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.





Perhaps I’m reading it incorrectly. But it appears that they are creating a stepwise drop in the temperature record from 1920 to 1970. Then they are adding a stepwise increase to the temperature records after 1970.
If so, it appears a number of things may be in play.
First, the incremental changes over time might be harder to detect, compared to isolated changes in a couple decades that may be larger.
A way to help “Hide the Decline and Incline.”
Second, it is a way to reduce the temps of the Warm Period in the 20s, 30s and 40s, perhaps to help make their record show the 1990s as the warmest decade of the century. Cooling the earlier temps helps secure their claims.
Third, by continuing the decline into the 50s to 70s, it increases the mid-century cooling. Further decline is expected anyway, so a little more might not be noticed.
Fourth, once the temps have been significantly dropped during the mid-century cooling, the dramatic warming that is added, makes their AGW Hockey-Stick-like claims that much more dramatic. That is, the difference between the lowest point in the 70s and the current temps would be more dramatic in the records.
Is that how it could be interpreted, if there was a AGW agenda involved?
Not saying there is one, but exploring the “what if.”
Since I live in Alaska (Valdez) and am about to move to Anchorage, I find these adjustments interesting. Also interesting to note is that the Matanuska site is in an area that became a bedroom community for Anchorage starting roughly in the late 1970’s and accelerating in the 1980’s and 1990’s. So any adjustment for Matanuska should be made to compensate for UHI there as well since it is much more built up than it was before the 1970’s and is definitely not as “rural” as it once was. As for the Anchorage site, it is a pretty fair distance from any UHI effect if it is out by the airport, since the coastal trail park area is out there and downtown Anchorage is several miles away. Much of the expansion of Anchorage’s population has been to the North (eagle river area), east (Muldoon area) and south (Huffman/O’Malley area). Temperatures in the Anchorage bowl can vary considerably between locations. In the winter of 2008/2009 for example, I was amazed driving around to find that locations as close as 1 mile apart could vary by as much as 10-12 degrees F.
Willis, I’m still waiting for you to answer my question. By all means, dance around all you want.
Meantime, another error in your piece: you refer to “(non) adjustment of the GISS temperature data for the Urban Heat Island effect” and immediately thereafter describe a procedure for adjusting urban stations based on the rural trend.
So once again: “falsus in unum, falsus in omnibus”?
I think I got whiplash trying to follow the graph of Matanuska’s homogenization. Can anyone recommend a personal injury lawyer who is more trustworthy than an IPCC scientist, or should I track down a GISS data specialist and have him apply his adjustments to my cervical vertebrae?
Given Matanuska’s sawtooth adjustment, should they adopt Katie Perry’s “You’re Hot and You’re Cold” as their theme song?
Hrm… That might make a cute video.
“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.”
Not really surprising that when all three datasets are fudged the same way then come up with similar results.
To clear up the mystery of how Mantanuska gets adjusted – the Gistemp rules have just been changed.
See http://data.giss.nasa.gov/gistemp/updates/ :
January 16,2010:The urban adjustment, previously based on satellite-observed nightlight radiance in the contiguous United States and population in the rest of the world (Hansen et al., 2001), is now based on nightlight radiances everywhere, as described in an upcoming publication. The effect on the global temperature trend is small, that change reduces it by about 0.005 °C per century.
(page last modified 17 February 2010 23:13:44)
Mantanuska has a GHCN brightness index of 18, (C=bright, but under the new rules an index over 10 moves a station from rural to peri-urban or urban and so it gets adjusted)
See text_to_binary.f, dated 2010-02-18, in the updated sources to see the changes. (I’m basing this comment on an earlier version of this file, having spotted an archived trial run for this changed based on the 2009_10 Gistemp run, queried this with NASA, and received confirmation that this was a run to see the effect of this change). I have implemented this change already as an option in my own Gistemp implementation, and appended further details of the adjustment for Matanuska below.
This change, in so far as it relates to some areas I am familiar with, does drag at least some “rural” stations into the 20th/21st century as UHI adjustment candidates, but does also produce some amusing consequences – one of the adjusters of my “home” station, Dublin Airport, used to be Fort William (Scotland), now upgraded to peri-urban. The GHCN temperature record for Fort William however runs from 1884 to only 1903, a date possibly slightly earlier than the night brightness on which its classification is now based (as it happens, although an adjustment is calculated for Fort William, the net effect of this is no change).
