On the scales of warming worry magnitudes–part 1

A few weeks after my paper came out I have received quite unexpected but greatly appreciated offer from Anthony to write a summary of the paper for his blog site. The paper’s title is:

Should We Worry About the Earth’s Calculated Warming at 0.7OC Over Last the Last 100 Years When the Observed Daily Variations Over the Last 161 Years Can Be as High as 24OC?

Guest post by Darko Butina

The paper is unique and novel in its approach to man-made global warming in many respects: it is written by experimental scientists, it is published in journal that deals with data analysis and pattern recognition of data generated by a physical instrument, it treats the Earth atmosphere as a system where everything is local and nothing is global, and it is the first paper that looks for temperature patterns in the data that is generated by the instrument designed to and used by experimental scientists since early 1700s – calibrated thermometer. What is also unique is that every single graph and number that I have reported in the paper can be reproduced and validated by reader using data that is in public domain and analyse that data using simple excel worksheet. There are two main conclusions made in the paper:

1. That the global warming does not exists in thermometer data since it is impossible to declare one year either warmer or colder than any other year

2. That the Hockey Stick scenario does not exists in thermometer data and therefore it must be an artefact observed in a purely theoretical space of non-existing annual global temperatures

The paper is long 20 pages and analyses in great details a single weather station of daily data, dataset collected at Armagh Observatory (UK) between 1844 to 2004, one of very few datasets in public domain that have not been either destroyed, corrupted or endlessly re-adjusted by the curators of the global thermometer data at East Anglia University or NASA.

Before we start to analyse this paper, few points need to be made about experimental sciences for my paper to be properly understood. ALL our knowledge and understanding about the physical world around us comes from analysing and learning from data that has been generated by an experiment and measured or recorded by a physical instrument. Let me demonstrate this point by a very simple example of what happens when we record air temperature by some fixed-to-ground thermometer:

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Thermometer reading of 15.1 has several links attached to it that cannot be broken: it is linked to a unique grid point, unique date and time stamp, unique instrument – thermometer and that thermometer to unique symbol (OC). So if someone wants to analyse any temperature trends those trends have to come from thermometer readings; it follows that if thermometer to be used is calibrated using Celsius scale, no datapoint can be older than 1743, follow link to Anders Celsius. Since we know for a fact that the annual temperature ranges will depend on the location of that thermometer, and since mixing different datasets are not allowed in experimental sciences, it follows that if there are, say 6000 weather stations (or fixed thermometers) in existence and across the globe, the first step before raising an alarm would be to analyse and report temperature patterns for every single weather station. That was what I was expecting to see when I started to look into this man-made global warming hysteria three years ago, following the revelations of Climategate affair. But I could not find a single published paper that uses thermometer-based data. So we have situation that the alarm has been raised, the whole world alarmed, suicidal economic policies have been taken while totally ignoring the data generated by the only instrument that has been invented to measure temperature – the thermometer. Instead, thousands of publications have been written looking for temperature trends in purely theoretical space that does not and cannot exist, the space of annual global temperatures. Two key papers have been published earlier, both arguing and explaining why global temperature as a single number does not exists, Essex et al., in 2007, using statistical arguments and written by recognized statisticians, while Kramm and Dlugi in 2011 have shown why the Earth’s atmosphere cannot be treated as a homogeneous system but should be perceived as a network of local temperature systems, from astrophysics point of view.

The starting point for my paper was based on facts that it is impossible to have arguments and ambiguity when it comes to thermometer. If you have two readings, only one outcome is possible: T2>T1 or T2<T1 or T2=T1. So if one wants, for some bizarre reason, to compare two annual patterns then one year can be unequivocally declared as warmer only if each daily reading of that year is larger than each corresponding daily reading of another year:

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This artificially created graph above has real year in Tmax-Tmin space from the Armagh dataset while the year ‘y2100’ was result of adding 15C to each daily reading of y1844. My point here is that everyone seeing that graph would come up with an identical conclusion – y2100 is unambiguously warmer than y1844. So my perfectly valid question was – why would anyone went to trouble to invent something that does not exists while ignore obvious source of temperature data – the thermometer data? My 40 years of experience in experimental sciences offered a most obvious answer to that question – because nothing alarming could be found in thermometer-based data. There is a quite simple rule when it comes to interpretation of data – if more than a single conclusion could be made about any given dataset it means one of two things: either that dataset is of right kind but more data is needed to understand the data, or the data is of the wrong kind. Every single graph and number that is found in my paper can be independently reproduced and validated and therefore the thermometer data is the right-kind of data to use but we need more of it to fully understand temperature patterns observed on our planet.

