More Gunsmoke, This Time In Nepal

Note to Readers: This is an important post, as Willis demonstrates that NASA GISS has taken a cooling trend and converted it into a warming trend for the one GHCN station in Nepal which covers the Himalayas. I offer NASA GISS, either via Jim Hansen or Gavin Schmidt, rebuttal opportunity to this issue on WUWT anytime. -Anthony

Guest Post by Willis Eschenbach

I read the excellent and interesting guest post by Marc Hendrickx about the IPCC and the Himalayas. My first big surprise was the size of the claimed warming. He cites IPCC Table 10.2 which says:

Nepal:  0.09°C per year in Himalayas and 0.04°C in Terai region, more in winter

Well, my bad number detector started ringing like crazy. A warming of nine degrees C (16°F) per century in the mountains, four degrees C per century in the lowlands? … I don’t think so. Those numbers are far too big. I know of no place on earth that is warming in general at 9°C per century.

Marc also quotes the IPCC source paper as saying:

The Kathmandu record, the longest in Nepal (1921–94), shows features similar to temperature trends in the Northern Hemisphere, suggesting links between regional trends and global scale phenomena.

Being cursed with a nagging, infernal curiosity, I thought I’d take a look at the Kathmandu temperature record. Foolish me …

I started by looking at where Nepal is located. It starts at the northern edge of the Indian plains, at the foothills of the Himalayas, and goes up to the crest:

Figure 1. Nepal (yellow outline). Yellow pins show all GHCN (Global Historical Climate Network) surface temperature stations.

So, that was my second surprise – a whole dang country, and only one single solitary GHCN temperature station. Hmmmm … as Marc shows, the paper cited by the IPCC gives the records of a dozen stations in Nepal. So why does GHCN only use Kathmandu in Nepal? But I digress.

Resolving not to be distracted by that, I went to the GISS dataset. I selected “Raw GHCN data + USHCN corrections” in the dropdown menu. (Kathmandu is outside the US, so in this case there are no USHCN corrections.) Typed in “Kathmandu”, and started the search. Figure 2 shows the result:

Figure 2. Kathmandu Air(port) Metadata.

This shows there are three records for Kathmandu Air (Airport), which looks promising. Also, it looks like there is an overlap between the records, which seems good. (There is no sign, however, of a record that is “the longest in Nepal (1921–94)”. The earliest date is 1951, and the latest is 2010. But again I digress.)

Clicking on the top Kathmandu Air link (on the GISS website, not on the graphic above) brings up the following GISS-generated graph:

Figure 3. Kathmandu Air. Three records are shown, as dotted, dashed, and blue.

Here’s an oddity. We have three records, each for different periods. And there is not a single year of overlap in the bunch. Not one.

Now, people think that I mine or search for these odd stations. Not so, I am simply curious about what I read, and this is not an atypical temperature record. Most are somewhat strange. Gaps and breaks in a given record often render large parts of the record unusable. GISS uses a cutoff of 20 years of consecutive data. As a result, the final GISS record for Kathmandu, rather than going from 1951-2009, goes from 1961 to 1980. Fair enough, these are all debatable choices, including the minimum record length cutoff size. In any case, the real problem with Kathmandu is not the record length. It is the lack of overlap which prevents the creation of a continuous record. This means that the apparent overall trend may not be real. It may simply be an artefact of e.g. different thermometers, or different locations. In this case, GISS has side-stepped the question by selecting only one record (shown in blue) for the final record.

How can we get to the graph of this final GISS record including all of their homogeneity adjustments? Well, we could go back to the same GISS website where we started and select a different dataset. However, here’s a trick to go directly from the raw data you are looking at to the final GISS homogenized dataset. Near the end of the URL of the raw GISS dataset under discussion you find the following:

… &data_set=0& …

GISS has three datasets. The raw data is dataset 0. The data “after combining records at the same location” is dataset 1. The final data “after cleaning/homogeneity adjustment” is dataset 2.

So to get the final adjusted result, all you have to do is to change the “0” in the URL to a “2”, viz:

… &data_set=2& …

Figure 3 shows the outcome of making that change:

Figure 3. Final GISS record for Kathmandu. The scale has been changed in both the X and Y axes. Note that they have discarded all segments of the record which are shorter than twenty years in length.

And that, dear friends, was my third big surprise. Take a close look at those two records, the adjusted and unadjusted …

As you no doubt observe, one is trending somewhat downwards, while the second is trending distinctly upwards. Hmmm … so, of course, I downloaded the GISS data (from the bottom of the same web page). Here is what they have done:

Figure 4. GISS Kathmandu Airport Annual Temperatures, Adjusted and Unadjusted, 1961–80. Yellow line shows the amount of the GISS homogeneity adjustment in each year. Photo is of Kathmandu looking towards the mountains.

