Basil Copeland and Anthony Watts
Image from NASA GSFC
Many WUWT readers will remember that last year we presented evidence of what we thought was a “solar imprint” in globally averaged temperature trends. Not surprisingly, given the strong interest and passion in the subject of climate change and global warming, our results were greeted with both praise and scorn. Some problems were pointed out in our original assessment, and other possible interpretations of the data were suggested. Some WUWT readers have wondered whether we would ever follow up on this.
We have been quietly working on this, and having learned much since our initial effort, are as persuaded as ever that the basic premise of our original presentation remains valid. We have tried out some new techniques, and have posted some preliminary trials on WUWT in the past few months, here, and here.
However, questions remain. Since a lot of bright and capable people read WUWT, rather than wait until we thought we had all the answers, we have decided to present an update and let readers weigh in on where we are at with all of this. We have, in fact, drafted a paper that we might at some point submit for peer review, when we are more comfortable with some of the more speculative aspects of the matter. What follows is taken from that draft, with some modification for presentation here.
For those that prefer to read this in printed form, a PDF of this essay is available for download here
Introduction
Evidence of decadal and bidecadal variations in climate are common in nature. Classic examples of the latter include the 20 year oscillation in January temperature in the Eastern United States and Canada reported by Mock and Hibler [1], and the bidecadal rhythm of drought in the Western High Plains, Mitchell, Stockton, and Meko [2], and Cook, Meko, and Stockton [3]. Other examples include a bidecadal (and pentadecadal) oscillation in the Aleutian Low, Minobe [4]; rainfall and the levels of Lake Victoria, East Africa, Stager et al. [5]; and evidence from tree rings along the Russian Arctic, Raspopov, Dergachev, Kolstrom [6], and the Chilean coast, Rigozo et al. [7].
Evidence of decadal or bidecadal oscillations in temperature data, however, especially upon a global scale, has proven to be more elusive and controversial. Folland [8] found a spectral peak at 23 years in a 335 year record of central England temperatures, and Newell et al. [9] found a 21.8 year peak in marine air temperature. Brunetti, Mageuri, Nanni [10] have reported evidence of a bidecadal signal in Central European mean alpine temperatures. But the first to report bidecadal oscillations – of 21 and 16 years – in globally averaged temperature were Ghil and Vautard [11]. Their results were challenged by Eisner and Tsonis [12], but were later taken up and extended by Keeling and Whorf [13, 14].
No less unsettled is the issue of attribution. Currie [15], examining U.S. temperature records, reported spectral peaks of 10.4 and 18.8 years, attributing the first to the solar cycle, and the latter to the lunar nodal cycle. In the debate over the bidecadal drought cycle of the Western High Plains, Mitchell, Stockton, and Meko [2] concluded that the bidecadal signal was a solar phenomenon, not a lunar one. Bell [16, 17] and Stockton, Mitchell, Meko [18] attributed the bidecadal drought cycle to a combined solar and lunar influence, as did Cook, Meko, and Stockton [3]. Keeling and Whorf [13], working with globally averaged temperature data, reported strong spectral peaks at 9.3, 15.2, and 21.7 years. Eschewing a simpler combination of solar and lunar influences, they proposed a complex mechanism of lunar tidal influences to explain the evidence [14].
The past decade has seen only sporadic interest in the question of whether decadal and bidecadal variations in climate have a solar or lunar attribution, or some combination of the two. Cerveny and Shaffer [19] and Treloar [20] report evidence of tidal influences on the southern oscillation and sea surface temperatures; Yndestad [21, 22] and McKinnell and Crawford [23] attribute climate oscillations in the Arctic and North Pacific to the 18.6 year lunar nodal cycle. But interest in discerning an anthropogenic influence on climate has largely eclipsed the study of natural climate variability, at least on a global scale. There continue to be numerous reports of decadal or bidecadal oscillations in a variety of climate metrics on local and regional scales, variously attributed to solar and or lunar periods [3-7, 10, 19-27], but little has been done to advance the state of knowledge of lunar or solar periodic cycles on globally averaged temperature trends since the final decade of the 20th Century.
Besides the shift in interest to discerning an anthropogenic influence on global climate, the lack of agreement on any kind of basic physical mechanism for a solar role in climate oscillations, combined with the apparent lack of consistency in the relation between solar cycles and terrestrial temperature trends perhaps has made this an uninviting area of research. The difficulty of attributing temperature change to solar influence has been thoroughly surveyed by Hoyt and Schatten [28]. In particular, there are numerous reports of sign reversals in the relationship between temperature and solar activity in the early 20th century, particularly after 1920 [28, pp 115-117]. More recently, Georgieva, Kirov, and Bianchi [29] surveyed comprehensively the evidence for sign reversal in the relationship between solar and terrestrial temperatures, and suggested that these sign reversals are related to a long term secular solar cycle with solar hemispheric asymmetry driving the sign reversals. Specifically, they argue that there is a double Gleissberg cycle in which during one half of the cycle the Southern solar hemisphere is more active, while during the other half of the cycle the Northern solar hemisphere is more active. They argue that this solar hemispheric asymmetry is correlated with long term terrestrial climate variations in atmospheric circulation patterns, with zonal circulation patterns dominating in the 19th and early 20th century, and meridional circulation patterns dominating thereafter (see also [30] and [31]).