The opposite is true when we look at the calculated and not measured data called annual global temperatures. Nobody knows where the data comes from, since data is calculated the only way to validate it is to use another set of calculations, it has been constantly adjusted, modified and different trends have been generated on daily bases using ever-changing arguments. When you dissect this very complex looking scientific problem of man-made global warming to its basic components, what you find is that the whole concept of global warming and climate change has nothing to do with science but everything to do with a very desperate attempt to connect temperatures with a few molecules of CO2 that have been generated by burning fossil fuels, while ignoring vast majority of CO2 molecules that have been generated by nature itself. It must follow that if those alarming trends could not be found in thermometer data, than that data must be removed and new data created, type of data that cannot be either proved wrong or right and allow proponents of man-made global warming to generate any trend they need and to enable them to claim that they know everything about everything when it comes to our planet. But, the only problem with that approach is that you cannot cheat in experimental sciences and slowly but steadily, retired scientists like me, with bit of free time will start to look into this problem and use their respective expertise to critically evaluate the supposed science behind this man-made movement.

So even before I started to collect daily data that are available in public domain, I was almost 100% confident that I will not find any alarming trends in thermometer data. And I was proven right.

Let us now start with the experimental part of the paper, the part where all the details of the dataset and dataset itself are presented. The paper is 20 pages long and all conclusions are based on detailed analysis of the Armagh (UK) dataset that covers period between 1844 and 2004. Dataset can be downloaded from the Armagh Observatory website as two sets of files, Tmax and Tmin files:

http://climate.arm.ac.uk/calibrated/airtemp/tccmax1844-2004

http://climate.arm.ac.uk/calibrated/airtemp/tccmin1844-2004

Depending on the software that one wants to use to analyse data, it is important to format all datasets in the same way. Since all commercial software expect as default data to be read in row-wise manner, reformatted Armagh dataset was created as a matrix containing 161 rows (1 row for each year) and 730 columns (1 column for each day-night readings):

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BTW, all the graphs and tables from my paper are presented as JPG image and once I made my paper available free of charge on my own website you will be able to match all those graphs presented in this report to the original ones in the paper.

As a result, we now have annual temperature pattern, let us call it ‘annual fingerprint’, as a 730-bit fingerprint with the first 365 bits assigned to Tmax 1 to Tmax 365 (Jan1 to Dec 365 daytime readings) followed by 365 bits assigned to Tmin 1 to Tmin 365 (Jan1 to Dec 365 night-time readings). So, the annual fingerprint space can be seen as a 161 (years) x 730 (daily readings) matrix. Looking at the table above column-wise, we have ‘day fingerprints’, each of them 161-bits long representing the history of each day-night readings over period of 161 years. Once this table is created, we need to decide what to do with the missing values and with the extra day in February in leap years. We delete that extra day in February, but with great care not to get rest of the year out of the sync. There are two options when dealing with the missing datapoint – either replace it with some calculated one or remove the whole column.

The danger of replacing missing value with some calculated one is that we are contaminating instrumental data with some theoretical data, and unless we really understand that data the safest way is to remove all columns that contain even a single missing datapoint. Once you remove all columns with missing data you end up with 649-bit annual fingerprints, 89% of the original data, i.e. loss of 11% of total information content that is contained in that dataset, but with knowledge that the starting set is not contaminated by any calculated data and all datapoints are generated by thermometer itself.

Now we have our table in excel, table containing 161 years of data where each year is collection of 649 day-night readings and we can ask the data that 64 million worth question: Can we detect unambiguous warming trend over 161 years at Armagh (UK) in thermometer data? All we need to do is to take difference between the youngest (2004) and the oldest (1844) annual fingerprints and display it as a histogram:

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Let me briefly digress here to make the following point – when you analyse instrumental data you have to know accuracy or error levels of the instrument that is used to generate the data. If we assume accuracy of thermometer used in 1800s at +/- 0.5C that means that for two readings to be declared as different, the difference between them should be larger than 1.0C. For example, if T2=10.0 and T1=10.8 we have to declare those two readings as same, i.e. T2=T1, since those two readings fall within the error levels of that instrument. If T2=10.0 and T1=20.0 then the difference is real since it is way outside the error levels of the instrument.

So, what is this simple graph (Figure 5) telling us? First thing to notice is that year 2004 cannot be declared either as warmer or colder than 1844 since every few days there is this switchover occurring making 2004 few days warmer than few days colder than 1844. Second thing to notice is that the size of those switchovers can be as large as 10C in one direction and 8C in another, i.e. 18C in total – way above the error levels of thermometer and therefore those switchovers are real. To make sure that those switchover patterns are not some artefacts unique to those two years, I wrote a special program (in C) to systematically compare every year to every other year (161 * 160 = 25760 comparisons) and on average each year is 50% of time warmer and 50% of time colder than any other year in the Armagh dataset. What make things even more complex is that there is no obvious pattern in terms when the switchover occur and magnitude of it, as it can be seen when two different year pairs are plotted on the same graph:

