On Foster and Rahmstorf 2011 – Global temperature evolution 1979–2010
Guest post by Bob Tisdale
Note (May 23, 2013): Update 3 appeared in the cross post at my blog but not here at WUWT. I’ve added it here.
UPDATE 3 (January 14, 2012): I displayed my very limited understanding of statistics in this post. This was pointed out to me a great number times by many different people in numerous comments received in the WattsUpWithThat cross post.The errors in that initial portion of the post were so many and so great that they detracted from the bulk of the post, which was about the El Niño-Southern Oscillation. Please disregard this post and the WUWT cross post, and any other cross posts that may exist.
I have reissued the ENSO-related portion of the post herewith a number of additions. If Anthony Watts cross posts the new version at WattsUpWithThat, I’ll provide a link here.
Originally, when I wrote the post about Foster and Rahmstorf (2011), I had not included my error-filled discussion about their regression analysis. That was a last minute addition. Lesson learned.
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UPDATE 2 (January 5, 2012): PLEASE READ. Three things: First, I did not understand that a “linear time trend” used by Foster and Rahmstorf (2011) is different than a “linear trend”. My confusion also led to confusion for many bloggers who read my post and who commented on the WattsUpWithThat cross post. My apologies. For those interested, the “linear time trend” is discussed under the heading of “Data as trend plus noise” on the Wikipedia Trend Estimationwebpage.
Second, in addition to MEI, AOD, and TSI as independent variables, I mistakenly used the values of the linear trend, which EXCEL calculated with its LINEST function from the monthly GISS data, as the fourth independent variable. And this added to the confusion of those who were interpreting the equations. In retrospect, I should not have included the equations. I should have included a table that listed the coefficients instead.
Third, in my haste to publish this post, I failed to explain the steps I used to process the data, and it may have been confusing to those who were looking at equations and graphs. I performed the regression analyses with the “raw” monthly data; then using the resulting coefficients, I made the adjustments to the monthly data. (I had prepared a graph using monthly data, similar to F&R’s Figure 4, with 1979-2010 as base years. But I felt my version was an unintelligible spaghetti graph with little value, so I didn’t include it.) I then converted the adjusted data to annual data; and last, changed the base years to 1979-2010.
The bottom line: Although I mistook a linear trend for a linear time trend, and although I did not include all of the additional data refinements used by Foster and Rahmstorf (2011), it’s difficult to see any difference between my Figure 7 and their Figure 5. There were other bloggers commenting on the thread of the WUWT cross post who got similar results using different methods. Does this mean the results of Foster and Rahmstorf (2011) are robust as some comments on the WUWT tread claimed? No. ENSO is a process, not an index, and it can’t be account for using linear regression analysis. This was illustrated clearly and discussed in detail under the heading of ENSO IS NOT AN EXOGENOUS FACTOR.
UPDATE 1 (January 3, 2012): Under the heading of ENSO IS NOT AN EXOGENOUS FACTOR, I changed the wording of a sentence, crossing out “create” and replacing it with “recharge”.—Thanks, Steve Allen.
OVERVIEW
This post examines a curious aspect of the multiple linear regression analysis performed by Foster and Rahmstorf in their 2011 paper “Global Temperature Evolution 1979–2010”. I find it very odd that a factor upon which the paper appears to rest was not presented in detail in it. Please understand right from the start, for this portion of the post, I am not implying that there is something wrong with this specific aspect of the paper; but I’m also not agreeing with it. I’m presenting it for discussion.
The second part of this post is a discussion of one of the exogenous factors that Foster and Rahmstorf (2011) has attempted to remove. The problem: it is not an exogenous factor. And there is a third discussion about a dataset that’s present in the spreadsheet provided by the lead author Grant Foster (aka Tamino) but, curiously, not mentioned in the paper.
Not surprisingly, Foster and Rahmstorf (2011) made the rounds at the blogs of the proponents of anthropogenic global warming. Joe Romm praised it with the post Sorry, Deniers, Study of “True Global Warming Signal” Finds “Remarkably Steady” Rate of Manmade Warming Since 1979. SkepticalScience covered the paper in their post Foster and Rahmstorf Measure the Global Warming Signal. And RealClimate gave it an honorable mention by including it as one of the topics in its Global Temperature News post.
INTRODUCTION
Foster and Rahmstorf (2011) attempted to remove from 5 global temperature datasets the linear effects of 3 factors that are known to cause variations in global temperature.
They covered the period of 1979 to 2010. The obvious intent of the paper is to show that anthropogenic global warming continues unabated in all of those datasets. The independent variables listed in the abstract of Foster and Rahmstorf (2011) are El Niño-Southern Oscillation, volcanic aerosols, and solar variations. Foster and Rahmstorf (2011) appears to be a much clarified version of Tamino’s (Grant Foster’s) January 20, 2011 post How Fast is Earth Warming? After publication of the paper, Tamino discussed it in his post The Real Global Warming Signal and was kind enough to provide the source data and code in his post Data and Code for Foster & Rahmstorf 2011. The data Tamino provided is available here. It is a .zip file that Tamino has renamed a .xls file, as he explains, “in order to fool the wordpress software into believing that it’s an Excel file.” You will need to “Right Click and Save As” and then change the file name back to a .zip file in order to open it.
As noted above, in the abstract, Foster and Rahmstorf (2011) list the exogenous factors that are used as independent variables in the multiple regression analysis as “El Niño/southern oscillation, volcanic aerosols and solar variability.” Curiously, three paragraphs later, when they list the factors included in the multiple regression analysis again, Foster and Rahmstorf (2011) have added a fourth variable: linear trend. The last sentence of the third paragraph under the heading of “Introduction” reads:
“The influence of exogenous factors will be approximated by multiple regression of temperature against ENSO, volcanic influence, total solar irradiance (TSI) and a linear time trend to approximate the global warming that has occurred during the 32 years subject to analysis.”
But one of the bases for the paper is to illustrate how similar the trends are after the adjustments for ENSO, Total Solar Irradiance, and Volcanic Aerosols have been made, so including the linear trends of those datasets in the regression analysis seems odd. As a result, I went in search of another reason why Foster and Rahmstorf (2011) would have needed to include the linear trend in their regression analyses. As I note in the following, I’m using commercially available add-on software for EXCEL to perform the multiple regression analyses. Since I have no other means to verify the results, other than reproducing the results of one of their graphs, I’ll request that you confirm the following results if you have that capability.
WHY DID FOSTER & RAHMSTORF NEED TO INCLUDE A LINEAR TREND IN THE MULTIPLE REGRESSION ANALYSIS?
