AGW Bombshell? A new paper shows statistical tests for global warming fails to find statistically significant anthropogenic forcing

graphic_esd_cover_homepage[1]From the journal Earth System Dynamics billed as “An Interactive Open Access Journal of the European Geosciences Union” comes this paper which suggests that the posited AGW forcing effects simply isn’t statistically significant in the observations, but other natural forcings are.

“…We show that although these anthropogenic forcings share a common stochastic trend, this trend is empirically independent of the stochastic trend in temperature and solar irradiance. Therefore, greenhouse gas forcing, aerosols, solar irradiance and global temperature are not polynomially cointegrated. This implies that recent global warming is not statistically significantly related to anthropogenic forcing. On the other hand, we find that greenhouse gas forcing might have had a temporary effect on global temperature.”

This is a most interesting paper, and potentially a bombshell, because they have taken virtually all of the significant observational datasets (including GISS and BEST) along with solar irradiance from Lean and Rind, and CO2, CH4, N2O, aerosols, and even water vapor data and put them all to statistical tests (including Lucia’s favorite, the unit root test) against forcing equations. Amazingly, it seems that they have almost entirely ruled out anthropogenic forcing in the observational data, but allowing for the possibility they could be wrong, say:

“…our rejection of AGW is not absolute; it might be a false positive, and we cannot rule out the possibility that recent global warming has an anthropogenic footprint. However, this possibility is very small, and is not statistically significant at conventional levels.”

I expect folks like Tamino (aka Grant Foster) and other hotheaded statistics wonks will begin an attack on why their premise and tests are no good, but at the same time I look for other less biased stats folks to weigh in and see how well it holds up. My sense of this is that the authors of Beenstock et al have done a pretty good job of ruling out ways they may have fooled themselves. My thanks to Andre Bijkerk and Joanna Ballard for bringing this paper to my attention on Facebook.

The abstract and excerpts from the paper, along with link to the full PDF follows.

Polynomial cointegration tests of anthropogenic impact on global warming

M. Beenstock1, Y. Reingewertz1, and N. Paldor2

1Department of Economics, the Hebrew University of Jerusalem, Mount Scopus Campus, Jerusalem, Israel

2Fredy and Nadine Institute of Earth Sciences, the Hebrew University of Jerusalem, Edmond J. Safra campus, Givat Ram, Jerusalem, Israel

 Abstract. 

We use statistical methods for nonstationary time series to test the anthropogenic interpretation of global warming (AGW), according to which an increase in atmospheric greenhouse gas concentrations raised global temperature in the 20th century. Specifically, the methodology of polynomial cointegration is used to test AGW since during the observation period (1880–2007) global temperature and solar irradiance are stationary in 1st differences whereas greenhouse gases and aerosol forcings are stationary in 2nd differences. We show that although these anthropogenic forcings share a common stochastic trend, this trend is empirically independent of the stochastic trend in temperature and solar irradiance. Therefore, greenhouse gas forcing, aerosols, solar irradiance and global temperature are not polynomially cointegrated. This implies that recent global warming is not statistically significantly related to anthropogenic forcing. On the other hand, we find that greenhouse gas forcing might have had a temporary effect on global temperature.

Introduction

Considering the complexity and variety of the processes that affect Earth’s climate, it is not surprising that a completely satisfactory and accepted account of all the changes that oc- curred in the last century (e.g. temperature changes in the vast area of the Tropics, the balance of CO2 input into the atmosphere, changes in aerosol concentration and size and changes in solar radiation) has yet to be reached (IPCC, AR4, 2007). Of particular interest to the present study are those  processes involved in the greenhouse effect, whereby some of the longwave radiation emitted by Earth is re-absorbed by some of the molecules that make up the atmosphere, such as (in decreasing order of importance): water vapor, car- bon dioxide, methane and nitrous oxide (IPCC, 2007). Even though the most important greenhouse gas is water vapor, the dynamics of its flux in and out of the atmosphere by evaporation, condensation and subsequent precipitation are not understood well enough to be explicitly and exactly quantified. While much of the scientific research into the causes of global warming has been carried out using calibrated gen- eral circulation models (GCMs), since 1997 a new branch of scientific inquiry has developed in which observations of climate change are tested statistically by the method of cointegration (Kaufmann and Stern, 1997, 2002; Stern and Kauf- mann, 1999, 2000; Kaufmann et al., 2006a,b; Liu and Ro- driguez, 2005; Mills, 2009). The method of cointegration, developed in the closing decades of the 20th century, is intended to test for the spurious regression phenomena in non-stationary time series (Phillips, 1986; Engle and Granger, 1987). Non-stationarity arises when the sample moments of a time series (mean, variance, covariance) depend on time. Regression relationships are spurious1 when unrelated non- stationary time series appear to be significantly correlated be- cause they happen to have time trends.

