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

The climate data they don't want you to find — free, to your inbox.
Join readers who get 5–8 new articles daily — no algorithms, no shadow bans.
0 0 votes
Article Rating
298 Comments
Inline Feedbacks
View all comments
Matthew R Marler
January 4, 2013 1:17 pm

Richard Telford: Beenstock et al does not explored the Type II error rate of their method. Therefore when they find no relationship, how sure can we be that there is no relationship and not that the apparent absence of a relationship is because their method has little statistical power. I would not be in the least surprised if their method had little power. They would not be the first people to proclaim an important negative result while using a low-powered method.
I agree with you.
I do not consider that in evaluating whether the paper is good, because it is already a long and technically dense paper, and I think that topic can be addressed later. However, I also think that it is possible to elaborate modeling sufficiently to achieve almost any desired result on extant data, so I believe that potential type 1 and type 2 error rates for particular hypotheses are 1. Not for a particular test, but for the procedure of multiple model fitting and multiple testing. Nobody is naive any more, the authors had already thought about potential models and what might produce null results for particular tests (I would bet) even before they started modeling. With so many people having already done so much modeling on so much data, the only hope for model comparisons and hypothesis tests must depend on future data.

DeWitt Payne
January 4, 2013 1:23 pm

richardscourtney,
I’m feeling the need for amusement, but there’s no way I’m going to spend 18£ to purchase a copy of your article. Put a pdf on line somewhere and post a link.

Philip Shehan
January 4, 2013 1:25 pm

Pardon the error above. 15 out of 130 years is 11%

RACookPE1978
Editor
January 4, 2013 1:26 pm

Philip Shehan says:
January 4, 2013 at 1:02 pm

I have tried to be polite but since you are implying I am a liar, only wilful self delusion, ignorance or dishonesty can lead you ignore mathematical analysis of the entire data set and cherry pick a 5% segment of the total data carefully selected to begin with an extreme el nino southern summer of 1997-98, which in no way invalidates the 130 year trend.

Why didn’t you pick the 15 year period between 1940 and 1955 to prove that temperatures from 1880 to present have been dropping?
Because you see, we are trying to determine why the 1650 – 2000 year trend of slowly rising temperatures – all from natural causes unrelated to a CO2 increase between 1950 and 2013 – of 360 years length is being ignored by those whose funding and power and future promotions and employment are threatened by the evidence; while you are trying to force a rising-CO2 and rising-temperature relationship valid ONLY from 1973 to 1998 onto a 130 year period.
Further, why is a single 25 year period (1973 – 1998) “valid, critical, and worth destroying the world’s economy” about (while killing millions) important, while a 15 year period 1997 – 2012 ignored? the warming slope STOPPED in 1998. Why can you not recognize that fact? Whether it will begin again we do not know – but you cannot pretend that warming – and increase in temperatures – is continuing. The solar experts are predicting a 1.5 degree temperature drop over the next solar cycles … are you mentally ready for that?
Don’t blame aerosols either – the Mauna Loa atmospheric visibility index remain unchanged since before 1950, (other than two volcanic peaks).
Is your funding, your life, your health threatened by the 15 year period, but you are content urging the absolute, immediate and assured death of millions because of that one 25 year period out of 350 that you fear “might” cause minor problems 90 years from now? I could have saved millions from poverty, hunger, and disease through better water, better transportation, better heat, better food preparation and storage, and better shelter and clothing for a fraction of what YOU wasted on CAGW trips and politics alone. Today’s worldwide economic crisis BEGAN in the energy policies demanded by those in power in academia and the media and politics who used YOUR typical AGW propaganda to destroy energy production and movement.
In the meantime, while you fear a 1/10 0f 1% chance of a “might be a problem” for 20,000 you guarantee disaster now for billions more.

