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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228 Comments
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nevket240
August 11, 2010 9:11 pm
tom s
August 11, 2010 9:19 pm

I’m sure these wx stations were all very well maintained and calibrated over the decades too, so this data is real solid….mmmm hmmm. Micro climate does not equal macro climate.

jcrabb
August 11, 2010 9:58 pm

If GISS adjustments are so inacurate why does GISS global temp reflect RSS and UAH warming trends for the last 30 years?
UAH shows 0.163C per decade, RSS shows 0.239, GISS shows 0.187.

Steve McIntyre
August 11, 2010 10:19 pm

Zeke. I took a look at GISS adjustments a couple of years ago, including a histogram of positive and negative UHI adjustments:
http://climateaudit.org/2008/03/01/positive-and-negative-urban-adjustments/

August 12, 2010 12:32 am

The one thing I come away with, clearly, is:
We should use only station records that have been checked individually for local bias, re-siting, change of instrumentation, trustworthiness of station keepers, etc. (I insert the issue of trustworthiness which certainly may apply to Russian towns looking for higher winter warming allowance).
For the purpose of obtaining a trustworthy estimate of recent global warming, it surely doesn’t matter if we use far, far fewer stations… so long as the ones used are checked individually and used individually not anonymously transferred (with others) to a grid system. We would also see important local microclimate differences far better this way – without taking away from overall trend appreciation.
I still think John Daly has a lot to teach us in this respect.
In addition, many of the classic longest records that currently have a questionmark hanging over them, of recent improperly adjusted UHI, could be re-adjusted by the methods used here.

August 12, 2010 1:57 am

The rural neighbours of station 21744454000 used to create a combined record the trend of which is used to adjust the station are:
207424750000
207425870003
207424040000
207422950000
207425990000
205557730000
205555780000
205554720000
205556640000

August 12, 2010 2:23 am

Pamela Gray: August 11, 2010 at 8:47 am
There appears to be a station just outside the map on the far right (I can just see the yellow margin of the bottom flange of the push pin) that could be looked at for comparison purposes. It is also close to the mountain range and appears to be at the same elevation. Wonder what record that is and what it shows?
Based on my Google Earth-fu, it’d be Darjeeling. Good call on the mountains — but at 7,044 feet, it’s almost 3,000 feet higher than Kathmandu Airport.
Two records — 1982 – 1987 and 1987 – 2009.
http://data.giss.nasa.gov/cgi-bin/gistemp/findstation.py?datatype=gistemp&data_set=1&name=darjeeling
The station number changed, but — oddly enough for India — the population appears to have maintained absolute stability for almost thirty years at 62,000…

August 12, 2010 2:41 am

%$#!
Just cleaned the dust off my screen: “Two records — 1982 – 1987 and 1987 – 2009” should read “Two records — 1882 – 1987 and 1987 – 2009.”
Which means that Darjeeling reached population stability a *hundred* and thirty years ago. Must be that magic glacial meltwater…

peakbear
August 12, 2010 3:03 am

@cosmo_originally says: August 11, 2010 at 3:13 pm
“Well duuhhhh. . . you can’t see the basis for an adjustment, if you don’t know/research WHY that adjustment was made.”
Can you provide a single plausible physical reason for an adjustment that turns a real measured slight cooling into a massive warming for Kathmandu?? I don’t need to research the fact that I can see it is clearly incorrect. Other posters seem to have highlighted the cause of the error probably being garbage data at a neighbouring site.

jcrabb
August 12, 2010 3:08 am

Willis Eschenbach says:
August 11, 2010 at 10:24 pm
First, the difference between RSS and UAH (using your numbers) is 0.076°C per decade. The difference between RSS and GISS is 0.052°C/decade. Since the differences are either nearly as large or larger than the average global warming over the last century (about 0.06°C/decade),
Surely these differences would be more significant if some showed cooling, other Global temperature measurements such as Radiosonde, SST’s and the proxy atmospheric water vapor also indicate warming, so inconsistancies between the indexs surel are more a technical issue.