The method of cointegration has been successful in detecting spurious relationships in economic time series data.

Indeed, cointegration has become the standard econometric tool for testing hypotheses with nonstationary data (Maddala, 2001; Greene, 2012). As noted, climatologists too have used cointegration to analyse nonstationary climate data (Kauf- mann and Stern, 1997). Cointegration theory is based on the simple notion that time series might be highly correlated even though there is no causal relation between them. For the relation to be genuine, the residuals from a regression between these time series must be stationary, in which case the time series are “cointegrated”. Since stationary residuals mean- revert to zero, there must be a genuine long-term relationship between the series, which move together over time because they share a common trend. If on the other hand, the resid- uals are nonstationary, the residuals do not mean-revert to zero, the time series do not share a common trend, and the relationship between them is spurious because the time series are not cointegrated. Indeed, the R2 from a regression between nonstationary time series may be as high as 0.99, yet the relation may nonetheless be spurious.

The method of cointegration originally developed by En- gle and Granger (1987) assumes that the nonstationary data are stationary in changes, or first-differences. For example, temperature might be increasing over time, and is there- fore nonstationary, but the change in temperature is station- ary. In the 1990s cointegration theory was extended to the case in which some of the variables have to be differenced twice (i.e. the time series of the change in the change) be- fore they become stationary. This extension is commonly known as polynomial cointegration. Previous analyses of the non-stationarity of climatic time series (e.g. Kaufmann and Stern, 2002; Kaufmann et al., 2006a; Stern and Kaufmann, 1999) have demonstrated that global temperature and solar irradiance are stationary in first differences, whereas green- house gases (GHG, hereafter) are stationary in second differ- ences. In the present study we apply the method of polyno- mial cointegration to test the hypothesis that global warming since 1850 was caused by various anthropogenic phenom- ena. Our results show that GHG forcings and other anthropogenic phenomena do not polynomially cointegrate with global temperature and solar irradiance. Therefore, despite the high correlation between anthropogenic forcings, solar irradiance and global temperature, AGW is not statistically significant. The perceived statistical relation between tem- perature and anthropogenic forcings is therefore a spurious regression phenomenon.

Data and methods

We use annual data (1850–2007) on greenhouse gas (CO2, CH4 and N2O) concentrations and forcings, as well as on forcings for aerosols (black carbon, reflective tropospheric aerosols). We also use annual data (1880–2007) on solar irradiance, water vapor (1880–2003) and global mean tem- perature (sea and land combined 1880–2007). These widely used secondary data are obtained from NASA-GISS (Hansen et al., 1999, 2001). Details of these data may be found in the Data Appendix.

We carry out robustness checks using new reconstructions for solar irradiance from Lean and Rind (2009), for globally averaged temperature from Mann et al. (2008) and for global land surface temperature (1850–2007) from the Berkeley Earth Surface Temperature Study.

Key time series are shown in Fig. 1 where panels a and b show the radiative forcings for three major GHGs, while panel c shows solar irradiance and global temperature. All these variables display positive time trends. However, the time trends in panels a and b appear more nonlinear than their counterparts in panel c. Indeed, statistical tests reported be- low reveal that the trends in panel c are linear, whereas the trends in panels a and b are quadratic. The trend in solar irradiance weakened since 1970, while the trend in temperature weakened temporarily in the 1950s and 1960s.

The statistical analysis of nonstationary time series, such as those in Fig. 1, has two natural stages. The first consists of unit root tests in which the data are classified by their order and type of nonstationarity. If the data are nonstationary, sample moments such as means, variances and co- variances depend upon when the data are sampled, in which event least squares and maximum likelihood estimates of parameters may be spurious. In the second stage, these nonstationary data are used to test hypotheses using the method of cointegration, which is designed to distinguish between genuine and spurious relationships between time series. Since these methods may be unfamiliar to readers of Earth System Dynamics, we provide an overview of key concepts and tests.

clip_image002

Fig. 1. Time series of the changes that occurred in several variables that affect or represent climate changes during the 20th century. a) Radiative forcings (rf, in units of W m−2) during 1880 to 2007 of CH4 (methane) and CO2 (carbon dioxide); (b) same period as in panel a but for Nitrous-Oxide (N2O); (c) solar irradiance (left ordinate, units of W m−2) and annual global temperature (right ordinate, units of ◦C) during 1880–2003.

[…]

3 Results

3.1 Time series properties of the data

Informal inspection of Fig. 1 suggests that the time series properties of greenhouse gas forcings (panels a and b) are visibly different to those for temperature and solar irradiance (panel c). In panels a and b there is evidence of acceleration, whereas in panel c the two time series appear more stable. In Fig. 2 we plot rfCO2 in first differences, which confirms by eye that rfCO2 is not I (1), particularly since 1940. Similar figures are available for other greenhouse gas forcings. In this section we establish the important result that whereas the first differences of temperature and solar irradiance are trend free, the first differences of the greenhouse gas forcings are not. This is consistent with our central claim that anthropogenic forcings are I (2), whereas temperature and solar irradiance are I (1).

image

Fig. 2. Time series of the first differences of rfCO2.