In our research, we pick up where Keeling and Whorf [13, 14] leave off, insofar as documenting decadal and bidecadal oscillations in globally averaged temperature trends is concerned, but revert to the explanation proposed by Bell [16] and others [3, 18], that these are likely the result of a combined lunisolar influence, and not simply the result of lunar nodal and tidal influences. We show that decadal and bidecadal oscillations in globally averaged temperature show patterns of alternating weak and strong warming rates, and that these underwent a phase change around 1920. Prior to that time, the lunar influence dominates, while after that time the solar influence dominates. While these show signs of being correlated with the broad secular variation in atmospheric circulation patterns over time, the persistent influence of the lunar nodal cycle, even when the solar cycle dominates the warming rate cycles, implicates oceanic influences on secular trends in terrestrial climate. Moreover, while analyzing the behavior of the secular solar cycle over the limited time frame for which we have reasonably reliable instrumental data for measuring globally averaged temperature should proceed with caution, if the patterns documented here persist, we may be on the cusp of a downward trend in the secular solar cycle in which solar activity will be lower than what has been experienced during the last four double sunspot cycles. These findings could influence our expectations for the future regarding climate change and the issue of anthropogenic versus natural variability in attributing climate change.
In our original presentation, we utilized Hodrick-Prescott smoothing to reveal decadal and bidecadal temperature oscillations in globally averaged temperature trends. While originally developed in the field of economics to separate business cycles from long term secular trends in economic growth, the technique is applicable to the time series analysis of temperature data in reverse, by filtering out short term climate oscillations, isolating longer term variations in temperature.
For the mathematically inclined, here is what the HP filter equation looks like, courtesy of the Mathworks
The Hodrick-Prescott filter separates a time series yt into a trend component Tt and a cyclical component Ct such that yt = Tt + Ct. It is equivalent to a cubic spline smoother, with the smoothed portion in Tt.
The objective function for the filter has the form
where m is the number of samples and λ is the smoothing parameter. The programming problem is to minimize the objective over all T1, …, Tm. The first sum minimizes the difference between the time series and its trend component (which is its cyclical component). The second sum minimizes the second-order difference of the trend component (which is analogous to minimization of the second derivative of the trend component).
For those with an electrical engineering background, you could think of it much like a bandpass filter, which also has uses in meteorology:
Outside of electronics and signal processing, one example of the use of band-pass filters is in the atmospheric sciences. It is common to band-pass filter recent meteorological data with a period range of, for example, 3 to 10 days, so that only cyclones remain as fluctuations in the data fields.
(Note: For those that wish to try out the HP filter on data themselves, a freeware Excel plugin exists for it which you can download here)
When applied to globally averaged temperature, the HP filter works to extract the longer term trend from variations in temperature that are of short term duration. It is somewhat like a filter that filters out “noise,” but in this case the short term cyclical variations in the data are not noise, but are themselves oscillations of a shorter term that may have a basis in physical processes.
This approach reveals alternating cycles of weak and strong warming rates with decadal and bidecadal frequency. We confirm the validity of the technique using a continuous wavelet transform. Then, using MTM spectrum analysis, we analyze further the frequency of these oscillations in global temperature data. Using sinusoidal model analysis we show that the frequencies obtained using HP smoothing are equivalent to what are obtained using MTM spectrum analysis. In other words, the HP smoothing technique is simply another way of extracting the same spectral density information obtained using more conventional spectrum analysis, while leaving it in the time domain. This allows us to compare the secular pattern of temperature cycles with solar and lunar maxima, yielding results that are not obvious from spectral analysis alone.
Using the Hodrick-Prescott Filter to Reveal Oscillations in Globally Averaged Temperature
We use the open source econometric regression software gretl (GNU Regression, Econometrics, and Time Series) [34] to derive an HP filtered time series for the HadCRUT3 Monthly Global Temperature Anomaly, 1850:01 through 2008:11 [35].

Figure 1 is representative output in gretl for a series filtered with HP smoothing (λ of 129,000). In the top panel is the original series (in gray), with the resulting smoothed trend (in red). In the bottom panel is the cyclical component. In econometric analysis, attention usually focuses on the cyclical component. Our focus, though, is on the trend component in the upper panel, and in particular the first differences of the trend component. The first differences of a trend indicate rate of change.
By taking the first differences of the smoothed trend in Figure 1, we obtain the series (in blue) shown in Figure 2, plotted against the background of the original data (gray), and the smoothed trend (red).

What does this reveal? At first glance, we see an alternating pattern of decadal and bidecadal oscillations in the rate of warming, with a curious exception circa 1920-1930. We will return to this later. Concentrating for now on the general pattern, these oscillations in the rate of warming are representations, in the time domain, of spectral frequencies in the temperature data, with high frequency oscillations filtered out by the HP smoothing.
As evidence of this, Figure 3 presents the result of two Morelet continuous wavelet transforms, the first (in the upper panel) of the unfiltered HadCRUT3 monthly time series, and the second (in the lower panel) of results obtained with HP smoothing.
