Fudged Fevers in the Frozen North

Guest Post by Willis Eschenbach

[see Update at the end of this post]

I got to thinking about the (non) adjustment of the GISS temperature data for the Urban Heat Island effect, and it reminded me that I had once looked briefly at Anchorage, Alaska in that regard. So I thought I’d take a fresh look. I used the GISS (NASA) temperature data available here.

Given my experience with the Darwin, Australia records, I looked at the “homogenization adjustment”. According to GISS:

The goal of the homogenization effort is to avoid any impact (warming or cooling) of the changing environment that some stations experienced by changing the long term trend of any non-rural station to match the long term trend of their rural neighbors, while retaining the short term monthly and annual variations.

Here’s how the Anchorage data has been homogenized. Figure 1 shows the difference between the Anchorage data before and after homogenization:

Figure 1. Homogenization adjustments made by GISS to the Anchorage, Alaska urban temperature record (red stepped line, left scale) and Anchorage population (orange curve, right scale)

Now, I suppose that this is vaguely reasonable. At least it is in the right direction, reducing the apparent warming. I say “vaguely reasonable” because this adjustment is supposed to take care of “UHI”, the Urban Heat Island effect. As most everyone has experienced driving into any city, the city is usually warmer than the surrounding countryside. UHI is the result of increasing population, with the accompanying changes around the temperature station. More buildings, more roads, more cars, more parking lots, all of these raise the temperature, forming a heat “island” around the city. The larger the population of the city, the greater the UHI.

But here’s the problem. As Fig. 1 shows, until World War II, Anchorage was a very sleepy village of a few thousand. Since then the population has skyrocketed. But the homogeneity adjustment does not match this in any sense. The homogeneity adjustment is a straight line (albeit one with steps …why steps? … but I digress). The adjustment starts way back in 1926 … why would the 1926 Anchorage temperature need any adjustment at all? And how does this adjust for UHI?

Intrigued by this oddity, I looked at the nearest rural station, which is Matanuska. It is only about 35 miles (60 km) from Anchorage, as shown in Figure 2.

Figure 2. Anchorage (urban) and Matanuska (rural) temperature stations.

Matanuska is clearly in the same climatological zone as Anchorage. This is verified by the correlation between the two records, which is about 0.9. So it would be one of the nearby rural stations used to homogenize Anchorage.

Now, according to GISS the homogeneity adjustments are designed to adjust the urban stations like Anchorage so that they more closely match the rural stations like Matanuska. Imagine my surprise when I calculated the homogeneity adjustment to Matanuska, shown in Figure 3.

Figure 3. Homogenization adjustments made by GISS to the Matanuska, Alaska rural temperature record.

Say what? What could possibly justify that kind of adjustment, seven tenths of a degree? The early part of the record is adjusted to show less warming. Then from 1973 to 1989, Matanuska is adjusted to warm at a feverish rate of 4.4 degrees per century … but Matanuska is a RURAL station. Since GISS says that the homogenization effort is designed to change the “long term trend of any non-rural station to match the long term trend of their rural neighbors”, why is Matanuska  being adjusted at all?

Not sure what I can say about that, except that I don’t understand it in the slightest. My guess is that what has happened is that a faulty computer program has been applied to fudge the record of every temperature station on the planet. The results have then been used without the slightest attempt at quality control.

Yes, I know it’s a big job to look at thousands of stations to see what the computer program has done to each and every one of them … but if you are not willing to make sure that your hotrod whizbang computer program actually works for each and every station, you should not be in charge of homogenizing milk, much less temperatures.

The justification that is always given for these adjustments is that they must be right because the global average of the GISS adjusted dataset (roughly) matches the GHCN adjusted dataset, which (roughly) matches the CRU adjusted dataset.

Sorry, I don’t find that convincing in the slightest. All three have been shown to have errors. All that shows is that their errors roughly match, which is meaningless. We need to throw all of these “adjusted datasets” in the trash can and start over.

As the Romans used to say “falsus in unum, falsus in omnibus”, which means “false in one thing, false in everything”. Do we know that everything is false? Absolutely not … but given egregious oddities like this one, we have absolutely no reason to believe that they are true either.

Since people are asking us to bet billions on this dataset, we need more than a “well, it’s kinda like the other datasets that contain known errors” to justify their calculations. NASA is not doing the job we are paying them to do. Why should citizen scientists like myself have to dig out these oddities? The adjustments for each station should be published and graphed. Every single change in the data should be explained and justified. The computer code should be published and verified.