What we see informally is born out by the formal statistical tests for the variables in Table 1.

image

Although the KPSS and DF-type statistics (ADF, PP and DF-GLS) test different null hypotheses, we successively increase d until they concur. If they concur when d = 1, we classify the variable as I (1), or difference stationary. For the anthropogenic variables concurrence occurs when d = 2. Since the DF-type tests and the KPSS tests reject that these variables are I (1) but do not reject that they are I (2), there is no dilemma here. Matters might have been different if according to the DF-type tests these anthropogenic variables are I (1) but according to KPSS they are I (2).

The required number of augmentations for ADF is moot. The frequently used Schwert criterion uses a standard formula based solely on the number of observations, which is inefficient because it may waste degrees of freedom. As mentioned, we prefer instead to augment the ADF test until its residuals become serially independent according to a la- grange multiplier (LM) test. In most cases 4 augmentations are needed, however, in the cases of rfCO2, rfN2O and stratospheric H2O 8 augmentations are needed. In any case, the classification is robust with respect to augmentations in the range of 2–10. Therefore, we do not think that the number of augmentations affects our classifications. The KPSS and Phillips–Perron statistics use the standard nonparametric Newey-West criteria for calculating robust standard errors. In practice we find that these statistics use about 4 autocorrelations, which is similar to our LM procedure for determining the number of augmentations for ADF.

[…]

Discussion

We have shown that anthropogenic forcings do not polynomially cointegrate with global temperature and solar irradiance. Therefore, data for 1880–2007 do not support the anthropogenic interpretation of global warming during this period. This key result is shown graphically in Fig. 3 where the vertical axis measures the component of global temperature that is unexplained by solar irradiance according to our estimates. In panel a the horizontal axis measures the anomaly in the anthropogenic trend when the latter is derived from forcings of carbon dioxide, methane and nitrous oxide. In panel b the horizontal axis measures this anthropogenic anomaly when apart from these greenhouse gas forcings, it includes tropospheric aerosols and black carbon. Panels a and b both show that there is no relationship between temperature and the anthropogenic anomaly, once the warming effect of solar irradiance is taken into consideration.

However, we find that greenhouse gas forcings might have a temporary effect on global temperature. This result is illustrated in panel c of Fig. 3 in which the horizontal axis measures the change in the estimated anthropogenic trend. Panel c clearly shows that there is a positive relationship between temperature and the change in the anthropogenic anomaly once the warming effect of solar irradiance is taken into consideration.

clip_image002[6]

Fig. 3. Statistical association between (scatter plot of) anthropogenic anomaly (abscissa), and net temperature effect (i.e. temperature minus the estimated solar irradiance effect; ordinates). Panels (a)(c) display the results of the models presented in models 1 and 2 in Table 3 and Eq. (13), respectively. The anthropogenic trend anomaly sums the weighted radiative forcings of the greenhouse gases (CO2, CH4 and N2O). The calculation of the net temperature effect (as defined above) change is calculated by subtracting from the observed temperature in a specific year the product of the solar irradiance in that year times the coefficient obtained from the regression of the particular model equation: 1.763 in the case of model 1 (a); 1.806 in the case of model 2 (b); and 1.508 in the case of Eq. (13) (c).

Currently, most of the evidence supporting AGW theory is obtained by calibration methods and the simulation of GCMs. Calibration shows, e.g. Crowley (2000), that to explain the increase in temperature in the 20th century, and especially since 1970, it is necessary to specify a sufficiently strong anthropogenic effect. However, calibrators do not re- port tests for the statistical significance of this effect, nor do they check whether the effect is spurious. The implication of our results is that the permanent effect is not statistically significant. Nevertheless, there seems to be a temporary anthropogenic effect. If the effect is temporary rather than permanent, a doubling, say, of carbon emissions would have no long-run effect on Earth’s temperature, but it would in- crease it temporarily for some decades. Indeed, the increase in temperature during 1975–1995 and its subsequent stability are in our view related in this way to the acceleration in carbon emissions during the second half of the 20th century (Fig. 2). The policy implications of this result are major since an effect which is temporary is less serious than one that is permanent.

The fact that since the mid 19th century Earth’s temperature is unrelated to anthropogenic forcings does not contravene the laws of thermodynamics, greenhouse theory, or any other physical theory. Given the complexity of Earth’s climate, and our incomplete understanding of it, it is difficult to attribute to carbon emissions and other anthropogenic phenomena the main cause for global warming in the 20th century. This is not an argument about physics, but an argument about data interpretation. Do climate developments during the relatively recent past justify the interpretation that global warming was induced by anthropogenics during this period? Had Earth’s temperature not increased in the 20th century despite the increase in anthropogenic forcings (as was the case during the second half of the 19th century), this would not have constituted evidence against greenhouse theory. However, our results challenge the data interpretation that since 1880 global warming was caused by anthropogenic phenomena.