GISS has made a straight-line adjustment of 1.1°C in twenty years, or 5.5°C per century. They have changed a cooling trend to a strong warming trend … I’m sorry, but I see absolutely no scientific basis for that massive adjustment. I don’t care if it was done by a human using their best judgement, done by a computer algorithm utilizing comparison temperatures in India and China, or done by monkeys with typewriters. I don’t buy that adjustment, it is without scientific foundation or credible physical explanation.

At best that is shoddy quality control of an off-the-rails computer algorithm. At worst, the aforesaid monkeys were having a really bad hair day. Either way I say adjusting the Kathmandu temperature record in that manner has no scientific underpinnings at all. We have one stinking record for the whole country of Nepal, which shows cooling. GISS homogenizes the data and claims it wasn’t really cooling at all, it really was warming, and warming at four degrees per century at that … hmmm, four degrees per century, where have I heard that before …

What conceivable scientific argument supports that, supports adding that linear 5.5°C/century trend to the data? What physical phenomena is it supposed to be correcting for? What error does it claim to be fixing?

Finally, does this “make a difference”? In the global average temperature, no – it is only one GHCN/GISS datapoint among many. But for the average temperature of Nepal, absolutely – it is the only GHCN/GISS datapoint. So it is quite important to the folks in Nepal … and infinitely misleading to them.

And when it is cited as one of the fastest warming places on the planet, it makes a difference there as well. And when the IPCC puts it in their Assessment Report, it makes a difference there.

Once again we see huge adjustments made to individual temperature records without reason or justification. This means simply that until GISS are able to demonstrate a sound scientific foundation for their capricious and arbitrary adjustments, we cannot trust the final GISS dataset. Their algorithm obviously has significant problems that lead to the type of wildly unreasonable results seen above and in other temperature datasets, and they are not catching them. Pending a complete examination, we cannot know what other errors the GISS dataset might contain.

[UPDATE] John Goetz pointed out that the likely source of the spurious trend is temperatures in Tingri (see Fig. 1, way back in the high mountains at the upper right at almost 6,000 metres elevation in the tundra) and GISS step 2. GISS says:

… in step 2, the urban and peri-urban (i.e., other than rural) stations are adjusted so that their long-term trend matches that of the mean of neighboring rural stations.

It seems John is right, Tingri is the likely problem. Or to be more accurate, their method is the problem. GISS uses a different method than GHCN to average stations for step 2.

The method of “first differences” is used by GHCN. GISS instead uses the “reference station” method described in the same citation. In my opinion, the reference station method is inferior to the first difference method.

The reference station here is likely Dumka, it is the longest of the nearby stations. Unlike Tingri, Dumka is at an elevation of 250 metres in the plains of West Bengal … hmmm. This should be interesting.

In the reference station method, Tingri gets adjusted up or down until the average temperatures match during the time of the overlap. Then Tingri and Dumka are averaged together. However, let’s take it a step at a time. First, I like to look at the actual underlying data, shown in Fig. 5.

Figure 5. Temperatures in Dumka (India) and Tingri (China). Left photo is Dumka on the lowland plains of West Bengal. Right photo is Tingri in the Himalayan mountains.

So the brilliant plan is, we’re going to use the average of the temperature anomalies in Dumka and Tingri to adjust the temperature in Katmandu, at 1,300 metres in the foothills?

Makes sense, I suppose. The average of mountains and plains is foothills, isn’t it? … but I digress.

The problem arises from the big jump in the Tingri data around 1970. Using the reference station method, that big jump gets wrapped into the average used to adjust the Kathmandu data. And over the period of Tingri/Kathmandu overlap (1963-1980), because of the big jump the “trend” of the Tingri data is a jaw-dropping 15°C per century. Once that is in the mix, all bets are off.

Obviously, there is some kind of problem with the Tingri data. The first difference method takes care of that kind of problem, by ignoring the gaps and dealing only with the actual data. You could do the same with the reference station method, but only if you treat the sections of the Tingri data as separate stations. However, it appears that the GISS implementation of the algorithm has not done that …

Nor is this helped by the distance-weighting algorithm. That weights the temperatures based on how far away the station is. The problem is that Tingri is much nearer to Kathmandu (197 km) than Dumka (425 km). So any weighting algorithm will only make the situation worse.

Finally, does anyone else think that averaging high mountain tundra temperature anomalies with lowland plains anomalies, in order to adjust foothills anomalies, is a method that might work but that it definitely would take careful watching and strict quality control?

[UPDATE 2] Lars Kamel pointed below to the CRU data. If we take all of the available CRU (originally GHCN) data, we get the following trend for Kathmandu.

Figure 6. CRU monthly and annual temperature data for Kathmandu. Red circles show those years with 12 months of data.

You can see the lack of a trend in the 1950-2000 data. Went down slightly 1950-1975, went up slightly 1975-2000. Gosh.

