by Willis Eschenbach
People keep saying “Yes, the Climategate scientists behaved badly. But that doesn’t mean the data is bad. That doesn’t mean the earth is not warming.”

Darwin Airport – by Dominic Perrin via Panoramio
Let me start with the second objection first. The earth has generally been warming since the Little Ice Age, around 1650. There is general agreement that the earth has warmed since then. See e.g. Akasofu . Climategate doesn’t affect that.
The second question, the integrity of the data, is different. People say “Yes, they destroyed emails, and hid from Freedom of information Acts, and messed with proxies, and fought to keep other scientists’ papers out of the journals … but that doesn’t affect the data, the data is still good.” Which sounds reasonable.
There are three main global temperature datasets. One is at the CRU, Climate Research Unit of the University of East Anglia, where we’ve been trying to get access to the raw numbers. One is at NOAA/GHCN, the Global Historical Climate Network. The final one is at NASA/GISS, the Goddard Institute for Space Studies. The three groups take raw data, and they “homogenize” it to remove things like when a station was moved to a warmer location and there’s a 2C jump in the temperature. The three global temperature records are usually called CRU, GISS, and GHCN. Both GISS and CRU, however, get almost all of their raw data from GHCN. All three produce very similar global historical temperature records from the raw data.
So I’m still on my multi-year quest to understand the climate data. You never know where this data chase will lead. This time, it has ended me up in Australia. I got to thinking about Professor Wibjorn Karlen’s statement about Australia that I quoted here:
Another example is Australia. NASA [GHCN] only presents 3 stations covering the period 1897-1992. What kind of data is the IPCC Australia diagram based on?
If any trend it is a slight cooling. However, if a shorter period (1949-2005) is used, the temperature has increased substantially. The Australians have many stations and have published more detailed maps of changes and trends.
The folks at CRU told Wibjorn that he was just plain wrong. Here’s what they said is right, the record that Wibjorn was talking about, Fig. 9.12 in the UN IPCC Fourth Assessment Report, showing Northern Australia:

Figure 1. Temperature trends and model results in Northern Australia. Black line is observations (From Fig. 9.12 from the UN IPCC Fourth Annual Report). Covers the area from 110E to 155E, and from 30S to 11S. Based on the CRU land temperature.) Data from the CRU.
One of the things that was revealed in the released CRU emails is that the CRU basically uses the Global Historical Climate Network (GHCN) dataset for its raw data. So I looked at the GHCN dataset. There, I find three stations in North Australia as Wibjorn had said, and nine stations in all of Australia, that cover the period 1900-2000. Here is the average of the GHCN unadjusted data for those three Northern stations, from AIS:

Figure 2. GHCN Raw Data, All 100-yr stations in IPCC area above.
So once again Wibjorn is correct, this looks nothing like the corresponding IPCC temperature record for Australia. But it’s too soon to tell. Professor Karlen is only showing 3 stations. Three is not a lot of stations, but that’s all of the century-long Australian records we have in the IPCC specified region. OK, we’ve seen the longest stations record, so lets throw more records into the mix. Here’s every station in the UN IPCC specified region which contains temperature records that extend up to the year 2000 no matter when they started, which is 30 stations.

Figure 3. GHCN Raw Data, All stations extending to 2000 in IPCC area above.
Still no similarity with IPCC. So I looked at every station in the area. That’s 222 stations. Here’s that result:

