Solar Cycle Driven Ocean Temperature Variations

What Slow Fourier Transforms can tell us.

Guest essay by Stan Robertson, Ph.D., P.E.

On May 3, 2014, an article on WUWT by Willis Eschenbach entitled, The Slow Fourier Transform (SFT) was posted. As he noted, the amplitude of the Slow Fourier Transform components are in the same units as the fitted data, intervals of arbitrary length and irregular data can be used and periodicities rather than frequencies are automatically extracted. In addition to rediscovering a very useful mathematical tool, Willis went on to show that there were apparently no variations of temperature associated with solar cycle variations for several long term temperature records. Now my normal inclination would be to say that if Willis didn’t find any there probably aren’t many to be found. But, on the other hand, as I showed in an October 10, 2013 WUWT article entitled The Sun Does It: Now Go Figure Out How!, it does not take much of a temperature variation to represent a very significant solar contribution to ocean surface temperatures and heat content.

Several researchers, including Nir Shaviv (2008), Roy Spencer (see http://www.drroyspencer.com/2010/06/low-climate-sensitivity-estimated-from-the-11-year-cycle-in-total-solar-irradiance/) and Zhou & Tung (2010) have found that ocean surface temperatures oscillate with an amplitude of about 0.04 – 0.05 oC during a solar cycle. Using 150 years of sea surface temperature data, Zhou & Tung found 0.085 oC warming for each watt/m2 of increase of TSI over a solar cycle.

In my previous article, I showed that the changes of Total Solar Irradiance (TSI) over a solar cyle were too small, by at least a factor of 3.6, to cause temperature oscillations with an amplitude of 0.04 C. Since the variations of temperature considered were clearly associated with solar cycles, it seemed to me that the sun does something more to change ocean surface temperatures than just vary its TSI. But the whole idea would fall apart if there really are no significant variations of ocean temperature correlated with solar cycles. That motivated me to look in places where Willis had not and, in particular, to look at shorter and more recent temperature records that might be both more accurate and with better distribution over the ocean surfaces.

 

I downloaded the HADSST3 global sea surface temperature raw data (http://woodfortrees.org/plot/hadsst3gl ) and took a look at the data since 1954. This covers 60 years of data and about five and one half solar cycles. To get an idea of what sort of noise would be in these data, I fitted the sea surface temperatures to a cubic polynomial just to get rid of most of the systematic variations. The figure below shows a plot of the residuals for the last 60 years.

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Figure 1 HADSST3GL residuals for the last 60 years

If we are looking for variations of about 0.04 C amplitude over the 5.5 solar cycles in the time period shown, then with apparently random variations of about 0.3 C amplitude in the record, the signal to noise ratio would be about 0.04 / 0.3 = 0.13. This would be a signal a long way down in the noise. So the question is, can we extract such a signal with a Slow Fourier Transform? To answer this question, I adopted Willis’ lovely SFT technique. I generated some test monthly data for a 60 year interval consisting of sine waves with a 10 year period plus monthly random noise in the range of +/-0.5 C. The slow FT results for waves with amplitude of 0.15 C, 0.1 C and 0.05 C would have signal to noise ratios of 0.3, 0.2 and 0.1, respectively. The results are shown in Figure 2.

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Figure 2. Slow FT for test sine waves with 10 year period for a sixty year interval; 6 cycles.

As one might expect, the random variations would have both short period and long period apparent periodicities as shown in Figure 2. At a signal to noise ratio of 0.2 (blue line), or larger, the signal buried in the noise can be nicely extracted by the Slow FT. At a signal to noise ratio of 0.1, and none of the other curves to aid the eye, you might just have to believe that there might be a signal with a 10 year period. It is hardly bigger than the spurious noise peaks. Of course, there are much more sophisticated signal extraction processes than the Slow Fourier Transform. From comments that I have seen here on WUWT, there are some sharp readers around who could surely teach us some lessons. It might be expecting too much to see such a small signal in the noisy sea surface temperature data with an SFT method. But it is worth noting that in each of the test cases, the Slow FT peaks at 10 yr are smaller than the amplitudes that generated the test data by about ten to twenty percent with worse results at lower signal to noise ratios.

Since it is pretty clear that we will be looking for a small signal in a lot of noise, we probably ought to see where to look. A slow FT of the SIDC sunspot numbers for the years since 1954 shows a peak at 10.8 years as shown in Figure 3.

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Figure 3. Slow FT for SIDC sunspot numbers 1954 – 2014

Now let’s have a look at the Slow FT for the sea surface temperature data. The average was subtracted to help suppress spurious long periods, but no smoothing was applied.