The wavelet transforms below a frequency of ~7 years (26.4 ≈ 84 months) are visually identical; the HP filter is simply acting as a low pass filter, filtering out oscillations with frequencies above ~7 years, while preserving the decadal and bidecadal oscillations of interest here. In the next section, we investigate these oscillations in further detail, supplementing our results from HP filtering with MTM spectrum analysis, and a sinusoidal model fit.
Frequency Analysis
Figure 4 is an MTM spectrum analysis of the unfiltered HadCRUT3 monthly global temperature analysis.

A feature of MTM spectrum analysis is that it distinguishes signals that are described as “harmonic” from those that are merely “quasi-oscillatory.” In MTM spectrum analysis a harmonic is a more clearly repeatable signal that passes a stronger statistical test of its repeatability. Quasi-oscillatory signals are statistically significant, in the sense of rising above the background noise level, but are not as consistently repeating as the harmonic signals.
The distinction between harmonic and quasi-oscillatory signals is well illustrated in Figure 4 by the two cycles that interest us the most – a “quasi-oscillatory” cycle with a peak at 8.98 years, and a “harmonic” signal centered at 21.33 years. Also shown are a harmonic, and a quasi-oscillatory cycle, of shorter frequencies, possibly ENSO related. The harmonic at 21.33 years in Figure 4 encompasses a range from 18.96 to 24.38 years, and the quasi-oscillatory signal that peaks at 8.93 years has sidebands above the 99% significance level that range from 8.53 to 10.04 years. These signals are consistent with spectra identified by Keeling and Whorf [13,14].
Figure 5 is an MTM spectrum analysis of the HP smoothed first differences.

The basic shape of the spectrum is unchanged, but it is now well above the background noise level because of the HP filtering. Attention is drawn in Figure 5 to four oscillatory modes or cycles because they correspond to the four strongest cycles derived from using the PAST (PAleontological STatistics) software [36] to fit a sinusoidal model to the HP smoothed first differences.
Shown in Figure 6, the sinusoidal fit results in periods of 20.68, 9.22, 15.07 and 54.56 years, in that order of significance. These periodicities fall within the ranges of the spectra obtained using MTM spectrum analysis, and yield a sinusoidal model with an R2 of 0.60.

Discussion
The first differences of the HP smoothed temperature series, shown in Figure 2 and Figure 6, show a pattern of alternating decadal and bidecadal oscillations in globally averaged temperature. From the sinusoidal model fit, these cycles have average frequencies of 20.68 and 9.22 years, results that are consistent with the MTM spectrum analysis, and with spectra in the results published by Keeling and Whorf [13, 14]. But to what can we attribute these persistent periodicities?
A bidecadal frequency of 20.68 years is too short to be attributed solely to the double sunspot cycle, and too long to be attributed solely to the 18.6 year lunar nodal cycle. There is indeed evidence of a spectral peak at ~15 years, which Keeling and Whorf combined with their evidence of a 21.7 year cycle to argue for attributing the oscillations entirely to the 18.6 year lunar nodal cycle.
But our evidence indicates that the ~15 year spectrum is much weaker, is not harmonic, and probably derives from the anomalous behavior of the spectra circa 1920-1930, something Keeling and Whorf could not appreciate with evidence only from the frequency domain. Especially in light of the evidence presented below, and because the bidecadal signal is harmonic, and readily discernible in the time domain representation of Figure 2 and Figure 6, we believe that a better attribution is the beat cycle explanation proposed by Bell [16], i.e. a cycle representing the combined influence of the 22 year double sunspot cycle and the 18.6 year lunar nodal cycle.
As for the decadal signal of 9.22 years, this is too short to be likely attributable to the 11 year solar cycle, but is very close to half the 18.6 year lunar nodal cycle, and thus may well be attributable to the lunar nodal cycle. Together, the pattern of alternating weak and strong warming cycles shown in Figure 2 and Figure 6 suggest a complex pattern of interaction between the double sunspot cycle and the lunar nodal cycle.
This complex pattern of interaction between the double sunspot cycle and lunar nodal maxima in relation to the alternating pattern of decadal and bidecadal warming rates is demonstrated further in Figure 6 with indicia plotted to indicate solar and lunar maxima. Since circa 1920, the strong warming rate cycles have tended to correlate with solar maxima associated with odd numbered solar cycles, and the weak warming rate cycles with lunar maxima.