Figure 4. GHCN Raw Data, All stations extending to 2000 in IPCC area above.
So you can see why Wibjorn was concerned. This looks nothing like the UN IPCC data, which came from the CRU, which was based on the GHCN data. Why the difference?
The answer is, these graphs all use the raw GHCN data. But the IPCC uses the “adjusted” data. GHCN adjusts the data to remove what it calls “inhomogeneities”. So on a whim I thought I’d take a look at the first station on the list, Darwin Airport, so I could see what an inhomogeneity might look like when it was at home. And I could find out how large the GHCN adjustment for Darwin inhomogeneities was.
First, what is an “inhomogeneity”? I can do no better than quote from GHCN:
Most long-term climate stations have undergone changes that make a time series of their observations inhomogeneous. There are many causes for the discontinuities, including changes in instruments, shelters, the environment around the shelter, the location of the station, the time of observation, and the method used to calculate mean temperature. Often several of these occur at the same time, as is often the case with the introduction of automatic weather stations that is occurring in many parts of the world. Before one can reliably use such climate data for analysis of longterm climate change, adjustments are needed to compensate for the nonclimatic discontinuities.
That makes sense. The raw data will have jumps from station moves and the like. We don’t want to think it’s warming just because the thermometer was moved to a warmer location. Unpleasant as it may seem, we have to adjust for those as best we can.
I always like to start with the rawest data, so I can understand the adjustments. At Darwin there are five separate individual station records that are combined to make up the final Darwin record. These are the individual records of stations in the area, which are numbered from zero to four:

Figure 5. Five individual temperature records for Darwin, plus station count (green line). This raw data is downloaded from GISS, but GISS use the GHCN raw data as the starting point for their analysis.
Darwin does have a few advantages over other stations with multiple records. There is a continuous record from 1941 to the present (Station 1). There is also a continuous record covering a century. finally, the stations are in very close agreement over the entire period of the record. In fact, where there are multiple stations in operation they are so close that you can’t see the records behind Station Zero.
This is an ideal station, because it also illustrates many of the problems with the raw temperature station data.
- There is no one record that covers the whole period.
- The shortest record is only nine years long.
- There are gaps of a month and more in almost all of the records.
- It looks like there are problems with the data at around 1941.
- Most of the datasets are missing months.
- For most of the period there are few nearby stations.
- There is no one year covered by all five records.
- The temperature dropped over a six year period, from a high in 1936 to a low in 1941. The station did move in 1941 … but what happened in the previous six years?
In resolving station records, it’s a judgment call. First off, you have to decide if what you are looking at needs any changes at all. In Darwin’s case, it’s a close call. The record seems to be screwed up around 1941, but not in the year of the move.
Also, although the 1941 temperature shift seems large, I see a similar sized shift from 1992 to 1999. Looking at the whole picture, I think I’d vote to leave it as it is, that’s always the best option when you don’t have other evidence. First do no harm.
However, there’s a case to be made for adjusting it, particularly given the 1941 station move. If I decided to adjust Darwin, I’d do it like this:

Figure 6 A possible adjustment for Darwin. Black line shows the total amount of the adjustment, on the right scale, and shows the timing of the change.
I shifted the pre-1941 data down by about 0.6C. We end up with little change end to end in my “adjusted” data (shown in red), it’s neither warming nor cooling. However, it reduces the apparent cooling in the raw data. Post-1941, where the other records overlap, they are very close, so I wouldn’t adjust them in any way. Why should we adjust those, they all show exactly the same thing.
OK, so that’s how I’d homogenize the data if I had to, but I vote against adjusting it at all. It only changes one station record (Darwin Zero), and the rest are left untouched.
Then I went to look at what happens when the GHCN removes the “in-homogeneities” to “adjust” the data. Of the five raw datasets, the GHCN discards two, likely because they are short and duplicate existing longer records. The three remaining records are first “homogenized” and then averaged to give the “GHCN Adjusted” temperature record for Darwin.
To my great surprise, here’s what I found. To explain the full effect, I am showing this with both datasets starting at the same point (rather than ending at the same point as they are often shown).

