Using a financial markets’ trend-analyses tool to assess temporal trend-changes in global surface temperature anomalies (GSTA).
Guest essay by David Dohbro
Heated debates (pun intended) are currently on going regarding if the Earth’s surface temperatures continue to rise, have remained steady, or are decreasing over the past decade or so. To argue for or against any of these three possibilities, pundits often use (linear) regression lines drawn through parts of the different temperature anomaly data-sets that are publically and freely available (GISS, HadCRUT, NCDC, RSS, UAH) to proof or disproof any or all of these possibilities. The problem is that global surface temperatures are none-linear, stochastic in fact; meaning they are dependent on many (random) variables and cycles each operating on many different spatial and temporal scales; natural and possibly man-made alike. Examples are solar activity, volcanic activity, oceanic cycles such as ENSO, PDO, AMO; night/day cycle, seasonal cycle, trace-gasses, cloudiness, etc. Given the nature of the data, the best representation of a temperature trend over time is therefore by using a stochastic time-series trend analyses of the entire data set.
One of the industries where non-linear trend analyses are and have been done over many years is the financial industry. Reason is that asset prices, for example stock and bond prices, are dependent on many variables; are stochastic, and follow non-linear cyclical patterns. In addition, financial markets may often exhibit a directionless trend in time (See Fig. 1; blue horizontal line). However, within such type of larger scale trends smaller scale trends (prices increase and decrease) occur, and financial decisions to either buy, sell or hold assets based on these trends of different time scales need to be made to ensure maximum profits and minimal losses. A rather important task considering we are talking about a daily multi-trillion dollar industry where having accurate and reliable decision tools are obviously paramount.
The Moving Average Convergence-Divergence (MACD) indicator was therefore developed as an additional tool for investors to provide easy-to-interpret (buy and sell) signals, as well as the direction of the price-trend over time[1]. It is a trend-following signal indicator based on three exponential moving averages (EMAs)[2]. The MACD indicator consists of a “MACD Line” and a “Signal Line” (See figure 1; the black and red line, respectively). In this case, the MACD Line is calculated by subtracting the 26-day EMA from the 12-day EMA (See figure 1; the blue and green line, respectively). The Signal Line is the 9-day EMA of the MACD Line. Plotting the MACD Line and Signal Line together with the price data shows how the crossing of these two lines identifies “buy-“ and “sell” signals (See figure 1; the corresponding vertical arrows when the two lines cross), while the direction of the MACD Line identifies the corresponding price-trend. Because the MACD simply subtracts a longer EMA from a shorter EMA it is independent of the nature of the data-set and can be applied to any stochastic (time-series) data set for identification of signals and trends. Theoretically the MACD can thus be applied to global surface temperature anomaly (GSTA) data as well.
Here the MACD is applied to HadCRUT4 data because it is the longest continues data set on record available. First the 12 and 26-year EMAs were calculated from this data, and then subtracted to obtain the MACD. The 9-year EMA was then calculated from the MACD. Both lines were then plotted in the same graph, and the graph placed below the temperature data-set graph on the same time-scale as is done in financial charts (Figure 2). It follows that the MACD of the temperature data peaked or bottomed and then reversed in several instances –see blue vertical lines (Figure 2)- indicating a change of trend in global temperature anomalies; either GSTAs started to increase (~1911, ~1976) or decrease (~1879, 1945, and the latest 2007).
The actual “buy” and “sell” signals (orange arrows) occur a year or two later, because the MACD is a lagging indicator (it is based on longer time-frame moving averages). Note that each and every time these peaks, bottoms and signals occurred in the MACD indicator, temperatures did peak or bottom and subsequently a trend-change occurred: e.g. an increase in GSTA became a decrease and vice versa; no exception. In addition, the MACD also clearly and undeniably identifies the uptrend in temperatures from the mid 1970s till to early 2000s; thought to be the result of mankind’s CO2 emissions; aka anthropogenic global warming (AGW). These “pivot points” validate the yearly-MACD (12, 26, 9) in that it can correctly identify changes in the trends of global surface temperature anomalies reported by HadCRUT4. More about this in detail later.