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Figure 4 Slow FT for HADSST3gl sea surface temperatures

I leave it to the readers to decide whether or not there is a solar cycle signal in the HADSST3gl sea surface temperature record. Considering that the slow FT tends to understate the actual signal amplitude at low signal to noise ratios, I think that this might be a credible detection of a solar cycle driven temperature variation at a 10.4 year period with a signal to noise ratio of at least 0.065 C/ 0.3 C = 0.22.

For the remainder of this essay, I would like to extend and recapitulate some of my previous findings. The prevailing view in climate science is that the sun has contributed very little, if anything, to the warming of the last century. Finding that ocean temperatures are affected during solar cycles to a much larger degree than can be explained by the small changes of solar irradiance that reach the sea surfaces is a huge challenge to the prevailing view, but it rests on some bedrock physics. A detailed accounting for energy exchanges, including thermal energies is as fundamental as it gets.

I was able to account for the long term secular trends of both the sea surface temperature changes AND the ocean heat content since 1965 with a linearly increasing rate of surface heating. This involved numerically solving some heat transfer equations, including the absorption of solar energy, but it provided a simple, two parameter simultaneous fit to the sea surface temperature record AND the ocean heat content record. The two parameters found were a rate of increase of surface heat input of 0.31 watt/m2 per decade and an average thermal diffusivity of the upper oceans of 1 cm2/s. A fairly good fit to both trends was obtained as shown in Figure 5.

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Figure 5. Measured and Calculated Sea Surface Temperature and Ocean Heat Content

A good fit was obtainable only for very narrow ranges of parameters. If the thermal diffusivity is taken to be too large, too much heat would be calculated for the ocean depths and surface temperatures would rise too little as the heat moves on to greater depths. If too small, the reverse occurs. If the input heating rate is too large, both rise too rapidly and if too small, both rise too little. The point of this exercise was to obtain a thermal diffusivity that could then be used to tell us how much surface temperature change could be produced by the changes of solar irradiance that occur during solar cycles. The answer is that the small variations of solar irradiance that reach the sea surfaces are far too small to produce temperature oscillations of even 0.04 C amplitude, much less the 0.065 watt/m2 amplitude suggested by Figure 4.

By the same computer program that I had used for my previous WUWT article, I have found that the amplitude of oscillating heat flux entering the ocean that would be required to produce surface temperature oscillations with the Figure 4 amplitude of 0.065 C would be 0.47 watt/m2 for thermal diffusivity of 1 cm2/s. How does this compare to the oscillating flux of solar radiation that reaches the sea surface? Let’s have a look at the solar irradiance changes over solar cycles. Figure 6 shows that TSI varies approximately sinusoidally over recent solar cycles with an amplitude of about 0.5 watt/m2 . (Thanks to Leif Svalgaard for TSI data.)

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Figure 6 TSI variations for a few recent solar cyles.

As explained in my previous WUWT post, about 70% of one fourth of this amplitude, or 0.0875 watt/m2 enters the troposphere averaged over the earth area and day-night cycles. About

(160 watt/m2 /1365 watt/m^2) X 0.5 watt/m^2 = 0.0586 Watt/m2 is absorbed at the surface at wavelengths below 2 micron. About half the difference between the 0.0875 and 0.0586 watt/m2 reaches the surface at longer wavelengths and after scattering in the atmosphere. This give a solar TSI amplitude of 0.073 watt/m2 that is absorbed at the sea surface. This is about 6.4 times smaller than the 0.47 watt/m2 amplitude needed to drive surface temperature oscillations of 0.065 C. This result is in better agreement with the larger factors of 5 – 7 found by Shaviv (2008) ( see http://www.sciencebits.com/files/articles/CalorimeterFinal.pdf)

It is of some interest that my results were obtained without assuming any particular depth of an ocean mixing layer. For a thermal diffusivity of 1 cm2/s, the contribution to thermal gradients that vary with the solar cycle below the first ten meters would be much less than 0.001 C/m anyway. I saw no need to introduce a mixing zone with zero gradients and an arbitrary depth boundary.

This leaves us with a clear result that the TSI variations during solar cycles are not the direct drivers of the associated ocean temperature oscillations. Something else that varies with the solar cycles affects the amount of heat flux that penetrates the ocean surfaces. In my opinion, the most likely candidate would be cyclical variations of global cloud cover, but the mechanism that would control it is presently a research topic. Whatever the mechanism of the larger heating variations, it seems quite possible that it might be capable of producing long term secular trends under the control of the sun in addition to variations over solar cycles.