Until they get off their dead … … armchairs and do the work they are paid to do, we can place no credence in their claims of temperature changes. They may be right … but given their egregious errors, we have no reason to believe that, and certainly no reason to spend billions of dollars based on their claims.

[Update – Alaska Climate Research Center releases new figures]

I have mentioned the effect of the Pacific Decadal Oscillation (PDO) below. The Alaska Climate Research Center have just released their update to the Alaska data. Here’s that information:

Figure 4. Alaska Temperature Average from First Order Observing Stations

In the Alaska Climate Research Center data, you can clearly see the 1976 shift of the PDO from the cool to the warm phase, and the recent return to the cool phase. Unsurprisingly, the rise in the Alaska temperatures (typically shown with a continuously rising straight trend line through all the data) have been cited over and over as “proof” that the Arctic is warming. However, the reality is a fairly constant temperature from 1949-1975, a huge step change 1975-1976, and a fairly constant temperature from 1976 until the recent drop. Here’s how the IPCC Fourth Assessment Report interprets these numbers …

Figure 5. How the IPCC spins the data.

SOURCE: (IPCC FAR WG1 Chapter 9, p. 695)

As you can see, they have played fast and loose with the facts. They have averaged the information into decade long blocks 1955-1965, 1965-1975, 1975-1985 etc. This totally obsures the 1975-1976 jump. It also gives a false impression of the post-1980 situation, falsely showing purported continuing warming post 1980. Finally, they have used “adjusted data” (an oxymoron if there ever was one). As you can see from Fig. 4 above, this is merely global warming propaganda. People have asked why I say the Alaska data is “fudged” … that’s a good example of why.

The climate data they don't want you to find — free, to your inbox.
Join readers who get 5–8 new articles daily — no algorithms, no shadow bans.
0 0 votes
Article Rating
315 Comments
Inline Feedbacks
View all comments
vigilantfish
February 21, 2010 8:26 pm

EdB (18:36:02) :
Re Robert..
I want someone to provide peer reviewed evidence that Robert has ANY scientific credentials, and that he is in an intelligent person. If such evidence is not provided, I will conclude that he has none and he is dense.
—————-
Of course, that proof of intelligence will require a 95% confidence level.

regeya
February 21, 2010 8:34 pm

@rbateman: hehe, I was talking to someone today whose sister lives up in the hills in the Reno area. She got 20″ of snow.

rich1225
February 21, 2010 8:36 pm

If I understand the above discussion Anchorage has been adjusted upwards at the rate of 1 degree per century of which therefore includes a -.005 C per century adjustment for UHI.
Matanuska on the other hand has been adjusted at the rate of 3 C per century downswards from 1910 to 1970 and then adjusted upwads at the rate of 7 C per century from 1970 to 1990 of which -.005 c per century was added because it is now considered affected by UHI.
So if there is in reality no UHI correction (-.005) what is the basis for these adjustments?
I think the state climatologists should be asked to answer these questions.
The following link compares Tucson and Grand Canyon adjusted unadjusted temps: http://www.climate-skeptic.com/2009/12/example-of-climate-work-that-needs-to-be-checked-and-replicated.html

February 21, 2010 8:47 pm

A few points about GISSTEMP urban adjustment.
The nightlights approach. Nightlights is a really odd way to identify if a site is urban,rural or small town. The last time looked at it it was easy to spot obvious errors: Big cities by population that turned out dark and rural sites that turned out bright. This is because nightlights is a PROXY for urbanity.
The foundational studies on the correlation between nightlights and urbanity show this. When you have historical population data why do you think nightlights will be any better at assessing urbanity? Moreoever the real thing we are after is UHI. UHI is, according the theory, a positive bias that is created by changes to the physical ( geometry) and material changes in a site over time, and waste heat which is tied to population and human activity. Looking at the way GISSTEMP adjusts for UHI its quickly apparrent that in many cases the adjustments go against what theory says they should be. What’s missing in Hansen’s approach is some kind of verification that the adjustment actually works.
1. That the methodology for picking rural sites actually picks rural sites.
2. That the adjustments actually makes sense in individual cases
testing number one is a painful bottoms up proceedure. But it should not be so hard now that CheifIO has GISSTEMP running. Just output all the sites
that the program thinks are rural. Then go check each one.
Even more fundamental is the question of whether one can “adjust” for UHI at all. At best we have this. We have a number ( who knows how many) of sites which we could classify as Rural. Looking at the population, the nightlights, the vegatative index, the % of impervious surfaces, cannot replace LOOKING AT THE SITE. It would seem to me that one should start by picking the most pristine sites. That will give you a good picture. You may lack spatial coverage. Tough. that’s an uncertainity. The idea that you can take an urban site and “reconstruct” what it would look like if man was never there, is a HYPOTHESIS. The idea that you can regain spatial coverage by “adjusting” urban sites is a hypothesis.