Prior to 1920, the strong warming rate cycles tend to correlate with the lunar nodal cycle, with the weak warming rate cycles associated with even numbered solar cycles. The sinusoidal model fit begins to break down prior to 1870. Whether this is a reflection of the poorer quality of data prior to 1880, or indications of an earlier phase shift, we cannot say, though the timing would be roughly correct for the latter. But the anomalous pattern circa 1920, when viewed against the shift from strong warming rate cycles dominated by the lunar nodal cycle, to strong warming rate cycles dominated by the double sunspot cycle, has the appearance of a disturbance associated with what clearly seems to be a phase shift
These results agree with the evidence mustered by Hoyt and Schatten [28] and Georgieva, Kirov, and Bianchi [29] for a phase shift circa 1920 in the relationship between solar activity and terrestrial temperatures. However, we can suggest, here, that the supposed negative correlation between solar activity and terrestrial temperatures prior to 1920 rests on a misconstrued understanding of the data. As can be seen in Figure 6, the relationship between the change in the warming rate and solar activity is still positive, i.e. the warming rate is peaking near the peaks of solar cycles 10, 12, and 14, but at a much reduced level, indicative of the lower level of solar activity during the period. Indeed, for much of solar cycle 12, and all of solar cycle 14, the “warming” rate is negative, but the change in the warming rate is still following the level of solar activity, becoming less negative as solar activity increases, and more negative as solar activity decreases. Still, there is a strong suggestion in Figure 6 of a phase shift circa 1920 in which the relationship between solar activity and terrestrial temperatures changes dramatically before and after the shift. Before the shift, the lunar period dominates, and the solar period is much weaker. After the shift, the solar period dominates, and the lunar period becomes subordinate.
Speculating
To this point, we believe that we are on relatively solid ground in describing what the data show, and the likelihood of a lunisolar influence on global temperatures on decadal and bidecadal timescales. What follows now is more speculative. To what can we attribute the apparent phase shift circa 1920, evident not just in our findings, but as reported by Hoyt and Schatten [28] and Georgieva, Kirov, and Bianchi [29]? While the period of data is too short to do more than speculate, the periods before and after the phase shift appear to be roughly equivalent in length to the Gleissberg cycle.
Since 1920, we’ve had four double sunspot cycles with strong warming rates ending in odd numbered cycles. Prior to 1920, while the results are less certain at the beginning of the data period, there is a reasonable interpretation of the data in which we see four bidecadal periods dominated by the influence of the lunar cycle. These differences may be attributable to the broad swings in atmospheric “circulation epochs” discussed by Georgeiva, et al. [30], characterized either predominantly by zonal circulation, or meridional circulation. With respect to the period of time shown in Figure 6, zonal circulation prevailed prior to 1920, and since then meridional circulation has dominated. These “circulation epochs” may have persistent influence on the relative roles of solar and lunar influence in warming rate cycles.
While the role of variation in solar irradiation over the length of a solar cycle on the broad secular rise in global temperature is disputed, we are presenting here evidence primarily of a more subtle repeated oscillation in the rate of change in temperature, not its absolute level. As shown in Figure 2 and Figure 6, the rate of change oscillates between bounded positive and negative values (with the exception circa 1920 duly noted). Variations in solar irradiance over the course of the solar cycle are a reasonable candidate for the source of this variation in warming rate cycle. As WUWT’s “resident solar physicist”, Leif Svalgaard, has pointed out, variations in TSI over a normal solar cycle can only account for about 0.07°C of total variation over the course of a solar cycle. The range of change in warming rates shown in Figure 2 and Figure 6 are at most only about one-tenth of this, or about ~0.006°C to ~0.008°C. If anything, we should be curious why the variation is so small. We attribute this to the averaging of regional and hemispheric variations in the globally averaged data. On a regional basis, analysis [not presented here] shows much larger variation, but still within the range of 0.07°C that might plausibly be attributed to the variation in TSI over the course of a solar cycle.
So variations in solar irradiance over the course of the solar cycle are a reasonable candidate for the source of this variation in warming rate cycle. At the same time, the lunar nodal cycle may be further modulating this natural cycle in the rate of change in global temperatures. As to the degree of modulation, that may be influenced by atmospheric circulation patterns. With zonal circulation, the solar influence is moderated and the lunar influence dominates the modulation of the warming rate cycles. With meridional circulation, the solar influence is stronger, and the warming rate cycles are dominated by the solar influence.
At this writing, we are in the transition from solar cycle 23 to 24, a transition that has taken longer than expected, and longer than the transitions typical of solar cycles 16 through 23. Indeed, the transition is more typical of the transitions of solar cycles 10 through 15. If the patterns observed in Figure 6 are not happenstance, we may be seeing an end to the strong solar activity of solar cycles 16-23, and a reversion to the weaker levels of activity associated with solar cycles 10-15. If that occurs, then we should see a breakdown in the correlation between warming rate cycles and solar cycles at bidecadal frequencies, and a reversion to a dominant correlation between temperature oscillations and the lunar nodal cycle.
Interestingly, there was a lunar nodal maximum in 2006 not closely associated with the timing of decadal or bidecadal oscillations in globally averaged temperature. This could be an indication of a breakdown in the pattern similar to what we see in the 1920’s, i.e. the noise associated with a phase shift in the weaker warming rate cycles will occur at times of the solar maximum, and the stronger warming rate cycles will occur at times of lunar nodal maximum.
Repeating, there appear to be parallels between our findings and the argument of Georgieva et al. [29] of a relationship between terrestrial climate and solar hemispheric asymmetry on the scale of a double Gleissberg cycle. Solar cycles 16-23, associated as we have seen with increased solar activity, and strong correlations with the strong terrestrial warming rate cycles of bidecadal frequency, represent 8 solar cycles, a period of time associated with a Gleissberg cycle.