To examine this point, go back to the result shown in Figure 5. The heat flux required to account for the trends of increasing sea surface temperature and ocean heat content had to increase by 0.31 watt/m2/decade. Could this be due to greenhouse gases? CO2 is supposed to produce heating at a rate of about 3.7 watt/m2 per doubling period of its concentration. With concentration increasing at a rate of about 5% per decade, the doubling time would be about 14 decades. Since the heating effect is a logarithmic function of concentration, this would produce a linear heating at a rate of 3.7/14 = 0.26 watt/m2 per decade. This is certainly in the right ballpark to be part of the explanation of the apparent surface heating of the last few decades, however, when we recall that sulfate aerosols with negating effects would partially counter the CO2, it seems to me unlikely that CO2 is the entire explanation. Considering the similar period of rapid warming in the first half of the last century and the presently expanding and embarrassing pause of temperature increases, it seems to me that there is ample room for a significant solar contribution to the longer term warming periods. So I still think that the sun does a lot of it and I would still like to know how. Climate scientists would be well advised to spend some time trying to find out.

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July 26, 2014 6:40 am

In my previous article, I showed that the changes of Total Solar Irradiance (TSI) over a solar cyle were too small, by at least a factor of 3.6, to cause temperature oscillations with an amplitude of 0.04 C.
The standard formula for this is dT/T = (dTSI/TSI)/4, which with an amplitude [=half from min to max] of 0.05% in dTSI/TSI gives dT/T = 0.0125% [of T=288K] = 0.036 C , so the variation of TSI is just what is needed.

July 26, 2014 6:45 am

[of T=299K]
[of T=288K], of course

kim
July 26, 2014 6:57 am

I think I’ve never heard so loud
The quiet message in a cloud.
=======================

bones
July 26, 2014 7:08 am

Leif Svalgaard says:
July 26, 2014 at 6:40 am
. . . The standard formula for this is dT/T = (dTSI/TSI)/4, which with an amplitude [=half from min to max] of 0.05% in dTSI/TSI gives dT/T = 0.0125% [of T=299K] = 0.036 C , so the variation of TSI is just what is needed.
——————————————–
Sorry Leif, the TSI variations are at the top of the atmosphere and that is where T must be taken as well. It is a different matter down at sea level where most of the heat enters the oceans as solar UV/Vis. Your calculation would only apply to a blackbody absorber with zero heat capacity. Your simple radiation balance is not applicable there and apparently you still don’t understand the concept of thermal inertia.
Stan Robertson (bones)

Pamela Gray
July 26, 2014 7:12 am

Finally! Someone intelligently calculates [] energy required in order to compare what is being delivered when examining possible cause and effect speculations. Thank you. The rest of your offering will be digested after breakfast and another cup of coffee.

Pamela Gray
July 26, 2014 7:15 am

oops, need to delete a word to correct a sentence, “…intelligently calculates energy required…”

ren
July 26, 2014 7:19 am

“Your simple radiation balance is not applicable there and apparently you still don’t understand the concept of thermal inertia. ”
Stan Robertson (bones)
http://weather.unisys.com/surface/sst_anom.gif

Steve Keohane
July 26, 2014 7:19 am

Very interesting, thank you.

Stephen Wilde
July 26, 2014 7:27 am

“Something else that varies with the solar cycles affects the amount of heat flux that penetrates the ocean surfaces. In my opinion, the most likely candidate would be cyclical variations of global cloud cover, but the mechanism that would control it is presently a research topic”
and:
“So I still think that the sun does a lot of it and I would still like to know how. Climate scientists would be well advised to spend some time trying to find out.”
Already done:
http://www.newclimatemodel.com/new-climate-model/
Solar effects alter global cloudiness by changing the gradient of tropopause height between equator and poles which results in latitudinal climate zone shifting with consequential changes in the length of the lines of air mass mixing.
One doesn’t even need to involve cosmic rays as per Svensmark.

Leonard Weinstein
July 26, 2014 7:30 am

I see the value of q being shown as W/m2/10 years. What is this?? the units of q should be W/m2. What is the 10 years about? Is it the average value over 10 year periods? If so point that out.