The only reason that I can see that Foster and Rahmstorf (2011) needed to include the trend in the multiple regression analysis is, the adjustment factor for the solar data is the wrong sign when the multiple regression analysis uses only ENSO, Solar, and Volcanic Aerosol data as independent variables. Let me explain in more detail. But again, please understand, for this portion of the post, I am not implying that there is something wrong with this specific aspect of the paper; and again, I’m also not agreeing with it. I found this interesting.
With the data provided by Tamino, I used Analyse-It for EXCEL software to perform a multiple regression analysis. (For those with EXCEL who have no means to perform a multiple linear regression analysis and want to verify my results, Analyse-It is available free on a 30-day trial basis.) My initial analysis included Tamino’s favorite global Surface Temperature dataset GISS as the dependent variable and the Multivariate ENSO Index (MEI), the Total Solar Irradiance (PMOD), and the Volcanic Aerosol Optical Depth data (AOD) as the independent variables. I lagged the MEI data by four months, the PMOD data by one month, and the AOD data by seven months, in agreement with Table 1 of Foster and Rahmstorf (2011), which is also Table 1 in this post. And in this analysis, I did not include the GISTEMP linear trend as an independent variable.
Table 1
The multiple regression analysis using only the ENSO (MEI), Solar (PMOD), and Volcanic Aerosol (AOD) data resulted in Equation 1:
EQUATION 1:
GISS = 123.6 + 0.06769MEI(4m lag) – 0.09025TSI.PMOD(1m lag)– 3.837AOD (7m lag)
I highlighted the solar variable scaling factor in boldface to emphasize the fact that the sign is negative. It would need to be positive to reproduce the results of Foster and Rahmstorf (2011). The signs of the ENSO and volcanic aerosol factors are what one would expect, Figure 1. It’s only the sign of the solar coefficient that is the opposite of what Foster and Rahmstorf (2011) present, Figure 2 (which is their Figure 7).
Figure 1
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Figure 2
And that makes a monumental difference to the outcome of Foster and Rahmstorf (2011). If we adjust the GISS surface temperature data with the factors presented in Equation 1, then the rise is not continuous. Refer to Figure 3. The peak year for the adjusted GISS-based global Surface Temperature data is 2002.
Figure 3
To confirm the results of Foster and Rahmstorf (2011), I added the 0.167 deg C/Decade linear trend of the GISS global surface temperature anomaly data to the independent variables. The lags of the ENSO (MEI), Solar (PMOD), and Volcanic Aerosol (AOD) data remained the same as above.
The multiple regression analysis using the ENSO (MEI), Solar (PMOD), and Volcanic Aerosol (AOD) data and the linear trend resulted in Equation 2:
EQUATION 2:
GISS = -91.43 + 1.024Trend + 0.0761MEI(4m lag) + 0.06694TSI.PMOD(1m lag)– 2.334AOD (7m lag)
The sign of the Total Solar Irradiance coefficient now agrees with what Foster and Rahmstorf (2011) presented, as shown in Figure 4. Note that including the trend as an independent variable also influenced the scaling of the ENSO (MEI) and Volcanic Aerosol (AOD) data. It increased the scaling factor of the ENSO data a little, but decreased the scaling factor of Volcanic Aerosol significantly. Of course, the inclusion of the trend as an independent variable, with the change in sign of the Solar influence, also gives the adjusted GISS data results that Foster and Rahmstorf (2011) wanted, Figure 5, with the rise in temperature relatively steady over the 32 year period. And note that the trend of 0.172 deg C per decade is comparable to the findings of Foster and Rahmstorf (2011) shown in Table 1 for GISS data.
Figure 4
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Figure 5
Of course, I did not include [and Foster and Rahmstorf (2011) could not have included] the trend adjustment from Equation 2 when the corrected data was presented in Figure 5. If the trend adjustment was included, the corrected data would have no trend. That means, it appears Foster and Rahmstorf (2011) needed to include the trend of the GISTEMP data in the regression analysis only to assure the sign of the solar influence they sought.
Foster and Rahmstorf (2011) would have gotten similar scaling factors for the ENSO (MEI), Solar (PMOD), and Volcanic Aerosol (AOD) data if they had simply detrended the GISS Global Surface Temperature data.
EQUATION 3:
Detrended GISS = -86.31 + 0.0759MEI(4m lag) + 0.0632TSI.PMOD(1m lag) – 2.37AOD (7m lag)
REVERSED SIGN OF SOLAR INFLUENCE IS COMMON TO ALL GLOBAL TEMPERATURE DATASETS
Someone is bound to ask whether the GISS Global Surface Temperature dataset is the only dataset with these results. The answer is no. If the linear trend is not included in the multiple linear regression analyses, the sign of the solar coefficient is the opposite of what Foster and Rahmstorf (2011) would had to have used for the NCDC and HADCRUT global land plus sea surface temperature datasets and for the RSS and UAH global Lower Troposphere Temperature data. The resulting equations from the linear regression analyses of the other datasets are presented in equations 4 through 7. The lags for the independent variables are as listed in Table 1 above:
EQUATION 4 (NCDC Land Plus Ocean Surface Temperature):
NCDC = 109.1 + 0.05495MEI(2m lag) – 0.0796TSI.PMOD(1m lag)– 3.113AOD (5m lag)
EQUATION 5 (Hadley Centre HADCRUT Global Surface Temperature Anomalies):
HadCRUT3v = 92.21 + 0.06421MEI(3m lag) – 0.0673TSI.PMOD(1m lag)– 3.293AOD (6m lag)
EQUATION 6 (RSS MSU Lower Troposphere Temperature Anomalies):
RSS33 = 61.44 + 0.1285MEI(5m lag) – 0.04489TSI.PMOD(0m lag)– 4.863AOD (5m lag)
EQUATION 7 (UAH MSU Lower Troposphere Temperature Anomalies):
UAH = 72.94 + 0.1332MEI(5m lag) – 0.05338TSI.PMOD(0m lag)– 5.139AOD (6m lag)
If we use those coefficients, the five datasets do not produce the nice continuous rise in Global Temperatures that Foster and Rahmstorf (2011) wanted to present, as shown in Figure 6. For the three Surface Temperature anomaly datasets (GISS, HADCRUT, NCDC) 2002 has the highest temperature. It’s only the two Lower Troposphere Temperature anomaly datasets that have 2010 as the warmest year.
Figure 6
And as one would expect, if the linear trends of the other global temperature datasets are included in the independent variables, the signs of the solar coefficients are positive. Refer to equations 8 through 11.
