Guest Post by Willis Eschenbach
I was reading a study published in November 2011 in Science mag, paywalled of course. It’s called “The Pace of Shifting Climate in Marine and Terrestrial Ecosystems”, by Burrows et al. (abstract here, hereinafter B2011). However, I believe that the Supplementary Online Information (SOI) may not be paywalled, and it is here.
The study has 19 authors, clear proof of the hypothesis that the quality of the science is inversely proportional to the square of the named authors. They study has plenty of flash, something akin to what the song calls “28 color glossy photos with circles and arrows and a paragraph on the back of each one”, like the following:
Figure 1 from B2011. ORIGINAL CAPTION: (A) Trends in land (Climate Research Unit data set CRU TS3.1) and ocean (Hadley Centre data set Had1SST 1.1) temperatures for 1960–2009, with latitude medians (red, land; blue, ocean).
It’s interesting how they don’t waste any time. In the very first sentence of the study, they beg the conclusion of the paper. Surely that must break the existing land speed record. The paper opens by saying:
Climate warming is a global threat to biodiversity (1).
I’d have thought that science was about seeing if a warming of a degree or two in a century might be a global threat to biodiversity, and if so, exactly which bio might get less diverse.
I would have expected them to establish that through scientific studies of the plants and animals of our astounding planet. Observations. Facts. Analyses of biodiversity in areas that have warmed. But of course, since they state it as an established fact in the very first sentence, all the observations and evidence and analyses must surely have been laid out in reference (1).
So I looked in the list of references to identify reference (1), expecting to find a hard-hitting scientific analyses with observations and facts that showed conclusively that plants and animals around the globe hate warming and that it damages them and saps their vital bodily fluids.
It was neither encouraging, nor entirely unexpected, to find that reference (1) is entitled “Global Biodiversity Scenarios for the Year 2100”.
Again the paper is paywalled, must be a better way to do science, abstract here. The abstract says:
ABSTRACT
Scenarios of changes in biodiversity for the year 2100 can now be developed based on scenarios of changes in atmospheric carbon dioxide, climate, vegetation, and land use and the known sensitivity of biodiversity to these changes. This study identified a ranking of the importance of drivers of change, a ranking of the biomes with respect to expected changes, and the major sources of uncertainties.
There you have it, folks. They didn’t bother looking at the real world at all. Instead, they had their computer models generate some “scenarios of change” for what the world might look like in 2100. These model results represent the current situation as projected forwards a century by carefully following, in the most scientificalistic and mathematically rigorous manner, the prejudices and preconceptions of the programmers who wrote the model.
But they didn’t just release the model forecasts. That wouldn’t be science, and more to the point, it entails the risk that people might say “wait a minute … what does a glorified adding machine know about what’s gonna happen in a century, anyway?” Can’t have that.
So first, they intensively studied the results in the most intensive and studious manner. They pored over them, they weighed and measured them, they pieced them and plotted them and mapped them, they took their main conclusion and “washed it in permanganate with carbolated soap” as the poet has it, they pondered the eigenvectors, they normalized the results and standardized them and area-adjusted them and de-normalized them again. That is the kind of mystical alchemy that transmutes plain old fallible computer model results into infallible golden Science.
And what did they find? To no one’s surprise, they found conclusive proof that the programmers’ prejudices and preconceptions were 100% correct, that plants and animals despise warming, and they do all they can to avoid warm places. They showed beyond doubt that even the slightest warming over a century is intolerable to wildlife, that there are only costs and no benefits from gradual warming, and … wait, say what?
In other words, the B2011 study is models all the way down. No one has shown that a few degrees of warming over a century is a “global threat to biodiversity”, that is a very poorly supported hypothesis, not a fact. If the feared warming does occur, the majority of the warming is projected to be at night, in the winter, in the extratropics. Call me crazy, but I don’t foresee huge effects on biodiversity if midnights in Siberia in December are minus 37° rather than minus 40° … sure, every change brings changes, and if it warms there will be some, but I don’t see any evidence supporting a “global threat to biodiversity”.
In any case, I started out by looking at their results of the first study, B2011, but I got totally sidetractored by their error bars on their results shown in Figure 1. (That’s like being sidetracked but with a lot more pull.) They used a tiny, 1° x 1° grid size, and given the scarcity of temperature observations in many parts of the world, I wondered how they dealt with the uneven spacing of the ground stations. At that size, many of the grids wouldn’t have a single temperature station. So I looked to see how they handled the error estimate for the temperature trend in a 1° x 1° gridcell that contained no temperature stations at all. Interesting philosophical question, don’t you think? What are the error bars on your results when you have zero data?
I was amazed by their error procedure, which is what led me to write this post. Here’s what the B2011 SOI says about error estimates for their work:
We do not reflect uncertainty for our estimates or attempt statistical tests because all of our input data include some degree of model-based interpolation. Here we seek only to describe broad regional patterns; more detailed modeling will be required to reflect inherent uncertainty in specific smaller-scale predictions.