July 26, 2014 7:34 am

bones says:
July 26, 2014 at 7:08 am
Sorry Leif, the TSI variations are at the top of the atmosphere and that is where T must be taken as well.
You can be as sorry as you like, my calculation stands.

bones
July 26, 2014 7:36 am

Leonard Weinstein says:
July 26, 2014 at 7:30 am
I see the value of q being shown as W/m2/10 years. What is this?? the units of q should be W/m2. What is the 10 years about? Is it the average value over 10 year periods? If so point that out.
—————————————————————
Leonard, you need to read my previous article for context. The rate of increase of surface heating in W/m^2/decade was what was needed to account for the measured increases of ocean surface temperatures and ocean heat content since 1965. That is different from the cyclical variation of heat inputs in W/m^2 over a single solar cycle of 10 to11 years.

Pamela Gray
July 26, 2014 7:38 am

The top of the atmosphere translates to 0.073 watt/m2 under clear sky conditions. Naturally that means that all of it would enter in and be absorbed into the oceans under those conditions. Can we consider longwave infrared back radiation from CO2 adding to that figure? Probably trivially. So what would vary this figure considerably? Clouds and water surface conditions down to the depth of visible penetration around the equatorial band. If the wind is dead calm, the waters layer up with warm on the top and water starts to evaporate leading to clouds, so now we have even less watts. If the sea surface is chopped up we have fairly clear skies but we might have cloudy water leading to less penetration. It is a conundrum.
However, over very long time spans we might have a convincing argument related to a building imbalance (as in more heat going in than going out) leading to long noisy cycles of warmth. But that imbalance begins to go the other way eventually. Leading to some very cold years, decades, and even longer before once again we climb back out of a cold spell. The oceans certainly have the capacity to absorb more heat than they give out (brrrr). The opposite is true as well. If conditions lead to evaporation of that heat, it could lead to long periods of warmth before the tank is empty. And the inertia of such a large volume can be calculated to be hundreds of years long.

bones
July 26, 2014 7:39 am

Leif Svalgaard says:
July 26, 2014 at 7:34 am
bones says:
July 26, 2014 at 7:08 am
Sorry Leif, the TSI variations are at the top of the atmosphere and that is where T must be taken as well.
You can be as sorry as you like, my calculation stands.
—————————————————–
And it still stands as inapplicable to the ocean heating problem. If you have nothing new to add to this discussion, why don’t we agree refer the reader back to the comments below my previous article. Those were detailed enough for all to see our discussion of these issues at that time.

bones
July 26, 2014 7:44 am

Pamela Gray says:
July 26, 2014 at 7:38 am
The top of the atmosphere translates to 0.073 watt/m2 under clear sky conditions. Naturally that means that all of it would enter in and be absorbed into the oceans under those conditions. . . .
…..The opposite is true as well. If conditions lead to evaporation of that heat, it could lead to long periods of warmth before the tank is empty. And the inertia of such a large volume can be calculated to be hundreds of years long.
—————————————————————————
Well written. I agree.

July 26, 2014 7:47 am

bones says:
July 26, 2014 at 7:39 am
And it still stands as inapplicable to the ocean heating problem.
In any case the observed variation is just as calculated from the radiation balance, so no extraneous considerations need be applied, but I’ll agree that you cannot be persuaded to see your error, so will let is stand there.

ren
July 26, 2014 7:51 am

Where is hiding warm in the oceans?
http://oi60.tinypic.com/2881uo5.jpg

Pamela Gray
July 26, 2014 7:55 am

Ocean heat data is an important topic in this discussion. Satellite data samples only the ocean’s skin. Therefore you may get the wrong impression that heat was “added” from above when in reality it was already there but just shifted to the surface. Previous to satellite data, surface heat was actually not surface heat but below surface heat. So be cautious in your use of data that leads you to conclude supposed added heat. That may not be the case.
http://podaac.jpl.nasa.gov/SeaSurfaceTemperature

ren
July 26, 2014 7:57 am

Where is the latent heat in the atmosphere?
http://www.ospo.noaa.gov/data/atmosphere/radbud/gs19_prd.gif