DeWitt Payne
January 4, 2013 1:34 pm

Here’s a Ph.D. dissertation on using VAR-ML to model temperature vs CO2 among other things. Conclusions include that there is two way Granger causality between temperature and CO2, particularly including the glacial epochs. Somebody, not me, might want to point this out to Willis E., who seems to think that Granger causality in this case is only one way.

richardscourtney
January 4, 2013 1:53 pm

DeWitt Payne:
Your post at January 4, 2013 at 1:23 pm says to me in total

I’m feeling the need for amusement, but there’s no way I’m going to spend 18£ to purchase a copy of your article. Put a pdf on line somewhere and post a link.

You make two points and I address each of them.
If you want “amusement” then I suggest you read the posts you have made in this thread because you may give you the belly laugh which they give me.
If you don’t want to obtain a copy of our paper then watch the lecture by Murray Salby at

Salby’s lecture says the same as the analysis in our paper except that
(a) Salby does not conduct the attribution studies which we included to demonstrate the findings,
(b) we did not make Salby’s assessment of soil moisture effects, and
(c) Salby concludes that because natural changes can be the sole cause then they are the cause of the recent rise in atmospheric CO2, but we were not willing to accept that because – although unlikely – the anthropogenic emission could also be the cause.
Indeed, Salby uses some very similar words to paragraphs in our paper: n.b. this is NOT an accusation of plagiarism: clear statement of the same facts is likely to use the same or similar words.
A summary of Salby’s lecture with his main slides is at
http://hockeyschtick.blogspot.co.uk/2012/09/climate-scientist-dr-murry-salby.html
Watch the lecture, check its facts, and you may learn something despite your prejudice.
Richard

willb
January 4, 2013 2:25 pm

DeWitt,
I read your article (“Where Has All the Carbon Gone?”) at the Air Vent. It’s an informative article, with interesting results and interesting comments. I’m not sure it really provides much insight or evidence for Ferdinand’s Mass Balance argument, though. The Bern Carbon Cycle model you investigated in that article is for the most part an empirical model, is it not? I believe it is constructed under the assumption that humans are the cause of the recent increase in atmospheric CO2. I don’t think you can use an empirical model (which is tuned to provide a good fit to the data) as evidence to support one of its own input assumptions.
Regarding isotope ratio, the Earth has been sequestering carbon through the biosphere for billions of years. IMHO just about any reasonable terrestrial source for increased atmospheric CO2 will have been ultimately filtered by plants and would therefore likely have an isotopic ratio similar to that of burning fossil fuels.
The oxygen depletion evidence is also speculative and far from overwhelming. Correlation of oxygen depletion with fossil fuel burning is not that great and IMHO it is just as likely (and just as speculative to conclude) that the depletion is due to land use changes, or perhaps simply due to natural changes in the biosphere as temperature and CO2 rise.

Philip Shehan
January 4, 2013 2:35 pm

RACookPE1978 says:
January 4, 2013 at 1:26 pm….
Once again.
I am commenting on the claims made in the paper for the temperature record from 1880. The authors’ claim that their is no accelerated warming over that period is not supported by examination of linear and non linear fits for that period.
My rhetorical question to D Boehm about why the 15 year period is any more indicative of a 130 year trend than the period 1945 -50 is intended to show that cherry picking data gives no indication whatsoever of the long term trend.
And I do not recognise the fact that warming has stopped since 1998 because it has not.
You are not just cherry picking a 15 year period to arrive at that conclusion, you are cherry picking the extreme southern el nino summer of 1997/1998. One summer does not a trend make.
Since 1996 there has been a warming trend of 0.1 C per decade. Since 1999 there has been warming trend of 0.1 degree per decade. And this even with the cololing la nina weather pattern for the last two years.
http://www.woodfortrees.org/plot/wti/from:1995/to:2013/plot/wti/from:1996/to:2013/trend/plot/wti/from:1998/to:2013/trend/plot/wti/from:1999/to:2013/trend
So explain to me how there can have been no warming since 1998, but warming since 1996 and warming since 1999.
By the way I am writing from Australia where the Bureau of meterology is debating whether the end of the el nino period means we are reverting to normal warmer and drier conditions or whether we are in for above average heat.
As far as tipping future temperature trends goes, it is unscientific to put too much reliance on individual weather events. That said, the entire continent is in the grip of a heat wave. It was 106 F here in Melbourne yesterday (way down south, the cool part) while bushfires are burning in Tasmania (the island state further south). Last night I have been unable to sleep with the heat, so typing out these pearls of wisdom in the night. So unscientific or not, my money is on a hot 2013.