EQUATION 8 (NCDC Land Plus Ocean Surface Temperature, with trend):
NCDC = -106.7 + 1.085Trend + 0.06832MEI(2m lag) + 0.07813TSI.PMOD(1m lag)– 1.68AOD (5m lag)
EQUATION 9 (Hadley Centre HADCRUT Global Surface Temperature Anomalies, with trend):
HadCRUT3v = -119.2 + 1.093Trend + 0.07519MEI(3m lag) + 0.08723TSI.PMOD(1m lag)– 1.858AOD (6m lag)
EQUATION 10 (RSS MSU Lower Troposphere Temperature Anomalies, with trend):
RSS33 = -135.5 + 1.05Trend + 0.1342MEI(5m lag) + 0.09923TSI.PMOD(0m lag)– 3.479AOD (5m lag)
EQUATION 11 (UAH MSU Lower Troposphere Temperature Anomalies, with trend):
UAH = -105.7 + 0.9953Trend + 0.1381MEI(5m lag) + 0.07742TSI.PMOD(0m lag)– 3.871AOD (6m lag)
With the linear trend included in the multiple regression analyses, the coefficients in the equations above provide the adjustments that Foster and Rahmstorf (2011) presented, Figure 7. I’ve included their Figure 5 as my Figure 8 as a reference.
Figure 7
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Figure 8
THE ASSUMPTION ABOUT THE LINEAR TREND
I’m sure some will attempt to argue that including the trend in the regression analyses is necessary since computer model-based studies have shown the rise in global surface temperature is caused by anthropogenic forcings during the period of 1979 to 2010. But of course, that argument assumes climate models can be used for determining the cause of the rise in Global Surface Temperatures during any period. We have recently illustrated and discussed that the climate models used by the IPCC in their 4th Assessment report have shown no skill at reproducing the global surface temperatures over any period during the 20th Century. Refer to the summary post ON THE IPCC’s UNDUE CONFIDENCE IN COUPLED OCEAN-ATMOSPHERE CLIMATE MODELS – A SUMMARY OF RECENT POSTS. The second problem with their assumption is that the global oceans, which cover about 70% of the surface area of the globe, show no signs of the influence of anthropogenic global warming during the satellite era. And that brings us to…
ENSO IS NOT AN EXOGENOUS FACTOR
Foster and Rahmstorf (2011) included ENSO as one of the exogenous factors they attempted to remove from the instrument temperature record. But ENSO is not an exogenous factor. ENSO is a coupled ocean-atmosphere process that periodically discharges heat to the atmosphere during an El Niño. The El Niño causes changes in atmospheric circulation patterns, which cause temperatures outside of the eastern tropical Pacific to vary, some warming, some cooling, but in total, the areas that warm exceed those that cool and global surface temperatures rise in response to an El Niño. The patterns of warming and cooling during a La Niña are similar to an El Niño, but the signs are reversed. And that’s really all that a paper such as Foster and Rahmstorf (2011) could hope to account for including ENSO in the regression analysis. But there is much more to ENSO.
ENSO is also a process that redistributes the warm water that was leftover from the El Niño itself and enhances the redistribution of the warm water that was created by the El Niño outside of the eastern tropical Pacific. The redistribution carries that warm water poleward and into adjoining ocean basins during the La Niña that follows an El Niño. La Niña events also recharge part of the warm water that was released during the El Niño. Sometimes La Niña events “overcharge” the tropical Pacific, inasmuch as they create recharge more tropical Pacific ocean heat than was discharged during the El Niño that came before it. That was the case during the 1973/74/75/76 and 1995/96 La Niña events. Refer to Figure 9. The 1973/94/75/76 La Niña provided the initial “fuel” for the 1982/83 Super El Niño and the multi-year 1986/87/88 El Niño. And the 1997/98 “El Niño of the Century” was fueled by the 1995/96 La Niña. The process of ENSO cannot be accounted for through linear regression on an index. This was illustrated and discussed at an introductory level in the post ENSO Indices Do Not Represent The Process Of ENSO Or Its Impact On Global Temperature.
Figure 9
Foster and Rahmstorf (2011) cited Trenberth et al (2002) Evolution of El Nino–Southern Oscillation and global atmospheric surface temperatures” as one of their ENSO references. But Trenberth et al (2002) include the following disclaimer in the second paragraph of their Conclusions, (their paragraph 52, my boldface):
The main tool used in this study is correlation and regression analysis that, through least squares fitting, tends to emphasize the larger events. This seems appropriate as it is in those events that the signal is clearly larger than the noise. Moreover, the method properly weights each event (unlike many composite analyses). Although it is possible to use regression to eliminate the linear portion of the global mean temperature signal associated with ENSO, the processes that contribute regionally to the global mean differ considerably, and the linear approach likely leaves an ENSO residual.
The ENSO “residuals” are a significant contributor to the rise in Global Sea Surface Temperatures during the satellite era as we shall see. Did Foster and Rahmstorf (2011) consider these residuals in their analysis? Nope. They assumed the rise was caused by anthropogenic forcing, and they assumed a linear trend represented it.
A more recent paper was overlooked by Foster and Rahmstorf (2011). Compo and Sardeshmukh (2010) “Removing ENSO-Related Variations from the Climate Record” seems to be a step in the right direction. They write (my boldface):
An important question in assessing twentieth-century climate is to what extent have ENSO-related variations contributed to the observed trends. Isolating such contributions is challenging for several reasons, including ambiguities arising from how ENSO is defined. In particular, defining ENSO in terms of a single index and ENSO-related variations in terms of regressions on that index, as done in many previous studies, can lead to wrong conclusions. This paper argues that ENSO is best viewed not as a number but as an evolving dynamical process for this purpose.
And as Compo and Sardeshmukh have suggested, Foster and Rahmstorf (2011) have reached the wrong conclusion.
Note: Compo and Sardeshmukh missed a very important aspect of ENSO. They overlooked the significance of the huge volume of warm water that is left over from El Niño events and they failed to account for its contribution to the rise in global Sea Surface Temperature anomalies since about 1976.
Let’s not forget the much-heralded Thompson et al (2008) paper “Identifying signatures of natural climate variability in time series of global-mean surface temperature: Methodology and Insights.” Thompson et al (2008) is the basis for the new and improved HADSST3 global sea surface temperature anomaly dataset from the Hadley Centre. Thompson et al (2008), like Foster and Rahmstorf (2011), is flawed because they attempt to remove the ENSO signal from the Global Surface Temperature record and claim the remainder of the rise in surface temperature is caused by anthropogenic forcings. In the Introduction, Thompson et al (2008) write (my boldface):
In this study we exploit a series of novel methodologies to identify and filter out of the unsmoothed monthly mean time series of global-mean land and ocean temperatures the variance associated with ENSO, dynamically induced atmospheric variability, and volcanic eruptions. The impacts of ENSO and volcanic eruptions on global-mean temperature are estimated using a simple thermodynamic model of the global atmospheric–oceanic mixed layer response to anomalous heating. In the case of ENSO, the heating is assumed to be proportional to the sea surface temperature anomalies over the eastern Pacific…”
That is a monumental assumption, and it’s the same flawed assumption made by Foster and Rahmstorf (2011).