While the existence of Gleissberg length cycles is hardly challenged, their exact length and timing is subject to a debate we will not entertain here at any length. Javariah [37] on the basis of the disputed 179 year cycle of Jose [38] believes that a descending phase of a Gleissberg cycle is already underway, and will end with the end of a double Hale cycle comprising solar cycles 22-25.
While it is true that solar activity, as measured by SSN, is already on the decline, we would include the double Hale cycle 20-23 in the recent peak of solar activity, and not necessarily expect to see the bottom of the current decline in solar activity that quickly.
The issue here can perhaps be framed with respect to Figure 7 below:

Assuming we are on the cusp of a downward trend in solar activity that began circa 1990 according to Javariah, and will decline, say, to a level comparable to the trough seen in the early 1900’s, will it be a sharp decline, like that seen at the beginning of the 19th Century, or a more moderate decline like that seen at the beginning of the 20th Century? A naïve extrapolation might be to replicate the more gradual decline seen during the latter half of the 19th Century, suggesting a gradual decline in solar activity through solar cycle 31, i.e. for most of the 21st Century. And based on the prospect of a phase shift in the pattern of decadal and bidecadal warming rate cycles, the bidecadal cycle would come to be dominated by the influence of the lunar nodal cycle, and the influence of the solar cycle would be diminished, leading at least to a reduction in the rate of global warming, if not an era of global cooling.
This is a prospect worthy of more investigation.
Finally, while we readily concede that multidecadal projections are at best little more than gross speculation, in Figure 6 we have carried the sinusoidal model fit out to 2030, and in Figure 8 we use the sinusoidal model of rate changes to project temperature

anomalies through 2030. Assuming a simple projection of the sinusoidal model of rate changes persists through 2030, there would be little or no significant change in global temperature anomalies for the next two decades.
Looking carefully at the sinusoidal model, what we are seeing projected for 2010-2020 are a return to conditions similar to what the model shows for circa 1850-1860, with the period 1853-2020 representing a complete composite cycle of the four combined periods of oscillation. That is, 1853 is the first point at which the sinusoidal model is crossing the x-axis, and at 2020 the model again crossing the x-axis and beginning to repeat a ~167 year cycle. In terms of solar cycle history, that corresponds to a return to conditions similar to solar cycles 10-15, with another phase shift reversing the phase shift of ~1920. If these broad, long term secular swings in solar activity and global atmospheric conditions and temperature anomalies are not random, but reflect solar-terrestrial dynamics that play out over multidecadal and even centennial time-scales, then the early 21st Century may yield a respite from the global warming of the late 20th Century.
Conclusion
There is substantial and statistically significant evidence for decadal and bidecadal oscillations in globally averaged temperature trends. Sinusoidal model analysis of the first differences of the HP smoothed HadCRUT3 time series reveals strong periodicities at 248.2 and 110.7 months, periodicities confirmed as well with MTM spectrum analysis.
Analyzing these periodicities in the time domain with the first differences of the HP smoothed HadCRUT3 time series reveals a pattern of correlation between strong warming rate cycles and the double sunspot cycle for the past four double sunspot cycles. Prior to that, with a phase shift circa 1920, the strong warming rate cycles were dominated by the timing of the lunar nodal cycle.
We suggest that this reversal may be related to a weaker epoch of solar activity prior to 1920, and that we may on the cusp of another phase shift associated with a resumption of such weakened solar activity.
If so, this may result in a reduction in the rate of global warming, and possibly a period of global cooling, further complicating the effort to attribute recent global warming to anthropogenic sources.
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[36] Hammer, Ø. Harper, D. Ryan, P. PAST: Paleontological Statistics Software Package for Education and Data Analysis. Palaeontologia Electronica. 2001; 4(1): 9pp. http://palaeo-electronica.org/2001_1/past/issue1_01.htm
[37] Javariah, J. Sun’s retrograde motion and violation of even-odd cycle rule in sunspot activity. 2005; 362(4): 1311-1318.
[38] Jose, P. Sun’s motion and sunspots. Astronics Journal. 1965; 70: 193-200.
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Thought provoking.
I suspect there is more to be learned with some examination of the harmonics and resonance. There is probably some things to be learned when a positional analysis of the orbital mechanics is included. This may or may not be significant, but it is interesting. I think it is worth pursuing at least for a while, understanding that there are a multitude of rabbit paths that you could find yourself lost in.
A post such as this manages to only further depress me re my scientific ignorance! However, I do have one very salient point…It seems that all the switched on solar experts have seriously cool, often Scandinavianish, names such as Svalgaard, Niroma, Shaviv and Svensmark. I’m sorry but ‘Copeland’ and ‘Watts’ just doesn’t cut it! If you guys want to be taken seriously, and have me blindly believe everything you post, I suggest a change to something like, say, ‘Copesgaard’ and ‘Watsimonen’.
When you get the time, could you explain what it will mean for Western US Climate going from Meridonial to Zonal?
And on a average distance in orbit scale, the tidal force of the Moon & Sun are felt equally on Earth. i.e. – same net effect.
My only comment would be that you seem to be searching for “the one true cyclical number” when a function might be a better fit.
