contained in the 7 pages of Appendix G. The first couple of pages are introductory stuff. Starting in the middle of page 2 they start their critique with, by my count, 7 issues with Lansink’s methodology. The 7 are:

    1. Lansink uses the local area MLS price index in calculating the inflation rate. MPAC points out, correctly I guess, that within the MLS local area there could be neighborhood variances that could differ from MLS’s area average. MPAC has lots of neighborhoods defined (see Appendix F for a sampling) and it would be more accurate to use them. While more discrete data is generally a good thing, I think most people are quite willing to accept the local area MLS price index as a reasonable proxy. Besides – how would Lansink obtain MPAC’s neighborhood data? He used the best that he had, and that best is no doubt good enough for everyone besides MPAC. As you increase the number of neighborhoods you necessarily decrease the number of homes in each, increasing the chances of distortion by a single transaction. Issue #5 below will mention this as a problem from the opposite direction. No doubt if Lansink would have used neighborhoods MPAC would be criticizing him for not using the more reliable area average. Additionally – how far apart could a neighborhood be from the local area average? Does MPAC provide any indication that this caused an error in Lansink’s conclusions? Of course not.

 

    1. Lansink used just two points to “develop a trend”. I have no idea what they are talking about. Lansink is not developing any trends. As with neighborhoods, MPAC has more discrete timing adjustments than what Lansink used. In theory, more discrete data might be more accurate. In practice, maybe not, due to outliers. A monthly MLS area average is good enough for, again, everybody but MPAC. Additionally – how far apart could a their timeline be from the local area average? Does MPAC provide any indication that this caused an error in Lansink’s conclusions? Of course not.

 

    1. Two homes in Clear Creek have their initial and final sales 8 and 15 years apart and there was likely something changed in the interim, affecting the price. People are always doing things to change the value of their homes – does MPAC have any indication that something substantial changed in one of these properties? If not, this is simply idle speculation, designed to instill confusion. Does MPAC provide any indication that this caused an error in Lansink’s conclusions? Of course not.

 

    1. For the other 5 home in Clear Creek Lansink used MPAC’s 2008 evaluations as the initial price, and MPAC is complaining about that. MPAC is apparently unaware of how ironic this sounds. They just finished, in this very study, bragging about how close their ASR’s were to one. Does MPAC provide any indication that this caused an error in Lansink’s conclusions? Of course not.

 

    1. For the properties in Melancthon Lansink used the buyout prices from CHD (the wind project developer) as the initial prices. To confirm these prices were at least in the ballpark of local market prices he obtained a local per square foot average price and it compared favorably with the prices paid per square foot by CHD. Since there was only 4 samples in this part of his study, even one outlier becomes a possible source of distortion and this is one of MPAC’s “major concerns”. This seems an odd criticism, coming from someone who relied upon the data in Table 9, with its fair share of single-digit samples. Does MPAC provide any indication that this caused an error in Lansink’s conclusions? Of course not.

 

    1. MPAC found one house with a basement and since footage in basements is treated differently from footage above ground, this would have changed the square footage price used by Lansink in his comparison with the local average. Since there are only 4 houses in this sample, it would have moved the average up. MPAC spends the bottom of page 2, all of page 3 and part of page 4 discussing basements and whether they are finished or not. Does MPAC provide any indication that this caused an error in Lansink’s conclusions? Of course not.

 

  1. I’ll quote issue #7 in its entirety so you can fully appreciate it. “One final issue with the sales used in the Lansink study was that the second sale price was consistently lower than the first sale price despite the fact the time frame being analyzed was one of inflation. The absence of variability in the study make them suspect.” Suspect? THESE ARE PUBLIC RECORDS. There’s nothing suspect about them. These are facts. They won’t change. If they don’t fit your narrative perhaps your narrative needs to change, eh? Does MPAC provide any indication that this caused an error in Lansink’s conclusions? Of course not.

These 7 issues are an excellent example of spreading confusion, hoping that some of it will stick, saying whatever you can come up with to discredit an opponent. When you’re reduced to spending over a page discussing basements it provides an idea of just how desperate you are.

The second part of MPAC’s critique involves them running their own study of resales to see how it compares with Lansink’s. They find 2051 re-sales that were part of this same study’s ASR calculations (in Study 1). They use their more discrete time variables in place of Lansink’s MLS local area averages. They use multiple regression analysis because “Paired sales methods and re-sale analysis methods are generally limited to fee appraisal and often too tedious for mass appraisal work.” Their conclusion: “Using 2,051 properties and generally accepted time adjustment techniques, MPAC cannot conclude any loss in price due to the proximity of an IWT.”

In spite of the voluminous tables and examples, MPAC leaves some very basic questions unanswered. Like where were these 2,051 properties located and how were they selected? There’s no mention of them in the body of the 2012 study. Over what period were the resales captured? What were the prices of the close-in re-sales vs the far-away re-sales? Lansink has documented 7 losing resales within 1 km – why does your summary say zero?