But it was that specific language in Thompson et al (2008) that caused me to divide the Sea Surface Temperature anomalies of the Global Oceans into the two subsets, and those were the East Pacific from pole to pole (90S-90N, 180-80W) and of the Rest-Of-World (Atlantic-Indian-West Pacific) from pole to pole (90S-90N, 80W-180). And by coincidence, I used the Sea Surface Temperature dataset (Reynolds OI.v2) that’s used in the GISS Land-Ocean Temperature Index, which is Tamino’s favorite global Surface Temperature anomaly dataset. I first presented the Sea Surface Temperature for those two subsets in the March 3, 2011 post Sea Surface Temperature Anomalies – East Pacific Versus The Rest Of The World. (For those who are interested, there are about a dozen additional posts that discuss ENSO and the multiyear aftereffects of specific ENSO events linked at the end of that post.)
The East Pacific Sea Surface Temperature anomalies from pole to pole, Figure 10, are dominated by the variations in tropical Pacific caused by ENSO, and as a result, the variations in the East Pacific Sea Surface Temperature anomalies mimic ENSO, represented by the scaled NINO3.4 Sea Surface Temperature anomalies. The trend of the East Pacific Sea Surface Temperature anomalies is relatively flat at 0.011 deg C/Decade.
Figure 10
The reason the trend is so flat: warm water from the surface and below the surface of the western Pacific Warm Pool is carried eastward during an El Niño and spread across the surface of the eastern tropical Pacific, raising sea surface temperatures there. And during the La Niña events that follow El Niño events, the leftover warm water is returned to the western tropical Pacific. Due to the increased strength of the trade winds during the La Nina, there is an increase in upwelling of cool subsurface waters in the eastern equatorial Pacific, so the Sea Surface Temperatures there drop. In other words, the East Pacific is simply a temporary staging area for the warm water of an El Niño event. Warm water sloshes into this dataset from the western tropical Pacific and releases heat, and then the warm water sloshes back out.
But the warm waters released from below the surface of the West Pacific Warm Pool during the El Niño are not done impacting Sea Surface Temperatures throughout the global oceans, and they cannot be accounted for by an ENSO index. That leftover warm water is returned to the West Pacific during a La Niña event that follows an El Niño, much of it remaining on the surface. The Sea Surface Temperature in the western Pacific rises as a result. At approximately 10N latitude, a slow-moving Rossby wave also carries leftover warm water from the eastern tropical Pacific back to the western Pacific during the La Niña. Ocean currents carry the warm water poleward to the Kuroshio-Oyashio Extension (KOE) east of Japan and to the South Pacific Convergence Zone (SPCZ) east of Australia, and the Indonesian Throughflow (an ocean current) carries the warm water into the tropical Indian Ocean. And as noted above, due to the increased strength of the trade winds during the La Nina, there is an increase in upwelling of cool subsurface waters in the eastern equatorial Pacific, so the Sea Surface Temperatures there drop. But that cooler-than-normal water is quickly warmed during the La Niña as it is carried west by the stronger-than-normal ocean currents that are caused by the stronger-than-normal trade winds. And the reason that water warms so quickly as it is carried west is because the stronger-than-normal trade winds reduce cloud cover, and this allows more downward shortwave radiation (visible sunlight) to warm the ocean to depth. This additional warm water helps to maintain the Sea Surface Temperatures in the West Pacific and East Indian Oceans at elevated levels during the La Niña and it also recharges the West Pacific Warm Pool for the next El Niño event. Refer again to Figure 9, but keep in mind that it presents the Ocean Heat Content for the entire tropical Pacific, not just the Pacific Warm Pool.
And what happens when a major El Niño event is followed by a La Niña event? The Sea Surface Temperature anomalies for the Atlantic, Indian, and West Pacific Oceans (the Rest-Of-The-World outside of the East Pacific) first rise in response to the El Niño; the 1986/87/88 and 1997/98 El Niño events. Then the Sea Surface Temperatures of the Atlantic, Indian, and West Pacific Oceans are maintained at elevated levels by the La Niña; the 1988/89 and 1998/99/00/01 La Niña events. The results are the apparent upward shifts in the Sea Surface Temperature anomalies of the Atlantic, Indian, and West Pacific Oceans from pole to pole (90S-90N, 80W-180), as illustrated in Figure 11.
Figure 11
The dip and rebound starting in 1991 is caused by the volcanic aerosols emitted by the explosive volcanic eruption of Mount Pinatubo. And the reason the Rest-Of-The-World Sea Surface Temperature anomalies respond so little to the 1982/83 Super El Niño is because that El Niño was counteracted by the eruption of El Chichon in 1982.
To assure readers that the upward shifts in Rest-Of-The-World Sea Surface Temperature anomalies coincide with the 1986/87/88 and 1997/98 El Niño events, I’ve included an ENSO index, NINO3.4 Sea Surface Temperature anomalies, in Figure 12. The NINO3.4 Sea Surface Temperature anomalies have been scaled (multiplied by a factor of 0.12) to allow for a better visual comparison and shifted back in time by 6 months to account for the time lag between the variations in NINO3.4 Sea Surface Temperature anomalies and the response of the Rest-Of-The-World data.
Figure 12
But the ENSO Index data is visually noisy and it detracts from the upward shifts, so in Figure 13 I’ve isolated the data between the significant El Niño events. To accomplish this, I used the NOAA Oceanic Nino Index (ONI) to determine the official months of those El Niño events. There is a 6-month lag between NINO3.4 SST anomalies and the response of the Rest-Of-The-World SST anomalies during the evolution phase of the 1997/98 El Niño. So the ONI data was lagged by six months, and the Rest-Of-The-World SST data that corresponded to the 1982/83, 1986/87/88, 1998/98, and 2009/10 El Niño events was excluded—left as black dashed lines. All other months of data remain.
Figure 13
And to help further highlight the upward shifts, the average Sea Surface Temperature anomalies between the major El Niño events are added in Figure 14.
Figure 14
Based on past posts where I’ve presented the same dataset, some comments suggest the period average temperatures are misleading and request that I illustrate the linear trends. Figure 15 illustrates how flat the trends are between the 1986/87/88 and 1997/98 El Niño events and between the 1997/98 and 2009/10 El Niño events.
Figure 15
Back to the East Pacific data: If we adjust the East Pacific Sea Surface Temperature anomalies for the effects of volcanic aerosols, Figure 16, the linear trend is slightly negative. In other words, for approximately 33% of the surface area of the global oceans, Sea Surface Temperature anomalies have not risen in 30 years.