January 4, 2013 2:35 pm

From the Discussion section of ‘Polynomial cointegration tests of anthropogenic impact on global warming’ by M. Beenstock, Y. Reingewertz, and N. Paldor , published in the journal Earth System Dynamics
{all emphasis by me, John Whitman}

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.

– – – – – – – – – –
Their conclusion’s significance lies in demonstrating that observations (time series data) cannot with significant confidence be interpreted as supporting a strong case for anthropogenic causes of recent global warming. There should be significant caution about any interpretations that support significant AGW causations.
And, I find they are bending over pretty far backwards to show how they might be wrong. Good for them. As part of that they directly allow for physical interpretation as well as data interpretation. I think the paper is a positive step in right path toward more analysis based on both its achievements and its shortcomings. Look forward to papers relating to it whether they support it or not.
Some might criticize them about the data sets they chose. 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.
It would interest me if the very same kind of study could be done over both the Holocene and also for the last 2000 yrs. Does anyone know if anyone has done such similar statistical studies or if someone is in the process of doing them?
John

D Böehm
January 4, 2013 2:46 pm

Philip Shehan,
Your comment regarding ‘accelerating’ temperatures was pretty self-explanatory. However, temperatures are not accelerating. The only way to show they are is with a false artifact using a cherry-picked chart.
The longer the warming trend shown, the better. Here is a chart going back to 1850 and showing steadily rising global temperatures as the planet recovers from the LIA.
Note that there is no acceleration of global warming. None. The planet has been warming along the same trend line [the declining green line] for hundreds of years, and global warming has not accelerated. In fact, rather than accelerating, global warming has stopped for the past decade and a half.
There are any number of records that show that long term global warming has remained on the same trend line, and within well defined parameters. That trend has not changed despite the ≈40% rise in CO2.
Conclusion: the effect of CO2 is vastly overstated.
In fact, there is no evidence that the rise in CO2 does not have a cooling effect. The only empirical evidence we have shows that ∆CO2 follows. ∆T. There are no empirical measurements showing AGW. Thus, AGW is merely a conjecture, and until/unless it is reliably measured, no more public money should be wasted on such ‘climate studies’. Sorry if that gores your ox.

DirkH
January 4, 2013 3:06 pm

Philip Shehan says:
January 4, 2013 at 2:35 pm
“As far as tipping future temperature trends goes, it is unscientific to put too much reliance on individual weather events. ”
I disagree completely. What the CO2AGW scientists need to show is evidence for the positive water vapor feedback thermal runaway. For this, they need the following conditions:
No wind
High humidity
Elevated CO2
Insolation, no clouds
These conditions are the testbed. We should see a local thermal runaway within minutes, as radiative energy exchange is a fast process. This would be a local weather event not possible in the past, and proof for the thermal runaway conjecture. Specifically, we should see an absolute all time high temperature record for the continent on which it happens.
Good luck finding one.

January 4, 2013 3:14 pm

From the Abstract section of ‘Polynomial cointegration tests of anthropogenic impact on global warming’ by M. Beenstock, Y. Reingewertz, and N. Paldor , published in the journal Earth System Dynamics

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.

From the Discussion section of ‘Polynomial cointegration tests of anthropogenic impact on global warming’ by M. Beenstock, Y. Reingewertz, and N. Paldor , published in the journal Earth System Dynamics

However, we find that greenhouse gas forgings might have a temporary effect on global temperature.
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.