Jaye
February 21, 2010 9:08 pm

Robert is just a FUD slinger. An errand boy sent by grocery clerks.

j.pickens
February 21, 2010 9:14 pm

Farley State Marina in Atlantic City is next to Harrahs, Trump Marina, The Borgata, and Trump Taj Majal casinos.
They have lots and lots of exterior lighting to attract gamblers to the North side of town which is a mile and a half from the main roadway entrance to Atlantic City at the AC Expressway.
Though I would expect to see Las Vegas up there for the same reasons.
Perhaps the contrast line between the dark, cold Atlantic Ocean and the casino lights enhances the measurements.

Dave N
February 21, 2010 9:28 pm

henry (16:02:33) :
Matanuska-Susitna Borough population for:
1960’s: 5,000
1980: 17,816
1990: 39,683
2000: 59,322
2005: 75,001
2008: 85,458
Sources:
http://www.usgennet.org/usa/ak/state/boro-matsu.html
http://www.epodunk.com/cgi-bin/popInfo.php?locIndex=22230
http://quickfacts.census.gov/qfd/states/02/02170.html
Bear in mind that the borough covers 24,681.54 square miles.

February 21, 2010 9:43 pm

I think you have the signs correct.
this is what I think they (the team) did.
1. cool the past for all that are trending level.
2. warm the past for all that trend warm.
3. level the ones that trend cooler.
net effect is a warming trend, and hard to prove that this is there end goal.
I.E. if they warmed the new readings today easy to show bias.
also by cooling the past you don’t need to mess with today’s readings !!!!!!!
Now prove me wrong with 5% or more that are reversed from the above 1-3.
Tim

Mike G
February 21, 2010 10:06 pm

Robert Kral:
“in a field where generating bogus data costs you your career.”
Unfortunately, in climate science, as in nuclear reactor regulation, scientific honesty would mean there are a lot fewer scientists and grants needed to study the resulting non-problems.
I once heard a talk by one of the aging pioneers in the nuclear field. He discussed how the difficult-to-measure effects of small doses of radiation were estimated by drawing a straight line back to the origin of the graph from the measureable effects of large doses. As the line gets closer and closer to zero the number gets tinier and tinier. But, multiplying the tiny number by a large population gives regulators numbers worry about. When he pointed out to these scientists that it’s not a straight line back to the origin, the curve has “hormesis” (it dips below the x-axis, small doses are actually beneficial), they would agree that research has consistently shown hormesis and say, “but, if we stipulate that, we’re out of a job as are most of the people in the regulation business.”
Same is true for a lot of pollutants.

Dan Sellers
February 21, 2010 10:06 pm

Just as a warning, you have to be very careful with population density info in Anchorage as well. In Alaska, you have the state government, and then borough government. The Municipality of Anchorage is the equivalent of a borough, and while it is one of the smaller boroughs in Alaska, it is big enough to make any population densities worthless. See the link to the map below.
http://www.muni.org/Departments/Planning/PublishingImages/vicinity.gif
I have in-laws that live in the Anchorage Bowl, and I though it was a little more crowded than 162 people per square mile.

jcspe
February 21, 2010 10:11 pm

Food for thought. The comment at the link below includes a link to a paper about station moves in Anchorage. I also wrote a few comments about elevation and distance to open sea water in the Anchorage area and why that matters.
http://climateaudit.org/2007/04/11/some-china-comparisons/#comment-84788
By far, the biggest factor affecting air temperatures in Anchorage is the relative distance to Cook Inlet.
OTOH, the Matanuska station gets a lot of wind from the Matanuska and Knik glaciers. (Both of which have receded a whole bunch over the period of this discussion. Also, the Matanuska station is not really a great choice for supposed rural stability because the area around it has been growing faster than the rest of Alaska for 20-30 years.
If you want some better choices to check against potential UHI in Anchorage, see if you can find weather data for places like Skwentna, Nikiski, Kasilof, Big Lake, Knik, or Hope. Each of these has pretty minimal growth and are representative of weather conditions in the area.