MPAC has this habit of expecting us to be impressed with large amounts of data, without divulging where it came from and what filters might have been employed. Same with throwing all these numbers into a computer and expecting us to uncritically accept the output. In short, MPAC expects us to trust them to be fully honest, fully competent and fully independent. I hate to be the bearer of bad news to the fine folks at MPAC, but that trust is no longer automatic for increasing segments of Ontario’s population. Lansink’s numbers are out in the open and are processed in a way that anyone can verify. Your numbers suddenly appear and rely upon computers with undocumented processes that always support the agendas of your bosses. Your methods may be satisfactory to some media, some politicians, some courts and all trough-feeders, but please don’t be surprised that they are not satisfactory to those of us living in the trenches.

Climate Alarmists Don’t Tell The True Story….Just The Scary Part! LOL!

Climate burnout is fast approaching

Ben Webster in The Times writes:

Alarmist claims about the impact of global warming are contributing to a loss of trust in climate scientists, an inquiry has found.

Apocalyptic language has been used about greenhouse gas emissions as “a deliberate strategy by some to engage public interest”. However, trying to make people reduce emissions by frightening them has “harmful consequences” because they often respond suspiciously or decide the issue is “too scary to think about”.

 

The inquiry, by a team of senior scientists from a range of disciplines, was commissioned by University College London to find better ways of informing the public about climate science.

Public interest in climate change has fallen sharply in the past few years, according to a survey last month which found the number of Google searches for the phrase “global warming” had fallen by 84 per cent since the peak in 2007.

Confidence in climate science was undermined in 2010 by the revelation that the Intergovernmental Panel on Climate Change, a UN scientific body which advises governments, had falsely claimed that Himalayan glaciers could disappear by 2035.
Scientists have also been accused of exaggerating the rate of loss of Arctic sea ice by claiming the North Pole could be ice-free in summer by 2020. Other scientists say this is unlikely before 2050.

Claims were made a decade ago, and later retracted, that the snows of Kilimanjaro, Africa’s highest mountain, could disappear by 2015.

The inquiry, led by Professor Chris Rapley, former director of the Science Museum, concludes: “Alarmist messages that fail to materialise contribute to the loss of trust in the science community.”

The report says climate scientists have difficulty “delivering messages that are alarming without slipping into alarmism”.

It says the media is partly to blame for seeking “a striking headline”.

However, the report says there was also a “preconception that communicating threatening information is a necessary and effective catalyst for individual behaviour change”.
It says the “climate science community” is quick to challenge those who downplay climate change but less willing to question “alarmist misrepresentations” of climate research.
Doom-laden reports may make people feel anxious but their concern does not last.
“Over time this worry changes to numbness, desensitisation and disengagement from the issue altogether.

“The failure of specific predictions of climate change to materialise creates the impression that the climate science community as a whole resorts to raising false alarms. When apparent failures are not adequately explained, future threats become less believable.”
The report says the 30,000 climate scientists worldwide are at the centre of an intense public debate about key questions, such as how we should obtain our energy, but are “ill-prepared” to engage in it.

It adds that this difficulty in communicating their work is “proving unhelpful to evidence-based policy formulation, and is damaging their public standing”.

Global Warming Alarmists Give “Honest” Scientists a Bad Name!

Scam Of The Century: NOAA Busted Manipulating Global Temperature Data To Give Appearance Of Global Warming…

lean_2865887b.jpg

Via Telegraph:

When future generations try to understand how the world got carried away around the end of the 20th century by the panic over global warming, few things will amaze them more than the part played in stoking up the scare by the fiddling of official temperature data. There was already much evidence of this seven years ago, when I was writing my history of the scare, The Real Global Warming Disaster.

But now another damning example has been uncovered by Steven Goddard’s US blog Real Science, showing how shamelessly manipulated has been one of the world’s most influential climate records, the graph of US surface temperature records published by the National Oceanic and Atmospheric Administration (NOAA).

Goddard shows how, in recent years, NOAA’s US Historical Climatology Network (USHCN) has been “adjusting” its record by replacing real temperatures with data “fabricated” by computer models. The effect of this has been to downgrade earlier temperatures and to exaggerate those from recent decades, to give the impression that the Earth has been warming up much more than is justified by the actual data.

In several posts headed “Data tampering at USHCN/GISS”, Goddard compares the currently published temperature graphs with those based only on temperatures measured at the time. These show that the US has actually been cooling since the Thirties, the hottest decade on record; whereas the latest graph, nearly half of it based on “fabricated” data, shows it to have been warming at a rate equivalent to more than 3 degrees centigrade per century.

 

Wind Pushers Try to Avoid These Nasty Details!