– – – – – – – –
The possibility of a relatively ‘temporary’ anthropogenic effect on temperature rather than a relatively ‘permanent’ effect has suggestive implications:
a – Reconsideration needed about the adequacy of the carbon cycle being promoted via IPCC assessment reports. This paper is a challenge to that IPCC endorsed carbon cycle that carbon cycle that supports the case for anthropogenic cause of warming.
b – Wondering what it could mean if it is verified that a change in the rate of change of CO2 concentration may cause a ‘temporary’ change in temperature but a change in CO2 concentration may not cause any temperature change.
c – Is (b) possibly the CO2 lagged increase from natural caused heating/miniaturization of soil and heating of oceans?
John
[“Forcings” instead of “forgings” in their quoted text? Mod]

DeWitt Payne
January 4, 2013 3:17 pm

richardscourtney,
Salby’s slides were indeed as amusing as I expected. You do know that the seasonal and annual variability is imposed on a much larger trend, don’t you? Removing that trend is rather like ignoring an elephant in the room.
But if the world ocean is a source rather than a sink, how come the CO2 concentration at the South Pole station is lower than at Mauna Loa, which is lower than Barrow while the SH has a much lower percent land cover than the NH? The ocean as a sink is a much better explanation for the decrease in seasonal variability from Barrow to Mauna Loa to the South Pole as well as the concentration gradient. And you still haven’t explained where the 32 Gt of CO2 emitted in 2011, for example, goes. CO2 at Mauna Loa went up by 1.82 ppmv in 2011, that’s equal to about 15 Gt of CO2. I know some of you think mass balance is disreputable black magic, but it’s a standard tool in Chemistry and Chemical Engineering. Short of a nuclear reaction, matter must be conserved. The simplest explanation is that 32 Gt of CO2 went into the atmosphere while the biosphere and the oceans absorbed 17 Gt from the atmosphere. And the rate of removal is indeed proportional to the increase in atmospheric concentration, as one would expect from an equilibrium process. For example: CO2 emissions in 1965 was about 12 Gt while the increase in CO2 concentration was 1.34 ppmv and the concentration was 321 ppmv. That’s about 1 Gt absorbed and 11 Gt left in the atmosphere.
Also, since a lot of you believe that the global temperature hasn’t changed since 1998, how come the CO2 concentration is still going up? The lag time of the ocean isn’t a few years, btw, it’s closer to 2000 years and ocean temperature hasn’t gone up as fast as the land temperature. The dissertation I linked to above had the sensitivity of CO2 to temperature as 2.3 ppmv/degree. Of course CO2 is going up because global emission of CO2 has been increasing.

Philip Shehan
January 4, 2013 3:20 pm

D Böehm says:
January 4, 2013 at 2:46 pm…
Oh please. Now I really don’t want to be rude but the presentation of your temperature data to include offsets for no other reason than to stretch the y axis to apparently flatten the real data is a cheap and ridiculously obvious attempt at deception that just gets my scientist dander up.
Once again the data presented realistically with linear and non;inear fits, both showing accelerataion of the warming trend for the period under discussion:
http://www.woodfortrees.org/plot/gistemp-dts/from:1880/to:2013/plot/gistemp-dts/from:1970/to:2013/trend/plot/gistemp-dts/from:1880/to:1969/trend/plot/gistemp-dts/to:1880/to:2013/trend
http://www.skepticalscience.com/pics/AMTI.png