The Gistemp (enhanced) log for adjustment, based on the December 2009 data, as I have not yet downloaded the January data, archived last week):
urb stnID:425702740010 # rur: 15 ranges: 1918 1990 500.
longest rur range: 1910-2004 91 [wgt: 0.523 238.4 km] 425702960000 [CORDOVA/MILE] UNITED STATES OF AMERICA
add stn 2 range: 1903-1990 87 [wgt: 0.152 424.0 km] 425701780000 [TANANA] UNITED STATES OF AMERICA
data added: 87 overlap: 77 years
add stn 3 range: 1919-2004 85 [wgt: 0.823 88.4 km] 425702510000 [TALKEETNA] UNITED STATES OF AMERICA
data added: 85 overlap: 85 years
add stn 4 range: 1933-2004 70 [wgt: 0.494 252.9 km] 425703410000 [HOMER/MUNICIP] UNITED STATES OF AMERICA
data added: 70 overlap: 70 years
add stn 5 range: 1942-2009 68 [wgt: 0.278 361.0 km] 425702310006 [MCGRATH] UNITED STATES OF AMERICA
data added: 68 overlap: 63 years
add stn 6 range: 1923-1990 67 [wgt: 0.532 234.2 km] 425702640020 [MCKINLEY PARK] UNITED STATES OF AMERICA
data added: 67 overlap: 67 years
add stn 7 range: 1943-2004 62 [wgt: 0.570 215.0 km] 425702710000 [GULKANA/INTL.] UNITED STATES OF AMERICA
data added: 62 overlap: 62 years
add stn 8 range: 1943-2004 61 [wgt: 0.174 412.9 km] 425702910010 [NORTHWAY FAA AP] UNITED STATES OF AMERICA
data added: 61 overlap: 61 years
add stn 9 range: 1921-1990 47 [wgt: 0.271 364.6 km] 425703400010 [ILIAMNA FAA AP] UNITED STATES OF AMERICA
data added: 47 overlap: 47 years
add stn 10 range: 1942-1990 46 [wgt: 0.626 186.9 km] 425702490000 [PUNTILLA] UNITED STATES OF AMERICA
data added: 46 overlap: 46 years
add stn 11 range: 1937-1970 31 [wgt: 0.350 324.8 km] 425702960010 [CAPE SAINT ELIAS ALASKA, U] UNITED STATES OF AMERICA
data added: 31 overlap: 31 years
add stn 12 range: 1944-1971 28 [wgt: 0.480 259.9 km] 425702490010 [FAREWELL FAA AP] UNITED STATES OF AMERICA
data added: 28 overlap: 28 years
add stn 13 range: 1949-1976 27 [wgt: 0.621 189.4 km] 425702640010 [SUMMIT/WSO AIRPORT] UNITED STATES OF AMERICA
data added: 27 overlap: 27 years
add stn 14 range: 1944-1966 23 [wgt: 0.054 472.9 km] 403719660010 [SNAG A,YT] CANADA
data added: 23 overlap: 23 years
add stn 15 range: 1949-1969 21 [wgt: 0.332 333.9 km] 425702600010 [NENANA/MUNICIPAL AIRPORT] UNITED STATES OF AMERICA
data added: 21 overlap: 21 years
possible range increase 32 69 72
“Also interesting to note is that the Matanuska site is in an area that became a bedroom community for Anchorage starting roughly in the late 1970’s and accelerating in the 1980’s and 1990’s. So any adjustment for Matanuska should be made to compensate for UHI there as well since it is much more built up than it was before the 1970’s and is definitely not as “rural” as it once was. As for the Anchorage site, it is a pretty fair distance from any UHI effect if it is out by the airport, since the coastal trail park area is out there and downtown Anchorage is several miles away. Much of the expansion of Anchorage’s population has been to the North (eagle river area), east (Muldoon area) and south (Huffman/O’Malley area). Temperatures in the Anchorage bowl can vary considerably between locations. In the winter of 2008/2009 for example, I was amazed driving around to find that locations as close as 1 mile apart could vary by as much as 10-12 degrees F.”
It’s almost as if getting accurate temp readings is more complicated than: adjustments to rural site data = j’accuse.
Mooloo (16:31:24) :
Robert:
Now the tricky question, Robert. How do you explain that this sort of oddity has appeared in GISS for Alaska, and also NIWA’s analysis for NZ, and in Australia too? Mere fluke?
Mooloo
As I suspect by your name you live in Waikato and you will probably be aware that Dr. .Jim Salinger’s doctoral thesis was the used as the basis for the NZ NIWA adjustments to the data which distort that record. The raw data shows no warming for NZ. Guess where Jim Salinger did his doctorate work? Yup you can guess. He gets several mentions in the infamous emails from UEA. So IMO that explains one leg of the ‘oddity’ Mooloo.
An Aussie will be able to provide the other leg maybe.
Doug
Don’t be too harsh on poor Robert, he builds beautiful little strawmen and then in obvious delight he burns them down with an amazing display of pyrotechnics. We should all stand in awe of his talents.
Robert (17:06:35)
I must have missed the question. What was it?
