Temperature Cycles

I have always been fascinated with the chart below, and the apparent strong correlation of global temperature changes and ocean cycles — particularly considering that ocean cycles are not included in climate cycles but never-the-less climate scientists act as if these models are accurate.

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So, just for the fun of it, I tried to see if I could fit a linear trend plus a sine wave to historic temperature (similar to Klyashtorin and Lyubushin, 2003).  This is what we might see if temperature were a function of a constant recovery from the little ice age plus ocean cycles.  It is not the fit we would expect from an anthropogenic-driven model.  This is what I got  (temperature history a blend of Hadley CRUT3 and UAH satellite as shown here):

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I didn’t spend a lot of time on it, and this is what I got — about 0.04C per decade linear trend plus a cycle.  This is one of those things that I can’t figure out if it is insightful or meaningless, but I thought I would share it with you this holiday week, since things are slow around the office here.

As a final set, I tried it again with a linear trend plus the PDO.

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Update: The formula for the first chart is -0.55+0.005*(year-1861)+0.145*cos((2*pi*(year-1861)/64.1453)-1.8)

The formula for the second chart is -0.05+0.008*(year-1900)+0.2*PDO

Can’t Be Explained by Natural Causes

The fact that CO2 in the atmosphere can cause warming is fairly settled.  The question is, how much?  Is CO2 the leading driver of warming over the past century, or just an also-ran?

Increasingly, scientists justify the contention that CO2 was the primary driver of warming since 1950 by saying that they have attempted to model the warming of the last 50 years and they simply cannot explain the warming without CO2.

This has always struck me as an incredibly lame argument, as it implies that the models are an accurate representation of nature, which they likely are not.  We know that significant natural effects, such as the PDO and AMO are not well modelled or even considered at all in these models.

But for fun, lets attack the problem in a different way.  Below are two global temperature charts.  Both have the same scale, with time on the X-axis and temperature anomaly on the Y.   One is for the period from 1957-2008, what I will call the “anthropogenic” period because scientists claim that its slope can only be explained by anthropogenic factors.  The other is from 1895-1946, where CO2 emissions were low and whose behavior must almost certainly be driven by “nature” rather than man.

Sure, I am just a crazy denier, but they look really similar to me.  Why is it that one slope is explainable by natural factors but the other is not?  Especially since the sun in the later period was more active than it was in the earlier “natural” period.  So, which is which?

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Continue reading Can’t Be Explained by Natural Causes

You’re Absolutely Wrong and I Agree With You

Despite loads of public scorn heaped on Steve McIntyre and Ross McKittrick for their criticisms of the Mann hockey stick, it turns out in private folks like the Hadley Center’s John Mitchell, the review editor for the relevant chapter of the last IPCC report, shared many concerns identical to those of M&M. The email at the link is pretty amazing – it is practically an outline of the section of my skeptic presentation dealing with the hockey stick.  But not a whiff of this uncertainty was ever made public or was included in the IPCC report.

Mitchell and the Hadley Center have tried every trick in the book to avoid FOIA of anything that would publicly reveal his true concerns about Mann’s study.  When we understand the incentives that are driving him to suppress his own scientific views, and to publicly ridicule those who share his private concerns, we will understand better what is broken in the climate science process.

FOIA for Me But Not For Thee

I thought this was one of the more interesting quotes unearthed so far from the Hadley CRU emails:

“When the FOI requests began here, the FOI person said we had to abide by the requests. It took a couple of half hour sessions – one at a screen, to convince them otherwise showing them what CA [Climate Audit] was all about. Once they became aware of the types of people we were dealing with, everyone at UEA (in the registry and in the Environmental Sciences school – the head of school and a few others) became very supportive. I’ve got to know the FOI person quite well and the Chief Librarian – who deals with appeals.”

I am not familiar with the ins and outs of the British FOI request process, but in the US such requests must be honored based on the content of the information requested, and NOT based on the views of the requester or the intended us of the information.  Basically, what the FOI officer has determined here is that this was a perfectly legitimate request that had to be honored UNTIL it was learned that it came from a person or group who disagreed with the center’s scientific conclusions and wished to use the data to try to replicate and/or criticize their work — then it could be ignored.   In the US, this would be a gross violation of  FOIA rules.  I am willing to be that it is not too kosher under British law either.

Climate Pentagon Papers

An interesting development you have probably seen at other climate sites already (I am pretty conservative about posting this stuff), apparently someone may have hacked the servers at the Hadley Center Climate Research Unit (CRU) in the UK and copied a bunch of data and emails and dropped it into the public realm (via links in a number of site’s comment sections).  I downloaded the file but have not checked it out.  It is unclear if this is real or a skeptic spoof or even an alarmist-set trap, though initial reactions from the Hadley Center CRU seem to point to it being real.  The ethics of the folks who grabbed this material are also seriously in question, though if it turns out to be real I have no problem using the material as it is public / government material that should have been in the public domain anyway (which is why I use the Pentagon Papers analogy).