Nor does the fact that during this period anthropogenic forcings are I (2), i.e. stationary in second differences, whereas Earth’s temperature and solar irradiance are I (1), i.e. stationary in first differences, contravene any physical theory. For physical reasons it might be expected that over the millennia these variables should share the same order of integration; they should all be I (1) or all I (2), otherwise there would be persistent energy imbalance. However, during the last 150 yr there is no physical reason why these variables should share the same order of integration. However, the fact that they do not share the same order of integration over this period means that scientists who make strong interpretations about the anthropogenic causes of recent global warming should be cautious. Our polynomial cointegration tests challenge their interpretation of the data.

Finally, all statistical tests are probabilistic and depend on the specification of the model. Type 1 error refers to the probability of rejecting a hypothesis when it is true (false positive) and type 2 error refers to the probability of not rejecting a hypothesis when it is false (false negative). In our case the type 1 error is very small because anthropogenic forcing is I (1) with very low probability, and temperature is polynomially cointegrated with very low probability. Also we have experimented with a variety of model specifications and estimation methodologies. This means, however, that as with all hypotheses, our rejection of AGW is not absolute; it might be a false positive, and we cannot rule out the possibility that recent global warming has an anthropogenic footprint. However, this possibility is very small, and is not statistically significant at conventional levels.

Full paper: http://www.earth-syst-dynam.net/3/173/2012/esd-3-173-2012.pdf

Data Appendix.

image

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mpainter
January 4, 2013 8:26 pm

On a thread a few weeks ago I tricked Shehan into admitting that GCM’s were incapable of any sort of forecasting but could only project an indefinite warming trend. When he realized what he had done he tried to shift his line and wriggle out, but it was too late.

Philip Shehan
January 5, 2013 1:43 am

D Boehm,
You are still blowing smoke. Yes I cherry picked some short term data sets precisely to show that the preferred skeptic cherry pick starting with the extreme el nino southern summer of 1997-98 is contradicted by cherry picks starting at 1996 and 1999, thus demonstrtaing that by cherring picking you can argue any point you like. (Take note JP Miller) Therefore long term trends must be examined,
The data sets you provide beginning in 1850, which if properly examined after removal at your attempt to flatten the graph with bogus irrelevant lines, clearly show an accelerating trend. If you care to actually look at the data set in the figure from skeptical science, you will note that it is essentially the same temperature data set you present but is mathematically fitted by a non linear accelerating curve which is superior to your linear fit. It is thus no more a John Cook cartoon than your own presentation.
I do not feed at the public trough, unless you consider that being involved in cancer research at the University of Melbourne merits that label. It does demonstrate however that I know how to analyse scientific data, and can spot a shifty move and misrepresentation when I see it.

January 5, 2013 6:13 am

Philip Shehan:
Your post at January 5, 2013 at 1:43 am concludes saying

I know how to analyse scientific data, and can spot a shifty move and misrepresentation when I see it.

There is no need for you to be so modest.
Your posts in this thread clearly demonstrate your skills at misrepresenting data.
However, the data clearly and unambiguously show that global warming has stalled for the most recent ~16 years, and it is not possible for you to spin that stalling as being consistent with “acceleration” of global warming (unless you mean negative acceleration).
It is time for you to desist. If there are people reading this thread who are sufficiently gullible as to be gulled by your misrepresentation then you have already misled them. And you are demeaning yourself in the eyes of everyone who is not that gullible.
Richard

Graham W
January 5, 2013 6:41 am

Shehan – the trouble I have is when people suggest that the trend in temperatures is accelerating. Look at the data:
http://www.woodfortrees.org/plot/hadcrut4gl/from:1970/to:2013
Can anyone honestly look at that graph and say that the trend is accelerating? I think if you can, you are lying to yourself…and it’s the same with any of the datasets. Now the whole thing with the big El Niño year, 97-98, yes you can see the source of controversy, let’s also be honest. It does make a big difference to whether you can claim the trend stopped/slowed down 15/16 years ago or less than that. Whatever your opinion on that though, NO-ONE should be able to look at the data overall and say “clearly temperature increase is accelerating”…because onviously the exact opposite has happened, regardless of WHEN you say the change has occurred. It’s clear that over AT LEAST the last ten years, the rate has slowed, either to zero increase, or a very, very insignificant amount (possibly even decreasing, when you look over the more recent years). Much less than the value of the trend from the 1970s to late 90s. This is clear just from looking at the data, with no statistical analysis at all, just interpreting the graph. The trend CANNOT be said to be increasing whatever way you look at it, and it’s as simple as that. No need for “cherry-picking” to rebut the statement of increased warming trend, it’s just simple observable fact that it’s not the case.

