
by Anthony Watts
There has been a lot of buzz about the Menne et al 2010 paper “On the reliability of the U.S. Surface Temperature Record” which is NCDC’s response to the surfacestations.org project. One paid blogger even erroneously trumpeted the “death of UHI” which is humorous, because the project was a study about station siting issues, not UHI. Anybody who owns a car with a dashboard thermometer who commutes from country to city can tell you about UHI.
There’s also claims of this paper being a “death blow” to the surfacestations project. I’m sure in some circles, they believe that to be true. However, it is very important to point out that the Menne et al 2010 paper was based on an early version of the surfacestations.org data, at 43% of the network surveyed. The dataset that Dr. Menne used was not quality controlled, and contained errors both in station identification and rating, and was never intended for analysis. I had posted it to direct volunteers to so they could keep track of what stations had been surveyed to eliminate repetitive efforts. When I discovered people were doing ad hoc analysis with it, I stopped updating it.
Our current dataset at 87% of the USHCN surveyed has been quality controlled.
There’s quite a backstory to all this.
In the summer, Dr. Menne had been inviting me to co-author with him, and our team reciprocated with an offer to join us also, and we had an agreement in principle for participation, but I asked for a formal letter of invitation, and they refused, which seems very odd to me. The only thing they would provide was a receipt for my new data (at 80%) and an offer to “look into” archiving my station photographs with their existing database. They made it pretty clear that I’d have no significant role other than that of data provider. We also invited Dr. Menne to participate in our paper, but he declined.
The appearance of the Menne et al 2010 paper was a bit of a surprise, since I had been offered collaboration by NCDC’s director in the fall. In typed letter on 9/22/09 Tom Karl wrote to me:
“We at NOAA/NCDC seek a way forward to cooperate with you, and are interested in joint scientific inquiry. When more or better information is available, we will reanalyze and compare and contrast the results.”
“If working together cooperatively is of interest to you, please let us know.”
I discussed it with Dr. Pielke Sr. and the rest of the team, which took some time since not all were available due to travel and other obligations. It was decided to reply to NCDC on a collaboration offer.
On November 10th, 2009, I sent a reply letter via Federal Express to Mr. Karl, advising him that we would like to collaborate, and offered to include NCDC in our paper.. In that letter I also reiterated my concerns about use of the preliminary surfacestation data (43% surveyed) that they had, and spelled out very specific reasons why I didn’t think the results would be representative nor useful.
We all waited, but there was no reply from NCDC to our reply to offer of collaboration by Mr. Karl from his last letter. Not even a “thank you, but no”.
Then we discovered that Dr. Menne’s group had submitted a paper to JGR Atmospheres using my preliminary data and it was in press. This was a shock to me since I was told it was normal procedure for the person who gathered the primary data the paper was based on to have some input in the review process by the journal.
NCDC uses data from one of the largest volunteer organization in the world, the NOAA Cooperative Observer Network. Yet NCDC director Karl, by not bothering to reply to our letter about an offer he initiated, and by the journal not giving me any review process opportunity, extends what Dr. Roger Pielke Senior calls “professional discourtesy” to my own volunteers and my team’s work. See his weblog on the subject:
Professional Discourtesy By The National Climate Data Center On The Menne Et Al 2010 paper
I will point out that Dr. Menne provided thanks to me and the surfacestations volunteers in the Menne et al 2010 paper, and I hear through word of mouth, also in a recent verbal presentation. For that I thank him. He has been gracious in his communications with me, but I think he’s also having to answer to the organization for which he works and that limited his ability to meet some of my requests, like a simple letter of invitation.
Political issues aside, the appearance of the Menne et al 2010 paper does not stop the surfacestations project nor the work I’m doing with the Pielke research group to produce a peer reviewed paper of our own. It does illustrate though that some people have been in a rush to get results. Texas state Climatologist John Nielsen-Gammon suggested way back at 33% of the network surveyed that we had a statistically large enough sample to produce an analysis. I begged to differ then, at 43%, and yes even at 70% when I wrote my booklet “Is the US Surface Temperature Record Reliable?, which contained no temperature analysis, only a census of stations by rating.