Andrew Bolt has some background and excerpts from the material.  The very first email he has from Phil Jones seems to confirm my suspicions about splicing thermometer data onto proxy series I expressed here.   (Update:  much more from Steve McIntyre here).

A lot of the stuff in Bolt’s post is really stuff we in the skeptic community already know.  RealClimate ruthlessly purges comments of any dissenting or critical voices?  Who’d have thunk it.

Climate Presentation Slides

These are the Powerpoint slides for my Nov. 10 presentation in Phoenix.

The slides are available for download at this link (9.9MB):   Download ppt

A pdf file of the presentation is here (2.7MB):   Download pdf

You can also view a Google docs version of the presentation below, though a bit of the formatting gets screwed up in the translation:   Climate Presentation, online viewer

Sign up here to be notified when I post the video

Thanks

We had a really good crowd out last night for my lecture.  I am currently working on publishing the video and the slides.  I am going to destroy the email list for this lecture, but before I do so I am going to send everyone a link to the slides and video when I get them posted.  If you would like to be notified when these are up, you may join the email list here.

Posting Drought Over Soon

There is a lot going on that I should be posting about, but I am preparing for a new round of public presentations, of which I give the first tomorrow night in Phoenix.  Once that is done, and I can get the video posted, I will be back to normal operations.

By the way, if you like the video, I am available for talks to groups for no speaking fee, if I can get to where you are.  My business (totally unrelated to climate) takes me all over the country so I may be near you some time soon.  Just drop me an email at the link above.

Reminder: Tuesday, Nov 10 Presentation in Phoenix

If you are in the Phoenix area and interested in a scientific discussion of climate issues, and in particular the science behind the skeptic’s position, you will likely enjoy my lecture this coming Tuesday (Nov 10)  in Phoenix.  The presentation is free to the public, and will be from 7-9PM in Dorrance Auditorium at the Phoenix Country Day School, on 40th Street just north of Camelback Road.  Hope to see you there.

The information web site is here.

The brochure for the presentation is here.

The press release is here.

Good Video

I enjoyed this video from CO2 Science and the Idso family.   It has much more in-depth science than most climate videos. For those of you who judge scientific issues based on ad hominem factors, the Idso’s are on ExxonSecret’s S-list, having had the temerity to accept Exxon money at some point in the past. For the rest of you, I think the video is good and worth the price.

Lindzen & Choi

In preparing for my climate presentation in Phoenix next week, I went back and read through Lindzen & Choi, a study whose results I linked here.  The study claims to have measured feedback, and have found feedback to temperature changes in the natural climate system to be negative –opposite of the assumption of strong positive feedback in climate models.  I found this interesting, as we often do of studies that confirm our own hypotheses.

Re-reading the study, I was uncomfortable with the methodology, but figured I was missing something.  Specifically, I didn’t understand how an increase in temperature could result in a decrease in outgoing radiation, as Lindzen says is assumed in all the models.   As I have always understood it, the opposite has to be true in a stable system.   With an added forcing, temperature increases which increases outgoing radiation until the radiation budget is back in balance.  Models that assumed otherwise would have near infinite temepratures.   I assumed perhaps that Lindzen & Choi were making measurements during the time the system came back into equilibrium.

Apparently, both Luboš Motl and Roy Spencer have spotted problems as well, and they explain the issue in a more sophisticated way here and here.

But the results I have been getting from the fully coupled ocean-atmosphere (CMIP) model runs that the IPCC depends upon for their global warming predictions do NOT show what Lindzen and Choi found in the AMIP model runs. While the authors found decreases in radiation loss with short-term temperature increases, I find that the CMIP models exhibit an INCREASE in radiative loss with short term warming.

In fact, a radiation increase MUST exist for the climate system to be stable, at least in the long term. Even though some of the CMIP models produce a lot of global warming, all of them are still stable in this regard, with net increases in lost radiation with warming (NOTE: If analyzing the transient CMIP runs where CO2 is increased over long periods of time, one must first remove that radiative forcing in order to see the increase in radiative loss).

So, while I tend to agree with the Lindzen and Choi position that the real climate system is much less sensitive than the IPCC climate models suggest, it is not clear to me that their results actually demonstrate this.

Spencer further makes the point he has made for a couple of years now that feedback is really, really, really hard to measure, because it is so easy to confuse cause and effect.

Spencer by the way points out this admission from the Fourth IPCC report:

A number of diagnostic tests have been proposed…but few of them have been applied to a majority of the models currently in use. Moreover, it is not yet clear which tests are critical for constraining future projections (of warming). Consequently, a set of model metrics that might be used to narrow the range of plausible climate change feedbacks and climate sensitivity has yet to be developed.