Now that the MACD-method has been validated we can take a look at the latest signal, which occurred in 2007. The MACD peaked then and has been steadily declining. In addition, the Signal line crossed the MACD in 2008; a “sell” signal occurred. Moreover, the MACD and Signal line are now both pointing down since several years indicating that the temperature trend has changed and the new trend is now down (decrease). Other items of interest that can be deducted from the MACD analyses are the following (See Figure 3):
1) The time-periods between peaks and bottoms in the MACD – blue vertical lines –are of almost identical length (red solid horizontal arrows are of identical length)
2) The increase in MACD (green dotted arrow) is about the same for both periods with increasing GSTA (1911-1945; 1976-2007)
3) The decrease in MACD (yellow dotted arrow) is about the same for both periods with decreasing GSTA (1879-1911; 1945-1976)
What can we learn from these 3 observations? Apparently there are 4 cycles in the current HadCRUT4 data, which suggest GSTAs are now in the next ~32yr cooling period (like any model, we have to work with the data we have and use the past to predict the future). Namely, the MACD of the HadCRUT4 data set finds the following dates with corresponding max and min GSTA values
· max 1879.2 (-0.094), min 1911.7 (-0.362): 32.5yr period
· min 1911.7 (-0.362), max 1945.7 (+0.186): 34.2yr period
· max 1945.7 (+0.186), min 1976.7 (-0.310): 31.0yr period
· min 1976.7 (-0.310), max 2007.0 (+0.829): 30.3yr period
The dates with the actual max and min GSTA values are:
· max 1878.1 (+0.403), min 1911.1 (-0.774): 33.0yr period
· min 1911.1 (-0.774), max 1945.6 (+0.362): 34.5yr period
· max 1945.6 (+0.362), min 1976.2 (-0.439): 30.6yr period
· min 1976.2 (-0.439), max 2007.0 (+0.829): 30.6yr period
The ~32 yr period/cycle; which is an average of these 4 trends becomes apparent, and the MACD does a very good job in determining the dates with the max and min GSTA values. Having determined these dates one can then apply -if one would like to do so- linear regression for each period to determine a slope. Using the actual dates of max, min GSTA values the slopes for each corresponding period/cycle can be determined
· 1879 to 1911: -0.0076°C/yr, R2=0.18 (stat. sign.)
· 1911 to 1945: +0.0141°C/yr, R2=0.52 (stat. sign.)
· 1945 to 1976: -0.0020°C/yr, R2=0.02 (stat. not sign.)
· 1976 to 2007: +0.0193°C/yr, R2=0.64 (stat. sign.)
Using the MACD-determined dates of max, min GSTA-values the slopes for each corresponding period/cycle can be determined
· 1878 to 1911: -0.0066°C/yr, R2=0.15 (stat. sign.)
· 1911 to 1945: +0.0136°C/yr, R2=0.50 (stat. sign.);
· 1945 to 1976: -0.0022°C/yr, R2=0.02 (stat. not sign.)
· 1976 to 2007: +0.0186°C/yr, R2=0.62 (stat. sign.);
It follows, the MACD-determined slopes for each cycle are in very good agreement with those based on using the actual max-, min-GSTA values and dates, showing -again- how accurate and useful the MACD-model is. Point is that stochastic trend and cycle analyses clearly finds periods of about equal length where temperatures rise or decline. The latest cycle, until 2007, indeed saw temperatures rise more rapid, albeit the difference is small, than the previous warming cycle (0.019°C/yr vs 0.014°C/yr; both actual and MACD-determined).
Finally, regression analyses of the data from 2007.0 till 2013.4 shows a slope of -0.002°C/yr and an R2=0.001. Although likely ~25yrs of data for this cooling cycle are still lacking, hence the low R2-value, the slope is already similar to that of the previous cooling cycle. With continuous increasing atmospheric CO2 concentrations since at least 1958 the case can therefore be made that CO2 can not be the main driver in changing GSTA. Instead, the rather similar rates of increases and decreases in GSTAs for the by the MACD identified cycle time-frames, suggest that cycles of around 32 years in length on average, and possibly fractions and multiplications thereof, can explain the observations entirely. The influence of such 30 cycles on Earth’s climate and global temperatures has been reported; e.g. ENSO, AMO, and PDO cycles[3],[4],[5], sea level cycles[6], length of day / atmospheric circulation index cycles[7], solar cycle(s)[8], and planetary cycles[9]. Contrary, these ~32 year cycles are not in sync with global human population/economic activity or to global CO2 concentrations. The latter, instead, increases unabated since 1958[10].