The problem is known as the “low hanging fruit problem”. You see this project was done on an ad hoc basis, with no specific roadmap on which stations to acquire. This was necessitated by the social networking (blogging) Dr. Pielke and I employed early in the project to get volunteers. What we ended up getting was a lumpy and poorly spatially distributed dataset because early volunteers would get the stations closest to them, often near or within cities.
The urban stations were well represented in the early dataset, but the rural ones, where we believed the best siting existed, were poorly represented. So naturally, any sort of study early on even with a “significant sample size” would be biased towards urban stations. We also had a distribution problem within CONUS, with much of the great plains and upper midwest not being well represented.
This is why I’ve been continuing to collect what some might consider an unusually large sample size, now at 87%. We’ve learned that there are so few well sited stations, the ones that meet the CRN1/CRN2 criteria (or NOAA’s 100 foot rule for COOPS) are just 10% of the whole network. See our current census:

When you have such a small percentage of well sited stations, it is obviously important to get a large sample size, which is exactly what I’ve done. Preliminary temperature analysis done by the Pielke group of the the data at 87% surveyed looks quite a bit different now than when at 43%.
It has been said by NCDC in Menne et al “On the reliability of the U.S. surface temperature record” (in press) and in the June 2009 “Talking Points: related to “Is the U.S. Surface Temperature Record Reliable?” that station siting errors do not matter. However, I believe the way NCDC conducted the analysis gives a false impression because of the homogenization process used. As many readers know, the FILNET algorithm blends a lot of the data together to infill missing data. This means temperature data from both well sited and poorly sited stations gets combined to infill missing data. The theory is that it all averages out, but when you see that 90% of the USHCN network doesn’t meet even the old NOAA 100 foot rule for COOPS, you realize this may not be the case.
Here’s a way to visualize the homogenization/FILNET process. Think of it like measuring water pollution. Here’s a simple visual table of CRN station quality ratings and what they might look like as water pollution turbidity levels, rated as 1 to 5 from best to worst turbidity:





In homogenization the data is weighted against the nearby neighbors within a radius. And so a station might start out as a “1” data wise, might end up getting polluted with the data of nearby stations and end up as a new value, say weighted at “2.5”. Even single stations can affect many other stations in the GISS and NOAA data homogenization methods carried out on US surface temperature data here and here.

In the map above, applying a homogenization smoothing, weighting stations by distance nearby the stations with question marks, what would you imagine the values (of turbidity) of them would be? And, how close would these two values be for the east coast station in question and the west coast station in question? Each would be closer to a smoothed center average value based on the neighboring stations.
Essentially, in my opinion, NCDC is comparing homogenized data to homogenized data, and thus there would not likely be any large difference between “good” and “bad” stations in that data. All the differences have been smoothed out by homogenization (pollution) from neighboring stations!
The best way to compare the effect of siting between groups of stations is to use the “raw” data, before it has passed through the multitude of adjustments that NCDC performs. However NCDC is apparently using homogenized data. So instead of comparing apples and oranges (poor sited -vs- well sited stations) they essentially just compare apples (Granny Smith -vs- Golden delicious) of which there is little visual difference beyond a slight color change.
We saw this demonstrated in the ghost authored Talking Points Memo issued by NCDC in June 09 in this graph:

Referencing the above graph, Steve McIntyre suggested in his essay on the subject:
The red graphic for the “full data set” had, using the preferred terminology of climate science, a “remarkable similarity” to the NOAA 48 data set that I’d previously compared to the corresponding GISS data set here (which showed a strong trend of NOAA relative to GISS). Here’s a replot of that data – there are some key telltales evidencing that this has a common provenance to the red series in the Talking Points graphic.

When I looked at SHAP and FILNET adjustments a couple of years ago, one of my principal objections to these methods was that they adjusted “good” stations. After FILNET adjustment, stations looked a lot more similar than they did before. I’ll bet that the new USHCN adjustments have a similar effect and that the Talking Points memo compares adjusted versions of “good” stations to the overall average.
There’s references in the new Menne et al 2010 paper to the new USHCN2 algorithm and we’ve been told how it is supposed to be better. While it does catch undocumented station moves that USHCN 1 did not, it still adjusts data at USHCN stations in odd ways, such as this station in rural Wisconsin, and that is the crux of the problem.