Wind Turbines take terrible toll on animals

Author

By Dr. Ileana Johnson Paugh  June 23, 2014 

 

 

I’ve recently reported on the bizarre behavior of animals, 1,600 miscarriages, and fetal deformities at a mink farm in Denmark after the installation and full operation on September 2013 of four 3-MW VESTAS wind turbines within a short distance (328 m) from Kaj Bank Olesen’s fur farm.
The online Aoh.Dk referenced how, since the wind turbines “began to spin last fall, the number of stillbirths and deformed puppies increased fivefold.” Farmer Kaj Olesen Bank also explained, “The proportion of females that refused to mate has quadrupled as compared to last year when there were no wind turbines behind his mink farm.”Mark Duchamp, Chairman of World Council on Nature, released an update on June 23, 2014 that farmer Olesen now believes that when the wind blows from the South West where the wind turbines are located, “mother minks attack their own puppies.”  Olesen put down over twenty mink pups and forty are under observation because of deep bites.

You could argue that we are not mink and should not worry that low-frequency vibrations created by wind turbines are harmful to humans. After all, green energy proponents keep reassuring us that wind and solar energy is harmless to the planet and to adjacent populations. When animals such as minks, cattle, sheep, goats, and horses, exposed to wind turbines 24/7, become aggressive, die en masse, abort their fetuses, some with developmental malformations, and attack their young, it is time to ask ourselves, what are wind turbines doing to the human body? The “wind turbine syndrome” is not just hypochondria as the wind industry and the environmental lobby explained.
In Ontario, Canada, local deer werereported as “agitated and awake all night,” “birds were flying all day rather than going to roost,” and “seals suffered miscarriages.”Officials in Taiwan reported that 400 animals died due to sleep deprivation after the installation of eight wind turbines close to their grazing area. Farmer Kuo Jing-shan was left with 250 goats from the original 700 he owned before the wind turbines were installed. Taipower admitted no wrongdoing but “offered to pay for part of the costs of building a new farmhouse elsewhere.”

In Nova Scotia, David and Debi Van Tassell believed that the low-frequency hum of the wind turbines installed in the vicinity of their Ocean Breeze emu farm killed many of their birds after the first turbine went into operation in 2009. The emus were not sleeping and running in pens day and night, losing weight. The remaining birds, which cost $3,000 a pair, were sold for $100 each.

Another study described the case of Lusitanian horses who suffered deformities not attributed to any disease but seemingly connected to the installation of wind turbines nearby. “All horses (N=4) born or raised after 2007 developed asymmetric flexural limb deformities. WT (wind turbines) began operations in November 2006. No other changes (construction, industries, etc.) were introduced into the area during this time.

The low-frequency sound and the constant thump-thump have caused some people to abandon their homes located in the vicinity of wind farms. Health issues such as sleep disturbance, sleep deprivation, dizziness, tinnitus, and constant headaches in humans have been ignored by the main stream media who is eager to promote “clean” solar and wind energy generation.

 

PCC MPP Lisa McLeod, Talks About Fresh Leadership for the Conservatives!


Ontario Tories need fresh leadership: PC MPP Lisa MacLeod
A revitalized Ontario Progressive Conservative Party is important not just for PC supporters, but for all Ontarians

 

By: Lisa MacLeod Published on Mon Jun 23 2014

Ontario voters sent the Progressive Conservative Party a strong message on June 12. Despite the undeniable weaknesses of the Liberal government’s record and its credibility-stretching plan to spend more while still balancing the books, voters returned the Liberals with a majority.

 

That tells PCs that we let Ontario down by not offering an alternative that more voters were prepared to accept. We have a lot of work to do over the next four years. The party needs renewal, a new direction, and most important, fresh leadership.

 

For PCs, this is the time to look forward and face those challenges, not to indulge in endless dissection of the 2014 campaign. We must spend our energy preparing for the election in 2018, not refighting the election just past.

 

The most important decision in front of our party is choosing a new leader. There is no rush to make that choice. It’s more important that we get this right, for our party and for our province. A leadership convention will provide that opportunity.

 

We need a person who understands urban, suburban and rural concerns, one who gets the complex makeup of this province. In my own riding of Nepean-Carleton, I represent new immigrant communities, expanding suburbs and a large rural area. I also take the lead on the urban issues that affect Ottawa, our second largest city. Nepean-Carleton is a microcosm of the growing and changing Ontario that our party must represent.

 

Some in the party are looking for a quick decision on a new leader, but the challenge is not just choosing a leader. It is revitalizing our party. If we are to win the next election, the Ontario PC Party must become a broader, bigger, activist organization. It must become a movement for change. Our new leader must have wide support, not just from party elites, but from the members themselves.

 

A revitalized PC party is important not just for Conservative supporters, but for all Ontarians. Our province needs a party that will offer affordable, practical solutions to improving our health care and our children’s education, and do it within the context of reasonable taxes and a balanced budget.

 

All major parties agree that we can’t continue to pay for our services with borrowed money. The next few years will show if the Liberals can break their debt dependence. If they cannot, Ontarians will be looking for a party that they can trust to deliver the services we all need, and do it within a sustainable budget supported by an expanding economy.

 

Our most recent PC platform has been criticized for talking too much about numbers and not enough about people. Fact-based decision making is important, but we can’t overlook the human side. I’m a suburban soccer mom. I care about my child’s school, our local hospital and whether our community is safe, just like so many other Ontarians do.