If the current cooling trend is true and applying the ~32yr cycles, it suggests that GSTA should decrease until the late 2030s early 2040s by on average 0.15°C (between 0.06 to 0.24°C) before another warming cycle may commence. Such a cooling trend into the 2030s has been predicted previously[11].
To conclude, this data-analyses tool suggests objectively and without any adjusting, transformation, fitting, “cherry picking” or other means of data manipulation, that GSTA have likely peaked and are now decreasing; a change of trend has occurred. This technique also over comes IPCC’s claim that “Due to natural variability, trends based on short records are very sensitive to the beginning and end dates and do not in general reflect long-term climate trends.” as the more data the better.
[1] Developed by Gerald Appel in the late 1970s. The MACD calculates the difference between two trend-following moving averages; this difference is termed a “momentum oscillator.” The longer period moving average is subtracted from the shorter period moving average to calculate this parameter. As a result, the MACD is an indicator of trend. The MACD fluctuates above and below a zero line as the two individual moving averages converge, cross and diverge over time. See also: http://stockcharts.com/school/doku.php?id=chart_school:technical_indicators:moving_average_conve
[2] Often the 12, 26 and 9-period EMAs are used, where the period can be any suitable time interval from seconds to days to weeks to months and years.
[3] Giese B.S., Ray S. 2011. El Niño variability in simple ocean data assimilation (SODA), 1871–2008. Jounral of Geophysical Research, 116, C02024, doi:10.1029/2010JC006695.
[4] Knudsen et al. 2011. Tracking the Atlantic Multidecadal Oscillation through the last 8,000 years. Nature Communications, 2:178 | DOI: 10.1038/ncomms1186)
[5] www.nwr.noaa.gov/Salmon-Hydropower/Columbia-Snake-Basin/upload/Briefings_3_08.ppt]
[6] Chambers et al. 2012. Is there a 60-year oscillation in global mean sea level? Geophysical Research Letters, 39 (18), DOI: 10.1029/2012GL052885
[7] UN Food and Agricultural Organization (FAO), 2001. Climate Change and Long-Term Fluctuation of Commercial Catches. ftp://ftp.fao.org/docrep/fao/005/y2787e/y2787e01.pdf
[8] http://en.wikipedia.org/wiki/List_of_solar_cycles
[9] Scafetta, N.,2010. Empirical evidence for a celestial origin of the climate oscillations and its implications. Journal of Atmospheric and Solar-Terrestrial Physics, doi:10.1016/j.jastp.2010.04.015.
[10] http://www.esrl.noaa.gov/gmd/ccgg/trends/
[11] Landscheidt, T. New Little Ice Age instead of global warming. Energy and Environment 14, 327-350, 2003.
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richardscourtney says at October 1, 2013 at 5:17 am
Perhaps, or perhaps not – the next scare is unknown at the moment. It is therefore very hard to evaluate its truth and thus work out if it needs to be opposed.
The next scare may well need opposing as the motivation for creating the scare is not related to any physical reality… but we don’t know what it is, what is wrong with its justification or what the costs it imposes are.
So, perhaps, keeping the present scare alive and slowly humiliating its proponents with a thousand slights and bites out of their funding would be preferable. It allows for both a divide-and-conquer strategy and education of the media as to the nature of scientific scares.
After all we don’t want the flaws in AGW to be forgotten any more than we want them brushed under the carpet. We want to finish the flaws in the media, the scientific community and the political world that allowed this mess to exist in the first place.
PS Happy Birthday to RSCourtney
The stock market did open this morning and the sun did come up, in spite of the fact the US government is shut down.