.Allen B. Eltor
January 5, 2013 9:08 am

When you’re asking yourself just how much mankind’s input to atmospheric temperatures, can possibly be, remember this: there is a movie by PBS called “400 Years of the Telescope” and it is very, very good; it takes us in a HIGHLY sped-up way from the very first monocular ship-to-ship magnifier scopes that gave a power of three magnification, to Galileo getting his hands on one; to Galileo building a bigger one and then on to people putting the first ones on mountains which were truly comparable to today. After this short intro into telescopic usage we are brought through the power of some GREAT editing into the modern electronically enhanced telescopes: every single type and kind is shown around the world and described as only a highly skilled video maker can do, and PBS gets it right as they spam you a history of the telescope.
Enter into the era when we began putting space-based telescopes into action.
Also the era when men began to make mirrors by filling the back with foam and pouring the glass mirror over a lightweight reinforcing lattice; and then, making many of these nearly perfect mirrors into tiles, which are used to construct truly gigantic mirrors themselves.
And enter into the era when expensive earth based telescopes have their mirrors bent by applying vacuum to the mirror, erasing the movement of atmospheric air due to heat wafting up from the earth’s surface.
These machines are COMPUTER CONTROLLED and can X out nearly ALL atmospheric gas movement over time, and yet, in all the past years since their invention, not one person who operates these telescopes has come out and told the world that not only do the computer driven mirror bending assemblies have to bend mirrors more and more, but that it’s directly seen that the hotter the atmosphere gets due to earth-shine frequency infrared light/heat wafting up.
No, to the contrary in the movie the people explaining the history of the scope while going into great detail about SO MUCH of the usage of these ground based scopes never mention ONE WORD about RISING HEAT in RECENT DECADES MAKING THE SCOPES’ MIRRORS NEED MORE FLEX.
Not one WORD????
Not
One
Not
Ever.
None.
Amazing isn’t it.
Think about this: in the past ten years ALONE, atmospheric CO2 has risen by A THIRD.
And not ONE WORD from a SINGLE SOUL about discovering MORE ATMOSPHERIC INFRARED?
From the SPACE BASED INFRARED ASTRONOMY field, not ONE word.
From the EARTH BASED INFRARED ASTRONOMY field, not ONE word.
From the EARTH BASED OPTICAL ASTRONOMY field, not ONE word.
In the past thirty years not ONE word from two VASTLY technologically adept fields whose ENTIRE EXISTENCE is DEPENDENT on knowing eXACTLY how much heat is in the atmosphere
so they can remove it’s effects from photographs of the sky
about how the Greenhouse Gas Effect is increasing the amount of infrared light in the atmosphere right in accordance with every other field of science we have, like the fields which sent those rovers to mars and landed them. They seemed to have a general idea of atmospheric density/energy conditions when they landed those,
but here on earth, the largest heater in the world, is – count my words, people: U.T.T.E.R.L.Y. UNDETECTABLE by ANYONE from ANY FIELD which measures light/heat in the atmosphere at ALL – the world’s LARGEST HEATER
is UTTERLY UNDETECTED?
Or there is no CO2 associated warming?
Which? And if there is ZERO associated warming while CO2 levels spiked upward by a third
then again just where is the science ‘proving’ there’s even any Greenhouse Gas effect, at ALL?
And where are the apologies to the DOZENS of scientists, the HUNDREDS of science field employees who told everyone who wouldn’t listen in MSM for the past decade, this is how it was always going to turn out?
Where is the admission by people worldwide who bought into this bunk and insulted those now proven to be their scientific betters, that they bought undrinkable Kool-Aid?
It’s disgraceful is what it is, and hundreds of thousands of texts have been written with this drivel as part of their ‘science’ sections.

Allen B. Eltor
January 5, 2013 9:25 am

A netflix link to the PBS movie; it’s well made and extremely important because it displays just how much lying and hubris go on regarding whether it’s ‘really possible to tell’ whether there’s a heating component associated with rising CO2.
https://movies.netflix.com/WiMovie/400_Years_of_the_Telescope/70116865?locale=en-US

Matthew R Marler
January 5, 2013 10:35 am

Philip Shehan: The data sets you provide beginning in 1850, which if properly examined after removal at your attempt to flatten the graph with bogus irrelevant lines, clearly show an accelerating trend.
There is a difference between saying “The Earth has warmed since 1850” and saying “The Earth is warming.” Looking at the data of the last 16 years, it is hard to claim that the Earth “is warming”. Now your claim that the data, if “properly examined”, “clearly show” an accelerating trend is more dubious still. Perhaps you could elaborate on your concept of “properly examined” data, and show clearly where there is any recent acceleration in the data.