Think of an engine with an old flyball governor and a slightly varying load. It gives 4 “chuffs” per rotation and the rotation rate oscillates around (oh) 1000 rpm -/+ 200 but not quite in a sin wave (the varying load of – call it grain in the mill – causing variations in when the governor slows and causes a speed up… but with a general oscillation about the set point based on the governor formula).
Bottom line is that you have a “chuf” spectral component and a “governor oscillation” spectral component and a wheat irregularity spectral component and your best fit might well be to a function that is the integrated result of those three oscillations. A sin wave whose frequency changes in a long time frequency sin wave… that might itself not be quite a sin wave.
Unfortunately, I have no idea what math to use to pull that kind of thing out of a data signal…
In particular, the 18 year lunar modulating a 176 ish year solar influence (and perhaps further modulations by things like ocean harmonic frequencies at 30 or 40 ish years).
Looking for “a frequency” would hide this kind of structure and give confusing results as the dominant frequency seems to drift around with different samples.
John Finn (17:27:20):
You write:”It seems the satellite measurements are also influenced by the exact same UHI problems.”
Cute, but no cigar. The problems with HADCRUT and GISS anomalies are egregiously evident well before the satellite era, which began with temperatures in a deep trough. Everybody has pulled into line (aside from normative offsets) with MSU data in the last few decades.
“frequencies above ~7 years”
Just a nitpick, but as you intend to publish: 7 years is a cycle length, not a frequency. The equivalent frequency is ~0.14 year to the minus 1.
Want to see a solar signal in earth temperature data?
http://www.gpsl.net/climate/data/solar_signal_2009-05-24a.png
This raises a lot of questions such as why the 11 year signal is almost always absent. Landscheidt did state a good reason but I have not been able to confirm it: solar flares avoid the solar maximum.
If true this means they split into two periods.
Another thing: what you don’t see often seems as important, such as deep nulls in data. Example, the 33 year C12 signal in tree data, rarely in earth data but a deep null is.
Leif Svalgaard (16:29:22) :
I’m just the reviewer on a paper submitted to a well known journal about the application of continuous wavelet transforms to sunspots and global as well as regional temperatures which concludes that “the recent warming trend can no longer be explained by the level of solar activity”, so it seems that we have not made much progress.
That’s interesting wording — the recent warming trend “can no longer be explained by the level of solar activity.” So once it could? Actually, this sounds a lot like Lockwood and Frohlich. Does the paper you are reviewing add anything to what they did?
Leif, I hope you realize that there are two different questions here about the role of solar activity on terrestrial temperatures. If you will, take a look again at Figure 1. One question is whether solar has contributed to the long centennial scale rise in global temperatures we see in the figure. That is not the connection we are examining. Ours is much more modest. If you look at the smoothed red line in Figure 1, you’ll see an undulation or waviness to the overall upward trend. To better illustrate what I’m referring to, here’s an image that zooms in on a portion of the upward trend:
http://i44.tinypic.com/2rqyuk6.jpg
We’re not attributing the overall upward trend to a lunisolar influence. We’re attributing the waviness you see, the increasing and decreasing of the rate of change, to a lunisolar influence. At least, that’s where the “decadal” and “bidecadal” signal is present.
Is that much clear? This is where our evidence is strongest, and the claims rather modest.
Now, the sinusoidal model also has a 54 yr cycle in it, and whatever that cycle represents, and whatever physical processes it reflects (if it is real) likely plays into the long centennial rise in the temperature trend. When we fit the four strongest cycles in a sinusoidal model, like shown in Figure 6, we can crudely replicate the 20th century increase in temperatures, and when we carry this out into the future, we get what is represented in Figure 8. Now we’re deep into speculation territory. Will the sinusoidal pattern of Figure 6 actually unfold according to the equation? Who knows? And why would there be these longer cycles, and how might they be attributed to solar influence? If we knew the answer to that, we’d not be speculating about it on a blog, we’d be quick to try to publish the answer “in a well known journal.” The best answer we’ve come up with — the references to Georgieva, Javariah, and Jose — needs a lot of work, and we know it. But the first half of the paper, and the attribution of the decadal and bidecadal changes in rate of change to a lunisolar influence, is, in my view at least, pretty solid.
Basil
Basil (20:05:01) :
Does the paper you are reviewing add anything to what they did?
I have probably already said too much 🙂 so you’ll have to wait until it is out [if ever…]. Might make a post. In the meantime here is a similar paper that is out:
‘Enhanced wavelet analysis of solar magnetic activity with comparison to global temperature and the Central England Temperature record’
Robert W. Johnson
Abstract:
“The continuous wavelet transform may be enhanced by deconvolution with the wavelet response function. After correcting for the cone of influence, the power spectral density of the solar magnetic record as given by the derectified yearly sunspot number is calculated, revealing a spectrum of odd harmonics of the fundamental Hale cycle, and the integrated instant power is compared to a reconstruction of global temperature in a normalized scatterplot displaying a positive correlation after the turn of the twentieth century. Comparison of the spectrum with that obtained from the Central England Temperature record suggests that some features are shared while others are not, and the scatterplot again indicates a possible correlation.”
Received 17 February 2009; accepted 18 March 2009; published 16 May 2009.