M Courtney:
Thankyou for your post to me at October 1, 2013 at 8:10 am.
http://wattsupwiththat.com/2013/10/01/if-climate-data-were-a-stock-now-would-be-the-time-to-sell/#comment-1432891
As usual, you and I disagree.
We know the harm being done by distorted economic and energy policies using the AGW-scare as their excuse. You say the next scare may be worse and you could be right, or not.
We have a devil we know, and it needs killing. We can deal with the next devil when we know what it is.
Dad
rogerknights says: @ur momisugly October 1, 2013 at 5:09 am in response to richardscourtney @ur momisugly October 1, 2013 at 4:57 am
…..But, if they do, they will lose half of their credibility and half their followers–and will make themselves an easy target for relentless mockery. I.e., it will put them on the defensive, which is a bad position for a politician to be in…..
>>>>>>>>>>>>>>>>>>>
“THEY” do not care because politicians are just bought and paid for tools.
It is the nameless faceless bureaucrats who actually run governments, politicians come and go but the bureaucrats with their connections to big money actually rule us. The EPA (and the EU and UN) is an example of just how much power these bureaucrats actually have.
To see where the power actually resides you have to follow the ties to the bureaucrats. Just ‘google’ ‘corporate government revolving door’
Then take the next step and look at the research article: The Network of Global Corporate Control by Stefania Vitali, James B. Glattfelder, Stefano Battiston
A good measure that it is time to sell is that some prominent crew members are deserting the sinking IPCC ship. It struck the ice berg of real evidence of cooling.
“If climate data were a stock, now would be the time to SELL”
Short sell, in fact
richardscourtney says: @ur momisugly October 1, 2013 at 8:30 am
…We know the harm being done by distorted economic and energy policies using the AGW-scare as their excuse. You say the next scare may be worse and you could be right, or not.
>>>>>>>>>>>>>>
We also know the next scare has the same motivation. The movement of wealth from the poor and middle class to the wealthy, an increase in power for the bureaucrats and a decrease in freedom for the rest of us.
(Happy Birthday)
Trend-following is not the same as what is meant by old-time “charting”–the Edwards & McGee stuff. Trend-following has had a very successful track record for about 20 years. See M. Covel’s book:
http://www.amazon.com/Trend-Following-Updated-Millions-Markets/dp/013702018X/ref=sr_1_1?s=books&ie=UTF8&qid=1380626848&sr=1-1&keywords=michael+covel+-+trend+following
No, the time to sell was around COP15 in Copenhagen, late 2009. But if you’re still holding on to the junk, it’s definitely time to GTFO
kadaka (KD Knoebel) says:
October 1, 2013 at 5:11 am
…………..
Astrology or AGW Cotwology not a great deal of difference.
I find this a great out-side-the box, cross-disciplinary piece of work. We don’t see that very often anymore. Many comments seem to over-analyses this work and take mental leaps (e.g. what has warren buffet to do with all this? he’s an investor not a trader in the first place and he’s always admitted he’s very bad at reading price charts.). It is also great that the author used the entire data set, and not bits and pieces.
This essay’s essence is that the MACD can correctly identify changes in the trends of global surface temperature anomalies reported by HadCRUT4. It does correctly identify the highs and lows almost to the T, which I find striking, and it correctly signals when changes in the trend of GSTA (have) occur(ed). I’ve not seen that being done by any other tool, this simple and this elegant. That’s all there is too it!
This new analytical tool shows that drawing a straight line through GSTAs (from the beginning of each data set) is incorrect, and should be refrained from, since GST and GSTAs are simply non-linear; just like the stock market.
The predictive power of this tool is of course less, and the author could only base any prediction he made on the previous temperature trends of ~32yr down, up, down, up; with each up and down having about the same slope, respectively, which is to me also very striking and not at all in line with the atmospheric CO2 trend. Since one has to work with what one has, that’s as good as it gets. I’d love to see where GSTAs are in 25yrs… IF the MACD finds another low then, we have a winner here!
All based on the idea that today is not “special”, which is the alarmists bottom line: the past is not a valid indicator of the present, let alone the future.
