"Earth itself is telling us there’s nothing to worry about in doubled, or even quadrupled, atmospheric CO2"

Readers may recall Pat Franks’s excellent essay on uncertainty in the temperature record.  He emailed me about this new essay he posted on the Air Vent, with suggestions I cover it at WUWT, I regret it got lost in my firehose of daily email. Here it is now.  – Anthony

Future Perfect

By Pat Frank

In my recent “New Science of Climate Change” post here on Jeff’s tAV, the cosine fits to differences among the various GISS surface air temperature anomaly data sets were intriguing. So, I decided to see what, if anything, cosines might tell us about the surface air temperature anomaly trends themselves.  It turned out they have a lot to reveal.

As a qualifier, regular tAV readers know that I’ve published on the amazing neglect of the systematic instrumental error present in the surface air temperature record It seems certain that surface air temperatures are so contaminated with systematic error – at least (+/-)0.5 C — that the global air temperature anomaly trends have no climatological meaning. I’ve done further work on this issue and, although the analysis is incomplete, so far it looks like the systematic instrumental error may be worse than we thought. J But that’s for another time.

Systematic error is funny business. In surface air temperatures it’s not necessarily a constant offset but is a variable error. That means it not only biases the mean of a data set, but it is likely to have an asymmetric distribution in the data. Systematic error of that sort in a temperature series may enhance a time-wise trend or diminish it, or switch back-and-forth in some unpredictable way between these two effects. Since the systematic error arises from the effects of weather on the temperature sensors, the systematic error will vary continuously with the weather. The mean error bias will be different for every data set and so with the distribution envelope of the systematic error.

For right now, though, I’d like to put all that aside and proceed with an analysis that accepts the air temperature context as found within the IPCC ballpark. That is, for the purposes of this analysis I’m assuming that the global average surface air temperature anomaly trends are real and meaningful.

I have the GISS and the CRU annual surface air temperature anomaly data sets out to 2010. In order to make the analyses comparable, I used the GISS start time of 1880. Figure 1 shows what happened when I fit these data with a combined cosine function plus a linear trend. Both data sets were well-fit.

The unfit residuals are shown below the main plots. A linear fit to the residuals tracked exactly along the zero line, to 1 part in ~10^5. This shows that both sets of anomaly data are very well represented by a cosine-like oscillation plus a rising linear trend. The linear parts of the fitted trends were: GISS, 0.057 C/decade and CRU, 0.058 C/decade.

Figure 1. Upper: Trends for the annual surface air temperature anomalies, showing the OLS fits with a combined cosine function plus a linear trend. Lower: The (data minus fit) residual. The colored lines along the zero axis are linear fits to the respective residual. These show the unfit residuals have no net trend. Part a, GISS data; part b, CRU data.

Removing the oscillations from the global anomaly trends should leave only the linear parts of the trends. What does that look like?  Figure 2 shows this: the linear trends remaining in the GISS and CRU anomaly data sets after the cosine is subtracted away. The pure subtracted cosines are displayed below each plot.

Each of the plots showing the linearized trends also includes two straight lines. One of them is the line from the cosine plus linear fits of Figure 1. The other straight line is a linear least squares fit to the linearized trends. The linear fits had slopes of: GISS, 0.058 C/decade and CRU, 0.058 C/decade, which may as well be identical to the line slopes from the fits in Figure 1.

Figure 1 and Figure 2 show that to a high degree of certainty, and apart from year-to-year temperature variability, the entire trend in global air temperatures since 1880 can be explained by a linear trend plus an oscillation.

Figure 3 shows that the GISS cosine and the CRU cosine are very similar – probably identical given the quality of the data. They show a period of about 60 years, and an intensity of about (+/-)0.1 C. These oscillations are clearly responsible for the visually arresting slope changes in the anomaly trends after 1915 and after 1975.

Figure 2. Upper: The linear part of the annual surface average air temperature anomaly trends, obtained by subtracting the fitted cosines from the entire trends. The two straight lines in each plot are: OLS fits to the linear trends and, the linear parts of the fits shown in Figure 1. The two lines overlay. Lower: The subtracted cosine functions.

