Spencer: Direct Evidence that Most U.S. Warming Since 1973 Could Be Spurious

by Roy W. Spencer, Ph. D.

Where the lights are - the CONUS has population that roughly tracks with brightness

INTRODUCTION

My last few posts have described a new method for quantifying the average Urban Heat Island (UHI) warming effect as a function of population density, using thousands of pairs of temperature measuring stations within 150 km of each other. The results supported previous work which had shown that UHI warming increases logarithmically with population, with the greatest rate of warming occurring at the lowest population densities as population density increases.

But how does this help us determine whether global warming trends have been spuriously inflated by such effects remaining in the leading surface temperature datasets, like those produced by Phil Jones (CRU) and Jim Hansen (NASA/GISS)?

While my quantifying the UHI effect is an interesting exercise, the existence of such an effect spatially (with distance between stations) does not necessarily prove that there has been a spurious warming in the thermometer measurements at those stations over time. The reason why it doesn’t is that, to the extent that the population density of each thermometer site does not change over time, then various levels of UHI contamination at different thermometer sites would probably have little influence on long-term temperature trends. Urbanized locations would indeed be warmer on average, but “global warming” would affect them in about the same way as the more rural locations.

This hypothetical situation seems unlikely, though, since population does indeed increase over time. If we had sufficient truly-rural stations to rely on, we could just throw all the other UHI-contaminated data away. Unfortunately, there are very few long-term records from thermometers that have not experienced some sort of change in their exposure…usually the addition of manmade structures and surfaces that lead to spurious warming.

Thus, we are forced to use data from sites with at least some level of UHI contamination. So the question becomes, how does one adjust for such effects?

As the provider of the officially-blessed GHCN temperature dataset that both Hansen and Jones depend upon, NOAA has chosen a rather painstaking approach where the long-term temperature records from individual thermometer sites have undergone homogeneity “corrections” to their data, mainly based upon (presumably spurious) abrupt temperature changes over time. The coming and going of some stations over the years further complicates the construction of temperature records back 100 years or more.

All of these problems (among others) have led to a hodgepodge of complex adjustments.

A SIMPLER TECHNIQUE TO LOOK FOR SPURIOUS WARMING

I like simplicity of analysis — whenever possible, anyway. Complexity in data analysis should only be added when it is required to elucidate something that is not obvious from a simpler analysis. And it turns out that a simple analysis of publicly available raw (not adjusted) temperature data from NOAA/NESDIS NOAA/NCDC, combined with high-resolution population density data for those temperature monitoring sites, shows clear evidence of UHI warming contaminating the GHCN data for the United States.

I will restrict the analysis to 1973 and later since (1) this is the primary period of warming allegedly due to anthropogenic greenhouse gas emissions; (2) the period having the largest number of monitoring sites has been since 1973; and (3) a relatively short 37-year record maximizes the number of continuously operating stations, avoiding the need to handle transitions as older stations stop operating and newer ones are added.

Similar to my previous posts, for each U.S. station I average together four temperature measurements per day (00, 06, 12, and 18 UTC) to get a daily average temperature (GHCN uses daily max/min data). There must be at least 20 days of such data for a monthly average to be computed. I then include only those stations having at least 90% complete monthly data from 1973 through 2009. Annual cycles in temperature and anomalies are computed from each station separately.

I then compute multi-station average anomalies in 5×5 deg. latitude/longitude boxes, and then compare the temperature trends for the represented regions to those in the CRUTem3 (Phil Jones’) dataset for the same regions. But to determine whether the CRUTem3 dataset has any spurious trends, I further divide my averages into 4 population density classes: 0 to 25; 25 to 100; 100 to 400; and greater than 400 persons per sq. km. The population density data is at a nominal 1 km resolution, available for 1990 and 2000…I use the 2000 data.

All of these restrictions then result in thirteen 24 to 26 5-deg grid boxes over the U.S. having all population classes represented over the 37-year period of record. In comparison, the entire U.S. covers about 31 40 grid boxes in the CRUTem3 dataset. While the following results are therefore for a regional subset (at least 60%) of the U.S., we will see that the CRUTem3 temperature variations for the entire U.S. do not change substantially when all 31 40 grids are included in the CRUTem3 averaging.