This is the fundamental point of disagreement in the Climate Wars camps, that the past, including recent obvservations, have relevance to the future. The IPCC use models that do not reflect the past and are not expected to, not even reflect the recent past or present: the “danger” is in the behaviour of the special circumstance of CO2, and lies in the future.
The public doesn’t realise that observation is not important or even relevant when the future is expected to be different from whatever has been before. All history and “common” sense are to be dismissed.
I trade commodities for a living. Mainly commodities that have weather as a powerful and sometimes dominant driver of price.
Supply side of grains/soybeans is greatly influenced by weather during growing seasons. Demand side of energy markets is greatly influenced by temperatures, especially with respect to residential use of natural gas.
This means my trading decisions are mostly based on the fundamentals of these markets when weather becomes the most important fundamental.
Future weather(forecasts) as the price driver can be identified and used to predict things like crop yields or natural gas use well before the actual weather hits.
The market will dial in the expected changes caused by weather with corresponding price changes. These price changes, in turn cause an effect on the price/market that can be analyzed with many technical indicators, exactly like what the author shows.
In effect, these technical indicators measure the markets reaction to all forces at once being placed upon it. This means that somebody with absolutely no knowledge of any of the forces or fundamentals at work but good at recognizing technical patterns and what they mean, can predict with fair confidence the direction of where price is headed.
There are many traders of stocks and commodities that make a good living and are consistently successful from using only this strategy to predict prices and position for the change.
While I trade fundamentals mostly, I also use and respect all technical analysis. One difference between the atmosphere/climate and stock/commodity prices is that the 2nd one(markets) measures a reaction from people/traders to their expectation of the future while the 1st one is a compilation of a more pure measure using all data.
However, though the 2 of these can diverge in the short run(traders can over react or under react with expectations and price changes) in the long run, markets MUST reconcile to realities and reflect them in price. In other words, an over reaction with price, will be met with selling because of the reality………..an under reaction, with buying when the reality becomes more known.
If instead of actual global temperatures, the measure was the markets expectations of global temperatures, the graph would have much more volatility, with short term spikes up and down based on humans miscalculating and being wrong at times but eventually, the empirical data/measurement would bring it in line with reality.
In both cases, the squiggles and lines on a graph or data on a chart can measure the effect of everything causing them to move added together, allowing an astute technician to interpret the meaning and predict direction without knowing anything at all about fundamentals or what all the individual elements having an effect are.
[code][/code]
· 1911 to 1945: +0.0136°C/yr, R2=0.50 (stat. sign.);
· 1976 to 2007: +0.0186°C/yr, R2=0.62 (stat. sign.);
[code][/code]
That could be used to infer (18.6-13.6)/ 18.6 =27% as being the proportion of the end of 20th c. warming trend that was due to AGW.
After years of parsing data from all kinds of physical situations around the globe my personal IPCC-style “expert judgement” show-of-hands consensus figure is between 25% and 33% .
This estimation technique falls neatly into that range.
Thanks to David Dohbro for this contribution.
Despite the terminology apparently used in finance, these are not running averages, they are a kind of integral. This exponential form is the same as that used to calculate a linear feedback response as is done in so much of climate theory.
Now this just gets me wondering why 9,12 and 26? Why are these the values (in days) used in finance and why do they seem to work in years in climate?
I’ll give this some more thought however, the bottom line of 27% AGW looks very credible to me and the cooling period is similar to that suggested by N. Scafetta and others.
This is an very interesting and thought provoking article. I think there are a couple instances where the analogy fails, however. As Mike Maguire points out, there is a human element to stock prices, allowing for the creation and destruction of bubbles, as well as over/undervaluation and emotional trading on smaller scales. Also, as Gary Pearse alluded to, technical analysis in itself can influence prices. Many traders can act upon the same artificial signals, so that the signal itself can disrupt the underlying supply/demand structure given by the fundamentals. With climate, or any other data not affected by human psychology, these aspects of data analyses are absent.
Some other commenters have discussed the validity of using a temperature “data set” for this kind of analysis. I think that point brings up another way in which the stocks/climate analogy does work. The indexes, like the DJIA or S&P 500, are assimilated data with adjustments, with included stocks and weightings varying over time.