E.M.Smith
Editor
January 4, 2013 3:24 pm

I see the C isotope wars have broken out again.
http://chiefio.wordpress.com/2009/02/25/the-trouble-with-c12-c13-ratios/
We simply can’t know the source of CO2 from isotope ratios. Long list of problems, but one simple one is that we don’t know the isotope ratio in the fuels that were already burned ( it varies from fuel deposit to fuel deposit) and we have no clue what the ratio is from large quantities vented from geologic processes such as the mid-ocean vents, and even liquid BLOBS of CO2 seeping from the ocean at depths where it stays a liquid. And a whole lot more.
Oh, and CO2 just oozes from the ground all over the planet due to geological processes. In enough concentration to sporadically kill a lot of people and animals. Yellowstone, Mammoth, and many others have CO2 “issues” and have had to close off area or had animal kills. So unless you know the reason and amount of volcanic / geologic cyclicals and the variations in isotope ratios all over the world (including under the oceans) you can’t say squat. Similarly, do you know the degree to which plankton bloom live and die? That cycles a load of CO2 as well. How about “Fish gut rocks”? Nobody even knew they existed a few years ago. Turns out many ocean fish excrete carbonate deposits and poop them to the ocean floor. Now we’ve hauled vast quantities of fish out of the global oceans so there are a lot less rock-poopers “doing their thing”, which means less CO2 sequestration. Numbers? Hey, folks just figured out lately this was happening at all… but it’s big… and more…
Then there are the MASSIVE quantities of carbonate washed into the ocean every year from erosion of the rocks of the continents. Care to guess what they do? Yes, guess. Not going to have any actual way to say since it is highly variable and subject to a lot of estimation:
http://chiefio.wordpress.com/2011/12/12/ocean-carbonate-from-rocks/
Got any idea what the isotope ratios are for all the rock sources on the planet? Didn’t think so…
(It will vary, as some are ancient and some are freshly made, like those gut rocks or clam shell middens the Native Americans piled all over Florida.)
You can start to get an idea of the problem by looking at just some of the sources and sinks:
http://chiefio.wordpress.com/2010/10/17/where-co2-goes/
But since there are ‘lakes’ of liquid CO2 on the bottom of the ocean, I think that’s going to be hard to do:
http://chiefio.wordpress.com/2011/12/10/liquid-co2-on-the-ocean-bottom/

A team of scientists based in Japan and Germany has found an unusual “lake” of liquid carbon dioxide beneath the ocean floor.
Shallow Lake
Inagaki’s team found the lake while studying hydrothermal vents—undersea volcanic hot spots—in the East China Sea off the coast of Taiwan (map of Taiwan).
The lake’s presence was unexpected, because the seamount lies only 4,600 feet (1400 meters) below sea level. At that depth, liquid CO2 is lighter than water and will slowly rise, eventually bubbling into the air as gas.

There’s also a bit of video with a shellfish (shrimp) playing with a bubble of liquid CO2, so “acidification” from CO2 concentration clearly isn’t an issue for him…
The simple fact is that asserting the CO2 rise is from fossil fuels is an assumption and a guess. It can’t be anything else as the needed data are missing. Yes, we release the CO2. What happens to it after that is anybodies guess and subject to gigantic natural processes that completely swamp it in scale.
Per the paper:
It would be nice to see the same treatment of “tide raising forces”. They have a cycle that matches the temperature history nicely. Tides are not just a monthly cycle. Since the moon has longer orbital changes, there are 60 year cycles (sound familiar?) and 1800 year cycles and several others.
Tides account for more than half of the vertical ocean mixing, so can easily account for moving cold water to the surface. That, then, can shift CO2 absorption and air temperatures and influence rainfall. As orbital resonance will keep lunar changes ‘in sync’ with planetary positions and solar motions (and potentially solar sunspot state if the match of sunspots to solar motion is valid) the lunar-tidal link can also explain some of the apparent solar correlation. They correlate, but via common orbital mechanics and tides.
http://www.appinsys.com/GLobalWarming/SixtyYearCycle.htm
cites: http://www.agu.org/pubs/crossref/2012/2012GL052885.shtml

We find that there is a significant oscillation with a period around 60-years in the majority of the tide gauges examined during the 20th Century, and that it appears in every ocean basin.

with this nice graph:
http://www.appinsys.com/GLobalWarming/SixtyYearCycle_files/image002.jpg
http://www.pnas.org/content/97/8/3814.full

We propose that variations in the strength of oceanic tides cause periodic cooling of surface ocean water by modulating the intensity of vertical mixing that brings to the surface colder water from below. The tides provide more than half of the total power for vertical mixing, 3.5 terawatts (4), compared with about 2.0 terawatts from wind drag (3), making this hypothesis plausible. Moreover, the tidal mixing process is strongly nonlinear, so that vertical mixing caused by tidal forcing must vary in intensity interannually even though the annual rate of power generation is constant (3). As a consequence, periodicities in strong forcing, that we will now characterize by identifying the peak forcing events of sequences of strong tides, may so strongly modulate vertical mixing and sea-surface temperature as to explain cyclical cooling even on the millennial time-scale.