 

Ontarians need a party that knows how to make their lives better in measurable ways. For example, the Schools First policy that I put forward as education critic would ensure that schools get built sooner in our rapidly expanding suburbs. Youth mental health and home care for seniors are areas that cry out for real service, not lip service. These two vulnerable groups need more help, and they aren’t getting it.

 

The 2014 Ontario election campaign will be remembered for its attack ads, and what people felt were a lack of real choices. As a province, we can’t do that again. The PC Party has a responsibility to deliver a strong and broadly acceptable choice the next time. That work starts now. Let’s embrace the challenge and deliver for Ontarians.

 

Lisa MacLeod is the Progressive Conservative MPP for Nepean-Carleton.

Wind Industry will Stop Lying, When Governments Stop Allowing Them To!

When will the Wind Industry Stop Lying?

knotted turbine

With the Australian wind industry in its death throes, the industry and its parasites are lying around the clock in an effort to preserve the greatest rort of all time – as they seek to fend off the inevitable dismantling of the mandatory Renewable Energy Target.

Lies about the number of jobs at risk. Not jobs in the real economy, mind you, but fantasy jobs that would (might) be created in the wind industry if the mandatory RET were left alone. When we say “fantasy jobs” the numbers given are in the order of 18,000 – which is nothing short of utter bunkum (see our post here).

Lies about the impact of wind power on power prices; always starting off with reference to the wholesale market. Last time we looked, Australian households and businesses were paying the retail price – which has gone from being amongst the cheapest in the world to the most expensive, in less than a decade.

Adding to the litany of wind industry lies, is a story that the marginal cost of delivering wind power is zero – which appears to originate with the “wind is free” myth. This, of course, ignores the upfront capital cost of installing turbines, transmission and network gear etc; and it also ignores the very substantial costs of maintaining, repairing and replacing the major components of turbines.

We’ll debunk these and other myths in a moment, in the meantime here’s The Australian dealing with some of the more outrageous costs associated with the mandatory RET.

Wrong call on energy costs
The Australian
Adam Creighton
20 June 2014

EVEN climate-change deniers may shed a tear over our stillborn carbon emissions trading scheme.

The former government’s policy to link Australia’s scheme to Europe’s, due to start next month at a paltry price of €6 a tonne, was an opportunity to enjoy all the self-righteousness of “doing something” about climate change without much of the cost. All along, imposing a carbon trading scheme and using every dollar of the permit proceeds to cut the bottom two rates of income tax would have been the best policy and, sold well, broadly should have kept everyone happy.

Further, in the unlikely event the rest of the world, which emits the remaining 98.7 per cent of global carbon dioxide, ever agrees on a universal cap and trade system, we would have been prepared — emissions trading remains the most efficient way to limit carbon emission.

Alas, we are governed ineptly: the Coalition has expended its climate-change zeal excising the least bad policy and left us with two worse: the renewable energy target, and the nascent Emissions Reduction Fund (the crux of the Coalition’s direct action policy). Plus we are still lumbered with the absurd carbon tax compensation and higher tax rates to boot.

In 2011 the Rudd and Gillard governments ratcheted up fivefold the Howard government’s 2001 token RET, spurring mainly construction of wind farms, especially in South Australia.

The requirement for retailers to buy what by 2020 will equate to about 27 per cent of total electricity from renewable sources has been a boon for wind farms but a drag for everyone else.

The RET is a highly interventionist and prescriptive way to curb Australia’s carbon emissions, costing about $125 a tonne, or five times the cost of the outgoing carbon tax according to Deloitte Access Economics.

Because it mandates a particular set of technologies (mainly wind), it stops use of much cheaper but non-renewable energy sources, such as gas, that are less carbon intensive.

The insidious cost ripple is significant. Last November the Centre for International Economics concluded the RET was already adding between 4 per cent and 5 per cent to the typical household electricity bill.

Another consulting firm, BAE Economics, concluded in 2012 that the RET would reduce Australia’s national income by between 0.2 per cent and 0.3 per cent and real wages by 2.5 per cent by 2020. Job losses will outweigh job creation (in the renewable sector) by about 4900 by 2020, Deloitte says.

Yet the Clean Energy Council argues the RET will reduce wholesale and perhaps even retail prices too.

This may well occur: renewable energy is characterised by very high upfront costs and zero or close to zero marginal costs. Wind energy, assuming it is sufficiently windy, can compete with gas and coal fire power stations in the wholesale market.

Advocates for renewable energy are seduced by the psychological appeal of zero marginal cost energy.

But that property, however alluring, does not obviate the need for massive set-up costs. Unless the welfare of the present generation is irrelevant compared to those of the future, forcing purchase of renewable energy does not make sense. By definition, if renewable energy were currently able to lower overall costs in energy production it would not need help from government regulation. Investors would be building wind farms regardless.

The government’s RET review, chaired by known climate-change sceptic Dick Warburton and due to report next month or August, will very likely conclude the RET is an inefficient way to abate carbon. But it will likely recommend a freezing of current requirements rather than outright abolition.

This is a shame because arguments about sovereign risk — that, in this case, it is unfair to investors in renewable energy to suddenly drop the policy — are not strong.