Figure 7. GHCN homogeneity adjustments to Darwin Airport combined record
YIKES! Before getting homogenized, temperatures in Darwin were falling at 0.7 Celcius per century … but after the homogenization, they were warming at 1.2 Celcius per century. And the adjustment that they made was over two degrees per century … when those guys “adjust”, they don’t mess around. And the adjustment is an odd shape, with the adjustment first going stepwise, then climbing roughly to stop at 2.4C.
Of course, that led me to look at exactly how the GHCN “adjusts” the temperature data. Here’s what they say
GHCN temperature data include two different datasets: the original data and a homogeneity- adjusted dataset. All homogeneity testing was done on annual time series. The homogeneity- adjustment technique used two steps.
The first step was creating a homogeneous reference series for each station (Peterson and Easterling 1994). Building a completely homogeneous reference series using data with unknown inhomogeneities may be impossible, but we used several techniques to minimize any potential inhomogeneities in the reference series.
…
In creating each year’s first difference reference series, we used the five most highly correlated neighboring stations that had enough data to accurately model the candidate station.
…
The final technique we used to minimize inhomogeneities in the reference series used the mean of the central three values (of the five neighboring station values) to create the first difference reference series.
Fair enough, that all sounds good. They pick five neighboring stations, and average them. Then they compare the average to the station in question. If it looks wonky compared to the average of the reference five, they check any historical records for changes, and if necessary, they homogenize the poor data mercilessly. I have some problems with what they do to homogenize it, but that’s how they identify the inhomogeneous stations.
OK … but given the scarcity of stations in Australia, I wondered how they would find five “neighboring stations” in 1941 …
So I looked it up. The nearest station that covers the year 1941 is 500 km away from Darwin. Not only is it 500 km away, it is the only station within 750 km of Darwin that covers the 1941 time period. (It’s also a pub, Daly Waters Pub to be exact, but hey, it’s Australia, good on ya.) So there simply aren’t five stations to make a “reference series” out of to check the 1936-1941 drop at Darwin.
Intrigued by the curious shape of the average of the homogenized Darwin records, I then went to see how they had homogenized each of the individual station records. What made up that strange average shown in Fig. 7? I started at zero with the earliest record. Here is Station Zero at Darwin, showing the raw and the homogenized versions.

