I made a subset of HadCRU3 to cover the continental U.S. and compared it to the USHCN-2000 version.
Here’s the cells that I included in the U.S. subset (a total of 38 gridcells).
Next here is a comparison of the USHCN 2000 version (digital data downloaded from John Daly, but matched to figure in contemporary press release) to CRU. The CRU comes as monthly data – I made an annual average and then zero-ed on 1951-1980 to match GISS 1951-1980 centering. (In passing, CRU is supposed to have 1961-1990 centering, but I couldn’t replicate this at all!) The blue histogram shows the difference between HadCRU3 and GISS 2000. The maximum negative delta in the 1930s is -0.35 deg C and the maximum positive delta is 0.28 deg C. In HadCRU3, the record year remains 1934.
So as between CRU and Hansen’s crowd, it looks like Hansen’s crowd is adjusting things more. It would be nice to see what CRU is doing differently. But hey, they’re the Team and I guess we’ll never know.
46 Comments
Here’s the code to produce these graphics. Requires prior downloading of HadCRU3 discussed elsewhere.
##USA MASK
library(fields)
ustest<-cbind( c(t( array(rep( seq(27.5,47.5,5),14) ,dim=c(5,14)) )), rep( seq(-127.5,-62.5,5),5) )
i<- 37+(test[,2]-2.5)/5;j<- 19+(test[,1]-2.5)/5
plot(xy.coords(ustest[,2],ustest[,1]),pch=".",type="p",ylim=c(25,52))
world(xlim=c(-120,-40),ylim=c(30,55),add=TRUE)
US(add=TRUE)
temp<-rep(TRUE,nrow(ustest))
temp[c(1:6,8:9,11:14)]<-FALSE
temp[14+c(1:2,11:14)]<-FALSE
temp[28+c(1,12:14)]<-FALSE
temp[42+c(1,13:14)]<-FALSE
temp[56+c(1,9:14)]<-FALSE
points(xy.coords(ustest[temp,2],ustest[temp,1]),col="red",pch=19)
sum(temp)
##JOHN DALY VERSION FROM 2000
v00<-read.table("http://www.john-daly.com/usatemps.006",skip=7,fill=TRUE,nrow=1999-1880)
v00<-ts(v00[,2],start=1881)
mean(v00[(1951:1980)-1880]) #[1] -4.419479e-18
#so this is zero-ed on 1951-1980; it's also in deg C
##LOAD DATA SET
library(ncdf)
url<-"d:/climate/data/jones"
loc<-file.path(url,"HadCRUT3.nc" ) #[1] "c"
v<-open.ncdf(loc)
instr <- get.var.ncdf( v, v$var[[1]]) # 1856 2005
dim(instr)# [1] 72 36 1883
#this is organized in 72 longitudes from -177.5 to 177.5 and 36 latitudes from -87.5 to 87.5
K<-sum(temp)
test<- array(NA,dim=c(1883,K))
for (k in 1:K) {
test[,k]<-instr[i[temp][k],j[temp][k],]
}
dim(test)# 1883 38
us.cru<-apply(test,1,mean,na.rm=TRUE)
us.cru<- array(c(us.cru,NA),dim=c(12,1884/12) )
annual<-ts(apply(us.cru,2,mean,na.rm=TRUE) ,start=1850)
mean(annual[(1951:1980)-1849]) #[1] -0.05615611
mean(annual[(1961:1990)-1849]) #[1] -0.05989007
annual<-annual-mean(annual[(1951:1980)-1849])
ts.plot(annual)
lines(1881:1999,v00,col="red")
lines(1881:1999,annual[(1881:1999)-1849]-v00,type="h",lwd=2,col="blue")
range(annual[(1881:1999)-1849]-v00) #[1] -0.3513508 0.2687864
So I’m looking at the maximum negaive and positive variations and see that they total 0.63, which is the total temperature increase alleged for the 20th century. Is it reasonable to draw any inferences or conclusions from this?
It would be nice if we knew the adjustments past 2000 and know how much of the last 10 years warming was their product.
SteveM,
Do you know if anyone has considered filing a “Request for Correction” under the Data Quality Act?