The surface air temperature data sets consist of land surface temperatures plus the SSTs. It seems reasonable that the oscillation represented by the cosine stems from a net heating-cooling cycle of the world ocean.

Figure 3: Comparison of the GISS and CRU fitted cosines.

The major oceanic cycles include the PDO, the AMO, and the Indian Ocean oscillation. Joe D’aleo has a nice summary of these here (pdf download).

The combined PDO+AMO is a rough oscillation and has a period of about 55 years, with a 20th century maximum near 1937 and a minimum near 1972 (D’Aleo Figure 11). The combined ocean cycle appears to be close to another maximum near 2002 (although the PDO has turned south). The period and phase of the PDO+AMO correspond very well with the fitted GISS and CRU cosines, and so it appears we’ve found a net world ocean thermal signature in the air temperature anomaly data sets.

In the “New Science” post we saw a weak oscillation appear in the GISS surface anomaly difference data after 1999, when the SSTs were added in. Prior and up to 1999, the GISS surface anomaly data included only the land surface temperatures.

So, I checked the GISS 1999 land surface anomaly data set to see whether it, too, could be represented by a cosine-like oscillation plus a linear trend. And so it could. The oscillation had a period of 63 years and an intensity of (+/-)0.1 C. The linear trend was 0.047 C/decade; pretty much the same oscillation but a slower warming trend by 0.1 C/decade. So, it appears that the net world ocean thermal oscillation is teleconnected into the global land surface air temperatures.

But that’s not the analysis that interested me. Figure 2 appears to show that the entire 130 years between 1880 and 2010 has had a steady warming trend of about 0.058 C/decade. This seems to explain the almost rock-steady 20th century rise in sea level, doesn’t it.

The argument has always been that the climate of the first 40-50 years of the 20th century was unaffected by human-produced GHGs. After 1960 or so, certainly after 1975, the GHG effect kicked in, and the thermal trend of the global air temperatures began to show a human influence. So the story goes.

Isn’t that claim refuted if the late 20th century warmed at the same rate as the early 20th century? That seems to be the message of Figure 2.

But the analysis can be carried further. The early and late air temperature anomaly trends can be assessed separately, and then compared. That’s what was done for Figure 4, again using the GISS and CRU data sets. In each data set, I fit the anomalies separately over 1880-1940, and over 1960-2010.  In the “New Science of Climate Change” post, I showed that these linear fits can be badly biased by the choice of starting points. The anomaly profile at 1960 is similar to the profile at 1880, and so these two starting points seem to impart no obvious bias. Visually, the slope of the anomaly temperatures after 1960 seems pretty steady, especially in the GISS data set.

Figure 4 shows the results of these separate fits, yielding the linear warming trend for the early and late parts of the last 130 years.

Figure 4: The Figure 2 linearized trends from the GISS and CRU surface air temperature anomalies showing separate OLS linear fits to the 1880-1940 and 1960-2010 sections.

The fit results of the early and later temperature anomaly trends are in Table 1.

 

Table 1: Decadal Warming Rates for the Early and Late Periods.

Data Set

C/d (1880-1940)

C/d (1960-2010)

(late minus early)

GISS

0.056

0.087

0.031

CRU

0.044

0.073

0.029

“C/d” is the slope of the fitted lines in Celsius per decade.

So there we have it. Both data sets show the later period warmed more quickly than the earlier period. Although the GISS and CRU rates differ by about 12%, the changes in rate (data column 3) are identical.

If we accept the IPCC/AGW paradigm and grant the climatological purity of the early 20th century, then the natural recovery rate from the LIA averages about 0.05 C/decade. To proceed, we have to assume that the natural rate of 0.05 C/decade was fated to remain unchanged for the entire 130 years, through to 2010.

Assuming that, then the increased slope of 0.03 C/decade after 1960 is due to the malign influences from the unnatural and impure human-produced GHGs.

Granting all that, we now have a handle on the most climatologically elusive quantity of all: the climate sensitivity to GHGs.