So … using model based interpolation somehow buys you a climate indulgence releasing you from needing to display your error estimates? If you use model results as input data, you can just blow off “statistical tests”? This “post-normal science” is sure easier than the regular kind.
It was not enough that their first sentence, the underlying rock on which their paper is founded, the alleged “danger” their whole paper is built around, exists only in the spectral midnight world of computer models wherein any fantasy can be given a realistic looking appearance and heft and ostensible substance.
Indeed, I might suggest that we are witnessing the birth of a new paradigm. The movie industry has been revolutionized by CGI, or “computer-generated imagery”. This includes imagery so realistic it is hard to distinguish from images of the actual world. Here’s an example:
Figure 2. Computer generated fractal image of an imaginary high mountain meadow. Image Source.
CGI has saved the movie industry millions of dollars. Instead of requiring expensive sets or filming on location, they can film anywhere that is comfortable, and fill in the rest with CGI.
We may be seeing the dawn of the same revolution in science, using what can only be described as CGR, or “computer-generated reality”. I mean, the actual reality seems to specialize in things like bad weather and poisonous snakes and muddy streams filled with leeches, and it refuses to arrange itself so that I can measure it easily. Plus it’s hard to sneak up on the little critters to find out what they’re actually doing, somehow they always seem to hear my footsteps. But consider the CGR mice and rabbits and small animals that live in the lovely high CGR meadows shown in Figure 2. When the temperature rises there in the high meadow, it’s easy for me to determine how far the shrews and rock coneys that live in the meadow will have to move. Using CGR a man can do serious, rigorous, and most importantly, fundable scientific study without all the messy parts involving slipping on rocks and wet boots and sleeping on the ground and mosquitoes and sweating. Particularly the sweating part, I suspect that many of those CGR guys only sweat when there’s emotional involvement. Personally, I think they are way ahead of their time, they’re already 100% into CGR, because studying actual reality is soooo twentieth century. Instead, they are studying the effects of CG climate on CG foxes preying on CG voles, in the computer-generated reality of the high mountain meadow shown above … to my dismay, CGR seems to be the wave of the future of climate science.
But it’s not bad enough that they have forsaken studying real ecosystems for investigating cyberworlds. In addition, they are asserting a special exemption from normal scientific practices, specifically because they have built their study, not on the rock of solid scientific investigation of the real world, but on the shifting sand of conclusions based on their CGR world. It reminds me of the guy who kills his parents, and then wants special treatment because he’s an orphan … you can’t choose to study CGR, and then claim that the fact that you are not studying actual reality somehow exempts you from the normal requirements of science.
Finally, they’ve modeled the global temperature on a 1° x 1° grid, but they say they need “more detailed modeling”. Now, that’s a curious claim in itself, but it also brings up an interesting question, viz:
They say they can’t give error estimates or uncertainty bounds on their current work because they are using modeled results as input data … and their proposed cure for this is “more detailed modeling” to “reflect inherent uncertainty”?
I’d rave about this, but it’s a peaceful morning and the sun is shining. And besides, in response to the urging of my friends, not to mention the imprecations of my detractors, I’ve given up my wicked ways. I’m a reformed cowboy, but it’s a work in progress, and it looks like I have to reform some more, no news there. So let me simply say that this is an example of post-normal, post-reality climate “science” and peer-review at its worst. Why does using a model somehow make you exempt from the normal scientific requirement to make error estimates and conduct statistical tests?
Sadly, this is all too typical of what passes for climate science these days, models all the way down. Far too much of climate science is merely the study of CGR, and special exemptions apply …
My regards, as always, to everyone.
w.
Mike Bromley the Canucklehead @ur momisugly 10.59 pm says:
My sentiments exactly. Get off your arses, you lazy bums, and go look at the real world before postulating mere prejudiced guesswork as a reflection of reality, and motivator of public policy.
FYI
Timothy D Mitchell, Mike Hulme and Mark New (2001) Climate Data for Political Areas
http://www.cru.uea.ac.uk/cru/data/hrg/mitchell2002a.pdf
Refers to accuracy of New’s gridded datasets (1999 & 2000) p111
Everyone knows people kill animals by building structures, and cutting down forests ext..
Do we really need a study that tells us what we already know, and then blame global warming?
kakatoa says:
January 20, 2012 at 12:19 pm
CGR or “computer-generated reality”, also know as the Holo deck in Star Treck http://en.wikipedia.org/wiki/Holodeck I wish they could find a way to transport the gophers and moles from my property to their CGR.
—————————
Sounds like you need a rotenator.
http://www.rodenator.com/environmentally-friendly-pest-control-rodent-extermination.
cn
The first question is do plants and animals hate warming ?