This is kind of amazing, in effect saying “we have no idea what the feedbacks are or how to measure them, but lacking any knowlege, we are going to consistently and universally assume very high positive feedbacks with feedback factors > 0.7”

Regression Abuse

As I write this, I realize I go a long time without getting to climate.  Stick with me, there is an important climate point.

The process goes by a number of names, but multi-variate regression is a mathematical technique (really only made practical by computer processing power) of determining a numerical relationship between one output variable and one or more other input variables.

Regression is absolutely blind to the real world — it only knows numbers.  What do I mean by this?  Take the famous example of Washington Redskins football and presidential elections:

For nearly three quarters of a century, the Redskins have successfully predicted the outcome of each and every presidential election. It all began in 1933 when the Boston Braves changed their name to the Redskins, and since that time, the result of the team’s final home game before the election has always correctly picked who will lead the nation for the next four years.

And the formula is simple. If the Redskins win, the incumbent wins. If the Redskins lose, the challenger takes office.

Plug all of this into a regression and it would show a direct, predictive correlation between Redskins football and Presidential winners, with a high degree of certainty.  But we denizens of the real world would know that this is insane.  A meaningless coincidence with absolutely no predictive power.

You won’t often find me whipping out nuggets from my time at the Harvard Business School, because I have not always found a lot of that program to be relevant to my day-to-day business experience.  But one thing I do remember is my managerial economics teacher hammering us over and over with one caveat to regression analysis:

Don’t use regression analysis to go on fishing expeditions.  Include only the variables you have real-world evidence really affect the output variable to which you are regressing.

Let’s say one wanted to model the historic behavior of Exxon stock.  One approach would be to plug in a thousand or so variables that we could find in economics data bases and crank the model up and just see what comes out.  This is a fishing expedition.  With that many variables, by the math, you are almost bound to get a good fit (one characteristic of regressions is that adding an additional variable, no matter how irrelevant, always improves the fit).   And the odds are high you will end up with relationships to variables that look strong but are only coincidental, like the Redskins and elections.

Instead, I was taught to be thoughtful.  Interest rates, oil prices, gold prices, and value of the dollar are all sensible inputs to Exxon stock price.  But at this point my professor would have a further caveat.  He would say that one needs to have an expectation of the sign of the relationship.  In other words, I should have a theory in advance not just that oil prices affect Exxon stock price, but whether we expect higher oil prices to increase or decrease Exxon stock price.   In this he was echoing my freshman physics professor, who used to always say in the lab — if you are uncertain about the sign of a relationship, then you don’t really understand the process at all.

So lets say we ran the Exxon stock price model expecting higher oil prices to increase Exxon stock price, and our regression result actually showed the opposite, a strong relationship but with the opposite sign – higher oil prices seem to correlate better with lower Exxon stock price.  So do we just accept this finding?  Do we go out and bet a fortune on it tomorrow?  I sure wouldn’t.

No, what we do instead is take this as sign that we don’t know enough and need to research more.  Maybe my initial assumption was right, but my data is corrupt.  Maybe I was right about the relationship, but in the study period some other more powerful variable was dominating  (example – oil prices might have increased during the 1929 stock market crash, but all the oil company stocks were going down for other reasons).  It might be there is no relation between oil prices and Exxon stock prices.  Or it might be I was wrong, that in fact Exxon is dominated by refining and marketing rather than oil production and actually is worse off with higher oil prices.    But all of this points to needed research – I am not going to write an article immediately after my regression results pop out and say “New Study: Exxon stock prices vary inversely with oil prices” without doing more work to study what is going on.

Which brings us to climate (finally!) and temperature proxies.  We obviously did not have accurate thermometers measuring temperature in the year 1200, but we would still like to know something about temperatures.  One way to do this is to look at certain physical phenomenon, particularly natural processes that result in some sort of annual layers, and try to infer things from these layers.  Tree rings are the most common example – tree ring widths can be related to temperature and precipitation and other climate variables, so that by measuring tree ring widths (each of which can be matched to a specific year) we can infer things about climate in past years.

There are problems with tree rings for temperature measurement (not the least of which is that more things than just temperature affect ring width) so scientists search for other “proxies” of temperature.  One such proxy are lake sediments in certain northern lakes, which are layered like tree rings.  Scientists had a theory that the amount of organic matter in a sediment layer was related to the amount of growth activity in that year, which in term increased with temperature  (It is always ironic to me that climate scientists who talk about global warming catastrophe rely on increased growth and life in proxies to measure higher temperature).  Because more organic matter reduces x-ray density of samples, an inverse relationship between X-ray density and temperature could be formulated — in this case we will look at the Tiljander study of lake sediments.   Here is one core result:

picture1

The yellow band with lower X-ray density (meaning higher temperatures by the way the proxy is understood) corresponds pretty well with the Medieval Warm Period that is fairly well documented, at least in Europe (this proxy is from Finland).  The big drop in modern times is thought by most (including the original study authors) to be corrupted data, where modern agriculture has disrupted the sediments and what flows into the lake, eliminating its usefulness as a meaningful proxy.  It doesn’t mean that temperatures have dropped lately in the area.