If Canberra suddenly nationalised Westpac, that would create sovereign risk. But dropping a policy that investors always knew was highly inefficient and that was introduced against the will of the bulk of Liberal Party members does not. By this definition all government actions — raising taxes, cutting taxes — create sovereign risk and nothing should ever change.

Arguments the RET bolsters Australia’s energy security — by diversifying the range of energy options we have available — are laughable given the rich endowment of mineral resources this ­nation enjoys.

Indeed, owners of black and brown coal power plants should be encouraged to bid for the ERF to help start construction of a commercial-scale nuclear reactor. Such a facility ultimately would contribute massively to carbon abatement and also encourage development of a skilled workforce.

With near 40 per cent of the world’s uranium reserves and a significant quotient of isolated, uninhabitable land in which to store nuclear waste we are perfectly placed to shift towards nuclear energy, which already supplies 15 per cent of the rich world’s power supply.
The Australian

In an otherwise well-crafted piece, unfortunately, Adam Creighton appears to fall for a couple of classic wind industry furphies – of the kind we mentioned above.

The first is that wind power can be produced at or near zero marginal cost.

Nothing could be further from the truth.

Marginal cost” relates to the additional cost of delivering the next unit of production (good or service). In general terms, “marginal cost” at each level of production includes any additional costs required to produce the next unit. For marginal cost to be zero, the additional cost of delivering an additional unit must be zero.

Wind farm operating costs are typically in the range of $25 per MWh dispatched to the grid. That is, every additional MWh delivered, costs an additional $25 to produce; therefore, the marginal cost of production is (at least) $25 per MWh, not zero.

In this glossy tissue of lies (click here for the pdf) Infigen (aka Babcock and Brown) sets out the financial “performance” of its American and Australian operations. From page 26, here’s Table 16 relating to its Australian operations, where it reports “Operating Cost (A$/MWh) as $23.93 for 2012/13 compared to an “Average Price” of electricity sold of $96.57 per MWh.

Infigen operating costs

From page 29, here’s Table 20 where, on total operating costs of $36.3 million, $17.2 million is attributed to “Turbine O&M” (ie operation and maintenance); $0.9 million to “Balance of plant”; and $7.5 million to “Other direct costs”. Infigen’s US operations reported similar operating costs of US$24.18 per MWh for 2012/13 (refer to Infigen’s report at page 20 and Table 15 on page 24).

Infigen costs 2

Those typical operating costs figures are hardly evidence that wind farms operate “at or near zero marginal cost”; but are evidence entirely to the contrary. Bear in mind that wind farm operating costs of $25 per MWh compare with the ability of Victorian coal fired power generators to profitably deliver power to the grid at less than $25 per MWh.

The bulk of wind farm operating costs are taken up by maintenance and repairs (see Table 20 above).

Blades, bearings, gearboxes and generators naturally wear out over time; and often require repair or replacement within the first few years of operation.

At AGL’s Hallett 1 (Brown Hill) wind farm near Jamestown in SA, 45 Indian designed and built Suzlon s88s were used; commencing operation in April 2008. Not long into their operation stress fractures began appearing in the 44m long blades; Suzlon claimed that there was a “design fault” and was forced by AGL to replace the blades on all 45 turbines under warranty. The “old” blades are still sitting on the wharf at Port Pirie, apparently awaiting collection by the manufacturer – now known as Senvion: collection is highly unlikely, as Suzlon/Senvion is in deep, deep financial difficulty.

While that debacle was covered by warranty, not every blade, bearing, gearbox or generator replacement is. The cost of replacing major components is colossal, requiring the use of heavy cranes with specialist operators clocking up rates of between $10-30,000 per day – and effective rates of up to $100,000 per day if a heavy crawler crane is required – bear in mind these giant cranes have to be transported substantial distances to the site as oversize loads, involving police escorts – all at substantial cost.

Heavy-haulage-cranes-cts-11

Over the “life” of a turbine (purported to be 25 years by the manufacturers) metal fatigue, fair wear and tear means that the cost of maintaining, repairing and replacing major components can only increase, not decrease, over time. Noting that the manufacturer’s warranty is ordinarily 2 or, perhaps, 3 years at best – this leaves the wind farm operator picking up an ever increasing repair and maintenance tab. That (substantial) increase in the costs of operation over time (as against a fixed revenue stream set under PPAs – see below) means that it becomes uneconomic to repair and maintain turbines beyond about 12 years of operation.

In this detailed study, Gordon Hughes looked at the rapid decline in turbine efficiency, and showed that turbine output declined rapidly after about 10 years of operation. That decline was in part the product of the increased need for repairs, replacement and maintenance over time (resulting in downtime and, therefore, periods of zero output); and the natural deterioration in the mechanical componentry of the turbine, leading to decreased output as the turbine’s components wore out.

It’s that simple fact of engineering and mechanical life that led Hughes to conclude that the average (economic) life span for modern (onshore) wind turbines is about 12 years (see our post here).