Or this one in Lincoln, IL at the local NWS office where they took great effort to have it well sited.


Thanks to Mike McMillan for the graphs comparing USHCN1 and USHCN2 data
Notice the clear tendency in the graphs comparing USHCN1 to USHCN2 to cool off the early record and leave the current levels near recently reported levels or to increase them. The net result is either reduced cooling or enhanced warming not found in the raw data.
As for the Menne et all 2010 paper itself, I’m rather disturbed by their use of preliminary data at 43%, especially since I warned them that the dataset they had lifted from my website (placed for volunteers to track what had been surveyed, never intended for analysis) had not been quality controlled at the time. Plus there are really not enough good stations with enough spatial distribution at that sample size. They used it anyway, and amazingly, conducted their own secondary survey of those stations, comparing it to my non-quality controlled data, implying that my 43% data wasn’t up to par. Well of course it wasn’t! I told them about it and why it wasn’t. We had to resurvey and re-rate a number of stations from early in the project.
This came about only because it took many volunteers some time to learn how to properly ID them. Even some small towns have 2-3 COOP stations nearby, and only one of them is “USHCN”. There’s no flag in the NCDC metadatabase that says “USHCN”, in fact many volunteers were not even aware of their own station status. Nobody ever bothered to tell them. You’d think if their stations were part of a special subset, somebody at NOAA/NCDC would notify the COOP volunteer so they would have a higher diligence level?
If doing an independent stations survey was important enough for NCDC to do to compare to my 43% data now for their paper, why didn’t they just do it in the first place?
I have one final note of interest on the station data, specifically the issue of MMTS thermometers and their tendency to be sited closer to building due to cabling issues.
Menne et al 2010 mentioned a “counterintuitive” cooling trend in some portions of the data. Interestingly enough, former California State Climatologist James Goodridge did an independent analysis ( I wasn’t involved in data crunchng, it was a sole effort on his part) of COOP stations in California that had gone through modernization, switching from Stevenson Screens with mercury LIG thermometers to MMTS electronic thermometers. He sifted through about 500 COOPs in California and chose stations that had at least 60 years of uninterrupted data, because as we know, a station move can cause all sorts of issues. He used the “raw” data from these stations as opposed to adjusted data.
He writes:
Hi Anthony,
I found 58 temperature station in California with data for 1949 to 2008 and where the thermometers had been changed to MMTS and the earlier parts were liquid in glass. The average for the earlier part was 59.17°F and the MMTS fraction averaged 60.07°F.
Jim
A 0.9F (0.5C) warmer offset due to modernization is significant, yet NCDC insists that the MMTS units are tested at about 0.05C cooler. I believe they add this adjustment into the final data. Our experience shows the exact opposite should be done and with a greater magnitude.
I hope to have this California study published here on WUWT with Jim soon.
I realize all of this isn’t a complete rebuttal to Menne et al 2010, but I want to save that option for more detail for the possibility of placing a comment in The Journal of Geophysical Research.
When our paper with the most current data is completed (and hopefully accepted in a journal), we’ll let peer reviewed science do the comparison on data and methods, and we’ll see how it works out. Could I be wrong? I’m prepared for that possibility. But everything I’ve seen so far tells me I’m on the right track.
If doing a stations survey was important enough for NCDC to do to compare to my data now for their paper, why didn’t they just do it in the first place?
We currently have 87% of the network surveyed (1067 stations out of 1221), and it is quality controlled and checked. I feel that we have enough of the better and urban stations to solve the “low hanging fruit” problem of the earlier portion of the project. Data at 87% looks a lot different than data at 43%.
The paper I’m writing with Dr. Pielke and others will make use of this better data, and we also use a different procedure for analysis than what NCDC used.
geo (21:47:12) :
As Menne, et al. pointed out, it is one thing to identify systematic siting issues. (e.g. the sensor next to the farmhouse). It is quite another to publish a statistical analysis in a peer-reviewed journal that demonstrates a systematic bias in the data. They are not the same thing.
Let me be clear: I applaud the effort. But the lack of objectivity on both sides of The Climate Change Debate really bothers me.