Citation: Johnson, R. W. (2009), Enhanced wavelet analysis of solar magnetic activity with comparison to global temperature and the Central England Temperature record, J. Geophys. Res., 114, A05105, doi:10.1029/2009JA014172.
I have to confess that people are becoming cleverer and cleverer writing uninformative abstracts 🙂
We’re not attributing the overall upward trend to a lunisolar influence. We’re attributing the waviness you see, the increasing and decreasing of the rate of change, to a lunisolar influence. At least, that’s where the “decadal” and “bidecadal” signal is present.
I think the paper I just cited is concerned with the same thing, and I was also only thinking about the short-term cycles, mainly because I don’t think there is a long-term solar trend over the past 300 years.
But the first half of the paper, and the attribution of the decadal and bidecadal changes in rate of change to a lunisolar influence, is, in my view at least, pretty solid.
The decadal and bidecadal climate swings have been known and documented for a long time. I can even find mention in the 1878 Encl Britt. article I mentioned.
That there are such cycles are not in doubt, that they associated with solar and lunar cycles is another matter, and association is not …
One way people get out of this bind is to use wording like my friend the late Gerard Bond preferred: “we ascribe the decadal trend to solar …” This is different from claiming to have shown a causal connection. Then you can have your cake and eat it, too. Should there be such a connection, you can take credit, and should it fizzle, you can say that you never really claimed to show such a connection…
A note on word usage: In the context of this article I view “secular” to mean “long term” and so, this
. . . “In our original presentation, we utilized Hodrick-Prescott smoothing to reveal decadal and bidecadal temperature oscillations in globally averaged temperature trends. While originally developed in the field of economics to separate business cycles from long term secular trends in economic growth, . . .” (p.3, pdf)
would seem to include a redundancy.
The same issue is on page 13: “. . . If these broad, long term secular swings in solar activity and global atmospheric conditions and temperature anomalies are not random, . . .”
As for a substantive comment I will echo Joseph @ur momisugly (13:29:25) regarding the mechanisms that might be at work. Someone else said the two big considerations are the solar input, gravity, and I will add Earth rotation. Ocean basins are not shaped like soup bowls and the timing of the flows must be influenced by their actual 3-d character. This brilliant insight won’t lead you anywhere but I think it is important.
A few questions
1. Can you please tell me what physical requirement there is to do a derivative of temperature? Why is the rate of change of temp so important?
2. Why filter data to be fed to a FFT
Filter noise and you may see signal where there is none.
Dont filter noise and you will see grass, but any repetitive frequencies will be visible above the grass.
A comparison of filtering methods on hadcrut temperatures:
http://img14.imageshack.us/img14/1282/hodrickprescottfilter.jpg
HP filtering seems ver similar to averaging!
A month or so ago I posted some examples of FFTs on temperature data (UNFILTERED!)
Many places averaged, Hadcrut and GISS
http://img162.imageshack.us/img162/84/hadcrutnhshlsgiscetssna.jpg
Many places individually.
http://img162.imageshack.us/img162/84/hadcrutnhshlsgiscetssna.jpg
Note that there is no common 11 year cycle.
Also note the poor precision at the multi-year end. ALL FFTs suffer with this problem Most temperature records are less than 2048 samples, and only a few reach 4096. This gives periods of at best 21.3 22.8 24.4 26.3 , 56.9 68.3 85.3 years. There is no way of improving this as there simply is no data.
Could you explain why you propose a 22 year cycle driven from the 11 year solar cycle. What possible physical proprety of the 11 year cycle creates 22 years without the 11 year causing any tempreature effects?
I’ve never seen natural data presented like the wavelet transforms. Beautiful bifurcation, I wonder if some of the higher frequency modes are quantization errors.
I’m in the middle of restoring a 1984 CJ7, and I like the transform pattern so much I’m considering using the filtered pattern as the flames on my hood, with the requisite log scale on the passenger fender, and the years across the front of the hood. I would be the ultimate offroader climate geek… I’ll do it in shades of “AGW orange” with “windmill silver” on a charcoal gray (carbon) background. Now where do I get one of those little indicator panels that grows leaves when I floor it and feed the plants?
I’ll buy the claim that “the recent warming trend “can no longer be explained by the level of solar activity.”” The ‘recent warming trend’ is explained by deteriorating satellites and ground sensor stations. When will we see analysis of the impact of bad sites on the temp record? The AGW tea leaf readers are poring over the garbage coming out of the system as prophetical gold.
Genius. Global warming isn’t real, and if it, we’ve got the proof that it isn’t man made. Told you so.
Like Bill I’m surprised that such an analysis is being discussed on the surface temperature that Anthony has done so much to show is unreliable. Perhaps a more relevant cycle than something like TSI would be the electoral cycle that makes more/less funding available to relocate weather stations.
ian (18:49:57) :
It seems that all the switched on solar experts have seriously cool, often Scandinavianish, names such as Svalgaard, Niroma, Shaviv and Svensmark.
Except Shaviv is certainly not Scandinavian (Hebrew?), and Niroma is Finnish. Scandinavia consists of Sweden, Denmark and Norway only. So you are left with only 2 Danish names in that list. Both good names 🙂
Having said that, I am much impressed by this thought provoking article that I have read once, but will have to read several times more. Many thanks to Basil & Anthony. You continue to stir my brain.