Figure 16
Note: The method used to adjust for the volcanic eruptions is described in the post Sea Surface Temperature Anomalies – East Pacific Versus The Rest Of The World, under the heading of ACCOUNTING FOR THE IMPACTS OF VOLCANIC ERUPTIONS.
And if we adjust the Rest-Of-The-World Sea Surface Temperature anomalies for volcanic aerosols, Figure 17, we reduce the effects of the dip and rebound caused by the 1991 eruption of Mount Pinatubo. And the trend of the Rest-Of-The-World data between the 1986/87/88 and 1997/98 El Niño drops slightly compared to the unadjusted data (Figure 15), making it even flatter and slightly negative.
Figure 17
In summary, ENSO is a coupled ocean-atmosphere process and its effects on Global Surface Temperatures cannot be accounted for with linear regression of an ENSO index as attempted by Foster and Rahmstorf (2011)–and others before them. We can simply add Foster and Rahmstorf (2011) to the list of numerous papers that make the same error. Examples:
Lean and Rind (2009) How Will Earth’s Surface Temperature Change in Future Decades?
And:
Lean and Rind (2008) How Natural and Anthropogenic Influences Alter Global and Regional Surface Temperatures: 1889 to 2006
And:
Santer et al (2001), Accounting for the effects of volcanoes and ENSO in comparisons of modeled and observed temperature trends
And:
Thompson et al (2008), Identifying signatures of natural climate variability in time series of global-mean surface temperature: Methodology and Insights
And:
Trenberth et al (2002) Evolution of El Nino–Southern Oscillation and global atmospheric surface temperatures
And:
Wigley, T. M. L. (2000), ENSO, volcanoes, and record-breaking temperatures
Additionally, Foster and Rahmstorf (2011) assumed that the global warming signal is linear and that it is caused by anthropogenic forcings, but those assumptions are not supported by the satellite-era Sea Surface Temperature record as shown above. The global warming signal is not linear, and the El Niño events of 1986/87/88 and 1997/98 are shown to be the cause of the rise in sea surface temperatures, not anthropogenic greenhouse gases.
THE ATLANTIC MULTIDECADAL OSCILLATION
Those who have downloaded Tamino’s allfit2.xls file here (and changed it back to a .zip file) will notice that the data in Column AA is identified as “AMO”. And yes, that is Atlantic Multidecadal Oscillation data from the NOAA Earth System Research Laboratory (ESRL) AMO website.
Note: The current AMO data and the data listed in Tamino’s file are slightly different. The reason: The ESRL AMO data is constantly evolving. Each month, when the new North Atlantic (0-70N, 80W-0) Sea Surface Temperature data are added, the data is detrended with the new data.
One could only speculate why Tamino included the AMO data in the spreadsheet–and why the data in the spreadsheet extends back to 1950, when the paper only deals with the period of 1979 to 2010. And one can also wonder why Tamino would include the ESRL AMO data, which is based on Kaplan North Atlantic Sea Surface Temperature anomaly data, when no surface temperature datasets (GISS, HADCRUT or NCDC) use Kaplan SST. It’s like subtracting the Hadley Centre’s CRUTEMP land surface temperature data from GISS LOTI data to determine the Sea Surface Temperature portion of GISTEMP LOTI data. The datasets are not the same. I’ve already pointed this error out to Tamino and his disciples in the post Comments On Tamino’s AMO Post.
But for example, let’s satisfy your curiosity. Let’s assume you were wondering what the results would be if you were to account for the impact of the AMO on Northern Hemisphere surface temperatures, using a linear regression analysis with the ESRL AMO data as the independent variable and with GISS Northern Hemisphere Surface Temperature data as the dependent variable. We’ll confine the example to the Foster and Rahmstorf (2011) time period of 1979 to 2010. Refer to Figure 18. The AMO-adjusted Northern Hemisphere surface Temperature has a linear trend that is only 41% of the unadjusted Northern Hemisphere data. Hmm. That would mean the AMO was responsible for 59% of the rise in Northern Hemisphere surface temperatures based on linear regression analysis.
Figure 18
And that’s in line with generalization made by Tamino’s associates at RealClimate in their Atlantic Multidecadal Oscillation (“AMO”)webpage. There they write that the AMO is:
A multidecadal (50-80 year timescale) pattern of North Atlantic ocean-atmosphere variability whose existence has been argued for based on statistical analyses of observational and proxy climate data, and coupled Atmosphere-Ocean General Circulation Model (“AOGCM”) simulations. This pattern is believed to describe some of the observed early 20th century (1920s-1930s) high-latitude Northern Hemisphere warming and some, but not all, of the high-latitude warming observed in the late 20th century. The term was introduced in a summary by Kerr (2000) of a study by Delworth and Mann (2000).
59% is definitely “some, but not all”.
Tamino continues to complain that one can’t make adjustments for the AMO because it includes a global warming component. For example, in a response to a December 22, 2011 at 6:11 pm comment by Colin Aldridge,Tamino writes:
As for AMO, unlike ENSO (or PDO for that matter) it IS temperature. Pure and simple, nothing more nothing less. Attributing temperature change to temperature change seems kinda stupid.
Hmm. I believe Tamino misses the point that the AMO is a mode of additionalvariability and that it is detrended over the entire term of the data.
Further to this end, I discussed and illustrated for Tamino that we can subtract the “warming signal” of the Global Sea Surface Temperature anomalies excluding the North Atlantic from the North Atlantic Sea Surface Temperature anomalies. That way we’re left with only the additional variability of North Atlantic Sea Surface Temperature anomalies caused by the AMO. And that’s really how the AMO should be expressed. We’ll call the difference the North Atlantic Residual. The North Atlantic Residual has, approximately, the same trend as the AMO for the 1979 to 2010 period of Foster and Rahmstorf (2011), as shown in Figure 19.
Figure 19
Note: The North Atlantic Residual data presented in Figure 16 is based on the combination of HADISST data for the years 1979 to November 1981 and Reynolds OI.v2 SST data from December 1981 to present in agreement with the GISS recipe listed on their GISS Surface Temperature Analysis webpage. To remove the North Atlantic Sea Surface Temperature data from the Global data, the North Atlantic surface area for the coordinates of 0-70N, 80W-0 was determined to represent 11% of the surface area of the global oceans.