[Well, that’s why god made peer review — and that’s why it’s sacrilege to mess with the peer review process (a la climategate). Love (objectivity) goes out the window when money (politics) comes innuendo. The statistical analysis in a peer-reviewed journal that demonstrates a systematic bias is pending. Wait for it. You’ll find it very interesting. ~ Evan]
Let us be perfectly clear on this point:
The only reason Anthony has not released all the data and methods is that the paper is not yet published. When it is published, ALL WILL BE RELEASED.
The problem arises when the hockey team (et al) publishes papers announcing the impending end of life as we know it, demands that we blow a trazillion dollars on it, suborns the peer review process, uses political influence to suppress dissenting views, fantasizes about tossing us in the klink (and worse), and and THEN refuses to release data and methods!
steven mosher (22:27:40) :
The 1-5 rating system Anthony used is public property. It was created by NOAA.
REPLY: Actually no, it was created by Meteo France for their network, NOAA borrowed it. I was the first to apply it retroactively to the existing network as means of doing a survey of existing stations. Both Meteo France and NOAA used it to find new sites.
My application produced value added data that existed no place else. – Anthony
The NCDC Chart showing the “good or best” 70 USHNC stations data almost exactly replicating the the 1228 stations data is just not statistically credible. It has to be what we statisticians call a fudge! I have only been following this AGW issue for six weeks, and I am somewhat in a state of shock. Climate science must hang its head in shame.
Re: Pat Frank (Jan 27 21:52),
I agree with your post.
It’s more than a professional discourtesy. It’s professional theft of data. In science, value rests in results. Note how jealously proxy data are held by climatologists. It’s inconceivable that Drs. Menne and Karl did not consciously know they were violating a very basic ethical principle of science.
REPLY: I made the same arguments with them that you cite, they dismissed them – Anthony
In addition, if this paper is published in a journal with “stolen” data, it invalidates the journal.
Stephen: The problem is that when dealing with individual grids, there are so damn few well sited stations (often none at all) per grid that the average is statistically insignificant. One has to address the whole lot at once or it’s like randomly throwing darts in a dartboard.
It’s reasonable to assume that NCDC director Karl did not bothering to reply to your letter because he was too busy firefighting FOIA and other issues, as the Climategate emails have revealed. His influence is all over Climategate.
Is it possible the stations were chosen because they were ‘well acquainted’ with the people operating it? I
Why the heck didn’t the feds just send letters to the curators of the unsurveyed stations asking them to photograph their sites from several angles, add a couple of notes about direction (“looking west”), and send them in? The facts are important to all — they’re a matter of public interest. Why force volunteers to track down the stations’ exact location and brave watchdogs to take photos? Lots less effort would have been needed if the feds had got with the program.
REPLY: Actually Dr. Roger Pielke Sr. believes that NOAA and/or NCDC started just such a program in the early 2000’s, and then deep sixed it for unknown reasons. Some NWS offices do have photos of their weather climate stations.
For example NWS San Diego has quite a list: http://www.wrh.noaa.gov/sgx/cpm/station.php?wfo=sgx
and so does SFO:
http://www.wrh.noaa.gov/mtr/cpm/stations.php
AFAIK, these are the only NWS offices with COOP photos online. Requests by Pielke for additional photos have gone unresolved. May be an FOI type job is needed to find out. – Anthony
PS: Could it be that they’re not proud of their stations and would rather their gory details were kept hidden?
evanmjones (22:18:50)
Please tell me that 6% have long records with limited station moves and complete metadata….
Is it possible to kill 2 birds with one stone?
i.e Seek out stations in desert like conditions hence eliminating (mostly) affects of Water Vapour, leaving only the affects of CO2. These stations should also show warming at night more so than at daytime.
Any thoughts?
Reading from the outside this looks like:
1. Feign to engage with the enemy through offers of collaboration.
2. Trash their data without professional right-to-reply.
3. Gain benefit from their dataset through professional publication.
Sounds typical unprofessional actions to me.
Suggest you look to publish independently as and when.
Ah, I remember the Great Hot Summer of 2003, where I used to leave West London at 6pm with the car thermometer reading 33 degrees C, and drive home 45 minutes into the hills, where it read 27 degrees C… In the recent cold weather in the UK I left the house at -5.5C and drove down into the Thames Valley in Reading where we reached the dizzy heights of +1C in the town centre…
Anthony, where can I find a really good summary of how surface stations ought to be set up in order to get decent readings? And who is mapping the UK ones for you?