It is interesting that Hansen’s GCM model failed to replicate the temperature trends even after he adjusted all the historical records by the most he thought he could get away with.
Does it seem appropriate that the star who runs the models (that don’t work even though he stakes his star reputation on them) is also the guy who is adjusting the historical temperature records?
Well, I’m on holiday in Fiji, followed by two weeks work in Solomon Islands, so I’ll be in and out. Just wanted to note that I filed a Freedom of Information request for Jones et al.’s HadCRUT data. My request said:
I just received a reply saying:
I’m going to reply, pursuing the list of sites that they actually use … The logic seems a bit tortured, they say they are using the GHCN data, then they say they have sent their data to GHCN … so which is it? Their data, or GHCN’s?
More to follow,
w.
I’m not sure where to put this question to see if anyone can answer.
I put it in the comments at realclimite.org too. Please forgive me if
it’s off topic on this thread but it is at least centered about satellite
data.
I was browsing the NASA interactive satellite temperature data for the troposphere which stretches from 1979 to 2003. It has a global map that’s colored in shades of red for heating and blue for cooling. Flipping through the time sequence it’s obvious that almost all the heating anomalies are in the snow covered far north. South of Canada down to Antarctica isn’t really heating at all. Moreover, there’s a graph of the average temperature anomalies of all areas (below the world map) and that shows that the net of heating and cooling is just about zero. I was wondering what could account for this pattern of heating and cooling and it occured to me that if the albedo of the snow cover in the far north was declining that would do it. So I looked around and dug up a study of snow albedo that appeared in the Journal of Atmospheric Sciences, Volume 37, August 1980 which confirmed that carbon soot from manmade sources (including forest fires) migrates thousands of miles and accumulates on permanent snow cover causing melting and temperature increases. The antarctic is relatively free of soot buildup but the arctic has been well contaminated.
This explains the heating and cooling patterns quite well. How does CO2 greenhouse heating explain these patterns and why is the global average temperature not really increasing if a growing C02 greenhouse situation is responsible?
#4 Wow
Surely the Hockey Stick, The GCM’s, the recasting of Temperature data, anything which is published by the US Government bodies concerned, and that includes Federal and State bodies (maybe State run Universities etc), and NASA etc, is subject to these availability of data, transparency, and calculation reproduceability, and lack of bias rule, and all the info and calculation, availability, and corrections can be enforced under this act.
Willis:
In a litigation, any lawyer refusing to produce documents would be eviscerated by a judge if he used the CRU-UEA argument:
He says that the list of sites differ, versions differ. You shuold definitely appeal.
There’s a nugget of information that’s worth pursuing by an American. The CRU official says that Jones’ CRU collection was sent to NCAR, which is a U.S. federal institution. I think that it would make sense to start a parallel process to the one in England, by making a FOI request to NCAR in the U.S. for the data as supplied by CRU.
It would also make sense while these files are open to try to get at the HadCRUT2 and even HAdCRUT1 versions, since I suspect that these will prove relevant to following their adjustments.
Steve, good points all. I’ll follow up.
Thanks,
w.
re: 7
Dave,
Thank you for the link. This discussion should probably be on the “Unthreaded” thread. SteveM or JohnA may decide to move it over there. This is an interesting topic as I have read Syun Akasofu make the same point that all of the strong warming is in the Arctic north. However, he did not provide any links or sources in my reading of his comments. Thanks again for the link. I will be watching for further discussion.
Mistake Found in IPCC Report
Compare Hansen radiative forcing factors to IPCC 2007 radiative forcing factors (page 4, figure spm-2).
You’ll find all the forcing factors in Hansen fall within the ranges given in IPCC with the exception of black carbon. In Hansen, black carbon (BC) is given a forcing factor of 0.8 (a major factor second only to C02) but in the IPCC report it’s given a factor of 0.1 which makes it trivial.
It appears that someone make a mistake in transcribing data from Hansen to IPCC.
—Please move this wherever appropriate and email me or something so I can return to it. I though this was a pretty good find. A hundred collaborators on the IPCC report and they couldn’t get the Hansen data correctly transcribed into their report. That much difference in forcing factors makes a huge difference in all the conclusions that follow from it!