July 26, 2014 8:11 am

What the co2 driven global warming advocates don’t discuss is that if the ocean has started eating global warming since the trade winds changed during the negative phase of the ocean’s ~60 year multi-decadal cycles, they also emitted excess energy during their positive phase from 1975-2005. The implication is that the oceans are capable of storing energy on long timescales, and releasing it on long timescales too. And they store a lot of energy. The top two metres alone contain as much energy as the entire atmosphere above.
We know that the oceans keep the air temperature up over night as the release some of the energy the Sun poured into them during the day. We also know that there is a lag of a couple of months between the longest day of the year and the peak in surface air temperatures near coasts. This is thermal inertia and heat capacity at work. On longer timescales, we have recently confirmed that runs of El Nino events which release a lot of energy from the oceans are initiated on the falling side of the solar cycle, never on the upswing.
So we can go a stretch further and combine what we know. When solar activity falls, energy comes out of the ocean, not just over the period of the decline of a single 11 year solar cycle, but if the Sun stays low in activity terms, for many years. An integration of the sunspot number shows us that the ocean heat content rose all the way from 1934 to 2003. This is the real cause of ‘global warming’. A lot of excess energy is still retained in the upper ocean. We can expect the effect of a couple of low solar cycles to be softened by a proportion of that excess heat returning to space via the atmosphere warming it on the way.
In developing my understanding of the Earth’s systems, I developed a couple of very simple models to help me fathom the way the surface temperature stays fairly constant as the solar cycles wax and wane. Back in 2009, by analysing the data, I found that the global average sea surface temperature, the SST, stays fairly constant when the Sun is averaging around 40 sunspots per month. By calculating the running total departing from this figure in a simple integration I found that combined with the ~60 oceanic cycles (also solar influenced), I could reproduce the temperature history of the last 150 years quite accurately. By adding in a nominal forcing for co2 (or an allowance for the infamous ‘adjustments’ to the data), I was able to get a match to monthly data which has a Pearson R^2 value of 0.9.
Rog’s take which I agree with.

Pamela Gray
July 26, 2014 8:13 am

The ocean’s role in the heat discharge/recharge/location factor needs to be considered (I added the word “location” to the function set because that is beginning to reveal itself as an important component in measuring oceanic heat). For that piece of your thesis I would rely on Bob Tisdale’s data explanations and oceanic processes, which are well supported in the literature and is beginning to receive notice by scientists such as Judith Curry.
We are fortunate to have the offerings of Anth*** Watts’ surface station investigations and Bob Tisdale’s explanations of ocean temperature measurements and processes.

July 26, 2014 8:14 am

It is very clear that IR radiation has no effect on OHC or surface water temperatures and that Visible Light and UV light have major effects on OHC and Surface Water temperatures.
Therefore AGW has nothing to do with ocean heat content and ocean surface temperatures while the sun has everything to do with it.
OHC has just been responding to the extreme strong solar conditions 1934-2003 which have leveled off post 2005. OHC will follow.
IR penetration of surface ocean .1mm visible light /long UV light tens of meters. Seems pretty clear according to the data.

July 26, 2014 8:22 am

Was there a WUWT post on previous to this enlightening study with an ICCC9 video on it and where did it go this morning?

July 26, 2014 8:23 am

My mistake

Greg Goomman
July 26, 2014 8:25 am

Firstly for FT part, in looking a spectral analysis of SST , basin by basin, I found some odd changes were introduced by the Hadley processing around the decadal scale. Here is one example:
http://climategrog.files.wordpress.com/2013/03/icoad_v_hadsst3_ddt_n_pac_chirp.png
The probably lunar periodicity of 9.04 years gets attenuated and somewhat shifted ( this probably corresponding to Scaffeta’s 9.1+/-0.1 and recent BEST european land temps ) .
I don’t know which is “correct” but until someone at Hadley does some QA on the effects of their magic on the frequency spectrum, I’ll stick with ICOADS, at least for post WWII period.
Sulphates seem to be in the news this week, and perhaps about time. However, the cause of the reduction in aerosols and the “brightening” does not seem to be due to our efforts with emission regulations:
http://climategrog.wordpress.com/?attachment_id=902
The otherwise calm stratosphere shows very clearly that the drop temperautre ( and in opacity ) was and after effect of the major eruptions. 0.5K apparently permanent drop in TLS after each event. The initial warming is due to extra blocking of solar and is well understood, However, the later cooling is usually attributed to GHG blocking upward LWIR.
This is a result of the usual “linear trend” mentality dominant in climatology. If we draw a straight line through it we could possibly make such an erroneous attribution, yet here it is clear that there is no ‘linear trend’ but two events causing a drop.
The most obvious explanation being that the processes that flush out volcanic aerosols also remove a lot of anthopogenic pollution aerosols.
What gets blocked in stratosphere does not make it into the lower climate system, and vice versa. So the effect on the troposphere will be the inverse of this: initial cooling followed by a permanent warming shift.
The ironic flip side is that despite the “volcanic winter” concept that has been drummed into popular culture ( and climate orthodoxy ) since the 1970s, the long term effect of ( at least the last two ) major eruptions has been a _warming_ ‘forcing’ on the troposphere.

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