But now the interesting part.  Michael Mann, among others, used this proxy series (despite the well-know corruption) among a number of others in an attempt to model the last thousand years or so of global temperature history.   To simplify what is in fact more complicated, his models regress each proxy series like this against measured temperatures over the last 100 years or so.  But look at the last 100 years on this graph.  Measured temperatures are going up, so his regression locked onto this proxy and … flipped the sign.  In effect, it reversed the proxy.  As far as his models are concerned, this proxy is averaged in with values of the opposite sign, like this:

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A number of folks, particularly Steve McIntyre, have called Mann on this, saying that he can’t flip the proxy upside down.  Mann’s response is that the regression doesn’t care about the sign, and that its all in the math.

Hopefully, after our background exposition, you see the problem.  Mann started with a theory that more organic material in lake sediments (as shown by lower x-ray densities) correlated with higher temperatures.  But his regression showed the opposite relationship — and he just accepted this, presumably because it yielded the hockey stick shape he wanted.  But there is absolutely no physical theory as to why our historic understanding of organic matter deposition in lakes should be reversed, and Mann has not even bothered to provide one.  In fact, he says he doesn’t even need to.

This mistake (fraud?) is even more egregious because it is clear that the jump in x-ray values in recent years is due to a spurious signal and corruption of the data.  Mann’s algorithm is locking into meaningless noise, and converting it into a “signal” that there is a hockey stick shape to the proxy data.

As McIntyre concludes:

In Mann et al 2008, there is a truly remarkable example of opportunistic after-the-fact sign selection, which, in addition, beautifully illustrates the concept of spurious regression, a concept that seems to baffle signal mining paleoclimatologists.

Postscript: If you want an even more absurd example of this data-mining phenomenon, look no further than Steig’s study of Antarctic temperatures.   In the case of proxies, it is possible (though unlikely) that we might really reverse our understanding of how the proxy works based on the regression results. But in Steig, they were taking individual temperature station locations and creating a relationship between them to a synthesized continental temperature number.  Steig used regression techniques to weight various thermometers in rolling up the continental measure.  But five of the weights were negative!!

bar-plot-station-weights

As I wrote then,

Do you see the problem?  Five stations actually have negative weights!  Basically, this means that in rolling up these stations, these five thermometers were used upside down!  Increases in these temperatures in these stations cause the reconstructed continental average to decrease, and vice versa.  Of course, this makes zero sense, and is a great example of scientists wallowing in the numbers and forgetting they are supposed to have a physical reality.  Michael Mann has been quoted as saying the multi-variable regression analysis doesn’t care as to the orientation (positive or negative) of the correlation.  This is literally true, but what he forgets is that while the math may not care, Nature does.

Katrina Victims Have Standing To Sue Over Global Warming

From the WSJ:

The suit was brought by landowners in Mississippi, who claim that oil and coal companies emitted greenhouse gasses that contributed to global warming that, in turn, caused a rise in sea levels, adding to Hurricane Katrina’s ferocity. (See photo of Bay St. Louis, Miss., after the storm.)

For a nice overview of the ruling, and its significance in the climate change battle, check out this blog post by J. Russell Jackson, a Skadden Arps partner who specializes in mass tort litigation. The post likens the Katrina plaintiffs’ claims, which set out a chain of causation, to the litigation equivalent of “Six Degrees of Kevin Bacon.”

The central question before the Fifth Circuit was whether the plaintiffs had standing, or whether they could demonstrate that their injuries were “fairly traceable” to the defendant’s actions. The defendants predictably assert that the link is “too attenuated.”

But the Fifth Circuit held that at this preliminary stage in the litigation, the plaintiffs had sufficiently detailed their claims to earn a day in court.

The Green Hell Blog wrote:

I can’t wait to hear the plaintiffs argument as to why U.S. CO2 emissions versus Chinese were the proximate cause of the damage..

I would add that it will be interesting to see how oil companies will be held at fault rather than their customers who actually burned the oil and created the CO2.

It will also be interesting to see plaintiffs explain this graph of accumulated cyclone energy in the light of their theory that man-made global warming is increasing hurricane strengths and frequencies  (ACE is a sort of integration of hurricane and tropical storm strengths over time).  (from here via WUWT)

ace