Dave, it looks like both the Hansen 2005 and IPCC graphs show 0.1 for snow albedo.
What the IPCC did was leave out the biomass burning and fossil fuels bit of the BC bar. This is partially offset by their inclusion of halocarbons.
You’ll also notice that they significantly lowered the values for aerosol effects, which is rather nice for the IPCC since those are negative feedbacks.
Warwick Hughes had this interesting observation about close agreement between HadCRUT2 and MSU data over the USA. Does it still apply to HadCRU3?
link
Willis,
I am amazed at the obfuscating reply from David Palmer, Information Policy Officer, University of East Anglia.
To attempt to confuse the issue by saying in effect, “go get the GHCN data”.
To discover what Jones et al have done you have to have the Jones et al data, not GHCN or GISS or NCAR or anyone else.
My 2001 study “USSR High Magnitude Climate Warming Anomalies 1901-1996 ” at;
http://www.warwickhughes.com/climate/ussr1.htm
folow links to these four regions;
Tarko Sale, Khanty-Mansi Region of Siberia
Far Eastern Siberia, Sea of Ohotsk
Lake Baikal Region
Eastern Kazahkstan – Lake Balkhash
where many graphics demonstrate considerable differences between station data versions used by Jones, GISS, GHCN.
It is utterly laughable and surreal to think anybody can replicate what Jones et al have done with station data by studying GHCN station data.
The best and quickest way I know now to get some understanding of how Jones et al treated station data is to read the 1988 Fred Wood critique and the Wigley and Jones reply, I have both papers scanned at;
http://www.warwickhughes.com/cru86/wood.htm
You can also read my Table where I list;
[1] the 9 points where W & J say Wood was in error,
[2] what I was able to find that Wood actually said and then,
[3] a column of my comments to each of the 9 W & J points.
Warwick, have you posted up the Jones et al 1990 on UHI?
Re #8: Good find. Perhaps there is a basis for bringing charges relating to breaches of the Data Quality Act. Any lawyers out there who can offer a view? I would have thought that there is a strong prima facie case that very serious breaches have been made.
Steve,
RE 16
I have a rebuttal here;
http://www.warwickhughes.com/papers/90lettnat.htm
to the “Jones et al 1990 Letter to Nature:”,
Jones PD, Groisman PYa, Coughlan M, Plummer N, Wangl WC, Karl TR (1990) Assessment of urbanization effects in time series of surface air temperatures over land. Nature 347:169-172
A key brick in the IPCC wall.
I will see if I can hunt down my copy and scan it.
Re 16 Steve,
The Jones et al 1990 Letter to Nature is now scanned (only 4 pages) at;
http://www.warwickhughes.com/papers/90lettnat.htm
Overton
Dave, it looks like both the Hansen 2005 and IPCC graphs show 0.1 for snow albedo.
What the IPCC did was leave out the biomass burning and fossil fuels bit of the BC bar. This is partially offset by their inclusion of halocarbons.
That’s not the case. It’s the cause. If you read the research behind
the Hansen BC data you’ll find that biomass and fossil fuel burning are the
producers of black carbon. Morever, the latest research by NASA concludes
up or over 25% of all global warming is due to black carbon changing planetary
albedo. This is consistent with a forcing of 0.8 not 0.1.
It’s not partially made up for by halocarbons. Halocarbons are labeled “CFC”
in Hansen and labeled Halocarbon in IPCC. The forcing level for CFC in Hansen
is exactly the same as for halocarbons in IPCC. CFCs ARE halocarbons which you
can verify by looking up the terms.
Either someone screwed up or BC data is purposely not shown reflecting the
best data available on its forcing. Either way, the IPCC report has a very
serious flaw that requires explaining.
re #19
Warwick,
In one of your papers cited by the Frazer Institute– http://www.fraserinstitute.ca/admin/books/files/ScienceIsntSettled.pdf –you compared the data from some 27 rural Australian stations 1880-1890 with data from a number of Australian cities over the same period. The results were amazing. Are you, or is anyone else aware, of any similar comparisons done with US temperature data?
Re 21 george h,
Those graphics in the Fraser Institute 2004 paper are from averaged BoM station data, compiled in 1991 after I read the Jones et al 1986 documentation.
