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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I happened to come across this article by historian David Shearer “Social disorder, mass repression and the NKVD during the 1930s” (link here http://www.jstor.org/discover/10.2307/20174643?uid=3739008&uid=2129&uid=2&uid=70&uid=4&sid=21102715798273 or here http://www.google.com/url?sa=t&rct=j&q=&esrc=s&source=web&cd=2&ved=0CDIQFjAB&url=http%3A%2F%2Fmonderusse.revues.org%2Fpdf%2F99&ei=QY5KUtbzBMKOtQbvx4CwBA&usg=AFQjCNFR9VBreyYlbLKSG7-eosr_xTSFKQ&bvm=bv.53371865,d.Yms).
NKVD, the People’s Commissariat for Internal Affairs was a law enforcement agency of the Soviet Union that directly executed the rule of power of the All Union Communist Party. It was closely associated with the Soviet secret police which at times was part of the agency and is known for its political repression, during the era of Joseph Stalin. While NKVD’s repression was extensive throughout its existence, it really exploded in 1937 and 1938. Is there any particular reason for it?
Shearer writes:
“In late February and early March 1937, several hundred leading functionaries of the ruling Communist Party of the Soviet Union gathered in Moscow for a plenary session of the party’s executive body, the Central Committee. N. I. Ezhov, one of the party’s leading secretaries and head of the People’s Commissariat of the Interior, the NKVD, delivered one of the major speeches at the session. […]
Ezhov’s remarks amounted to a harsh indictment of NKVD policies and a damning criticism of the previous head of the Commissariat, Genrikh Iagoda. Ezhov charged Iagoda and the NKVD with having failed to protect the party and the country from the threat of political sabotage by opposition organizations inside the country and enemy intelligence services working from outside the Soviet Union.”
Iagoda and 3000 of his closest NKVD associates were sentenced to death. Nikolai Ezhov became the new People’s Commissar for Internal Affairs (head of NKVD) and vastly increased its “efficiency”. (It did not really help him in the long run: in August 1938 he was replaced by Lavretiy Beria, in 1939 Ezhov was arrested and in September 1940 sentenced to death.)
The moral of the story is that you are in trouble if you don’t find what your political masters expect you to find. Any similarity with the IPCC is strictly intentional.
Short the hell out of NOW!
Friends:
It seems necessary to again point out that ‘global temperature’ is a metric that has no agreed definition and no possibility of calibration. Hence, each Team (GISS, HadCRUT, NCDC, RSS, UAH) that provides a time series of global temperature
(a) uses its own definition of global temperature
and
(b) changes the definition it uses most months ; see e.g.
http://jonova.s3.amazonaws.com/graphs/giss/hansen-giss-1940-1980.gif
Hence, although correct in every way, the above article addresses changes in a meaningless metric.
This is so important that discussion of the matter was suppressed from publication by nefarious method. I again link to explanation of the matter and point to its Annex B for explanation of the problems with the data sets
http://www.publications.parliament.uk/pa/cm200910/cmselect/cmsctech/memo/climatedata/uc0102.htm
Richard
Me thinks September temps AMSU anomaly will be close to 0
Interesting. It is alos interesting to n ote the markets get it massively wrong too. remember “Long Term Capital management” – more blind faith in models.
But it’s meaningful to THEM!
——————
I love this approach, especially because I suspect we’re in for a sharp and prolonged decline in global temperatures, because it would be a manifestation of a cosmic come-uppance (nemesis) for hubris. However, as one can see at a glance from the chart, following MACD signals isn’t 100% correct. It can give short-term fake-outs, as it did in 1895 & 1902 (approximately, by eyeball). And it works best in strongly trending markets. In directionless, or “choppy,” markets, the number of short-term fakeouts rises to the point of eliminating the profit–or even delivering a loss for a while.
But trend-following is the only automatic system that “works” in financial markets over the long term. See the four books on turtle trading here: http://www.amazon.com/s/ref=nb_sb_noss_1?url=search-alias%3Dstripbooks&field-keywords=the+way+of+the+turtle
See also the additional books on trend-following by Michael Covel and others, here: http://www.amazon.com/s/ref=nb_sb_ss_i_1_13?url=search-alias%3Dstripbooks&field-keywords=michael+covel+-+trend+following&sprefix=michael+covel%2Cstripbooks%2C250&rh=n%3A283155%2Ck%3Amichael+covel+-+trend+following
At the risk of sounding pedantic, HadCRUT and GISS are not “temperature data sets”. They are temperature anomaly records. The temperatures recorded by the instruments are data. After adjustment, they cease to be data. The anomalies calculated from the adjusted temperature records are also not data.