February 21, 2010 10:15 pm

The assessment of “rural” stations has been somewhat of a joke to those of us who live here and who have visited the sites.
The methodologies used to classify sites as rural or urban are not very clear.
One of my favorities is Peterson2003, that seminal study that shows no UHI effect. But when you look at the stations Perterson used in that study its pretty Goofy. Peterson also used nightlights, but looked like he used a different product. And he adjusted the time series with a TOBS program that was different from that developed by Karl. weird. Anyways here is a list of rural sites according to peterson for the US. Hint you wont find many of them in USHCN. BUT you do find some. lets just check a few. I’ll run down the list. Look at surfacestations and lets just see what our spot check shows. ok?
First we get a list of the sites:
http://climateaudit.org/2007/08/03/petersons-urban-sites/
Lets check a few rural sites: I’ll just go down the list of peterson sites
and pull the data if it exists in the photo database. It would be cool if the surface stations database had a pointer to all the data and all the charts, but
right now it doesnt. Some pages show the data and photos and others just show photos. Somebody should ask Anthony to see of this can be updated.
It would be cool if I could ask for a list of sites by population or by nightlights figure or by CRN rating or whatever..anyways
Here we go:
http://gallery.surfacestations.org/main.php?g2_itemId=24871
http://gallery.surfacestations.org/main.php?g2_itemId=57525
http://gallery.surfacestations.org/main.php?g2_itemId=16799
I had to pull data for this one.. see below
http://data.giss.nasa.gov/cgi-bin/gistemp/gistemp_station.py?id=425726080010&data_set=0&num_neighbors=1
More data for other peterson rural stations…
http://gallery.surfacestations.org/main.php?g2_itemId=36658
http://gallery.surfacestations.org/main.php?g2_itemId=37651
This NEXT ONE IS GOOD: it shows a station that peterson thinks IS RURAL
and GISS thinks is not rural
http://gallery.surfacestations.org/main.php?g2_itemId=3333
Pull the data
http://data.giss.nasa.gov/cgi-bin/gistemp/gistemp_station.py?id=425726940040&data_set=0&num_neighbors=1
HERE IS A NICE EXAMPLE: petersons NIGHLIGHTS method classifies this as rural
http://gallery.surfacestations.org/main.php?g2_itemId=12835
Data for that below:
http://gallery.surfacestations.org/main.php?g2_itemId=27187&g2_imageViewsIndex=1
Here is ANOTHER peterson Rural site? hmm nightlights dont see everything
http://gallery.surfacestations.org/main.php?g2_itemId=3421
a look at the temps
http://gallery.surfacestations.org/main.php?g2_itemId=6097
http://gallery.surfacestations.org/main.php?g2_itemId=20469
Rural by peterson and GISS
http://data.giss.nasa.gov/cgi-bin/gistemp/gistemp_station.py?id=425727930020&data_set=2&num_neighbors=1
The point of this little exercise is that the classification of sites into rural/not rural is a fundamental step in any analysis. with the right database and tools its not that hard of a job. i’ve also never seen a ‘tops down” approach to classifying that passed a simple spot check
does this make radiative physics wrong? no.
does this make climate sensitivity lower? i dunno
Can we do a better job of classifying sites if we progress bottoms up?
I think so.
Will the warming of the last century disappear completely? No.
Does it make sense to hand check these things? Yes.
Will people wave their arms and say “it doesnt matter?” Yes
Will people wave their arms and scream the data is corrupt? yes

R. Craigen
February 21, 2010 10:22 pm

Three kinds of lies: Lies, Damned Lies, and Climate Science
Three kinds of Liars: Liars, Outliers, and Out-and-Out Liars!

February 21, 2010 10:24 pm

Thanks for another interesting post Willis. WRT Robert, the appropriate Latin is “nil carborundum illegitimi”.
Yes there is an Australian “leg”. Again this backs up what I discovered at Te Kowai- another Experimental Station!- except Te Kowai’s district population is given as 666.
I am desperately working to get a related post on my site re strange goings on at Gladstone, Queensland. Give us a day or so- i have to work too. Check kenskingdom.wordpress.com tomorrow (hopefully).
Ken

February 21, 2010 10:36 pm

“Falsus in unum, falsus in omnibus”
Actually, the expression should rather be “falsus in uno, falsus in omnibus”. If you can’t get the Latin right, can you then be right about the rest? 😉

Robert
February 21, 2010 11:15 pm

“Y’know, Robert, you misconstrued my meaning entirely.”
You made a mistake: get over it already.
“I was trying to restate it in words of one syllable, so you might get it.”
Since you’ve proven unable to grasp basic concepts like confidence intervals and external validity, I rather think our communication problems run the other way.
“I prefaced it by saying “what I meant was” to contrast it with your fantasy about what I meant.”
And I told you that “what you meant” is a lame excuse for the fact that what you said was completely wrong, as yourself admitted. End of story. Thanks for playing.
“As to your question, I fear I don’t have an answer.”
It’s not surprising. A skeptic, of course, would be able to consider the other side and the reasons he might be wrong. Somebody who operates on faith, of course, can’t imagine anything other than being right.
If you can’t open your mind enough to consider a hypothesis other than your own, then there in no point in discussing the subject. Not being a man of faith myself, I doubt we will convince each other.