Jones PD , Raper SCB, Cherry BSG, Goodess CM, Wigley TML, (1986c) TR027 A Grid Point Surface Air Temperature Data Set for the Southern Hemisphere. Office of Energy Research , Carbon Dioxide Research Division, US Department of Energy. Under Contract No. DE-ACO2-79EV10098
To put it mildly, I was surprised at the extent to which they used urban data and excluded many rural stations.
I am not aware of any similar USA study but there were several late 1980’s US papers that examined “rural-urban pairs”, such as; G. Kukla, J. Gavin, and T.R. Karl (1986) Urban Warming, J. App. Met., Vol 25, pp. 1265’€”1270
and;
Karl TR, Diaz HF, Kukla G, (1988) Urbanization: its detection and effect in the United States climate record J. Climate 1:1099-1123
Both available online at BAMS I think.
http://ams.allenpress.com/perlserv/?request=get-archive
Wood 1988 goes into these issues;
http://www.warwickhughes.com/cru86/wood.htm
and points out how Jones et al 1986 used ~20 urban stations from the station pairs of Kukla, Gavin, and Karl (1986).
RE 7: DaveScot says:
This makes sense if the dominant forcing in the local areas are ice/albedo effects & not GHGs. IMHO, ice/albedo forcing dominates GHGs (which are comprised of mostly water vapor effects & supplimented only to a limited extent by CO2). Snow/albedo effects are dominating the radiative changes right now in my front lawn (low daytime highs compared to snow-free conditions).
#19. Warwick, you gave the link to your rebuttal a second time. What’s the link to the scanned Jones 1990 paper?
Steve,
There are 4 pages linked at the top of Warwick’s rebuttal page that go to the scanned pages.
re 21
I once came across this in a similar vein, although I am not sure of its provenance.
Adrian
re: 20
Dave,
I agree with you to a point. The way I understand it, the Hansen image shows “Black Carbon” with both direct (atmospheric) and indirect (snow albedo) effects. The direct effects are labelled “Fossil fuels” and “Biomass burning.” It seems to me Mann is saying that soot/particulate matter in the atmosphere has a warming effect. Whether this is true or untrue, I do not know. The question then is “Is the IPCC saying Hansen was wrong?” If so, what was Hansen’s error?
The other question is why did the IPCC reduce so dramatically Mann’s view of the cooling from aerosols? What research has come out to prove Mann was wrong on this score? Just for fun – How would the IPCC image look if the cooling had been retained? Giving it an eyeball appraisal, it looks to me like the low end of the error bar on Total Net Anthropogenic might reach zero. What an embarrassment to the IPCC that would be!
26: Jim Goodridge was the origin of the graph. However he later expressed the caveat that some of the effect may be due to the fact that the larger cities are nearer the coast and can be affected by coastal upwelling (I think that was the story). So while it’s visually suggestive, there would need to be some other confounding effects controlled for.
re: #28 Ross,
But cities on the coast would also be subject to sea breezes which should be cooler than typical land breezes. In any case, why would this change over time, regardless of whether a city grew in size or not?
29: More SUVs. Seriously, population in those cities has increased, and people use energy ever more intensively. Even the people, themselves, give off heat at about 100 Watts, if I recall correctly. So a million people = 100 megawatts! Each car produces 25,000 Watts while cruising, and there are a hell of a lot of cars in CA.
30 continued: Assuming LA has about 4 MM people, that’s 4 megawatts of people heat. Area of LA = 1,291 KM-2. So the people forcing factor (PPF) is 4 X 10^8 Watts/ 1.29 X 10^9 M = 0.3 Watts/M-2. Using IPCCs estimate of temperature rise for a 4 Watt increase in heat (1.5 to 4.5 deg C), the PPF translates into a temperature rise of 0.11 to 0.34 deg. C. If you add the cars, energy for buildings, etc., you get a very substantial increase. I could easily see a 1 degree gradual increase over the past 70 years.
re: #31 Jae,
In your first line that should be 400 megawatts of people heat (though you do have the the math worked properly so it’s strictly a typo.)