The answer was no last time I checked.
Alaska has lots fewer plants and animals than Florida.
The second question is will there be warming.
The jury is out but the answer to that may be no.
Classic: garbage in, garbage out.
Yep, CGR is definitely the future, Willis!
Just think of the time saved because one doesn’t have to fill in risk assessments (in triplicate) for oneself, each colleague, the area studied, the way there and back. Nor is there any need to fill in environmental impact assessments (in triplicate) for the area, the critters, and for each instrument one is going to take there and bring back … and the food … and the other accoutrements …
Mind, some impact-assessment assessors would be out of a job, but they could be re-trained to do CGR, couldn’t they?
All the other savings you already mentioned.
Gawd, I feel like a dinosaur when all we needed was a wire square, notebook and pencil, waterproof clothes and the willingness to spend a day flat on one’s belly, checking alternate squares in transects for small critters.
PS: I wonder how they “do” rain in CGR …
John Garrett says, January 20, 2012 at 11:27 am
“The study has 19 authors, clear proof of the hypothesis that the quality of the science is inversely proportional to the square of the named authors.”
I humbly propose that this hypothesis be hereafter referred to as The Eschenbach Hypothesis. Bravo, w! Well done.
================================
Och, I dunno – a quarter of a century ago, we said that if the list of authors is longer than the title, the paper will be cr*p.
Mind, that’s not quite as elegantly expressed as Willis’ hypothesis …
Pravda says:
January 21, 2012 at 4:44 am
Pravda, thank you for your note. Certainly I would not do that normally. Acronyms are something I do use, but I always explain the first use of the acronym right away.
However, in this case the three letter abbreviation was unknown to anyone, since I just made it up. Part of the reason for the headline was to get people wondering “What is CGR”. I then didn’t explain it immediately, to keep the curiosity level up. So it was not just foreigners who had to guess what it meant, it was everyone.
I do love your screen name, “Truth”, that works for me..
w.
Septic Matthew says:
January 20, 2012 at 11:49 am
“must be a better way to do science”
It’s a modeling result, like Columbus’ prediction that he could get to India by sailing around the world. It will take longer to test, and there may be surprises along the way, but it’s not unscientific.
No, Septic, Climate Science’s method is factually and objectively “unscientific”: Climate Science’s solely rhetorical “perception is reality” Propaganda Operation is unfalsifiable by its very nature as an unhinged “word game” – for example, as already 100% proven simply by its lack of concern regarding its failure to get even one apparent relevant empirical “prediction” correct!
Yet Climate Science just keeps right on going as though its failure doesn’t matter, repeating its same old intentionally confabulatory rhetorical “method” – solely intending to delude people – despite its objective failure compared to the objective principles of real science and, likewise, as compared to the objective principles regarding the meaning of words used to make statements about reality.
And, therefore and in fact, this same old ‘new’ computer generated verbiage is not analogous to Columbus’ prediction, which was “falsifiable” via the objective standard of real science’s concept of prediction failure, which Columbus in effect pursued with great dedication – a reality based method of meaning which he kept on practicing well after his discovery of “Indians”. In other words, Columbus’ words actually meant something compared to reality. Climate Science’s do not.
Likewise, you, “Septic” [as in a pathologic bacterium?] are only practicing above via the same old tactics of rote repetition and false analogy, your own variety of Climate Science’s very same intentionally unhinged propagandistic method, seeking to manufacture the same old objectively feckless rhetorical equivalence between Climate Science’s “science” and “real science”.
Good luck with your own “New World”, Septic. But it ain’t happening in mine.
Will’s
Your CRG reference sent me back in time (mid 1990’s) to my process improvement days and responsibilities. Back then I came across a Yogi Berra reference from Davis Balestracci-
” 1.2 Some Wisdom from Yogi Berra
Before getting to the eight traps, let’s review what seems to have evolved as the “traditional” use of statistics in most work cultures. It can be summarized by the acronym PARC. “PARC” can have several meanings: Practical Accumulated Records Compilation; Passive Analysis by Regressions and Correlations (as taught in many courses).
With today’s plethora of computers, it can also mean Profound Analysis Relying on Computers. And it only takes a cursory glance at much of published “research” to see yet another meaning: Planning After the Research is Completed (also called “torturing the data until they confess”).”
REF- “Data ‘Sanity’: Statistical Thinking Applied to Everyday Data,” solicited special publication for the Statistics Division of the American Society for Quality (39 pages and sent to 11,000 people), Spring 1998,
I thought you might enjoy the “PARC” acronym. It looks like Davis has a new book out on Data Sanity that has received pretty good reviews-
http://www.amazon.com/Data-Sanity-Quantum-Unprecedented-Results/product-reviews/1568292953/ref=dp_top_cm_cr_acr_txt?ie=UTF8&showViewpoints=1
Willis Eschenbach: Thanks, Matthew, I am a member of AAAS. My point is that I’ve already paid for most of this science to be done, makes me not over-happy to be asked to pay for it again.