EVIDENCE OF A LARGE SPURIOUS WARMING TREND IN THE U.S. GHCN DATA

The following chart shows yearly area-averaged temperature anomalies from 1973 through 2009 for the 13 24 to 26 5-deg. grid squares over the U.S. having all four population classes represented (as well as a CRUTem3 average temperature measurement). All anomalies have been recomputed relative to the 30-year period, 1973-2002.

The heavy red line is from the CRUTem3 dataset, and so might be considered one of the “official” estimates. The heavy blue curve is the lowest population class. (The other 3 population classes clutter the figure too much to show, but we will soon see those results in a more useful form.)

Significantly, the warming trend in the lowest population class is only 47% of the CRUTem3 trend, a factor of two difference.

Also interesting is that in the CRUTem3 data, 1998 and 2006 would be the two warmest years during this period of record. But in the lowest population class data, the two warmest years are 1987 and 1990. When the CRUTem3 data for the whole U.S. are analyzed (the lighter red line) the two warmest years are swapped, 2006 is 1st and then 1998 2nd.

From looking at the warmest years in the CRUTem3 data, one gets the impression that each new high-temperature year supersedes the previous one in intensity. But the low-population stations show just the opposite: the intensity of the warmest years is actually decreasing over time.

To get a better idea of how the calculated warming trend depends upon population density for all 4 classes, the following graph shows – just like the spatial UHI effect on temperatures I have previously reported on – that the warming trend goes down nonlinearly as population density of the stations decrease. In fact, extrapolation of these results to zero population density might produce little warming at all!

This is a very significant result. It suggests the possibility that there has been essentially no warming in the U.S. since the 1970s.

Also, note that the highest population class actually exhibits slightly more warming than that seen in the CRUTem3 dataset. This provides additional confidence that the effects demonstrated here are real.

Finally, the next graph shows the difference between the lowest population density class results seen in the first graph above. This provides a better idea of which years contribute to the large difference in warming trends.

Taken together, I believe these results provide powerful and direct evidence that the GHCN data still has a substantial spurious warming component, at least for the period (since 1973) and region (U.S.) addressed here.

There is a clear need for new, independent analyses of the global temperature data…the raw data, that is. As I have mentioned before, we need independent groups doing new and independent global temperature analyses — not international committees of Nobel laureates passing down opinions on tablets of stone.

But, as always, the analysis presented above is meant more for stimulating thought and discussion, and does not equal a peer-reviewed paper. Caveat emptor.

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The Pedant-General
March 16, 2010 10:22 am

But even given the low average pop density, that’s irrelevant. The point is that the warming is not a real global effect: the entirety of the trend is UHI and needs to be discounted.

Arkh
March 16, 2010 10:27 am

4 points to make a graph ? Are you kidding me ?
I’ll be as skeptic about your second graph as I am about the hockey stick.
REPLY: Bear in mind that surface temp records in use today (NOAA USHCN, GISS, CRU) only use two data points (max/min) to create a mean temperature. -A

Edbhoy
March 16, 2010 10:28 am

I good piece of work Roy and one that needs careful consideration. It would corroborate Ross Mckittrick and Nicolas Nierenberg’s recent work on Correlation between Surface Temperature Trends and Socio-economic Activity but also the simple logic that surrounding thermometers with concrete and asphalt will affect their output.

March 16, 2010 10:34 am

The UHI effect is unmistakable. Although I also prefer simply methods, they should not be too simple. “I then compute multi-station average anomalies in 5×5 deg. latitude/longitude boxes”.
The boxes will then correspond to surfaces with different areas. It would be better to use equal-area boxes [especially when the analysis is extended to other regions, e.g. Europe].
Alternatively [and THAT is simple] one could weight each box by its area when computing the region average.
Perhaps that was done “The following chart shows yearly area-averaged temperature anomalies” may suggest that although the wording is not clear. Had Spencer said “area-weighted average” all would be bliss. This needs clarification.