re: 30
Jae,
Do you have a citation (hopefully a link) for people giving off 100 watts? That is certainly an interesting number.
re: #33 Ron,
Actually you shouldn’t need a citation. You should be able to calculate it quite easily. Here’s a hint. 1 horsepower = .74 kw. Looking farther in my CRC tables I see that a kcal is 1.16 watt hour. So 100 kcal = 116 watt hours. So 100*100*24/116 = 2068 kcal per day. This appears to be a bit larger than what a typical person might consume a day, so I expect it’s closer to 75 watts than 100. But at least it’s in the right order of magnitude. I suppose there’s also the matter of what amount of calories are excreted rather than burned, but again the figure isn’t far off.
re: 34
Dave,
Thank you for the explanation. The number does seem reasonable now. However, for my purposes, I still need a citation. I’m here mainly because I hope to find information I can use to explain the science to Wikipedia readers. Wikipedia requires information be verifiable. So, if anyone has a citation that will take everything into account, including excretions, I would appreciate it.
RE: #14 – The continuous conurbation of Southern Ventura County-LA-Orange County-Inland Empire has on the order of 16M poeple.
Ron: here’s one reference. Just google human energy.
re: 37
Jae,
I found this indicating the average seated relaxed person would give off 104 Watts of heat. This is in line with your post. However, what I would really like to find is a peer-reviewed article that applies this to climate as you have. Another Wikipedia policy is “No Original Research.” I cannot reproduce the calculations and expect other editors to accept it. I will keep looking.
re:37
Jae,
I found this exchange on Roger Pielke Sr’s site:
I thought you might find it interesting. Hopefully I can find the text book and quote it for Wikipedia.
Interestingly, each person in the USA also releases about another 10,600 Watts through energy use.
Per capita energy use in the USA is 7,795 kg oil equivalent. One kg oil = 43 x 10^6 joules. So per capita energy use ‘€” 7,795*43 x 10^6 = 335 x 10^9 joules/yr. If one assumes this energy use is spread out evenly throughout a year, it is equivalent to 335 x 10^9 / 3.15 x 10^7 sec/yr = 10,600 Watts.
So energy use produces 106 times more heat than human metabolism. Multiplying my factors in #31 by 107 gives 32 watts/m^2 and a hypothetical temperature increase of 11.8 to 36.4 deg C. Of course, this doesn’t make sense, since much of the heat is dissipated outside the city, and since IPCCs sensitivity figures are bogus. However, if one uses the better sensitivity estimate of 0.1 deg/W, one obtains a 3.2 degree rise, which is entirely possible, since EPA says cities can be more than 10 deg. F hotter than surrounding areas).
Then, you add the unknown amount of heat increase caused by converting greenish fields to concrete and asphalt. Just try to convince me that there’s no UHI effect!
#34
“2068 kcal per day. This appears to be a bit larger than what a typical person might consume a day,”
You’re kidding, right? Supersize that BK Stacker Quad and 2000 kcal is lunch.
Brings up another point – even if population is constant, the heat dissapation from all of those fattening asses could probably cover the spread predicted by ‘global warming’. Not to mention the unmodeled CH4 …
🙂
RE: #41 – I saw that garlic extract was being tried to combat bovine CH4, however, when I consume garlic itself, we’re talking CH4 city …. think “Blazing Saddles” … on that “note” (pun intended) … 🙂
I have followed up with Mr. Palmer regarding the FOI request for Jones’ data as follows:
The beat goes on … sorry for my absence from the discussion, I’ve been on a consulting job in the Solomon Islands. Got to fly over the ITCZ a couple of times and look at the Hadley Cells from the air, always awesome.
w.
HadCRUT2v is online here …
w.
Both CRU and GISS temperature versions from 1992 are available from here. I wish someone had some time to take a look at those.
Took monthly SST and ST(250km smoothing) from here:
http://data.giss.nasa.gov/gistemp/time_series.html
Then calculated the weighted mean by ocean/land area (3*SST+1*ST)/4.
Compared this to the Jan2007-warmest-month-stuff:
http://data.giss.nasa.gov/gistemp/tabledata/GLB.Ts+dSST.txt
Plotted the difference.
Results available here:
GISS global mean comparison
???
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