Phil M (19:37:08) wrote:
“Anthony posted his data on the internet. Is there anything on the internet that you feel is not in the public domain?”
There’s a lot of public information on the internet and a lot of incorrect or incomplete one, too.
In my area of study, there are huge public databases of DNA sequences which anyone can access or deposit in. However, if I intend to use some of these data in my comparisons, I check first the publications where they are cited or I contact the authors in case the sequences refer to an unpublished work. Which would be also the correct approach for Menne et al., especially in the light of their former offer of collaboration with Anthony.
Heck – even a journal-published material it is not always reliable. There are sequences of some macaca monkeys, from a South Asian study, that clearly belong to fungi! I wrote to the journal’s editor, but to no avail.
One point of confusion here is that temperature trends are based on anomalies, not temperatures averaged across stations.. This is why the Menne paper found no effect of station rating on the trends. Scientists don’t simply average the temperature across stations. They measure the increase in temperature in time at each station separately. This approach is rather insensitive to any local biases. But it is the basis of the temperature trends produced by climate scientists.
I agree that publishing the results without Anthony’s direct input or coauthorship is a bit iffy. The surface station projection is important is showing that siting problems do not effect the trend in temperature anomaly. Certainly it was correct to cite the efforts of the the surface station project in the acknowledgements. I’ve published papers based on long term data sets collected by other scientists. The originators of the 10-20 year data sets were coauthors. On the other hand, we always agreed on the methods of data analysis and the conclusions. I doubt that Anthony would have agreed to be a coauthor of the Menne paper (?)
Re: BillD (Jan 28 03:25),
Seems you have not been reading up stream . Check E.M.Smith’s post. The temperatures are homogenized, filled in and “corrected” before the anomaly over a bunch of stations is computed. This is what the program does from what I understand. It may be in the wish list of what you call “climate scientists” that the anomaly is taken per station and then averaged but it is not in the basket.
So it is not really surprising that these “scientists” treat other people’s data ( and not government funded at that) as an open buffet at a wedding.
[Response: Much more relevant is that Watts still, after years of being told otherwise, thinks that the global temperature analyses are made by averaging absolute temperatures. – gavin]
Anthony,
This comment is of course from real climate. I think it is worthy of a post.
Actually the meta data for the station in the photo above should have the date of death . If it was installed soon after the internment there will be the “compost heap” effect and a cooling correction has to be applied for the first year(s) :).
Please tell me that 6% have long records with limited station moves and complete metadata….
Long records, yes. Only two USHCN stations started up as late as 1940. Most are from 1900 or before. Station moves? Well, define “limited”. If you move a station from the outskirts of town to the middle of town you get an outrage like Lampasas, TX. Sometimes a station stays put, but he mountain comes to Mohamed as a town or city grows around it. Station move records are woefully incomplete and even when they are known, there is no reliable way to establish microsite issues. As for complete metadata, an estimated average of 30% is missing (i.e., the readings were never taken).
The surface station projection is important is showing that siting problems do not effect the trend in temperature anomaly.
Sez Menne.
However, he’s wrong. They do. As will be shown in the upcoming paper.
As a kind of amateur statistician, I too am puzzled why they would use so-called “homogenised” data in a statistical study of many stations. it means they are doing a kind of “average of averages”.
Even without any systematic effects of the kind discussed in the article, this must act to smooth the data to give an erroneously un-noisy plot, and falsely increase the confidence level of the trend line ?
And another terrible smear by the warmists.
Will they ever learn their place?
http://www.guardian.co.uk/environment/georgemonbiot/2010/jan/27/james-delingpole-climate-change-denial
EH Smith,
Thank you for your work. Am generally skeptical but have had some problems addressing some of the claims that my friends who are AGW proponents make about shoddy/specious work by skeptics. I’ve been trying to counter these arguments by looking at the references and data provided in a few select topics related to surface temperature claims. In particular your piece on Central Park. I came across a claim that your “raw” data is in-fact homogenized and matches the GISS homogenized data set precisely (once converted from C to F). Am wondering whether you’d seen and/or responded to this critic?
Casey (22:41:35)
I agree, the most likely answer is that the whole thing is based on the thermometer on Hansen’s desk.