William Delbert Gann, an American investor and a stock market speculator, father of investment charting, one day sitting at the sea shore contemplating natural behaviour of the ocean waves, noticed that an initial small wave is followed by two larger once, each higher then the previous, then the third wave would collapse to the base, for whole sequence to be repeated. He apparently made some ‘serious money’ following this simplest of algorithms.
http://wattsupwiththat.files.wordpress.com/2013/09/image2.png
if this indeed is a natural tendency, the Earth is heading for some serious cooling. No doubt someone may make ‘serious money’ in the process, but millions if not billions around the world will suffer.
david
I came to the same conclusion about future cooling being indicated by looking at the ocean temperature history. Here is what I posted yesterday on another track on this web page .{Bob Tisdale’s letter to John Kerry}
September 30, 2013 at 8:21 am
Bob
Well said . The graph that persuaded me of the major impact of oceans on our climate was your Detrended Sea surface temperature Anomalies for the Pacific and Atlantic Oceans Pole to Pole. The peaks in this graph around 1880, 1940 and 2005 and the troughs near 1910 and 1975 match so closely the world global temperature swings . The interesting observations from this graph is that the ocean cycle seems to have peaked and may be heading to a trough by 2045? Cooler weather indicated if ocean SST anomalies are heading down.? This makes a lot more sense to me than a rising co2 which is supposed to raise global temperatures but has not done so for 16.8 years. now. IPCC is projecting temperatures to rise again by 0.2 C per decade . I don’t see this except in isolated El NINO years and even then , there are fewer strong climate altering El Ninos during global cooling cycles[ only one per decade]. The Arctic shows signs of starting to cool , the sun cycle is low and could be so for at least 2 decades more., so there is nothing on the horizon that may raise global temperatures by 0.2 C per decade for the next 20 years . I think IPCC has dug themselves a hole that will be difficult to get out of .
http://bobtisdale.files.wordpress.com/2013/07/figure-72.png
In the financial market you follow a sell signal (or buy signal) only because you ASSUME that you have a trend that continues. Often the trend does that. But EVERY SECOND of the market the [trend] can reverse, and it does often, believe me. Often you do not have a trend at all.
Much more can be learned from the financial market if you compare algorithmic trading (trading with an alogrithm) with climate models. I can show you heaps of algos that you can optimize with past data (you take the last 1-2 years for that) and they make heaps of money……in retrospect. They do very [successful] trading…..in the backtest. You go live with that model: it fails miserably. This is called curve-fitting or data mining. It is EXACTLY the same thing climate modelers do – they make a model for something they can’t model properly, fit parameters until they can model the past. They they [run] around and brag about their great model – until it fails in the forward test.
rogerknights:
At October 1, 2013 at 4:32 am you quote my having said
and you reply
No! It is USEFUL to them.
And they will choose something else if and when its usefulness ends.
The entire AGW-scare is bogus. It is pure politics hiding behind a mask of pseudoscience.
They predicted warming when they could adjust the surface-based data to indicate warming. Then the satellite data constrained the ‘adjustments’ they can make to the surface-based data, and no warming happened.
Now – e.g. in the above essay – they have got us to play their game by predicting changes to the metrics when
THEY CREATE, COMPILE AND ALTER THE UNDEFINED METRICS.
What happens if people with the integrity of Spencer are removed from compiling the satellite data? In that case then I make a prediction; i.e. the satellite data will start to show warming, too.
The AGW-scare was killed at Copenhagen in December 2009. We need to ensure its death throes soon end before its bureaucratic effects are achieved. And to do that we need to kick it into touch, not pass it around the field.
Richard
Ed Reid:
At October 1, 2013 at 4:35 am you say
Your point is not pedantry. It goes to the crux of the entire AGW-scare.
Please see my post at October 1, 2013 at 4:57 am
http://wattsupwiththat.com/2013/10/01/if-climate-data-were-a-stock-now-would-be-the-time-to-sell/#comment-1432719
Richard
Does the timing of the cross over points of the above lines correspond with the ‘step changes’ proposed by Bob Tisdale in his various graphs?
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’re already trying to choose “something else,” with this heat-in-the-ocean dodge. But, besides being something their models didn’t predict (which undermines their credibility), it’s also something that is non-catastrophic, which considerably weakens the case for “action now.”)
From vukcevic on October 1, 2013 at 4:38 am:
Wikipedia does not sound kind to WD Gann (6/6/1878 – 6/18/1955):
As Harry Houdini showed of the time when he was debunking, there was no shortage of mysticism and superstition among the rich and powerful, who were willing to pay well for “mystical guidance” of many sorts.