I still have all the atmospheric forcings for CO2, methane, and nitrous oxide that I calculated up for my http://www.skeptic.com/reading_room/a-climate-of-belief/”>Skeptic paper. Together, these constitute the great bulk of new GHG forcing since 1880. Total chlorofluorocarbons add another 10% or so, but that’s not a large impact so they were ignored.

All we need do now is plot the progressive trend in recent GHG forcing against the balefully apparent human-caused 0.03 C/decade trend, all between the years 1960-2010, and the slope gives us the climate sensitivity in C/(W-m^-2).  That plot is in Figure 5.

Figure 5. Blue line: the 1960-2010 excess warming, 0.03 C/decade, plotted against the net GHG forcing trend due to increasing CO2, CH4, and N2O. Red line: the OLS linear fit to the forcing-temperature curve (r^2=0.991). Inset: the same lines extended through to the year 2100.

There’s a surprise: the trend line shows a curved dependence. More on that later. The red line in Figure 5 is a linear fit to the blue line. It yielded a slope of 0.090 C/W-m^-2.

So there it is: every Watt per meter squared of additional GHG forcing, during the last 50 years, has increased the global average surface air temperature by 0.09 C.

Spread the word: the Earth climate sensitivity is 0.090 C/W-m^-2.

The IPCC says that the increased forcing due to doubled CO2, the bug-bear of climate alarm, is about 3.8 W/m^2. The consequent increase in global average air temperature is mid-ranged at 3 Celsius. So, the IPCC officially says that Earth’s climate sensitivity is 0.79 C/W-m^-2. That’s 8.8x larger than what Earth says it is.

Our empirical sensitivity says doubled CO2 alone will cause an average air temperature rise of 0.34 C above any natural increase.  This value is 4.4x -13x smaller than the range projected by the IPCC.

The total increased forcing due to doubled CO2, plus projected increases in atmospheric methane and nitrous oxide, is 5 W/m^2. The linear model says this will lead to a projected average air temperature rise of 0.45 C. This is about the rise in temperature we’ve experienced since 1980. Is that scary, or what?

But back to the negative curvature of the sensitivity plot. The change in air temperature is supposed to be linear with forcing. But here we see that for 50 years average air temperature has been negatively curved with forcing. Something is happening. In proper AGW climatology fashion, I could suppose that the data are wrong because models are always right.

But in my own scientific practice (and the practice of everyone else I know), data are the measure of theory and not vice versa. Kevin, Michael, and Gavin may criticize me for that because climatology is different and unique and Ravetzian, but I’ll go with the primary standard of science anyway.

So, what does negative curvature mean? If it’s real, that is. It means that the sensitivity of climate to GHG forcing has been decreasing all the while the GHG forcing itself has been increasing.

If I didn’t know better, I’d say the data are telling us that something in the climate system is adjusting to the GHG forcing. It’s imposing a progressively negative feedback.

It couldn’t be  the negative feedback of Roy Spencer’s clouds, could it?

The climate, in other words, is showing stability in the face of a perturbation. As the perturbation is increasing, the negative compensation by the climate is increasing as well.

Let’s suppose the last 50 years are an indication of how the climate system will respond to the next 100 years of a continued increase in GHG forcing.

The inset of Figure 5 shows how the climate might respond to a steadily increased GHG forcing right up to the year 2100. That’s up through a quadrupling of atmospheric CO2.

The red line indicates the projected increase in temperature if the 0.03 C/decade linear fit model was true. Alternatively, the blue line shows how global average air temperature might respond, if the empirical negative feedback response is true.

If the climate continues to respond as it has already done, by 2100 the increase in temperature will be fully 50% less than it would be if the linear response model was true. And the linear response model produces a much smaller temperature increase than the IPCC climate model, umm, model.

Semi-empirical linear model: 0.84 C warmer by 2100.

Fully empirical negative feedback model: 0.42 C warmer by 2100.

And that’s with 10 W/m^2 of additional GHG forcing and an atmospheric CO2 level of 1274 ppmv. By way of comparison, the IPCC A2 model assumed a year 2100 atmosphere with 1250 ppmv of CO2 and a global average air temperature increase of 3.6 C.