[UPDATE 3] Steve McIntyre reminded me below of his fascinating 2008 analysis of the numbers and locations of GISS adjustments that go up, down, and sideways. His post is here, and is well worth reading.

[UPDATE 4] Zeke Hausfather has an interesting post on Kathmandu here, with lots of good information.


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PJB
August 11, 2010 7:05 am

Sorry, in advance, for any obtuseness….
Is there data for night time temps at this airport? Can they be filtered out and used to see how their rise (er…fall?) compares with that of the day values?
Seems to me that in such an environment, UHI effects would be more apparent in the night times. (To say nothing of brightness increasing over the years which should affect the “urban” character of the station, right?)

Steven mosher
August 11, 2010 7:17 am

Willis
“In this case, GISS has side-stepped the question by selecting only one record (shown in blue) for the final record.”
Its not a side step. with RSM if there is no overlap you cannot splice together records
so they use the longest period.
IPCC doesnt use GISStemp. so you prolly need to look at a different source.
in general higher elevation stations have warmed FASTER than lower elevation,
unlike what many think. so, for example, when ghcn drops higher elevation stations it actually cools the record.
Still the rate they show here is wackly large.

Terry
August 11, 2010 7:26 am

Willis,
Your adjustment line (yellow) might better reflect the changes if it started as an approximately -.9 adjustment that over the duration of the record approached a 0 adjustment.
Terry

RogerT
August 11, 2010 7:30 am

Today’s Dilbert is rather appropriate :/

Ken Hall
August 11, 2010 7:31 am

“I know of no place on earth that is warming in general at 9°C per century.”

Well this would be why the Himalayas are warming faster than everywhere else on the planet……
.
.
.
.
Just like everywhere else on the planet.
I guess these locations are having a race and this is how they keep ahead to be the fastest warming location on earth. Each location is editing it’s own figures upwards to stay in the lead.
At this rate, the Himalayas will be warming at 50 degrees C per century in a few years.

Greg F
August 11, 2010 7:34 am

Willis,
Any chance you can run this through the full gistemp homogenization process, drill down into the details of the homogenization process and figure out exactly which steps are introducing the changes and why.
For those that don’t know, the GISS program gistemp was released under FOI a while ago, so in theory anyone can download it and recreate the full GISS homogenization process. But the software is apparently pretty bastardized and is extremely difficult to get running due to multiple languages etc. being used.
Fortunately, the code has been re-implemented in 100% python and is easy to get running (http://clearclimatecode.org/gistemp/). Further the python code is being enhanced to allow easy drill down that allow one to study a single station like Kathmandu and figure out which of the several homogenization steps is introducing the drastic warming effect.

Spector
August 11, 2010 7:41 am

I think investigative work like this is a good antidote for scientific data being modulated or fictionalized for political or ideological purposes. The more such data is scrutinized; the less this type of activity should even be the contemplated. In this case, Willis has uncovered what appears to be a clear example of data cooking.

Jimbo
August 11, 2010 7:46 am

If these adjustments were performed by accountants at a big corporation to file tax returns there would be criminal proceedings and people would most probably go to jail (unless some plea bargained). Imagine if I adjusted my earnings downwards to file a tax return. If I were found out I would end up in a cell and do time.
There is still time though and as evidence mounts certain organisations or persons will have enough information to probably file civil claims for damages and future governments could probably consider some kind of strong action.

Craig Moore
August 11, 2010 7:47 am

Anthony, it looks like Willis has gotten you to “cowboy up” over this cheating at cards. Perhaps with all this “Gunsmoke” we can call you Marshall Dillon.

Jimbo
August 11, 2010 7:50 am

By the way it must have been really cooling for temps at the airport to be going down given UHI but alas they adjusted up for UHI I guess. :o)

John Blake
August 11, 2010 7:53 am

AGW, RIP: By this time, anyone granting Hansen’s asinine GISS/NASA any slightest credibility has only himself to blame. As the Green Gang’s utterly spurious Kathmandu adjustments show, smoking out such meretricious fraud is becoming relatively easy. Agenda-driven propaganda of this nature has had its day… as time goes on, and Nature takes her course, Al Gore & Co.’s junk-science bloviations will descend to levels previously reserved to Trofim Lysenko, J.B. Rhine, and Immanuel Velikhovsky. Good riddance.

Sean Peake
August 11, 2010 7:55 am

For what it’s worth, in my feeble attempt to imitate Anthony, I’ve tried to locate the weather station at Kathmandu. METAR has been looking for it but a possible location may be seen on the second entry on the left hand column of this Google search page:
http://maps.google.ca/maps?hl=en&client=firefox-a&rls=org.mozilla:en-US:official&q=kathmandu%20airport%20weather%20station&um=1&biw=1776&bih=991&ie=UTF-8&sa=N&tab=vl
This could place it on the top of the terminal of the airport.