Turboblocke
August 12, 2010 3:20 am

A warming trend in Nepal greater than 5.5°C/century would seem to be a robust conclusion from the 119 temperature stations used by the DHM in Nepal
http://www.research4development.info/PDF/Outputs/Water/R7980-final-report-volume1.pdf
See Table 3.5 which shows rates of 0.06°C/year (T06) and 0.1°C/year (T10)
While DHM provided the project with data from the entire national hydrometeorological
network of Nepal, it proved more difficult to obtain data for India and
Pakistan. The DHM data set includes daily flow data for 44 river gauging stations for
the period 1964-2000, 258 daily precipitation records covering 1956-1996, 119 daily
and monthly temperature records spanning the period 1934-1996, 114 records of
average monthly humidity from 1967-1997, and 41 records with average monthly
values of sunshine hours between 1967-1997…

Section 2.3 of http://www.research4development.info/PDF/Outputs/Water/R7980-final-report-volume2.pdf sets out these rates of increase more explicitly.
So if the 119 stations with Nepalese data are to be believed then the GISS algorithm is working reasonably well.

August 12, 2010 3:37 am

Zeke described in a comment above how he used GSOD data to look at temperature trends in Nepal, with a focus on Katmandu. I’ve written a post which also uses the raw GSOD data to look at broader regions – Nepal’s 12 stations, the 2 above 2000m, and the wider Himalaya (31 stations) and the 7 above 2000m. In each case the trend is very high, from about 0.5 C/decade to over 1, similar to Shrestha’s paper.

Mark
August 12, 2010 4:21 am

Where does the daft idea of airports being “non urban” come from in the first place. Even airports such as Kansi and Chek Lap Kok are hardly “rural”. Tribhuvan more or less surrounded by the city.
Considering that an EGT of anything below 931C is considered normal for a CFM56 it would be rather unlikely not to find plenty of hot air at an airport.

Robert
August 12, 2010 4:36 am

Will you be noting Lucia’s post in the updates too?
Where the validation of the studies’ results occur and it is shown that they don’t use GHCN stations.
Funny how quickly your criticisms have been disproven…
http://rankexploits.com/musings/2010/dog-days-in-nepal/

Pascvaks
August 12, 2010 4:53 am

I think it is beyond ‘obvious’ that NASA, NOAA, and the rest of the Feudal Government has gotten too big, has nothing productive to do, and wastes money by the trillions on make-work, games, and daydreams. It’s time to send all the illegals home and go back to picking grapes and cauliflower in California ourselves. We’ve lost something in this country that’s more than just ‘important’; we’ve lost our soul, as well as our mind. Is there no integrity at all, in anyone, that works for the government?
PS: If anyone knows, remind me again, why do we pay taxes?

Nuke
August 12, 2010 5:13 am

While I can never prove it, I will always suspect GISS (and all the others) decided the results they wanted and then created a series of adjustments to get those results.

August 12, 2010 5:42 am

Eschenbach: GISS uses a different method than GHCN to average stations for step 2.
GHCN does not average stations. It does not have any methods. GHCN is a data set.
GISS, NCDC, and CRU have methods for averaging station data found in GHCN.
So do Jeff Id, Roman M, Zeke H, Joseph, Nick S, and Chad H.

August 12, 2010 6:04 am

Lucy Skywalker: In addition, many of the classic longest records that currently have a questionmark hanging over them, of recent improperly adjusted UHI, could be re-adjusted by the methods used here.
Following the link ….
WUWT Dec 09 2009: They used a simple pairing of rural and urban sites to show the differences.
Now I wonder which major temperature record uses pairings of rural sites with urban sites to make UHI adjustments? Hmmmm….? Anyone?

alex verlinden
August 12, 2010 7:37 am

if the Himalayan gletsjers have to disappear by 2035, the trend better be 9° (or even more) per century …
🙂

Alexej Buergin
August 12, 2010 9:28 am

” Zeke Hausfather says:
August 11, 2010 at 5:02 pm
I took a stab at analyzing Nepalese temperature data. The takeaway message is that it is warming rather quickly”
And when one looks it up he says:
“Willis spends much of his article focusing on GISTemp’s UHI adjustments to the site between 1961-1980. I’ll cover this quickly, but its really not germane to the main question at hand”
Since to me exactly that IS the main question at hand here, I fail to see how anybody can think of it as an answer or even replication. Just coincidence that 2 people wrote about a similar topic at the same time.

Andy Krause
August 12, 2010 10:59 am

“The estimation of the GLOBAL TREND OVER TIME is relatively INSENSITIVE to adding additional local stations or subtracting local stations. ”
I read this a lot and if it is true then we really only need one station for the globe and we can throw “gridding” away. If it is not true then we should know what the magic number of stations is and where they should be located.

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