Matthew R Marler
January 5, 2013 10:44 am

Philip Shehan: Your linear fit, stripped of the camoflage is inferior to the nonlinear fit:
That’s it? You fit one more model and stop because it displays what you want? You could get a much better fit with Bayesian Adaptive Regression Splines, or any of the many modern curve-fitting techniques: Fourier series, wavelets, polynomials of higher degree, piecewise exponentials. You might even try “basis pursuit”. Then you might evaluate whether, all things considered, some fits are better than others (model F, Akaike Information Criterion, Fisher Information of the parameters), and whether the best fits support or do not support your claim of acceleration.
But to select one more model and then claim it as the “proper examination” of the data is naive almost beyond words.

Matthew R Marler
January 5, 2013 10:59 am

John Whitman: But, to do exactly what they did with different data sets is very facilitated by their willingness to have the paper completely open and transparent in all respects.
I am glad you wrote that. In particular, every data set cited in AR(5) can be analyzed using this method, in order to determine whether any temperature/CO2/Solar/other multivariate time series shows a strong CO2 effect. And for people who like Granger causality, this is the natural extension to nonlinear relations between antecedents and “consequences” (Granger causality basically says: If there is a causal relationship of antecedents to consequences, this is a way to measure its strength; true tests of causality require interventions.)

D Böehm
January 5, 2013 11:01 am

Allen Eltor,
Satellite measurements using instruments specifically designed to measure global temperatures clearly show that CO2 levels rise because global temperatures are rising, not vice-versa.
There are no comparable measurements showing that CO2 causes temperatures to rise. AGW may exist, but it is simply too small to measure, therefore it can be completely disregarded. AGW is nothing but a false alarm designed to extract money from a worried populace. In the real world, AGW is insignificant.

mpainter
January 5, 2013 12:30 pm

.Allen B. Eltor says: January 5, 2013 at 9:08 am
Think about this: in the past ten years ALONE, atmospheric CO2 has risen by A THIRD.
===============================
Yes, and I don’t need to think but a second to conclude that
1) You SHOUT to make a point
2) Your points are egregiously wrong as in above.
3) You are of the species of numb-brain SHOUTERS who come here from time to time, and the subject is way past you.

January 5, 2013 2:37 pm

Matthew R Marler says:
January 4, 2013 at 1:06 pm
[ . . . ]
1. The standard [criticism]: it is really hard to infer causation from vector time series without interventions (interventions can be conducted in chemical process control, where the VAR processes have been used with success.) All they have shown, with that caveat in mind, is that it is possible, contrary to a claim by IPCC AR(4), to create and estimate a reasonable model for 20th century temperature change that gives little or no weight to CO2 changes. In a sense, this is a complicated counterpoise to Vaughan Pratt’s modeling of a few weeks ago, in which he showed that: assuming a functional form for the CO2 effect he could estimate a filter to reveal that functional form. In each case, by enlarging the total field of functions under consideration, you can generally get a model to justify any a priori chosen conclusion.
[ . . . ]

– – – – – – – –
Matthew R Marler,
Your use of the word ‘counterpoise’ in comparing this Beenstock et al paper with Vaughan Pratt’s modeling (at Curry’s place a few weeks ago) would to me indicate one approach somehow statistically uses a counterbalancing methodology that is fundamentally opposite/inverse of the approach of the other. Did I get that right?
Can you explain further? I would sincerely appreciate it. I am intrigued by the statistical significance of the differences in their approaches might imply. Although I am a retired engineer, statistics at the level you discuss makes me regret not having pursued more statistical knowledge.
John

January 5, 2013 3:30 pm

D Böehm says:
January 5, 2013 at 11:01 am
Allen Eltor,
Satellite measurements using instruments specifically designed to measure global temperatures clearly show that CO2 levels rise because global temperatures are rising, not vice-versa.

No CO2 levels rise because of combustion emissions into the atmosphere with a small modulation due to temperature, your own graphs show this!

D Böehm
January 5, 2013 4:58 pm

Phil says:
“CO2 levels rise because of combustion emissions into the atmosphere with a small modulation due to temperature, your own graphs show this!”
Wrong again, and you are alone here in making that claim. The Wood For Trees chart I posted shows very clearly that ∆CO2 follows ∆T. Here is another chart that shows the same thing: ∆T causes ∆CO2. There is no measurable scientific evidence that shows the reverse. There may be a slight warming effect from rising CO2, but the effect is inconsequential, and on balance it is beneficial.
The alarmist crowd got cause and effect mixed up right from the beginning, and now their consternation over the fact that the planet is not doing what they predicted is because of their original faulty premise.