August 11, 2010 7:57 am

You folks don’t seem to realize that Warmism is part of Progressivism. As such, adherents believe that there is no such thing as a “Truth” that can be discovered through traditional, rational, inductive/deductive processes.
The concept of “objective truth” is simply old-fashioned — and is now discredited. “Truth” is whatever advances the agenda toward the end goal, which is a better world as defined by a propagated societal consensus.
Therefore, arbitrary adjustments to a temperature record are no more fraudulent than the original temperature record. In fact, they are less so, since the original temperature record purports to be “Objective Truth”, which is actually anathema in a Progressive world. Adjustments that further the goal of a better world (no matter what their basis), are therefore more true.
As an example, in February the Atlanta Progressive News fired an editor because he believed in truth instead of progressivism. Here is the reason they gave:

At a very fundamental, core level, Springston did not share our vision for a news publication with a progressive perspective. He held on to the notion that there was an objective reality that could be reported objectively, despite the fact that that was not our editorial policy at Atlanta Progressive News.

As Professor Nikolaus Lobkowicz states:

Whatever serves it [Progressivism/Marxism] is true and good; whatever hinders it is false and evil. There exists no objective morality and there cannot exist any disinterested pursuit of truth.

All the global warming scientists were almost certainly taught the relativism of truth during their undergraduate days — as I was. It is part of the basic college curriculum now.
Two plus two can indeed equal four. Or three. Or the square root of negative one. The result of the equation depends on the societal consensus, and therefore it changes depending on need.
References:
http://bigdustup.blogspot.com/2010/02/clarity-of-delusion.html
http://clatl.com/freshloaf/archives/2010/02/15/atlanta-progressive-news-fires-reporter-for-trying-to-be-objective/
http://www.leaderu.com/truth/1truth13.html

August 11, 2010 7:59 am

Well, if it’s OK with Climate Scientists to use Tiljander upside down, why not invert the Airport Heat Island (AHI) effect as well?? 😉

tom s
August 11, 2010 8:01 am

A rebuttle by the obstructionist? I can’t wait to see it Anthony but I am not holding my breath. GREAT POST!

Jason
August 11, 2010 8:04 am

So contact Gavin, formally and ask him.

Harold Vance
August 11, 2010 8:04 am

Willis:
One possible source for the temperature change (0.09 per year in Himalayas) may be Rees & Collins 2004. Here is a reference:
“Another study of average annual temperature for 15 stations above 1800 m in Nepal has reported an annual increase of over 0.1 degree C per year for the period 1976-1996. (Rees & Collins, 2004)”

August 11, 2010 8:06 am

Wow. That is a heck of a lot more in the way of buildings than when I was there 25 years ago. I would not be surprised if the local temperature was rising. But given a cooling trend in the raw data (when you hunt them out instead of relying in the IPCC to ‘interpret’ them for you), it smacks of a possibly strong cooling trend overall. Still, one reading in the entire Himalayas is a joke.

adrian smits
August 11, 2010 8:08 am

This article leads to two questions for giss or nasa. Why is the adjustment so large and more importantly why do these adjustments almost always show warming? I only studied meteorology for a couple semesters in university but these so called adjustments smell to high heaven.We are waiting giss.We need to be informed nasa.I see no reason to continue funding public science if its not accountable or honest………

Stephan
August 11, 2010 8:09 am

When in Gods name are the lawyers going to be called in?

Ken Hall
August 11, 2010 8:09 am

What you complaining about Willis? The have adjusted the temperature downwards, not up! It has gone from 18.3 to 17.3 in 1961, so how can anyone complain about that? /sarc

Your sarcasm is well warranted.
GISS often reduce temperatures in the records when they homologate temperature records. It’s just coincidental that the only part of any of the records that they ever seem to reduce is the beginning of the record.
Although, to be fair to GISS, It has to be acknowledged, in the search for balance and fairness, that they always increase the end of the records in the same way to achieve a fairly balanced homologation. Reduction at the start of a record is matched with an increase at the end to balance out the possibility for error.
/sarc
It is like when I was late for work once, I told my boss I was very sorry and that I would leave early to make up for it!

August 11, 2010 8:11 am

The GISS methodology appears to have a fundamental flaw.
Any interpolation – homogenization algorithm should, at a minimum, reproduce the observed data at a measurement site

Adam Gallon
August 11, 2010 8:12 am

I havea prediction, it’s highly verifiable in the short term.
No one from NASA/GISS, especially Drs Hanson & Schmidt will grace this with a response. All attempts to drop this into a thread at RC will be ruthlessly suppressed!

Henry chance
August 11, 2010 8:15 am

Dr. James Hansimian should be sent over as a consultant to help them unravel this computing malfunction.

Harold Vance
August 11, 2010 8:15 am
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