wayne
February 21, 2010 11:38 pm

Willis Eschenbach (15:37:55) :
Since the early years of the Anchorage record are adjusted to be warmer than the later years, this reduces the apparent warming.
Doesn’t that irk you in itself. It does me.
Why would NASA’s GISS division raise the temperatures in 1926 when there were no influences of UHI instead of lowering today’s temperature in a city to adjust for UHI.
In itself, that keeps the temperatures today jacked up as if the whole rural world were a huge city and the whole world has heat-island influences everywhere but in the cities. Seems something is very wrong.

denny
February 21, 2010 11:44 pm

Willis…PLEASE quit responding to Robert as it is a COMPLETE waste of
time.

E O'Connor
February 22, 2010 12:47 am

Is this the right place to look up the brightness index?
http://data.giss.nasa.gov/gistemp/station_data/station_list.txt

Peter O'Neill
February 22, 2010 1:16 am

Re: Willis Eschenbach (Feb 21 19:07),
Anchorage:
urb stnID:425702730000 # rur: 15 ranges: 1916 2009 500.
longest rur range: 1910-2004 91 [wgt: 0.488 256.0 km] 425702960000 [CORDOVA/MILE] UNITED STATES OF AMERICA
add stn 2 range: 1903-1990 87 [wgt: 0.086 457.3 km] 425701780000 [TANANA] UNITED STATES OF AMERICA
data added: 87 overlap: 77 years
add stn 3 range: 1919-2004 85 [wgt: 0.755 122.5 km] 425702510000 [TALKEETNA] UNITED STATES OF AMERICA
data added: 85 overlap: 85 years
add stn 4 range: 1918-2009 84 [wgt: 0.079 460.7 km] 425703260000 [KING SALMON] UNITED STATES OF AMERICA
data added: 84 overlap: 79 years
add stn 5 range: 1933-2004 70 [wgt: 0.608 196.2 km] 425703410000 [HOMER/MUNICIP] UNITED STATES OF AMERICA
data added: 70 overlap: 70 years
add stn 6 range: 1942-2009 68 [wgt: 0.293 353.5 km] 425702310006 [MCGRATH] UNITED STATES OF AMERICA
data added: 68 overlap: 68 years
add stn 7 range: 1923-1990 67 [wgt: 0.434 282.9 km] 425702640020 [MCKINLEY PARK] UNITED STATES OF AMERICA
data added: 67 overlap: 67 years
add stn 8 range: 1943-2004 62 [wgt: 0.466 266.9 km] 425702710000 [GULKANA/INTL.] UNITED STATES OF AMERICA
data added: 62 overlap: 62 years
add stn 9 range: 1943-2004 61 [wgt: 0.067 466.4 km] 425702910010 [NORTHWAY FAA AP] UNITED STATES OF AMERICA
data added: 61 overlap: 61 years
add stn 10 range: 1921-1990 47 [wgt: 0.380 310.3 km] 425703400010 [ILIAMNA FAA AP] UNITED STATES OF AMERICA
data added: 47 overlap: 47 years
add stn 11 range: 1942-1990 46 [wgt: 0.651 174.3 km] 425702490000 [PUNTILLA] UNITED STATES OF AMERICA
data added: 46 overlap: 46 years
add stn 12 range: 1937-1970 31 [wgt: 0.332 334.2 km] 425702960010 [CAPE SAINT ELIAS ALASKA, U] UNITED STATES OF AMERICA
data added: 31 overlap: 31 years
add stn 13 range: 1944-1971 28 [wgt: 0.499 250.6 km] 425702490010 [FAREWELL FAA AP] UNITED STATES OF AMERICA
data added: 28 overlap: 28 years
add stn 14 range: 1949-1976 27 [wgt: 0.524 238.3 km] 425702640010 [SUMMIT/WSO AIRPORT] UNITED STATES OF AMERICA
data added: 27 overlap: 27 years
add stn 15 range: 1949-1969 21 [wgt: 0.238 381.0 km] 425702600010 [NENANA/MUNICIPAL AIRPORT] UNITED STATES OF AMERICA
data added: 21 overlap: 21 years
possible range increase 42 85 86

1 4 5 6 7 8 13