The “See also” directs only to the Financial astrology entry. WD Gann is #2 of 2 “Financial astrologers of note”.
PS, If the deep oceans can sequester most of the heat, why worry? Problem solved.
Re previous comment:
I messed up the first link and didn’t catch it in Preview. Here is Wikipedia’s WD Gann entry.
rogerknights:
At October 1, 2013 at 5:09 am you quote me having said
and you reply by suggesting
History suggests otherwise; e.g. the global cooling was morphed into the global warming scare.
It takes time to ‘convert’ a scare into its successor scare, and that is why the AR5 is trying to ‘buy
time’ when even the contents of the AR5 show ‘the game is up’ for the AGW-scare.
I am arguing that we need to finish off the AGW scare as rapidly as possible for several reasons. One of those reasons is to hinder introduction of its successor scare.
Richard
David, Nice out of the box analysis ! That is the kind of thinking that ultimately solves problems.
If this “forecast” is correct, it would really reduce climate sensitivity. Assuming the longer ~ linear trend is related to CO2 (an assumption, I know), & we had 0.15 C cooling over the next 25 years while CO2 continues to grow at ~ 2 PPM/yr, my back of the envelope calculation of sensitivity is about ~ 0.9 deg C/ doubling (using pre-industrial times as a starting point). Talk about catastrophe averted ! Even if we continue the “pause” , the data will force climate scientists to reduce their estimates of sensitivity & ultimately admit there is no crisis. We just need time & patience,
The 30 yr cycle that comes out of the analysis is interesting. Joe Bastardi has basically been forecasting this downward trend for many years, first at Accuwx , now at WxBell.
A somewhat similar analysis in an article called Predictions of Global Man Temperatures & IPCC Projections by Girma Orssengo was previously posted on WUWT. It was a simple mathematical model or over-fit empirical model based on curve fitting for the GLOBAL YEARLY MEAN TEMPERATURE ANOMALY [GMTA] based on Hadcrut3. The equation or model is not calculated from any measurable parameters other than actual past global temperature anomalies. Although it is not calculated from any physics
* The graph is a general climate trend indicator [up or down]
* There exists a repetitive 60 year climate cycle of 30 years of warming followed by 30 years of cooling.
*There could be two cooling cycles before we reach 2100 which may dwarf and over-ride any greenhouse gas warming
*It is probably more useful and accurate in the short term [next 10-30 years]
*We seem to have peaked on the previous warm cycle and seem to be headed for possible cooling for the next several decades to about 2030
lhttp://wattsupwiththat.files.wordpress.com/2010/04/predictions-of-gmt.pdf
http://noconsensus.files.wordpress.com/2010/04/image2.jpg
Hey, if climate data were a stock, the corporate directors would be penniless after multiple class actions by investors, and in prison after criminal prosecutions following SEC investigations.
Not speaking for him, but from his ‘Anti-fragile’ and ‘The Black Swan’, I believe that successfully retired Quant Nassim Nicholas Taleb would agree. I do wish that he would weigh-in explicitly.
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. I recall trading commodities many decades ago using moving average prices (14 day?) because that was what I was shown as the method. When the daily price line rose and crossed the MA trace, it was a buy and when it dropped and crossed the MA trace it was a sell. Imagine hundred’s of thousands of traders using this same tool. Triggering a sell, the unanimity of traders indeed did push the price down significantly and vice versa for a buy. Similar things are done with bullion trading. The real supply demand behind legitimate movements was masked, but eventually if serious enough, would assert itself and the pure chart players took a beating. For example, imagine pushing the price up aggressively using the MA signal on orange juice futures at a time when there is a massive frost in Florida. When oranges freeze, they can only be made into orange juice or they are spoiled. Suddenly with aggressive buying, the actual market is soft because of the unexpected jump in supply of orange juice. When the price crosses the MA line on the way down (after traders get the news in the morning paper), it drops like a rock and your sell orders don’t get filled until it is nearly at the bottom. It is the same going the other way on fundamentals.
In 1974, I was in an investment club at work and I had a signal to buy sugar futures at about 10c a lb. Unknown to us a huge sugar shortage was in the making (I can’t remember why – I think it was massive purchases by the Middle East). The decision by the treasurer to wait until 10 o’clock to call it in resulted in our being too late – we forwent a $1100/ cent rise from 10 to ~ 30 to 40 cents because we were shut out by the shear volume of futures purchases – there was a daily limit in contracts and it jumped up limit in minutes for several days.
I think the IPCC has sold us a “Norwegian Blue”
If I may give the IPCC people an advise, the best way of stopping the present cooling trend is to
re-open the thousands of stations that were closed in the last decade of the former century.