I would also suggest that the degree of ‘mixing’ will influence CO2 absorption rates.
More detail here:
http://chiefio.wordpress.com/2013/01/04/lunar-cycles-more-than-one/
The tidal cycles match temperature history on the 60 year, 1800 year and other periods as well. IMHO, it’s a strong contender and possible “smoking gun” for natural variability. At present we are at a dead bottom of mixing. Going forward, we ought to be getting much more. That ought to give cooling ocean surfaces, less CO2 out gassing and more absorbing, and a generally colder aspect to temperatures.
Graph of mixing power:
http://www.pnas.org/content/97/8/3814/F1.large.jpg
Peak in 1974, trough in 1990s, peak in 1787 (LIA), trough in 1920-30. etc etc.
So maybe CO2 and cold / hot cycle together because the come from the same ocean pot and are subjected to the same pot stirring…

Joe
January 4, 2013 3:25 pm

richard telford says:
January 4, 2013 at 7:31 am
Since there is nothing wrong with what you wrote, and I don’t say anything about asymmetrical reliability, I can only assume that you misunderstood what I wrote.
Beenstock et al does not explored the Type II error rate of their method. Therefore when they find no relationship, how sure can we be that there is no relationship and not that the apparent absence of a relationship is because their method has little statistical power.
—————————————————————
That’s what i was trying to explain, Richard. There are two possible types of error when you’re testing for the presence of something.
Your test might tell you that “something exists when it doesn’t, or it might tell you it doesn’t exist when it does. Those are type 1 (a false positive result) and type 2 (a false negative result) respectively. The chance of each type of error will not usually be the same for any given test.
If you’re testing for “the absence of something” (as they are in this paper) then “NO CORRELATION” is the “something” that you’re looking for. So a type one error would mean finding “NO CORRELATION” when there is one (ie: falsely finding what you’re looking). A type 2 error in this case would be finding “CORRELATION” when one doesn’t actually exist.
So, in this case, finding “NO CORRELATION” is a POSITIVE result from the test whereas, had they found “CORRELATION” that would have been a NEGATIVE test result. It takes a little getting your head round that “there’s nothing there” can be the “positive” result but it’s only really a matter of perspective – if you’re looking for some solid ground to build on, finding a hole is a “negative” result, if you’re looking for holes to turn into swimming pools then finding solid ground is a negative..
Assuming for now that the method is appropriate to the data, that the data itself is reliable, and so on, the only error consideration then is “how likely was it to incorrectly give the POSITIVE result we obtained?” – or “what is the chance of a false positive?”.
The chance of a false positive is given entirely by the type 1 error rate, so the type 2 rate is irrelevant.

D Böehm
January 4, 2013 3:53 pm

Philip Shehan,
Thank you for your chart, in which you have cherry-picked a short term trend artifact.
As I have repeatedly explained, the longer the time span of the chart, the more accurate the long term rising trend. Here is a chart showing what you are doing.
Rather than using a proper long term trend chart, you are cherry-picking a short time frame that supports your belief system. You may not even realize what you are doing, because your mind is already made up and closed air-tight. You believe that global temperatures are accelerating, so you cherry-pick a short time frame and say, “Aha!! Acceleration!”
But it is not so. The planet is recovering from the LIA along the same long term trend line, and it does not matter whether CO2 is low or high. In other words, CO2 does not matter. It is irrelevant. Sorry about your ox.