So let’s add that: Official IPCC A2 model: 3.6 C warmer by 2100.

The semi-empirical linear model alone, empirically grounded in 50 years of actual data, says the temperature will have increased only 0.23 of the IPCC’s A2 model prediction of 3.6 C.

And if we go with the empirical negative feedback inference provided by Earth, the year 2100 temperature increase will be 0.12 of the IPCC projection.

So, there’s a nice lesson for the IPCC and the AGW modelers, about GCM projections: they are contradicted by the data of Earth itself. Interestingly enough, Earth contradicted the same crew, big time, at the hands Demetris Koutsoyiannis, too.

So, is all of this physically real? Let’s put it this way: it’s all empirically grounded in real temperature numbers. That, at least, makes this analysis far more physically real than any paleo-temperature reconstruction that attaches a temperature label to tree ring metrics or to principal components.

Clearly, though, since unknown amounts of systematic error are attached to global temperatures, we don’t know if any of this is physically real.

But we can say this to anyone who assigns physical reality to the global average surface air temperature record, or who insists that the anomaly record is climatologically meaningful: The surface air temperatures themselves say that Earth’s climate has a very low sensitivity to GHG forcing.

The major assumption used for this analysis, that the climate of the early part of the 20th century was free of human influence, is common throughout the AGW literature. The second assumption, that the natural underlying warming trend continued through the second half of the last 130 years, is also reasonable given the typical views expressed about a constant natural variability. The rest of the analysis automatically follows.

In the context of the IPCC’s very own ballpark, Earth itself is telling us there’s nothing to worry about in doubled, or even quadrupled, atmospheric CO2.

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June 19, 2011 1:49 pm

Bart says:
June 19, 2011 at 1:35 pm
I put a plot to illustrate the concept here. It’s not a perfect match – lots of work needs to be done to nail down the parameters of the model – but it shows how the PSD of the SSN data might come about.
but does not uniquely determine the model. I would guess there is an infinitude of ways the PSD of the SSN can come about.

June 19, 2011 1:52 pm

Bart says:
June 19, 2011 at 1:35 pm
I put a plot to illustrate the concept here. It’s not a perfect match – lots of work needs to be done to nail down the parameters of the model – but it shows how the PSD of the SSN data might come about.
The idea was to test your routine Kalman filter prediction for SSN from cycle 20 to SC25, and from SC23 to SC25.

June 19, 2011 1:54 pm

Bart says:
June 19, 2011 at 1:41 pm
“Yes, it is, but in a negative sense.”
Really? Apparently, from what you say, none of the old stuff works. This is new. Maybe you should give it a try.

It is no more new than any of failed old ones. Yours fits right in with them.

Bart
June 19, 2011 1:56 pm

No, it should be unique. I would just need a lot more time to nail it down. I mean, I’ve had one day, and this has been researched for decades (centuries, really). Gimme a break!

Bart
June 19, 2011 1:59 pm

“The idea was to test your routine Kalman filter prediction for SSN from cycle 20 to SC25, and from SC23 to SC25.”
It’s routine, but it’s also a lot of work, and I usually get paid big bucks for it. I may work on it a bit from time to time, and eventually come up with the solution, but it’s not going to be anywhere in the near term. Meanwhile, I’ve given you some valuable information which, if you want to know what is really going on, you should pursue.

June 19, 2011 2:03 pm

Bart says:
June 19, 2011 at 1:56 pm
No, it should be unique. I would just need a lot more time to nail it down. I mean, I’ve had one day, and this has been researched for decades (centuries, really). Gimme a break!
I am giving you a break. I was responding to your direct question.

June 19, 2011 2:11 pm

Here is another example of cyclomania run amok: http://arxiv.org/abs/1105.3885v1

June 19, 2011 2:12 pm

Bart says:
June 19, 2011 at 1:59 pm
Meanwhile, I’ve given you some valuable information which, if you want to know what is really going on, you should pursue.
I do not consider it worthwhile, so you have to convince me by doing it.