The other trap laid by the Clean Energy Council is the “wind power is reducing the wholesale price of electricity” red herring – and is also reducing retail prices. To his credit, Adam doesn’t appear to fall for the trap, but we’ll deal with it anyway.

The first point is dealt with fairly simply: households and businesses couldn’t care less what the wholesale price of electricity is: they get served with power bills from retail providers which, funnily enough, involve the retail price. And there is absolutely no argument that Australian retail power prices have gone through the roof in the last decade. Australia’s wind power capital, South Australia suffers the highest retail power prices in the world (see page 11 of this paper: FINAL-INTERNATIONAL-PRICE-COMPARISON-FOR-PUBLIC-RELEASE-19-MARCH-2012 – the figures are from 2011 and SA has seen prices jump since then).

Retail prices are impacted by the mandatory RET and wind power in at least two major ways.

The first is the price fixed under Power Purchase Agreements (PPAs) struck between wind power generators and retailers. That price guarantees a return to the generator of between $90 to $120 per MWh for every MW delivered to the grid. In this company report, AGL (in its capacity as a wind power retailer) complains about the fact that it is bound to pay $112 per MWh under PPAs with wind power generators: these PPAs run for 25 years.

Wind power generators can and do (happily) dispatch power to the grid at prices approaching zero – when the wind is blowing and wind power output is high; at night-time, when demand is low, wind power generators will even pay the grid manager to take their power (ie the dispatch price becomes negative)(see our post here). However, the retailer still pays the wind power generator the same guaranteed price under their PPA – irrespective of the dispatch price: in AGL’s case, $112 per MWh.

PPA prices are 3-4 times the cost that retailers pay to conventional generators; as noted above, retailers can purchase coal-fired power from Victoria’s Latrobe Valley for around $25 per MWh – and the dispatch price ranges from $30-$40, on average.

The second is the cost of backing up wind power when it fails to deliver every day and hundreds of times each year (see our posts here and here).

Fast start-up peaking power plants – predominantly Open Cycle Gas Turbines – cost a fortune to run ($200-$300 per MWh, depending on the spot price for gas on the day).

When wind power output collapses the shortfall is made up with “spinning reserve” held by coal/gas-thermal plants and OCGTs. Bidding between generators with high operating costs sees the dispatch price quickly rocket from the usual $30-40 mark, to in excess of $300 (otherwise OCGT operators will simply not supply to the grid); and, if a wind power output collapse coincides with a spike in demand, the dispatch price rockets all the way to regulated cap of $12,500 per MWh (see our postshere and here).

Call us spoilsports, but STT is always keen to let the facts get in the way of a “good” wind industry story.

Facts

A Sad Story About the Reality of Wind Turbines….

Short Story: Wind

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Image courtesy of Intrepid Wanders.

 

Dad took me to look at the turbines again today. I didn’t want to go. We’ve been every day this week, and he just gets angry and upset. I suppose I can understand it; I’m not altogether happy about it either, but I’ve got used to it. And it’s only been three weeks, the wind is bound to start blowing again soon.

I suggested to Mum that she go along instead, but she gave me “that look” and I realised that wasn’t going to happen. I even offered to do the washing while she was out – we’ve had to start washing our clothes in an old bath in the yard. It’s a nasty job and I hate doing it – not that we have all that much washing at the moment; we tend to wear most of our clothes to keep warm. Anyway, with no hot water we don’t tend to bathe all that often. Nobody does. I don’t even notice the smell any more. It’s not all that practical at this time of year anyway, the clothes just freeze on the line and don’t dry at all. But despite my offer she said she’d rather stay at home and look after Parton.

Parton is our dog. He’s a cross between a German Shepherd and, well, quite a lot of other types of dog probably, but at least one of them must have been St Bernard because he has a very woolly coat and he’s very cuddly. I think that’s the real reason Mum wanted to stay at home; Parton is a good way to keep warm.

Dad keeps going on about the house not having a chimney. He says we could have gathered driftwood from the beach, like he and Mum did when they were first married and money was tight and they couldn’t afford coal. Not that there’s any coal nowadays; and anyway they say it caused Global Warming, and apparently that was a bad thing. I’m not sure about that. I think we could maybe do with some Global Warming around now. Anyway, he says, it should be a lesson for when I’m older: never buy a house without a chimney.

So we go to the site, Dad walking, I ride alongside him on my bike. Normally we’d have taken the car, but without power we can’t recharge the batteries, so it’s just sitting in the street where it’s been for the last few weeks. We leaned on the fence, and I can see one of the turbines just turning, ever so slowly, but at least it’s turning. I point it out to Dad but he just grunts. After a while, he spreads his arms as if embracing the scene, and says “Behold, the future! Abundant clean energy for all!”

I try to “Behold”, but all I see is row upon row of turbines, stretching far into the distance. Dad says they cover about thirty square miles, and much of the land here used to be common land, shared by the people who live around here. Around 2020 it was taken over by the Department of Energy and Mother Earth to protect the natural environment. D.E.M.E. sold the land to a Chinese Energy company, who promptly covered it with Wind Turbines.