Figure 8 Darwin Zero Homogeneity Adjustments. Black line shows amount and timing of adjustments.
Yikes again, double yikes! What on earth justifies that adjustment? How can they do that? We have five different records covering Darwin from 1941 on. They all agree almost exactly. Why adjust them at all? They’ve just added a huge artificial totally imaginary trend to the last half of the raw data! Now it looks like the IPCC diagram in Figure 1, all right … but a six degree per century trend? And in the shape of a regular stepped pyramid climbing to heaven? What’s up with that?
Those, dear friends, are the clumsy fingerprints of someone messing with the data Egyptian style … they are indisputable evidence that the “homogenized” data has been changed to fit someone’s preconceptions about whether the earth is warming.
One thing is clear from this. People who say that “Climategate was only about scientists behaving badly, but the data is OK” are wrong. At least one part of the data is bad, too. The Smoking Gun for that statement is at Darwin Zero.
So once again, I’m left with an unsolved mystery. How and why did the GHCN “adjust” Darwin’s historical temperature to show radical warming? Why did they adjust it stepwise? Do Phil Jones and the CRU folks use the “adjusted” or the raw GHCN dataset? My guess is the adjusted one since it shows warming, but of course we still don’t know … because despite all of this, the CRU still hasn’t released the list of data that they actually use, just the station list.
Another odd fact, the GHCN adjusted Station 1 to match Darwin Zero’s strange adjustment, but they left Station 2 (which covers much of the same period, and as per Fig. 5 is in excellent agreement with Station Zero and Station 1) totally untouched. They only homogenized two of the three. Then they averaged them.
That way, you get an average that looks kinda real, I guess, it “hides the decline”.
Oh, and for what it’s worth, care to know the way that GISS deals with this problem? Well, they only use the Darwin data after 1963, a fine way of neatly avoiding the question … and also a fine way to throw away all of the inconveniently colder data prior to 1941. It’s likely a better choice than the GHCN monstrosity, but it’s a hard one to justify.
Now, I want to be clear here. The blatantly bogus GHCN adjustment for this one station does NOT mean that the earth is not warming. It also does NOT mean that the three records (CRU, GISS, and GHCN) are generally wrong either. This may be an isolated incident, we don’t know. But every time the data gets revised and homogenized, the trends keep increasing. Now GISS does their own adjustments. However, as they keep telling us, they get the same answer as GHCN gets … which makes their numbers suspicious as well.
And CRU? Who knows what they use? We’re still waiting on that one, no data yet …
What this does show is that there is at least one temperature station where the trend has been artificially increased to give a false warming where the raw data shows cooling. In addition, the average raw data for Northern Australia is quite different from the adjusted, so there must be a number of … mmm … let me say “interesting” adjustments in Northern Australia other than just Darwin.
And with the Latin saying “Falsus in unum, falsus in omis” (false in one, false in all) as our guide, until all of the station “adjustments” are examined, adjustments of CRU, GHCN, and GISS alike, we can’t trust anyone using homogenized numbers.
Regards to all, keep fighting the good fight,
w.
FURTHER READING:
My previous post on this subject.
The late and much missed John Daly, irrepressible as always.
More on Darwin history, it wasn’t Stevenson Screens.
NOTE: Figures 7 and 8 updated to fix a typo in the titles. 8:30PM PST 12/8 – Anthony
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I wonder if we ( the Skeptics) have got it all wrong.
The world is heading into a full blown Ice Age and ‘Al Gore’ and His cohorts are trying to mislead the population to save them from the Fear of a slow Death.
Tell everyone that the World is warming to hide them from the truth.
When you freeze peacefully in your bed at night you won’t know you have been protected from the ” Peril’s of Global Warming”
First time I’ve looked at this as a climate sceptic (I’m not one) threw “Darwin Zero” into a discussion and I googled it.
The first thing that strikes me is that you put up a graph from the IPCC from about 1920 and then the GHCN graph from about 1890 and say “they look nothing like each other” without pointing out the different date ranges.
But if you compare the GHCN graph from 1920 onwards, actually, it does look remarkably like the other graph.
Of course I can see that there does look to have been a significant drop in temperature before this date (and I haven’t looked for an explanation for that – maybe another discussion), but your point seems to be that the data have been (mal)adjusted, whereas I find it hard to see what you claim is blatantly obvious.
Me again.
Not sure how much time you have for this, but maybe you could do a similar analysis on a RANDOM sample of other stations world wide.
I see loads of people saying, “wow, that just shows the whole thing is corrupt” but the raw data is there for anyone to look at. Lets see some more widescale alternative analysis, not just a cherry picked one to make a point.
Jon Brooke (02:00:24)
Why don’y you select a few stations and do some analysis for yourself and show it here? If you lack the skills to do that, you probably lack the understanding to comment as you did.
Sorry to burst your bubble, but the data ARE bad and were designed to serve a specific purpose…to convince everyone that we were in “imminent peril” from global warming and that global warming is caused by CO2 emissions of humans. WE knew it was BS from the outset since CO2 is such a minute part of our atmosphere and an even smaller part of the totality of so-called “greenhouse gasses” present IN the atmosphere and that CO2 is absolutely NECESSARY for life to exist on the planet. Some of you folks so wedded to the religion of anthropogenic global warming need to get a life and see what’s been before your eyes all along.
Geoff,
I’m the one who essentially trusts the existing analysis, remember?