Philip Shehan
January 5, 2013 5:19 pm

Matthew Marler et al.
Once again I point out that my remarks began (Philip Shehan says:
January 4, 2013 at 8:43 am) as a comment on the temperature data the authors present from 1880 to the present (or more precisely 2007) where they claim that an “informal” examination of the data shows no acceleration in temperatures.
I contend that even to the untrained eye an “informal” (eyeballing) of the data shows that there has been an increase in the rate of warming over that period which is supported by “formal” curve fitting to linear and non linear functions.
Of course if you whish to do so you can get an even better fit with ever more complex mathematical functions. (I have experience in the application of such functions in the removal of baseline artifacts in Nuclear Magnetic Resonance Spectra.) With noisy data such as temperature over the period under discussion, you can always improve the fit with ever more complex fits but that tells you nothing about the underlying reality of the real time-temperature dependence without noise and accounting for all possible variables where temperature is clearly dependent on multiple real world forcing factors.
But again, debates with what happens if you examine an almost infinite supply of short term data subsets from the full data set (cherry picking) is, if you will pardon the expression, to lose sight of the wood for the trees.
Back to the point: An informal eyeballing, the application of a linear fit and a simple non linear fit (unfortunately whereas does give the r2 value it does not give the function but it appears to be a second order polynomial or exponential) for their temperature data from 1880 to 2007 in figure 3 does not support the no increase in rate assertion.
I only assert that the exponential fit is superior to the (debogussed) linear fit provided by D. Boehm for that period, which unfortunately does not have an r2 value but I suggest that if you cannot come to that conclusion by eyeballing the fits with the data, we must agree to differ.
Finally at the risk of producing more off-the-central-point discussion, with regard to your statement ‘There is a difference between saying “The Earth has warmed since 1850″ and saying “The Earth is warming.”’ Entirely agree. But again we are discussing a figure in the paper covering 1880 to 2007, or as a consequence of further discussion from 1850 to the present.
Mathematically, it is not possible to say what trend is happening at “the present”, at this instant in time. We can only discuss, as we have been doing, what trends are for a period of time in the past which may indeed conclude with the instant you are reading this.
I would also like to point out that nowhere in this analysis do I assert that there is a cause and effect relationship between time and temperature, still less a cause and effect relationship between greenhouse gas concentration and temperature.
Having a great deal of experience in analysing data in this way, I found the assertion by the authors in the caption to the figure untenable. I would have precisely the same opinion if the data were for stock prices or Norwegian lemming population. I suspect however that those here who cannot see an increase in the rate would see it differently in those cases.

D Böehm
January 5, 2013 6:06 pm

Shehan says:
“I suspect however that those here who cannot see an increase in the rate” of global warming…
It appears that the only blinkered commenter here who can’t see reality is Shehan, who believes despite verifiable empirical evidence that global temperatures are currently accelerating upward. As the chart clearly shows, there has been no rising — much less, accelerating — temperature trend over the past decade. Global warming has halted, despite steadily rising CO2.
It gets tedious showing what is happening in the real world, but with such high site traffic it is best to make sure that new WUWT readers are made aware of the overwhelming scientific evidence that debunks the kind of climate alarmism and pseudo-scientific nonsense that Shehan has been peddling in this thread.

Allen B. Eltor
January 5, 2013 6:28 pm

Noting mpainter seemingly, about to have a stroke, I re-read, what I wrote.
There are two typos: I said “Atmospheric CO2″ when I should have said
” MAN MADE atmospheric CO2″
risen about a third, since 1998 , which is fifteen years, not ten.
http://wattsupwiththat.com/2012/12/06/a-problem-nearly-one-third-of-co2-emissions-occured-since-1998-and-it-hasnt-warmed/
So the sentence should say ‘MAN MADE CO2’ and FIFTEEN years not ten.

Allen B. Eltor
January 5, 2013 6:37 pm

Why in the world someone would be so offended over something obviously typographical in nature, is pleasantly, beyond me.

Philip Shehan
January 5, 2013 9:14 pm

Once again, Boehm demonstrates that he is utterly incapable of sticking to the point of this thread: whether the data from 1880 to 2007 displayed in Fig 3 of the paper displays an accelerated warming trend.
He has now gone to reducing his prefered short term cherry pick of 1998 to the present (but not 1996 or 1997, because that does not give him his desired result) to the period from 2003 to the present. And yet again I must point out that none of this has any relevance to the argument put by the authors as to the trend for the period 1880 to 2007.
He has failed to answer my earlier query:
Why didn’t you pick the 15 year period between 1940 and 1955 to prove that temperatures from 1880 to present have been dropping?
http://www.woodfortrees.org/plot/gistemp-dts/from:1940/to:1955/plot/gistemp-dts/from:1940/to:1955/trend
And a late reply to Graham W says:
January 5, 2013 at 6:41 am…
I agree that the data from 1970 to the present is incapable of showing an accelerating trend for that period. I believe I made the point in one of my posts above (excuse me if I don’t go looking for it) that when data is sufficiently noisy or covers a short period , a straight line fit is the best you can hope for. Of course if I take your data set and make it even more restricted in time, the resulting graph shows no trend whatsoever. Its just too noisy:
http://www.woodfortrees.org/plot/hadcrut4gl/from:1987/to:1995
If you can improve the signal to noise level within time period of your chosen data set (not possible with the temperature data here, but possible with Fourier transform NMR spectoscopy by accumulating more data – S/N improves with the square root of the number of scans ) you can get a cleaner line which is amenable to more complex fits.
What we are discussing here is a data set covering 130 years where the signal to noise ratio is sufficiently large to give a reasonably good linear fit, and even better nonlinear fit, in my opinion, based on about three decades experience looking at precisely these questions.