Greg says:
October 1, 2013 at 10:45 am
That could be used to infer (18.6-13.6)/ 18.6 =27% as being the proportion of the end of 20th c. warming trend that was due to AGW.
Or perhaps you have identified 27% as being the amount of upward adjustment applied by the Climate Alarmists to the data record.
The MACD analysis is an interesting slant and one which I have been looking forward to reading in this context. As someone who reviews financial forecasts for a living the missed numbers of the IPCC create a natural lack of confidence in what they say. I would not claim that financial market analysis is equivalent to climate models (albeit some of the best mathematical brains in the world “do” technical financial trading). However this type of analysis suggests that other factors are at work. Personally I think that if you look at the picture in the round, the evidence is pointing towards an underlying shift towards cooling. I’ll keep an open mind however, but a close watch on the data – which has proved unreliable and open to manipulation.
The language used will be important too – I am sure we will see more BS about “climate change, climate disruption, dirty weather” etc as temperatures fall…
Wouldn’t it be kinda’ fun to see Al Gore’s portfolio about now?
I wondered about the relevance of applying stock market analytical tools to Hadcrut data sets but there may be some sense. I have made my own stock market analysis tools and successfully predicted market turning points and index values. The drivers are fundamentally money supply and interest rates. At market bottoms the yield gap between long term government bonds and and the dividend yield on the broad spectrum S&P indexed shares goes to zero. It is possible to model a forward index from the changes in the differences between the two.
Is it possible that the differences in the moving averages are showing some global external physical forces?
Mathematically, MACD is simply an exponential band-pass filter, which reveals the oscillations of signal components near the frequency of peak filter response. It also has interesting phase characteristics, which can lead to turns with no follow-through by the signal. Thus the caveat is to know the spectral structure of the signal quite well. With financial issues that structure is seldom well-known and blind reliance upon MACD has led more than one trader to persistent losses.
We have a similar situation with climate data. HADCRUT4 is a highly manufactured index, whose multidecadal components are not genuine natural signals, but largely the product of PC analysis applied to woefully sparse SST data. The neatly repeatable pattern of ~30yr rises and falls shown here, which looks so good in retrospect, may not hold at all in the future.
“The neatly repeatable pattern of ~30yr rises and falls shown here, which looks so good in retrospect, may not hold at all in the future.”
That is a good point., two similar dips is not enough to establish a reliable cyclic pattern. However, this method does seem to provide a good means of detecting turning points. Willis recently showed 2005 as being the ‘regime change’ based, IIRC, on SST had land+sea. He used a straight cumulative integral rather than exponential integral as used here. The result is nearly identical.
Now even if we cannot count of the next downward segment lasting 32 years, we can use the turning points to determine the start and end points of the warming periods.
Since there was little AGW before WWII, 27% makes 95% sure it’s “more than half” look like a pretty ridiculous claim.
Gary Pearse says:
October 1, 2013 at 5:46 am
“I’ve long believed that use of these kinds of tools (graced with the moniker “technical analysis”) in markets have actually resulted in self-fulfilling prophecies and are essentially a manipulation of the market.”
If many participants start using the same technique, it ALTERS the behaviour of the market until the equilibrium between winners and losers is re-established; it is not a MANIPULATION.
Brian says:
October 1, 2013 at 11:54 am
“Many traders can act upon the same artificial signals, so that the signal itself can disrupt the underlying supply/demand structure given by the fundamentals. ”
The “underlying supply/demand structure given by the fundamentals” is unknown to the market participants; as in practice, no market participant has complete information. Furthermore every market participant extrapolates the fundamentals he believes to know into the future in a different way.
When a majority of traders uses the exact same technique X, technique X automatically loses profitability.
Greg:
The whole point of my technical comment is that “turning points” in the future cannot be determined reliably by this technique without knowing the (presumably stationary) spectral structure of the true climate signal. I’m far from convinced that anyone has that nailed.
Please correct me if I’m wrong, but if it ended, it’s not a cycle.