Bart
June 19, 2011 2:13 pm

Leif Svalgaard says:
June 19, 2011 at 1:54 pm
“It is no more new than any of failed old ones. Yours fits right in with them.”
Wow. “Hidebound” doesn’t even begin to describe that reception.
Fine. Solar dynamics do not really interest me, and I don’t really care. If you want to continue deluding yourself, that’s your affair. I’m out.

June 19, 2011 2:15 pm

Bart says:
June 19, 2011 at 1:59 pm
“The idea was to test your routine Kalman filter prediction for SSN from cycle 20 to SC25, and from SC23 to SC25.”
It’s routine, but it’s also a lot of work

The computer does the work. How much tuning and adjusting do you need to do ‘by hand’?

June 19, 2011 2:55 pm

Bart says:
June 19, 2011 at 2:13 pm
Wow. “Hidebound” doesn’t even begin to describe that reception.
Fine. Solar dynamics do not really interest me, and I don’t really care. If you want to continue deluding yourself, that’s your affair. I’m out.

You are not the first one to bow out when the going gets rough.

Bart
June 19, 2011 3:26 pm

“You are not the first one to bow out when the going gets rough.”
Not rough. Futile. And, for no reward whatsoever.
Clearly, the periods associated with the solar magnetic field reversals are ~20 and ~23.6 years. These are the fundamental modal oscillation periods. They have an obvious relationship with the modal oscillations seen in the SSN data. If you cannot, or will not, acknowledge that basic fact, when it is staring at you right in front of your eyes… what is the point?

Bart
June 19, 2011 3:33 pm

“I do not consider it worthwhile, so you have to convince me by doing it.”
I do not have to convince you of anything. I think I would have better odds of convincing a rock to flip itself over. I’m done doing pro bono work on this. Anyone who wants more has to negotiate a contract.

June 19, 2011 4:38 pm

Leif, that’s entirely unfair.

June 19, 2011 4:56 pm

By the way, Bart, when I posted the reply at Tamino’s, I remembered to add a following post acknowledging your production of the PSD analysis mentioned in the part directed to Ray Ladbury. But Tamino snipped that, too.

June 19, 2011 6:39 pm

Bart says:
June 19, 2011 at 3:26 pm
Clearly, the periods associated with the solar magnetic field reversals are ~20 and ~23.6 years. These are the fundamental modal oscillation periods. They have an obvious relationship with the modal oscillations seen in the SSN data. If you cannot, or will not, acknowledge that basic fact, when it is staring at you right in front of your eyes… what is the point?
The spurious periods you find 20 and 23.6 are not physical and do not correspond to anything, the Sun does not oscillate like that.
Bart says:
June 19, 2011 at 3:33 pm
I’m done doing pro bono work on this.
Aren’t we all?
Anyone who wants more has to negotiate a contract.
Not worth it.
Pat Frank says:
June 19, 2011 at 4:38 pm
Leif, that’s entirely unfair.
The worth of an opinion or theory is how well it predicts. If Bart refuses to predict using his ‘fundamental modes’ unless we pay him money to do so, he is indeed out.

June 19, 2011 6:59 pm

Pat Frank says:
June 19, 2011 at 4:38 pm
Leif, that’s entirely unfair.
Here is a selection of some of the choice words used:
lousy accusatory flustered deep end lost cause crude gross hyperbole woefully capricious off base embarrassed crap intransigence delusion refuse to learn abuse shifting your ground clutching at straws distinguish the importance of your work obdurate Hidebound deluding Futile
Unfair?

Carla
June 19, 2011 7:06 pm

Leif Svalgaard says:
June 19, 2011 at 2:11 pm
Here is another example of cyclomania run amok:
~
The use of the word cycle..makes my stomach turn these days. But cycles are relative to their time and space,
But speaking of “run amok,” recently learned that during one our suns minimum periods way back oh six hundred something, no earthly cooling. (who said that lol?) Fits my superficial cranky just fine to see increase in VLISM densities with a warm ionization level.. But later on down the road of time seems like those little puffy cloudletts start becoming..cooler and have lower levels of ionization..
Like saying time in a cloud or was that time in a bottle..