And as an additional check of the sign of the solar correction, I performed multiple linear regression analyses with GISS Northern Hemisphere Surface Temperature data as the dependent variable and using the AMO data as an independent variable in one instance and the North Atlantic Residual data in a second. The analyses also included the ENSO (MEI), Solar (PMOD), and Volcanic Aerosols (AOD.NH) as independent variables with the same lags as the global data. In both instances, the sign of the solar correction was the opposite of what Foster and Rahmstorf (2011) were looking for, as shown in equations 12 and 13:
EQUATION 12:
GISS.NH = 62.25 + 0.001696MEI (4m lag) – 0.04528TSI.PMOD(1m lag)– 1.683AOD.NH (7m lag) + 0.866AMO (0m lag)
EQUATION 13:
GISS.NH = 72.12 + 0.04751MEI (4m lag) – 0.05258TSI.PMOD(1m lag)– 2.413AOD.NH (7m lag) + 0.72N. Atl. Residual (0m lag)
A closing AMO note: For an additional discussion on how the North Atlantic impacts the Sea Surface Temperatures of the periods between the upward shifts caused by the 1986/87/88 and 1997/98 El Niño events, refer to the post Supplement To “ENSO Indices Do Not Represent The Process Of ENSO Or Its Impact On Global Temperature”.
CLOSING COMMENTS
I found the inclusion of a linear trend in the regression analyses performed by Foster and Rahmstorf (2011) to be very interesting. It appears the linear trends were included simply to cause a solar correction that was the sign the authors wanted for their adjustments. One might think, if the basic results of the paper were dependent on whether a linear trend was included in the multiple regression analyses, this would have been discussed in the paper. And again, if you have the capability, and if you’re not satisfied with the similarities between my results and the Foster and Rahmstorf (2011) results (Figures 7 and 8), please confirm the multiple regression analyses results presented above with and without the linear trend.
This post also illustrated and discussed the error in their assumption that regression analysis can be used to remove the impacts of ENSO on Global Surface Temperature. ENSO is a process that is not fully represented by ENSO Indices. In other words, the ENSO indices only represent a small portion of the impacts of ENSO on Global Surface Temperatures. Attempting to use an ENSO index as Foster and Rahmstorf (2011) have done is like trying to provide the play-by-play for a baseball game solely from an overhead view of home plate.
The assumption made by Foster and Rahmstorf (2011) that a linear trend provides an approximate “global warming” signal was shown to be erroneous using Sea Surface Temperature data. When broken down into two logical subsets of the East Pacific and the Atlantic-Indian-West Pacific Oceans, Satellite-era Sea Surface Temperature data shows no evidence of an anthropogenic global warming signal. It only shows upward shifts associated with strong ENSO events. This would seem to complicate any attempt to justify the inclusion of the linear trend to reverse the sign of the solar adjustment.
And thanks to Tamino for including the Atlantic Multidecadal Oscillation data in his spreadsheet. It allowed me to illustrate the significant impact the AMO can have on Northern Hemisphere surface temperatures.
Happy New Year to all.
ABOUT: Bob Tisdale – Climate Observations
SOURCES
The spreadsheet that served as the source of the data for the regression analyses was linked to Tamino’s (Grant Foster’s) post Data and Code for Foster & Rahmstorf 2011.
To save you some time, here’s a copy of the file that contains the spreadsheet from Tamino’s blog that I’ve uploaded to mine, allfit2 as of 12-21-11. Again, you’ll have to download the file and change it to a .zip file in order to open it.
The Reynolds OI.v2 Sea Surface Temperature data used in the ENSO discussion is available through the NOAA NOMADS website here.
The Aerosol Optical Thickness data used in the volcano adjustments of the Sea Surface Temperature data in Figures 13 and 14 is available from GISS the Stratospheric Aerosol Optical Thickness webpage here.




















Rahmstorf is a key panicmaker, he is up to his neck in funding connections via PIK and Schellnhuber.
I’m completely ignorant of statistics, of course haven’t read the original paper, and if I’m honest, didn’t take the time to really follow the post that’s been presented here fully. I’m commenting mainly in response to comments, particularly ones saying that including a linear trend makes no sense and winds up producing a sort of hidden mathematical identity. I think it does make sense, if I’m understanding it right.
Seems to me that they make the hypothesis that the linear trend from, say, 1979 to 2000 is caused by CO2 — the trend is just the CO2 signal (or whatever signal caused an upward trend back when temps actually were trending upward). So when they sum up the 3 other influences along with the linear trend, what they’re really doing is summing up known influences with the hypothetical CO2 signal. Now you can correlate those data with the actual measured temperature data, and it’s not going to be a perfect match, but *if* it correlates as strongly from 2000 to present when temps are flat as it does back when temps were rising, that’s some indication that the linear trend is still there in recent times, it’s just obscured by the other influences.
It seems like a pretty simple and unconvincing model, but if I’m understanding the idea right, including the linear trend is really the key part of the experiment.
alcheson says: “Another test of the method is to take other temperature./time regimes in the data sets and see what values result for the variables.”
That will be included in part 2.
Should have stopped playing with the data but for those of you who like this stuff I fitted a simpler deltaGISS, GISS-1, GISS-2, GISS-12 model and then had a look to see what adding YEAR did (the Fourier terms.were getting marginal). (Of course this is all getting shot with problems in the interdependence of the dependent vbles, but it makes a point)
Adding in YEAR now only attracts a coefficient of 0.055 degrees/decade – a third of that found by the authors of this paper. And if only the Excel F significance could be believed in this situation (it can’t) this is a better than the model with all that fancy stuff like volcanos etc in it.
I’m sure I can do better. GDP of Europe next. And I don’t even need to learn R.
SRJ says: “The models you use are different from the model in F&R, the latter include 4 more coefficients relating to a 2.order Fourier series.”
Does it make any difference to the outcome of this post? My Figure 7 and F&R’s Figure 5 are the same. If you were to exclude the trend from F&Rs analysis is the solar component inverted?
@ur momisugly HAS at http://wattsupwiththat.com/2012/01/02/tisdale-takes-on-taminos-foster-rahmstorf-2011/#comment-851376
“SRJ @ur momisugly January 2, 2012 at 7:55 pm
Do you have some inside knowledge here? I read the paper to say they followed an iterative approach to determining lags:”
I have no inside knowledge, I have just read the paper and played around with the R code.
I don’t think that my previous description excludes an iterative approach to determine the lags – if so it was unintended.
This is the code that is used to calculate the lags:
zfeed = data.frame(giss,mei,volc,solar,tau,f1.cos,f1.sin,f2.cos,f2.sin)
######################
# test a range of lags
######################
bestaic = 999999
for (lag1 in 0:24){
for (lag2 in 0:24){
for (lag3 in 0:24){
lagvec = c(lag1,lag2,lag3)
zfit = lagfit(zfeed,lagvec,ndx.beg)
if (AIC(zfit$model) < bestaic){
bestaic = AIC(zfit$model)
bestlag1 = lag1
bestlag2 = lag2
bestlag3 = lag3
}
plot(0,0,main=paste(lag1,lag2,lag3))
}
}
}
lagfit is a function written by Tamino that does multiple regression with lagged variables.
zfeed is the input dataframe, that defines which variables to include in the regression.