I tell Dad to look on the bright side. At least while they aren’t turning the birds will be OK, and as if on cue a large flock of geese fly overhead, their V formation broken temporarily as they fly between the blades, heading south. Dad almost smiled, although it was more a kind of grimace. He doesn’t say anything; just watches the birds until at first they become a fuzzy blob in the distance, and then finally disappear out of sight.

One Saturday afternoon around this time last year Dad had come home really upset. He’d been to the garage to pick up a replacement part for the car, and on his way back he’d stopped at a lay-by alongside the turbine’s field. That day, just like today, a flock of geese had been heading South; but unlike today the turbines had been working. With tears in his eyes, Dad described how more than half the birds had been smacked out of the sky by the turbine blades. When he saw what was happening, he climbed the fence and ran into the field to see what he could do to help the poor creatures, but there was nothing he could do but weep over them; they were all either dead or dying; broken beyond any hope of repair.

We walk back in silence, the sky glows deep red as the sun goes down, then darkness.

I’m not sure how long it was before we noticed the breeze. Gentle at first, then stronger. As we near the town the street lights are coming to life. Getting closer, people come out of their houses, talking, making jokes, laughing. Dad wants to talk to everyone; handshakes, backslapping, and all smiles. Happy, hopeful faces.

Back inside we shrug off our coats, gloves, hats. It’s warm inside. The lights are on. The TV is on. Mum is snuggled up with Parton and a cup of hot chocolate. I dash to the kitchen to put the kettle on. Dad says he’d like a coffee.

I bring the drinks through to the living room, hand Dad his coffee and settle down into the armchair by the door.

It’s that fit weatherman tonight, the blonde one who always wears that wrinkly jacket. I wonder, not for the first time, if he has a girlfriend. Mum starts to say something but Dad tells her to shush.

…”… pressure that has brought the cold weather has finally moved on, and the next few days will bring quite a bit of rain to most parts, and strong winds affecting travel throughout the North West. By the weekend things should settle down again, a new high pressure system is moving in from the Atlantic which will bring much calmer weather for the next couple of weeks … “

Stress is Not Good For Your Heart! This Explains Why!

Stress link to heart attacks, strokes explained: researchers

June 23, 2014
US researchers believe they have uncovered how stress raises the risk of a heart attack.US researchers believe they have uncovered how stress raises the risk of a heart attack. Photo: Sebastian Costanzo

Paris: Scientists say they may have unravelled how chronic stress leads to heart attack and stroke by triggering overproduction of disease-fighting white blood cells which can be harmful in excess.

They say surplus cells clump together on the inner walls of arteries, restricting blood flow and encouraging the formation of clots that block circulation or break off and travel to another part of the body.

White blood cells “are important to fight infection and healing, but if you have too many of them, or they are in the wrong place, they can be harmful”, study co-author Matthias Nahrendorf of the Harvard Medical School in Boston said on Sunday.

Doctors have long known chronic stress leads to cardiovascular disease but have not understood the mechanism.

To find the link, Dr Nahrendorf and a team studied 29 medical residents working in an intensive care unit.

Their work environment is considered a model for chronic stress exposure given the fast pace and heavy responsibility they carry for life-and-death decisions.

Comparing blood samples taken during work hours and off duty, as well as the results of stress perception questionnaires, the researchers found a link between stress and the immune system.

Particularly, they noticed stress activated bone marrow stem cells, which in turn triggered overproduction of white blood cells, also called leukocytes.

White blood cells, crucial in wound healing and fighting off infection, can turn against their host, with devastating consequences for people with diseases like atherosclerosis – a thickening of artery walls caused by a plaque build-up.

The study then moved on to mice, which were exposed to the rodent equivalent of stress through techniques like crowding and cage tilting.

The team chose atherosclerosis-prone mice.

They found that excess white blood cells produced as a result of stress accumulated on the inside of arteries and boosted plaque growth.

“Here, they [the cells] release enzymes that soften the connective tissue and lead to disruption of the plaque,” said Dr Nahrendorf.

“This is the typical cause of myocardial infarction [heart attack] and stroke.”

He added leukocytes were only a part of the picture – factors like high cholesterol and blood pressure, smoking and genetic traits also contribute to heart attack and stroke risk.

“Stress might push these over the brink,” the researcher said.

AFP

Big Green Lie – Tells it Like It Is!!!

Why the Liberals won the election and why this Province is nothing more than a “banana republic”!

Posted: June 22, 2014

Sad days in Ontario. Greed, apathy and an intentional dismembering of our Democracy over many decades by various Governments has finally exposed all that’s wrong with allowing an unfettered gang of power mongers and corrupt industrialists to run a Province.

Short term for a place like this on this planet: banana republic

\

Courtesy Bing

One can’t call these past few decades as being ruled by politicians, who are nothing more than “puppets” doing the bidding of their backroom masters, “managed, handled and groomed” to say whatever they are told, all 3 parties that have held the reins of power in this Province. The end result of this type of leadership?……….a bankrupt, divided and lost society with little or no way out from a future mortgaged to the hilt!