When ascribing solar activity to climate, and looking for the effects, it reminds me of the granulator I was assigned to on a night shift. There was a control knob to raise or lower the temperature of the sugar being dried. You could turn the knob up or down, and see no effect. No effect, that is, until you waited long enough. 15 minutes later, you then knew you had corrected or overcorrected the temp. The mass of the thing was at play. The temp rise or fall due to turning the knob up or down would continue for some time.
Carsten
Shaviv is indeed from Israel – thought i’d just sneak him in – however ad verbatim from wiki:
Scandinavia[1] is a historical and geographical region in northern Europe that includes, and is named after, the Scandinavian Peninsula. It consists of the kingdoms of Norway, Sweden, and Denmark;[2] some authorities argue for the inclusion of Finland and Iceland…
The consensus is wrong…I’m claiming Niroma!
Best wishes, ian
This is seriously impressive. If there is huge warming bias in say 1940+ data, would this produce slightly steeper increases and slightly shallower decreases? Probably negligible (but if not, what would this do to the periodicity?)
King of Cool (16:46:34) :
Well, in defense of the image we used, we ascribe relatively equal influence to lunar and solar, so there you have it. 😉
Leif Svalgaard (21:20:49) :
I was feeling pretty inadequate – am I supposed to know what a “cone of influence” is for something I’ve only seen as a 2-D plot? However, when I got to “integrated instant power” I felt a lot better and quit trying to make sense of the abstract. Power is inherently an instantaneous quantity, like temperature and integrated power is just energy. I think I’ll pass on the whole paper.
Michael D Smith (21:33:48) :
Cool. Instead of this image, may I suggest the first one I saw, also Basil’s, at http://wattsupwiththat.com/2008/09/22/new-cycle-24-sunspot/ . It shows sun spot numbers over time and the periodicities really stand out.
bill (21:24:59) :
A few questions
1. Can you please tell me what physical requirement there is to do a derivative of temperature? Why is the rate of change of temp so important?
The original impetus to do this was a classic one of science: curiosity. It all started with just using HP as a smoothing algorithm. My background is in economics (environmental economics, switching to that after earlier majoring in earth sciences), and in economics rate of change is everything, and “first differencing” a data series also often used to achieve stationarity. So it was a “natural” thing to do. When I saw that pattern, I ran it by Anthony, and the rest is history.
But I don’t understand your hostility (that may be too strong, so substitute whatever word is appropriate to describe your criticism) here. Climate warms and it cools. Science is interested in that. Warming and cooling implies rate of change. So the quest is to understand that. Plus, FFT’s signify changes in rate of change. What else do you think the spectral peaks in a temperature series signify?
On that…
A month or so ago I posted some examples of FFTs on temperature data (UNFILTERED!)
Many places averaged, Hadcrut and GISS
http://img162.imageshack.us/img162/84/hadcrutnhshlsgiscetssna.jpg
Many places individually.
http://img162.imageshack.us/img162/84/hadcrutnhshlsgiscetssna.jpg
I remember you posting an FFT of CET, and encouraging you to do HadCRUT. I missed these, but I guess you took my advice, and then some. Nice.
Could you explain why you propose a 22 year cycle driven from the 11 year solar cycle. What possible physical proprety of the 11 year cycle creates 22 years without the 11 year causing any tempreature effects?
You must not be reading closely enough. There is no 22 year cycle. The bidecadal cycle is shorter than it would be if attributed solely to the Hale cycle, so we think it is being modulated by the lunar nodal cycle. This is even more the case at the decadal frequency. As you know, a lot of recent solar cycles have been shorter than 11 years. But the primary decadal signal in the temperature series is at 9 years, which is too short to be attributed — or ascribed — solely to solar, so again we think the lunar nodal cycle is involved.
As to why there would be a stronger solar influence at the bidecadal frequency than the decadal frequency, that is an open question. Since you’ve brought it up, I might refer you to:
http://www.atmos-chem-phys-discuss.net/6/10811/2006/acpd-6-10811-2006-print.pdf
As Leif mentioned, there must be a couple of thousand papers finding climate cycles on decadal and bidecadal frequencies. In not a few of them, the bidecadal signal is found, but not the decadal signal. For example, take a look at:
http://www.adv-geosci.net/13/25/2007/adgeo-13-25-2007.pdf
A quote:
It has been observed that the 11-year periodicity is not
always present in climatic records, and where the signal is
apparent it is often seen at lower amplitudes than those of
the 22-year cycle (D’Arrigo and Jacoby, 1992; Molinari et
al., 1997; White et al., 1997).
Let me ask you: given a couple of thousand papers now finding these kinds of signals, especially a bidecadal signal, in climate series, to what would you ascribe this bidecadal pattern?
Seriously, lunar has been proposed, solar has been proposed, and a combination of the two has been proposed. What do you propose?
bill (21:24:59) :
What possible physical proprety of the 11 year cycle creates 22 years without the 11 year causing any tempreature effects?
Which is also my primary objection to ascribing the signal to solar influence.