D Böehm
January 5, 2013 9:50 pm

Shehan is still trying to peddle the anti-science nonsense that global warming is accelerating. That false narrative is so divorced from reality that only a cognitive dissonance-afflicted lunatic would try to peddle it on this “Best Science” site.
The longer the trend line the easier it is to see that the rise in [harmless, beneficial] CO2 has no measurable effect on natural global warming. There is no acceleration in the natural global warming trend since the LIA. Direct observation shows conclusively that CO2 simply does not have the claimed effect. AGW is a minor, 3rd order forcing that is swamped by many other negative feedbacks. AGW just doesn’t matter; it is too small to even measure.
This chart only goes up to year 2000, but it makes the point: the warming trend is the same whether CO2 is low or high. Everyone else can understand that logic, except Shehan, who has no understanding of the Null Hypothesis — which has never been falsified; current climate parameters have been routinely exceeded during the Holocene. Nothing unprecedented is happening now. Shehan actually believes that temperatures are rapidly accelerating, despite mountains of verifiable contrary scientific evidence. Global temperatures are not accelerating. Cognitive dissonance in spades: Shehan has it. Seriously.
There is always one hopeless nutcase who believes that War is Peace, Ignorance is Strength, and CO2 is a Problem. It is not; on balance, more CO2 is a good thing. At current and projected concentrations, CO2 is completely harmless, and beneficial to the biosphere. But when someone has bought into the insane demonization of “carbon”, they become impervious to facts and reason.

January 5, 2013 11:48 pm

Reblogged this on The GOLDEN RULE and commented:
More and more evidence of the AGW scam!

Philip Shehan
January 6, 2013 2:55 am

Boehm, Still tap dancing around, blowing smoke, cherry picking partial data sets left, right and centre, and failing to deal with the only isue I am discussing here – Whether or not the data in figure 3 covering the period 1880 to 1997 is or is not showing an increase in the slope with time.

Philip Shehan
January 6, 2013 4:50 am

correction: the figure is panel c in figure 1, not figure 3, and the period 1880 to 2007

Graham W
January 6, 2013 5:23 am

Shehan: I’m sorry but the period from 1970 – 2013 is not a short period of time. It is 43 years. It is more than enough time for any accelerating trend in temperatures to be visible in the graph, and it is not. In fact if you increase the time period beyond 43 years, the lack of an accelerating trend, or indeed any positive trend, in this millennium, is even clearer and more pronounced in contrast to the data that precedes it:
http://www.woodfortrees.org/plot/hadcrut4gl/from:1940/to:2013
Again, no statistical analysis required. It’s simply obvious, using nothing but your eyes, that temperatures cannot be said to be “rising at an increasing rate”. They’re not.

D Böehm
January 6, 2013 5:57 am

Regarding Mr Shehan’s descent into ad hominem name-calling, he is trying to cover up the fact that there has been no acceleration of global warming — the crux of his alarmist beliefs, as demonstrated by his posting of John Cook’s dishonest cartoon of rapidly accelerating global temperatures — something that even the UN/IPCC admits is not happening.
I have posted numerous links above, showing conclusively that there is no acceleration in the natural global warming trend, and in fact, that global warming has stopped for the past decade. Shehan’s lame response is that I am “blowing smoke” and “cherry picking”. He needs to go tell the HadCRUT folks that their data is wrong. He needs to go tell U of Huntsville climate scientists that their satellite data is wrong. He needs to go tell Prof Richard Lindzen that Lindzen is wrong. And he needs to explain why the very long term trend charts I posted are “cherry-picking”. Simply asserting that nonsense shows Shehan’s desperation. In the end, Shehan’s argument rests on baseless assertions; opinions unsupported by testable, falsifiable scientific evidence.
But Shehan cannot go and argue with any of those sources, because he would be laughed at by folks who know more than he does — doubled and squared. Shehan hates the fact that I am simply showing what others have found: that there is no acceleration in the natural global warming trend, and that the trend is the same whether CO2 is low or high. Those experts debunk Shehan’s ‘acceleration’ nonsense. He doesn’t like it, but he is too chicken to go straight to those sources and argue with them. He would only be ridiculed by people much more knowledgeable than Mr Shehan.

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