If you are a member of AAAS, then you can download the paper for free. At least, I was able to. Someone has to pay for publication: if the publication costs were covered by the grant, would you be happier? You have paid for very little of the science, and your AAAS membership gives you access to thousands of published papers for free.
The one really surprising thing about that paper was that the the authors were permitted to publish without any estimate whatsoever of the error/randomness/uncertainty. Their justification was risible, as though the random variation in parameter estimates (and all other judgments and calculations based on data) were negligible. And yet with modern monte carlo methods on modern computers, such error estimates are easy to estimate, at least to a first degree of approximation. Tabulating all of them is a tedious chore, but that is not an acceptable excuse.
JPeden: No, Septic, Climate Science’s method is factually and objectively “unscientific”: Climate Science’s solely rhetorical “perception is reality” Propaganda Operation is unfalsifiable by its very nature as an unhinged “word game” – for example, as already 100% proven simply by its lack of concern regarding its failure to get even one apparent relevant empirical “prediction” correct!
At the present time, climate science is not complete enough nor accurate enough to justify any particular policy recommendation. Some of the climate scientists, like some of their political opponents, make extreme and unjustifiable claims. But there is plenty of good climate science.
I am good at playing Mario sports on my WII, I wonder if I am eligible to participate in London Olympics.
I break world records every weekend. 😛
Septic Matthew says:
January 21, 2012 at 3:18 pm (Edit)
I downloaded both of them, of course, that’s how I read them to write the article. My point is that if I, the US taxpayer, am paying for the research to be done, then I should be able to read the results I paid for without some journal getting in the game at all. One way would be to give the journals say three months and then NSF posts it on their website … I don’t know how it might work. I’m just saying that a system that means that people in the developing world do not have access to scientific results because a school library in Lesotho can’t afford to buy what I already paid for doesn’t make sense to me.
My point exactly. Monte Carlo analysis is not simple, but it needs to be done. The paper was not science, and the “peer review” was non-existent.
All the best,
w.
An appeal to authority? The last refuge of the scoundrel?
The fact is that Willis and many of us dumb nuts have disparaged this piece of utter garbage. Use your loaf and you will have to end up realising that it’s just a LIE. A deliberate LIE, meant to mislead people like you.
Why on Earth do greenhouse owners sometimes suddenly pump in 1,000 ppm of co2 into greenhouses? The poor plants have had no time to adapt / evolve. Why use greenhouses at all?
You can get anything you want at Alice’s Restaurant (‘ceptin’ Alice)
Willis wrote: “The study has 19 authors, clear proof of the hypothesis that the quality of the science is inversely proportional to the square of the named authors.”
I think I can beat that:
Nature Genetics 29 August 2010
Here are some tips:
And here’s Montana Slim (Wilf Carter) singing it (link anyway—I don’t know how to embed the video):
And yes, there are ice worms, living in glaciers, and they do reproduce, though whether they ‘nest’ or not, I can’t say.
/Mr Lynn
Hey! The video embedded itself! Whaddaya know? /Mr L
Strange. I always thought there was more biodiversity in warm climates than in cold climates. Am I missing something here?
Surely moisture is the biggest determinator of biodiversity, rather than temperature, but I thought that increased temperatures were supposed to bring us more atmospheric moisture!
.
Willis Eschenbach said in post at top:
The study has 19 authors, clear proof of the hypothesis that the quality of the science is inversely proportional to the square of the named authors.
I used to think that hypothesis seemed pretty good. But then by it I’d have to look extra hard to make sure this wasn’t a complete monstrosity:
http://www.agu.org/pubs/crossref/2011/2010JD015146.shtml
Seven authors? Looks very dubious!
Several years back, I heard on the radio an interview with Patrick Moore. During the interview, he stated that he kept running across statements from various environmental groups to the effect that 17,000 to 100,000 species vanish every year. He wondered where the source of this statement came from, as the environmental groups were referencing each other. He eventually traced it to a computer model on a scientist’s computer.
I didn’t remember which scientist, so I asked Dr. Moore about it. He replied with E. O. Wilson of Harvard–the one who popularized the term “biodiversity.”
So Willis is right–it’s models all the way down.
Jim
Jim, see Dr. Craig Loehl’s post on our peer-reviewed paper showing that EO Wilson was very wrong …
w.
Jim, it’s no secret among wildlife biologists what those studies were: for a summary see Stuart L. Pimm & Peter Raven “Biodiversity: Extinction by numbers” (Nature 2000).
And yes, wildlife biologists do regard those studies as being right.
Mr. Lynn;
I note Wilf chickened out on singing that final chorus! It makes it rather obvious what “ice worms” Service is talking about, and where they nest!