If one changes zfeed to match Bobs equation it is obvious that the lags should be recalculated since the estimation of the lags is dependent on zfeed.
Gneiss @ur momisugly January 2, 2012 at 7:55 pm and Wayne @ur momisugly January 2, 2012 at 7:33 pm:
A trend is not an exogenous factor. The first sentence of the F&R Conclusions reads,
“This analysis confirms the strong influence of known factors on short-term variations in global temperature, including ENSO, volcanic aerosols and to a lesser degree solar variation.”
I don’t see trend mentioned there at all. Therefore, including the trend has to be based on something else. The bottom line is, including the trend inverts the solar component, and that gives the adjusted data the continuous rise. That was the primary goal of F&R (2011). The next paragraph of the F&R conclusion reads:
“Perhaps most important, it enables us to remove an estimate of their influence, thereby isolating the global warming signal. The resultant adjusted data show clearly, both visually and when subjected to statistical analysis, that the rate of global warming due to other factors (most likely these are exclusively anthropogenic) has been remarkably steady during the 32 years from 1979 through 2010. There is no indication of any slowdown or acceleration of global warming, beyond the variability induced by these known natural factors.”
I don’t see the trend mentioned there as an exogenous factor either.
Regards
Leif Svalgaard
Bob Tisdale
Bill Illis
Geoff Sharp
and other contributors
The TSI and the sunspot number (SSN) may not be as good indicators as the geomagnetic activity’s effect on the Earth’s magnetic field
http://www.vukcevic.talktalk.net/Tromso.htm
and hence its effect on the AMO, and via it on the global temperatures
http://www.vukcevic.talktalk.net/GT-AMO.htm
Wayne says: “I’m sorry to say that I do believe Equation 2 actually is more accurate than Equation 1, and the sign flip may be a result of Equation 1 actually being pretty wrong.”
Or it could just as easily indicate the solar lag time is wrong. For years, studies have looked into the response time of surface temperatures to solar variability. If memory serves me well, the response times for land surface temperatures are typically measured in months, but for sea surface temperature, the lags are measured in terms of years to decades. But F&R come up with 0- & 1-month lags.
Steve Allen says: “Don’t you mean recharge more tropical Pacific ocean heat to depths, instead of ‘create more…’?”
Thanks. I’ll correct that on the cross post at my blog.
Geoff Sharp says:
January 2, 2012 at 10:28 pm
“The fluctuations in EUV are so minute that they have almost no effect on surface tropospheric temperature.”
Strange how a scientist after being shown by many that solar effects can be chemical and radiative that he continues with the same line. This can only mean an agenda is involved.
EUV varies on the order of milliWatts/m2 and is absorbed above 150 km altitude [ http://www.leif.org/research/Atmospheric-Structure.png ] and has not been shown by ‘many’ to have any effect on surface temperatures. You might provide some references if you believe that the climate response is caused by variations of EUV.
OK, so I’m as usual a bit confused. I see absolutely no problem with including ENSO, despite the use of impressive words like “exogenous” by people who don’t like Tamino.
Now to the use of the linear trend. Once you’ve got rid of volcanoes, ENSO and TSI, what is left is what we want to see – the trend due to increasing CO2. But this is due to another variable, CO2. So I’m not sure why Tamino didn’t use Log[CO2] with an associated climate sensitivity factor as a 4th variable along with ENSO, TSI & Volcanoes. There is nothing in the first 3 variables to create the observed linear trend, but there is in the Log[CO2] term.
Anyway, I think Bob is a bit out of his depth here. But what would I know.
MODERATORS — NAME COLLISION:
@ur momisugly Wayne
‘Wayne’, sorry to have picked such a simple name two years ago as ‘wayne’ but could I ask you to pick something a bit more unique than the one capitalization so the other commenters here do not get the two of us mixed?
jorgekafkazar says:
January 3, 2012 at 12:00 am
“The good thing about Excel is it’s very easy to learn. Virtually anybody who isn’t a total doofus can use it to do trends. ”
What does this say about professors who work for CRU?
It is also strange that Foster put the AMO in his spreadsheet, but then did not use it. It is clearly a significant variable (while TSI is not). As long as it is detrended, it provides a very good explanation for the long-term cycles in the climate (albeit on top of some rising trend). One can go back to the 1850s and still see the AMO cycle in the climate (and who knows how far back this goes).
Obviously, Foster had tried it out (and he has written several articles about it before). He does not have a good explanation for not using it. He discarded it because it leaves a very low warming residual afterward.
Bob Tisdale at http://wattsupwiththat.com/2012/01/02/tisdale-takes-on-taminos-foster-rahmstorf-2011/#comment-851455
“Does it make any difference to the outcome of this post? My Figure 7 and F&R’s Figure 5 are the same. If you were to exclude the trend from F&Rs analysis is the solar component inverted?”
If I fit a model similar to your equation 1 I find the lags to be (MEI,AOD,Solar) = (8,10,4) and the coefficients of this model are:
Model1:
(Intercept) mei volc solar
158.48692653 0.06640975 -3.97792290 -0.11575444
AIC = -239.1566
Using a model similar to your model 2 I find the lags to be used as (4,8,1) and get the coefficients:
Model2:
(Intercept) mei volc solar tau
-85.83179633 0.07403464 -2.31884852 0.06303096 0.01702787
AIC = -508.7721
The number under tau is the trend estimate.
For model that also includes the 2. order Fourier coefficients the estimated lags are (28,11,4) and the coefficients and AIC:
Model3:
(Intercept) mei volc solar f1.cos
180.383579384 -0.071785962 -2.855324729 -0.131762917 0.017162310
f1.sin f2.cos f2.sin
0.018471758 -0.008205048 0.024409417
AIC= -256.1461
F&R’s original model, Model4:
(Intercept) mei volc solar tau
-83.498399079 0.079103123 -2.369367887 0.061321729 0.017092008
f1.cos f1.sin f2.cos f2.sin
0.018359550 0.038623288 -0.001051748 0.024893570
AIC= -532.3597
The AIC suggest that F&R’s model is the most likely. It also suggest that model that model2 is more likely than the 2 models without a trend (i.e. model 1 and 3).
And yes, the solar coefficient changes sign when the trend is included. But If a trend is not included in the model then there will be a trend in residuals (that is the case for model1 and model3) and that suggest that model should be changed.
I think that Wayne had a very good point earlier when he wrote:
“I’m sorry to say that I do believe Equation 2 actually is more accurate than Equation 1, and the sign flip may be a result of Equation 1 actually being pretty wrong.”