Enneagram
March 16, 2010 10:39 am

So Jones CRUT was flying hi above just to “hide the decline” (that red line above), nice, nice.

March 16, 2010 10:52 am

Chris (08:39:52)
Walter Schneider (09:08:06)

I’m not sure how useful an average population density measurement is. The source data for Dr. Spencer’s analysis comes from here – http://sedac.ciesin.columbia.edu/gpw/ – and it has a pretty nifty Google Maps type interface that lets you see how inconsistent the population distribution is.
The difference between the CRU (red line) and Dr. Spencer’s ISH (blue line) trends on the second graph is, AFAIK, unexplained, but discussed here: http://wattsupwiththat.com/2010/02/27/spencer-spurious-warming-demonstrated-in-cru-surface-data/
That graph could be read to imply that CRU stations are, on average, in the 400 people/km2 range due to station selection differences – but there are so many other variables in the mix (adjustments, homogenizations, etc) for CRU that it might be impossible to confirm or deny that as a possible explanation for the trend differences. Going through the CRU station list and mapping the population density for each station would be an interesting exercise to see if it intersected close to where it should (~400) on that graph, all I’m saying is don’t be surprised if it doesn’t

kwik
March 16, 2010 10:54 am

David44 (09:44:36) :
Here is a 6’th grader looking at some rural stations;
Did I hear Nobel Prize for kids?

March 16, 2010 10:55 am

Paul Z said
“The Papal visit represents an unprecedented opportunity to strengthen ties between the UK and the Holy See on action to tackle poverty and climate change as well as the important role of faith in creating strong and cohesive communities,” he said.
===
I despair! The Vatican has got the climare references of much of the Roman empires- East and West. They are fairly episiodic until around 50AD but pretty good through much of the the Byzantine period until Constatinople fell around 1452.
Pliny and others used to make numerous references to climate and from that we know that Rome had a serious UHI problem and towards the end of the Western Empire in 400AD the climate turned cooler.
The records cover a large part of Europe, the Mid east and North Africa and rebut the idea of a constant climate as propogated by the Met office.
tonyb

vigilantfish
March 16, 2010 10:55 am

R. Craigen (09:32:02) :
Your suggestion about transferring sites across population groups over time sounds like a good one. Probably for most urban sites this will require a visit to the city archives, or national census data, as this kind of information is not readily available online except for census information on the largest cities of the U.S. going back to 1790 which can be found here, and which focusses on the 100 largest cities: http://www.census.gov/population/www/documentation/twps0027/twps0027.html.
Perhaps the population for each site could be adjusted for each decade as is done by the census.

JT
March 16, 2010 10:56 am

This could also explain a lot of Antarctic warming UHI effect based on population.
As we know, some parts of Antarctica are becoming eco tourist traps. Hundreds of scientists, cruise ships, supply ships, airports, runways, sewage treatment/storage etc. where none existed previously.
“And don’t forget to decontaminate your shoes when you get there” courtesy of the IPCC

March 16, 2010 11:00 am

Population growth is obviously the norm, but it would be interesting to know if there are any localities that have experienced a substantial decline in population and/or economic activity for which it’s possible to determine a ‘negative UHI trend’, or whatever it’s properly called. Has anyone tried to do this?

Lon Hocker
March 16, 2010 11:01 am

A couple of problems.
Your model of logarithmic dependence can’t work at very low population densities (blows up to negative infinity). It also doesn’t fit the few data points you have very well. Extrapolating it is imaginative, but not very scientific.
If Willis’ self regulating model http://wattsupwiththat.com/2009/06/14/the-thermostat-hypothesis/ is true, we would expect a temperature rise related to the amount of CO2 in the US compared to the amount in the tropics where the regulation mechanism occurs. This seems to be proportional to the rate of production of CO2 in the northern hemisphere http://www.2bc3.com/warming.html.
In short, I feel that imagining a zero value of temperature rise for the last 30 years in the US is pushing your idea quite a bit too far.

Barry Kearns
March 16, 2010 11:04 am

Roy,
You may want to re-examine the end of the first paragraph of the introduction. It appears to me that the words “at the lowest population densities” should probably be removed.