The only solution for any “sanity” or financial stability is for people to move and relocate somewhere else in canada that may offer some light.

Sad days in Ontario!!!!

Ontario’s worrying banana republic problem

The Ontario legislature operates under a set of rules that make it nearly impossible for a single opposition party to move motions of non-confidence. This is not normal and it is not democratic.

PETER LOEWEN June 21/2014

Imagine a friend just returned from a country you knew nothing about. During her visit, your friend took an interest in the country’s politics and the election they just held. Suppose she told you the following.

First, the governing party had a leader who, under accusation of major political corruption and the threat of sanction by the legislature, suspended that same legislature until his successor could be chosen. His successor, despite inheriting a government under police investigation, was able to survive nearly two years.

If your mind was an inquiring one, you might want to know how a party could survive in such conditions. Your friend tells you that despite holding only a minority of seats, they were able to routinely buy off the third party through policy concessions. Worse, they’d been able to avoid tests of confidence because these are essentially impossible to move under the rules of the legislature.

Things get stranger and they get worse. When the government was finally brought down, they were returned with a majority government. Now, the counting was fair and the party’s campaign was above board. But alongside their campaign was a massive one run by unions and interest groups. Those groups seemed sometimes indistinguishable from the campaign personnel of the governing party. And those same unions were preparing to negotiate labour agreements with the party in power. These fellow-travellers could raise and spend money without limit and effectively without oversight.

This cake comes with icing. The provincial police force actively inserted itself into the campaign, releasing information about investigations into the governing party. At the same time, the police union campaigned against the principal opposition party……………………………

MORE to this Story in Ottawa Citizen of June 21/2014

Provincial Government Ignores the Problems, so I Have to Go To the Federal…

This letter is part of my ongoing fight for the health and welfare of not only my son, but all children

who stand to suffer from the noise and infrasound from Industrial Wind Turbines.  This is the reason

that I started the “Mothers Against Wind Turbines”group.

To:

The Right Honourable Stephen Harper,

Prime Minister of Canada

The Honourable Peter Gordon MacKay,

Minister of Justice and Attorney General

Dear Prime Minister Harper and Attorney General and Minister of Justice,

Re: Request to meet regarding the UN Rights of the Child, and Industrial Wind Energy

 

Purpose:  The purpose of this message is to request a meeting with the

Attorney General – Minister of Justice to discuss:

• the opportunity for the Government of Canada to take action

in order to ensure that wind energy developers are not allowed

to risk harm to my son, or to any other child

• how quickly will the Government of Canada act on this serious matter?

This message may be shared with others.

Background:

• At my request, Ms Carmen Krogh has been assisting with compiling evidence
regarding risks to the health of children including those with special needs which
are associated with noise in general and from industrial wind energy facilities.

• Ms. Krogh has communicated concerns to Canadian Federal and Ontario
Provincial authorities and others regarding risk of effects on children in general
and those relating to my son.


Page 2 of 3

• My son is vulnerable to noise emissions in general. Industrial wind turbine

emissions will risk his health. Attached is a letter from my son’s specialist

physician.

• I have met and appealed to Federal, Provincial Ontario authorities and

representatives from the wind developer. Examples are: Premier Kathleen Wynne;

Mr. Dean Allison, MP for Niagara-West Glanbrook; Mr.Tim Hudak, [former]

Conservative Leader; Ms.Andrea Horwath, N.D.P. Leader; Mr. Chiarelli, Energy

Minister; Niagara Region’s Medical Health Officer; Ms.Valerie Jaeger; the

Niagara Regional Council; the West Lincoln Council; the Children’s Aid Society;

and others.

• At my request, Ms. Krogh has appealed for assistance under the UN Convention

Rights of the Child.

• Letters have been written to the Prime Minister; Attorney General and Minister of

Justice; and Minister of Health on this matter.

• My son is vulnerable to noise whether at home or at school. However, I have not

received assurance that my son will not be exposed to industrial wind energy

facilities either at home and at school.

Current Status:

• The responses I have received from Canadian Federal and Ontario Provincial

authorities have not addressed the serious risks associated with wind energy

facilities and children.

• There is no indication provisions will be protective of children in general, or how

my son will be protected.

• Indications are the Government of Canada is committed to the protection of

children; however, what avenue does it suggest I take to make sure that my son is

not harmed by the known noise and infrasound from the wind turbines, which are

proposed to be built very close to our home.

• The letter written by my son’s specialist has been ignored at every level so far, and

I need to know what channels to take, now.

Request:

My son will be directly harmed by wind turbines, unless the wind company is stopped from

installing them.

I request a meeting as soon as possible to discuss:

• What are the steps the Government of Canada will take to make sure that the wind

company is not allowed to expose my son or any other child to a wind energy

facility?

• How quickly will the Government of Canada respond to this serious risk

Page 3 of 3

• Will the Government of Canada take immediate measures to ensure health

protection from wind energy facilities for Canadian children?

Respectfully submitted,

Ms Shellie Correia

 Elcho Rd. RR#3

Wellandport, Ontario L0R2J0

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