Citing from this comment: http://wattsupwiththat.com/2012/01/02/tisdale-takes-on-taminos-foster-rahmstorf-2011/#comment-851237
John Brookes says: “OK, so I’m as usual a bit confused. I see absolutely no problem with including ENSO…”
Then you didn’t read the discussion of the process of ENSO in the post above.
You continued, “Anyway, I think Bob is a bit out of his depth here.”
I’m not out of my depth on ENSO. And I presented a curiosity about the multiple regression analyses of F&R. I’m not out of my depth there either.
@Bob: You really need to show a plot of the residuals of Equation 1. Leaving out a discussion of the residuals from Equations 1 and 2 is misleading. Once you show that graph, it’s obvious, without any fancy statistics, that Equation 1 has left behind a linear trend in the data and not accounted for it.
Several people have commented that F&R put a linear trend into the equation and lo-and-behold out came a linear trend: they got out what they put in. This is incorrect. You could say the same thing about MEI or any other variable in the equation, right? The fact is, you can put any variables into a linear regression, and the way that it tells you which ones make sense is by the coefficients that come out the other side. If the linear trend didn’t belong, its coefficient would be essentially zero.
Don’t get me wrong: I think your physical argument about ENSO, etc, is valid. The problem is that you’re wasting a lot of correctness points on a statistical argument (Equations 1 and 2) that is incomplete and incorrect. Please, please correct/retract the whole “sign flip” thing. It sounds a lot like the hockey stick sediment issue, but it’s not.
Bob Tisdale writes,
“A trend is not an exogenous factor.”
A trend is caused by exogenous factors. What F&R succeed in showing is that the warming trend in temperatures cannot be explained by El Nino, volcanoes or solar irradiance. And moreover when you account for those three factors, the different temperature datasets roughly agree on how steep that trend is, although UAH stands a bit apart from the others.
SRJ, regarding you January 3, 2012 at 5:56 am comment. Thanks for the lags. I’ll look at the results later. And thanks for confirming that the solar signs are inverted if the trends are not included in the anaylsis. But we seem to have a difference of opinion on the use of the trend. You’re saying that including the trend in the analysis provides the best fit. I’m not disagreeing with you. But the trend is not an independent variable. It’s a function of the dependent variable. There’s no reason to include it in the regression analysis. Also the fact that the solar coefficient is opposite of what is expected if the trend is not included could simply mean the actual solar lag falls outside of the 24-month window of the F&R analysis. And last, ENSO should not be included as an independent variable.
I’m no expert on statistical analysis, but I did have to learn the subject in some depth back when I was studying to become a financial analyst.
I don’t remember the majority of the details, but I did commit to memory a few critical issues. One of which could be a factor here… when you’re performing multiple linear regression analysis (as was done in F&R2011), any significant correlations between your independent variables (a.k.a. multicollinearity) can lead to erroneous estimates for individual regression coefficients (possibly resulting in sign inversions). A quick check of the four independent variable data sets in a correlation matrix could help clear this up.
As for the inclusion of a linear trend as an independant variable, I’m rather surprised F&R wouldn’t just use a log of the actual atmospheric concentration of CO2 (and equivalents), since the data should be of good quality, and that’s the key relationship they’re actually trying to isolate and quantify.
HAS writes,
“However if you include the ARMA(1,1) structure claimed by the authors and look instead at what deltaGISS does regressed against the balance of the vbles but with added GISS t-1 , the explained variance without YEAR rises to 45%.”
Converting to first differences (deltaGISS) is a standard time series technique to remove a linear trend, and if we do remove the trend, then of course the three exogenous variables explain a larger fraction of what variance remains. That is one of F&R’s points too, that El Nino, volcanoes, and solar irradiance explain some of the short-term variation in temperature, after you adjust for the longer-term upward trend. But the upward trend is large, real, and of considerable interest here. F&R show that El Nino, volcanoes, and solar irradiance cannot explain the upward trend, it must be due to something else.
Working with first differences does not really hide the incline anyway, it just sweeps it into the y intercept.
Russ R at
January 3, 2012 at 7:43 am
“A quick check of the four independent variable data sets in a correlation matrix could help clear this up.”
F&R mentions this collinearity issue in their section 2. (Data).
Here is the correlation matrix for the 4 variables used in Bobs equation 2:
mei volc solar tau
mei 1.00000000 0.4396667 0.04446291 -0.2172003
volc 0.43966667 1.0000000 0.16409459 -0.3519571
solar 0.04446291 0.1640946 1.00000000 -0.4745288
tau -0.21720025 -0.3519571 -0.47452881 1.0000000
According to F&R these correlations are sufficiently small to say that the variables are certainly not collinear.
Bob Tisdale said
January 3, 2012 at 7:28 am
“You’re saying that including the trend in the analysis provides the best fit. I’m not disagreeing with you. But the trend is not an independent variable. It’s a function of the dependent variable. There’s no reason to include it in the regression analysis”
Yes there is. Models without a trend gives a trend in the residuals. Such models are bad. One way to improve the model to remove the residual trend is to use a model with a trend. If you are going to use a model without a trend you need a model that does not give a trend in the residuals. So how will you alter your model to accomplish that?
Bob Tisdale said:
“Also the fact that the solar coefficient is opposite of what is expected if the trend is not included could simply mean the actual solar lag falls outside of the 24-month window of the F&R analysis.”
I tested this by allowing solar lags up to 35. The best fit lags for F&R’s model were unchanged as (4,7,1).
Once again, Wayne2 makes a good point on this at
January 3, 2012 at 7:06 am
Leif Svalgaard says:
January 3, 2012 at 3:40 am
EUV varies on the order of milliWatts/m2 and is absorbed above 150 km altitude
That in no way proves the change is too small to significantly affect climate. The change in EUV from the quick check of articles I looked at was 100% of more. To prove this is not significant you would need to rule out any amplification via ozone, atmospheric height, etc.
The best that can be said about EUV variability is that at present it is unproven if this affects climate or not. To claim there is no effect is unscientific.
Wayne2, I just tried to post this but I got an error message in return. So just in case it shows up, that’s the reason for the duplicated reply.
You said, “You really need to show a plot of the residuals of Equation 1. Leaving out a discussion of the residuals from Equations 1 and 2 is misleading.”
It’s not misleading. You’re reading too much into this discussion. The intents of this part of the post were:
1) to show that the sign of the solar component is inverted if the trend is not included in the regression analysis, and
2) to show that it impacts the results.
That’s all.
And everyone who has checked the results with different regression analysis tools has found the sign of the solar component is dependent on whether the trend is included in the analysis. The question is, since the trend is not an independent variable, should the impact of including it in the linear regression analysis have been discussed in F&R 2011?
It’s like detrending the Surface Temperature or TLT data before performing the regression analysis. You’d get different results from “un-detrended” data and you would need to explain why you detrended the data.