June 19, 2011 7:34 pm

Carla says:
June 19, 2011 at 7:06 pm
Like saying time in a cloud or was that time in a bottle..
chacun à son goût

Bart
June 19, 2011 7:40 pm

Leif Svalgaard says:
June 19, 2011 at 6:39 pm
“The spurious periods you find 20 and 23.6 are not physical and do not correspond to anything.”

The physical basis of the solar cycle was elucidated in the early twentieth century by George Ellery Hale and collaborators, who in 1908 showed that sunspots were strongly magnetized (this was the first detection of magnetic fields outside the Earth), and in 1919 went on to show that the magnetic polarity of sunspot pairs:
Is always the same in a given solar hemisphere throughout a given sunspot cycle;
Is opposite across hemispheres throughout a cycle;
Reverses itself in both hemispheres from one sunspot cycle to the next.

So, how long does it take for the magnetic polarity to reset to its original configuration? Do you ever look before you leap?

Bart
June 19, 2011 7:50 pm

more… “Hale’s observations revealed that the solar cycle is a magnetic cycle with an average duration of 22 years. However, because very nearly all manifestations of the solar cycle are insensitive to magnetic polarity, it remains common usage to speak of the “11-year solar cycle”.’

June 19, 2011 8:26 pm

Bart says:
June 19, 2011 at 7:40 pm
Reverses itself in both hemispheres from one sunspot cycle to the next.
Does not mean that the two cycles are part of a 22-yr oscillation. And they are not. The solar dynamo has a time scale of 11 years, that the polarities change between the cycles is just a result of the polar fields changing halfway through the cycle.
So, how long does it take for the magnetic polarity to reset to its original configuration? Do you ever look before you leap?
There is no ‘original configuration. As sunspots from one cycle decays, their magnetic fields are carried towards the poles by a slow circulation [that some thinks takes 40 years]. Upon arrival, the new magnetic flux first cancels the old flux there [which has opposite polarity] and then builds up a new polar field over the next several years that serves as the ‘seed’ for the next cycle. The actual reversal at each pole is almost instantaneous: one month the field is positive [but small], the next it is negative [and small], in a sense it is a smooth continuous change. Here you could benefit from know;edge form a professional. Here you can see the first modern measurements of the polar fields http://www.leif.org/research/The%20Strength%20of%20the%20Sun's%20Polar%20Fields.pdf
very nearly all manifestations of the solar cycle are insensitive to magnetic polarity, it remains common usage to speak of the “11-year solar cycle”.’
And that is the correct physical interpretation. Each cycle is a unit that gives rise to the next, which in turn gives rise to the next and so on for eons.
Spare us the “leap before you look” nonsense, it is not becoming a gentleman.

June 19, 2011 8:36 pm

Bart says:
June 19, 2011 at 7:40 pm
So, how long does it take for the magnetic polarity to reset to its original configuration?
Here is the polar magnetic field the past several cycles
http://www.leif.org/research/Solar-Polar-Fields-1966-now.png
The polarities of the sunspots reverse in a more complicated manner: Several years before the spots of a given cycle finally disappear near the equator, new spots with reversed polarity appears at higher latitudes, so the sun has spots from both cycles for several years around minimum. If you count time from the first spot of a cycle to the last spot of that cycle, the length of the cycle is about 17 years.

Bart
June 19, 2011 9:01 pm

The underlying process is 20 and 23.6 years for the interval from the mid-1700s to today. The sunspot number is a measurement of the magnitude of that process. The observed harmonics fall precisely where they should, at 10 years, 11.8 years, 10.8 years, and 131 years.
A gentleman gives credit where it is due, and does not deny what has been laid out right before his eyes in order to affect omniscience.

June 19, 2011 9:55 pm

Bart says:
June 19, 2011 at 9:01 pm
The underlying process is 20 and 23.6 years for the interval from the mid-1700s to today.
Sorry to say, but there are no such underlying cycles.
A gentleman gives credit where it is due
no credit is due, you have been misled by your opinion of your own brilliance.
Now do the Kalman prediction to regain some credibility.