Get real. What I meant was that they claim to be adjusting for UHI but they are not actually adjusting for UHI. The adjustment in Anchorage is a good example. Claims to be for UHI, has nothing to do with UHI. Stop grasping at straws.
“Why should citizen scientists like myself have to dig out these oddities?”
My best guess? Because to a professional scientist who knows what they’re looking at, they’re not oddities.
If your accountant was calculating your taxes using the bewildering maze of poorly-documented corrections and mis-corrections that are becoming evident in this whole farce, and then told you they had lost all your receipts, would you pay what he said you owed?!
I would not pay a nickel in taxes based on such work! That is exactly my attitude toward Globaloney.
Actually its a (fairly) trivial job. You write a second program to analyse the adjustments and highlight those that are unexpected, such as adjusting rural station upwards.
When I see something like those adjustments, my summary for policymakers is: “Eeek!”
Question – can we compare global (or N Hemi) averages of raw data vs.
“adjusted data” to see the differences imposed by the cumulative adjustments? just curious.
thx
slg
ps – along the same lines, what ever happened to the comparisons between the ‘good’ US stations vs. the combined ‘good plus bad’ US stations as determined by SurfaceStations project? Did this show a significant difference so that we can get a handle on the overall impact of the siting issues (?)
Thanks.
Peter O’Neill,
Adjusting urbanization based on street lights is a potentially large oopsie. A single street light over snow would be as bright as six or more streetlights over grass or pavement.
Willis,
I have a theory. In the video a NOAA scientist explains that
the new electronic weather stations have a cold bias and
they add a delta to the data. So, if the per electronic stations
show higher temperatures, but you slide the delta increases
back to 1973, which includes the hotter pre electronic stations,
and then homogenize the whole series, would you not see
very rapid rise in temperatures?
Watch from 3:00 to 3:24
One thing is clear here, Robert is a troll. I will skim over his comments from now on. Little more than hyperbole.
As to Willis’s article, I am beginning to wonder if there are any trustworthy stations whatsoever, as even cursory review seems to reveal serial maladjustments. I would posit that it is either willful misconduct or endemic incompetence. Likely both. Nice work Willis.
I’d still love to see a Transactional temps record. By all means, munge the data, introduce adjustments, reverse them out fully or partly as new methods are invented, and substitute new adjustments.
But, leave the original reading as is.
And, every single measurement/adjustment/whatever, is a separate transaction for a station, on a day/time. And is categorised up the wazoo: type of adjustment code, who/what process put it there, etc.
Accounting has been transactional like this for, oh, a quarter of a century.
And SQL databases to handle large transaction volumes are common, cheap and reliable.
This reliance on a single data point per station per date/time is just so….amtuer hour.
Accounting for temperatures is what we need to bring the munging out into the daylight.
“What I meant was . . .”
There’s what you meant, and then there’s what you said. Are you starting to reconsider the wisdom of “falsus in unum, falsus in omnibus”? I would, if I were you. Never in the history of the English language has anyone started a persuasive argument with the words “What I meant was . . .”
I’d say its you who are grasping at straws.
The question was: what are the arguments in favor of the temperature record as reasonably accurate?
henry & Willis
US Census found Anchorage to have 153 per sq mile in 2000 vs 133 in 1900.
Climategate: The World’s Biggest Story, Everywhere but Here…
http://pajamasmedia.com/blog/climategate-the-worlds-biggest-story-everywhere-but-here/
When will the “old” MSM join the party ?
Picky, picky, picky.
Berniel is right. Billions and billions of scientists from all over the galaxy assure us that they have huge quantites of evidence that in a few weeks we’ll be scorched to death by AGW.
And you want to check the data!
Willis & henry
Re Matanuska population, does this help?
The 2008 population estimate for Matanuska-Susitna Borough, Alaska is 85,458.
Note also: Matanuska-Susitna Borough, Alaska
Population and Housing Narrative Profile: 2005-2007
Dave (16:56:57) :
Why is there even a practice to adjust temperature data at all? I’m a PhD scientist and work with raw data all the time. If urban heat islands and those sorts of things are having an impact on the data, then those factors should be used to describe the data during model building. You always run into danger when you “adjust” data here and there. Confusion arises over time: are you working with the raw data or adjusted data, and has it been adjusted properly. I for one always want the raw, unadulterated data to work with.
I’m with you Dave.
I could never understand why the raw data needed to be ‘messed about with’ but I’m not a PhD scientist. It seemed to me that distortions such as ‘Heat Islands’ could have been explained without altering data. I do understand however that the raw NZ data shows NO WARMING since 1853 but the adjusted figures do. So it is only because ‘scientists’ trained at UEA have rewritten the date that the climate has ‘warmed’. Go figure that one.
Doug