It’s you who is trying to convince the world that the data is bad. So why don’t *you* select a few stations? My suspicion is that far from this station being one chosen at random, it is actually the “worst” that Mr Watts could find, and even in this case his analysis is far from convincing – he derides the modifications made to the data by others but has applied his own modifications instead and asks that people accept them at face value.
Personally I’m unconvinced, but if you think that this analysis could be applied to other stations, lets see them.
Jon Brooke,
There are several dozen stations where I have looked into the matter graphically, using data from a number of sources and stages of adjustment.
Because I live in Oz, I have used Oz data because there is less chance that it has gone through the overseas sausage machines.
There was an earlier post where a distribution was given, to show that as many adjustments were downwards as upwards. The place to go looking is on the limbs of the bell curve and Darwin is one of these. Not the worst, just one. Another is Coonabarabran, buts its early data was used by the adjusters even though our own BOM has deleted the temperatures pre-1950 on grounds of poor quality. Because I could not identify many Australian stations in the outliers, I did not proceed further.
There is a problem with supporting data. It is very hard to find for a particular station from another country, whether it has home country adjustments before it goes into GISS etc for more. The Oz data are being refined all the time, but GISS probably cannot tell you if they are using BOM refined version 1, 2, 5, 10 or 20; or when they started using a version, or when they stopped and changed to another, or whether they deleted the first try and substituted the next or latest …
Let’s call a spade a spade. The GISS and HadCRU and NOAA data sets are an untidy mess of record keeping, including some adjustments that any prudent scientist would have to regard as prima facie evidence of unjustified fiddling.
Darwin is but one. It takes only one to establish a principle.
Einstein: “No amount of experimentation can ever prove me right; a single experiment can prove me wrong.”
Let me write here about what all this means to the average, non-scientists “out-there” who see this fooling around with warming data. First, they (the so-called climate “scientists,” take about 100 years or so of temperature data and invent a computer program to “adjust” the data in some way. “Well, it was adjusted by computer which takes the human biases out of the process.” Nonsense! All one has to do is to build in human biases into the computer PROGRAMMING. Secondly, they present the “adjusted” data as somehow being “proof” that warming is occurring. It is NOT “proof” of any sort…other than proof that the “scientists” involved are capable of manipulating the data to fit a theory.
Jon Brooke,
Jon Brooke (16:27:40) :
“My suspicion is that far from this station being one chosen at random, it is actually the “worst” that Mr Watts could find,”
Have you actually taken the trouble to read back through this whole thread? It doesn’t look like you have otherwise you’d kno wthat it is Willis Eschenbach who has done the anlysis for Darwin and not Anthony Watts. You would also have noticed
KevinUK (10:56:57) :
“Willis,
With vjones’s help and with the aid of EMSmith’s excellent documentation, I’ve been carrying out my own analysis of the NOAA GHCN data. My first step was to reproduce you excellent analysis for Darwin (unlike the Team who think that ‘there’s nothing to see here, move on’). I’ve therefore been applying the scientiic method and have attempted to falsify your analysis. I’m sorry (actually I’m glad) to say that I failed! I’ve reproduced your charts and results almost 100% and have documented my efforts on vjones blog ‘diggingintheclay‘. You can read the thread in which I reproduce your analysis by clicking on the link below.
Reproducing Willis Eschenbach’s WUWT Darwin analysis
As I’m sure you already know and appreciate science progresses by ’standing on the shoulders of giants’ so I’ve taken the liberty of further extending you excellent analysis for Darwin to all the WMO stations in the NOAA GHCN dataset.
Specifically I’ve attempted to answer the question posed by others on your original Darwin thread as to whether or not Darwin is a special case or not?
Well judge for yourself by clicking on the link below which documents my extension of your analysis to include the whole NOAA GHCN dataset.
Physically unjustifiable NOAA GHCN adjustments
The following is an excerpt from the thread
“In total, I have found 194 instances of WMO stations where “cooling” has been turned into “warming” by virtue of the adjustments made by NOAA to the raw data. As can be seen from the following “Cooling turned into warming” table (Table 1) below, which lists the Top 30 WMO station on the “cooling to warming” list, Darwin is ranked in only 26th place! The list is sorted by the absolute difference in the magnitude of the raw to adjusted slopes i.e. the list is ranked so that the worst case of “cooling” converted to significant “warming” comes first, followed by the next worse etc.
It’s clear from looking at the list that Darwin is certainly not “just a special case” and that in fact that there are many other cases of WMO stations where (as with Darwin) NOAA have performed physically unjustifiable adjustments to the raw data. As can been seen from Table 1 many of these adjustments result in trend slopes which are greater than the IPCC’s claimed 0.6 deg. C/century warming during the 20th century said by the IPCC to be caused by man’s emissions of CO2 through the burning of fossil fuels.
”
“Personally I’m unconvinced, but if you think that this analysis could be applied to other stations, lets see them”
So click on the links above and you’ll be able to ‘see the anlysis applie dto other stations’ and hopefully then you will be convinced that the adjustments NOAA make to the raw data for many stations whether they result in ‘cooling turned into warming’ or ‘warming turned into coooling’ are just not physically justifiable. Even NOAA have now admitted that this is the case and are in the process of correcting their adjustment algorithms.