Bart
January 4, 2013 4:17 pm

DeWitt Payne says:
January 4, 2013 at 3:17 pm
“Also, since a lot of you believe that the global temperature hasn’t changed since 1998, how come the CO2 concentration is still going up?”
I gave you the equation above, and explained how it can arise. It’s very simple, but apparently over your head.

richardscourtney
January 4, 2013 4:19 pm

DeWitt Payne:
I am acknowledging your post at January 4, 2013 at 3:17 pm so you know I have not ignored your twaddle.
I suggested that you watch Salby’s lecture and check his facts. But your post says you have not. Instead you continue to adhere to your irrational prejudice.
E.M.Smith gives detailed information at January 4, 2013 at 3:24 pm and he makes the only possibly valid conclusion when he says

The simple fact is that asserting the CO2 rise is from fossil fuels is an assumption and a guess. It can’t be anything else as the needed data are missing. Yes, we release the CO2. What happens to it after that is anybodies guess and subject to gigantic natural processes that completely swamp it in scale.

And our paper assessed the entire carbon cycle not merely its parts which he mentions so I could add to his comments, but I see no reason to bother when you have repeatedly expressed your prejudice so clearly.
Be content with your prejudice if it makes you happy, but I will continue to adhere to the empirical evidence and it rejects your irrational beliefs.
Richard

richardscourtney
January 4, 2013 4:30 pm

DeWitt Payne:
My reply to your post at January 4, 2013 at 3:17 pm did not reply to a specific question you asked but I had repeatedly answered in posts whose contents you have ignored.
In retrospect, my failure to answer your question could imply that I have avoided it. The question was

Also, since a lot of you believe that the global temperature hasn’t changed since 1998, how come the CO2 concentration is still going up?

My shortest answer to that was in my post at January 4, 2013 at 6:21 am addressed to Davidmhoffer.
Please note that you would not have asked your question if you were willing to learn from this thread instead of asserting your irrational beliefs.
Richard

January 4, 2013 4:35 pm

Joe says:
January 4, 2013 at 3:25 pm
Your test might tell you that “something exists when it doesn’t, or it might tell you it doesn’t exist when it does. Those are type 1 (a false positive result) and type 2 (a false negative result) respectively. The chance of each type of error will not usually be the same for any given test.
If you’re testing for “the absence of something” (as they are in this paper) then “NO CORRELATION” is the “something” that you’re looking for. So a type one error would mean finding “NO CORRELATION” when there is one (ie: falsely finding what you’re looking). A type 2 error in this case would be finding “CORRELATION” when one doesn’t actually exist.
————————–
Please would you kindly give a reference in a statistical text book for this.

D Böehm
January 4, 2013 4:55 pm

Philip Shehan,
As usual you are dissembling, by avoiding the clear points I made. The chart I posted is no different in principle from the one you posted under it. They both show that there has been no acceleration of global warming — the central issue. No acceleration. What is it about “no acceleration” that you can’t get your head around? Global warming has not accelerated, despite your desperate cherry-picked artifacts. In fact, global warming has stopped for the past decade and a half. You seem to be the only jamoke who can’t understand that plain fact.
And as I have pointed out before, your S.S. chart has no provenance; it is an invented fabrication with no connection to reality. No doubt a John Cook cartoon.
Once more for the thick-headed: there is no acceleration in the long term global warming recovery from the LIA.
Sorry about your ox. I never liked him anyway.

JP Miller
January 4, 2013 7:14 pm

Philip Shehan says:
January 4, 2013 at 4:42 pm
That data set also shows ~5 ~32 year half-cycles. ~1848-1880 warmer, ~1880-1912 cooler, ~1912-1944 warmer, ~1944-1976 cooler, ~1976-2008 warmer, ~2008-?? cooler. sarc/
Anyone care to “fit” some other pattern….

D Böehm
January 4, 2013 7:17 pm

JP Miller,
You’ve got to understand something about Shehan: he feeds at the public trough, so he feels he needs to spout his alarmist propaganda. But it’s only pseudo-science.

1 4 5 6 7 8 12