March 16, 2010 11:05 am

Ryan Stephenson (10:18:40)
I previously calculated (ref) a very rough global average urban forcing of 2.37 W/m2 based on electrical consumption – I would be curious what a similar exercise for heating oil, diesel, gasoline, natural gas would produce. Of course, all urban areas are not created equal, some are more dense than others, this would not account for higher per capita consumption for urban areas due to commercial use, etc.
As others have stated, the per capita UHI relationship should not be assumed to be constant over time. As it pertains to Dr. Spencer’s analysis here, the question would be how much of that remaining .09 C/decade would that be?

pat michaels
March 16, 2010 11:06 am

Roy–
This is exactly the result that McKitrick and I got globally (J. Geophys 08). We found 50% of the land warming in the NASA record was from “non-climatic” factors.
You can’t have a UHI over the ocean, so these findings apply to about 30% of the surface. After you factor in the relative warmings of each hemisphere separately, I believe the decadal trend will drop by .04deg–not an inconsiderable amount.
The drop will be from 0.17 to 0.13; isn’t it odd that the 0.13 is almost exactly what the MSU shows?
Nice work.
Pat Michaels

A C Osborn
March 16, 2010 11:08 am

David44 (09:44:36) : Has anyone looked at forest fire observation posts for example?
It would depend on whether or not the daily values are recorded or not.

March 16, 2010 11:08 am

This also suggests that maybe the lack of recent warming evidenced in the tree ring data may have been more accurate than skeptics argued. The tree ring scientist have claimed that only in recent years has the tree ring data diverged from “actual temperatures”. So maybe it was in fact the “measured” data that falsely created the hockey stick.

pandutzu22
March 16, 2010 11:11 am

2 things:
1. Can you show a graph between your average for each station and the GHCN data (I bete there are a lot of differences just by the way the averages are done
2. Put the results on the map and compare with the homogenized data (I can put them on a map if you provide the ascii file)

Basil
Editor
March 16, 2010 11:13 am

“This is a very significant result. It suggests the possibility that there has been essentially no warming in the U.S. since the 1970s.”
Forgive me if this is just unclear because I’ve only had the time to skim what Dr. Spencer has written.
Is this saying no warming “at all,” or no warming beyond what is caused by UHI/Population growth?

March 16, 2010 11:17 am

David Shepherd (11:00:57)
Detroit has been mentioned in the comments threads, and I think Gary Indiana experienced a similar population decline at some point in the past… but I do not think anyone has done more than discuss it.
The real question for something like that is, how much of the UHI effect is consumption based (i.e. directly related to population) and how much of it is albedo and “thermal mass” based? Since population declines are rarely linked with wholesale demolition of structures and roads (true de-urbanization) this might be an interesting way to deconstruct the UHI effect into its component parts.
To be clear, I do not think the up-swing would match the down-swing due to remaining roads and structures, but it would be an interesting analysis.

RockyRoad
March 16, 2010 11:18 am

geo (08:58:46) :
How good is Russian population density data over time? I want this analysis done on Siberia!
———–
Reply:
They don’t need population to apply the UHI. Indiscriminate application of an inverted correction (aka “fudge factor”) can be/has been applied regardless of population density. Time for a completely open book examination, but I hear a dozen court cases are going forward and subpoenas can do amazing things.

Joe Samuels
March 16, 2010 11:51 am

So, I suppose that means that two major tropical cyclones at the same time (http://wp.me/pduTk-2sE) in the Southwest Pacific has nothing to do with Global Warming, even though media reports make the connection by simply mentioning the charge?

Myron Mesecke
March 16, 2010 11:53 am

Off Topic but possibly interesting. Runaway Toyota’s due to solar minimum? Are there other computer glitches happening more frequently the last few years?
.

Myron Mesecke
March 16, 2010 11:54 am

Okay, first time failure of using html. It worked on the site I used to learn how to do it.
http://jalopnik.com/5494444/feds-study-whether-toyotas-problems-caused-by-cosmic-rays

March 16, 2010 12:03 pm

Don’t forget increased agricultural activity, growing seasons, types of plants, watering intensity, soil color.