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So far, all I did was to plot the original data, without any adjustment and without making any prior assumptions. I did not start this exercise to either prove or disapprove existence of global warming, but to see what the actual data is telling us. And what the thermometer is telling us is that the sheer magnitude of those apparently random and chaotic switchovers are due to natural forces that we do not understand, yet, and the anti-scientific process in which all complexity of annual temperature patterns is removed, replaced by a single number and suddenly we ‘see the light’ cannot be used to acquire any knowledge. If we use a simple logic the following logical construct could be made: dataset that is based on thermometer readings contains 100% of information content when it comes to temperatures. If we reduce that 730-dimensional space into a single number, we reduce the information content of that dataset from 100% to 0% – i.e. there is no information there left to gain any knowledge. Let us do the following question/answer exercise to compare two datasets – one that has day-night thermometer readings for a single year and one where 1 number represents 1 year

Q. What is total range of temperatures observed in Armagh?

A. Lowest temperature observed was -15.1C on February 7 1895, the highest temperature +30.3C recorded on July 10 1895; Total range 45.4C

Q. What is the largest and the smallest natural fluctuations observed for individual days?

A. Day that has the most variability is May 4 (Tmax125) with total observed range of 23.8C, while day with least amount of variability is October 29 (Tmax302) with the observed range of ‘only’ 9.9C

In contrast, each year is presented as a single number in the annual temperature space, number obtain by averaging all daily data to a single number, and there are not too many questions that you can ask about that single number. Actually there are none – not a single question could be asked the number that has no physical meaning! For example, if two years have identical annual average we don’t know why they are the same, and if they have two different annual averages, we don’t know why they are different. If we do the same exercise in daily data, we know exactly which days are moving in a same direction and which days are moving in opposite direction.

Let us now ask the most obvious question – are those patterns, or rather lack of patterns, observed in Armagh unique to UK, i.e. are they local or do they reflect some global patterns? Scientific logic would suggest that the same random/chaotic switchover patterns observed in Armagh should be observed across the globe with the only difference being the size and magnitude of those switchovers, i.e. local variations. To test that I took two annual temperature samples from two weather stations on two different continents, one in Canada and one in Australia:

Waterloo (Canada):

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Melbourne (Australia):

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Please note difference in both, patterns and magnitude of switchovers.

Let me make a very clear statement here – the choice of Waterloo and Melbourne weather stations was driven by the ease to find weather stations with relatively easy-to-download formats and I did not get involved in method of cherry picking weather stations that fit patterns found in Armagh, as it is normal practice in man-made sciences. To prove that last point and to challenge readers to start looking into the real measured data and stop looking into non-existing and calculated data like annual global temperatures, I will offer a modest financial reward of £100.00 (UK) from my pension, to first person who finds a single example of year pair where one year has every single daily thermometer readings larger than another year. Any weather station that is not on permanent ice or sand (I don’t know what to expect in those cases) and any gap between two years. Obviously, the winner will have to give the link to the original data and contact either Anthony or myself at darkobutina@l4patterns.com to claim the award.

The way I see it, I am here in win-win situation. If nobody can find weather station that shows unambiguous warming trend, and if we keep record of all those analysed weather stations I saved the money but gain large number of additional information that should finally kill any notion of the man-made global warming hypothesis, since the proponents of that hypothesis would have to explain to general public those patterns observed in thermometer data. In strictly scientific terms and using null hypothesis that either all weather stations count or none does, I have already proven that those patterns are real and observed on three different continents, and therefore prove that the global warming trend does NOT exist in thermometer data. On other hand, if someone does find clear and unambiguous warming trend in thermometer data, that work will again make the same point – all temperature patterns are local and ONLY way to declare that trends are global is if ALL individual weather stations are showing the same trends.

This concludes this Part One report in which I explained how the first conclusion “That the global warming does not exists in thermometer data since it is impossible to declare one year either warmer or colder than any other year” in my paper has been reached.

The second conclusion in my paper which explains why the Hockey Stick scenario does not exist in thermometer data will be reported in a separate report. In Part Two report I will introduce two different bits of software, my own clustering algorithm and k Nearest Neighbours algorithm, or kNN, both used in sciences like pattern recognition, datamining and machine learning and apply them to annual temperature patterns observed in Armagh. The overall conclusions will obviously be the same as we have reached so far, but I will demonstrate how the observed differences between different annual patterns can be quantified and how we can use those computational tools to detect ‘extreme’ or unusual annual temperature patterns, like annual patterns of 1947 which is the most unique not only in Armagh but also in the rest of UK.

==================================================================

Dr Darko Butina is retired scientist with 20 years of experience in experimental side of Carbon-based chemistry and 20 years in pattern recognition and datamining of experimental data. He was part of the team that designed the first effective drug for treatment of migraine for which the UK-based company received The Queens Award. Twenty years on and the drug molecule Sumatriptan has improved quality of life for millions of migraine sufferers worldwide. During his computational side of drug discovery, he developed clustering algorithm, dbclus that is now de facto standard for quantifying diversity in world of molecular structures and recently applied to the thermometer based archived data at the weather stations in UK, Canada and Australia. The forthcoming paper clearly shows what is so very wrong with use of invented and non-existing global temperatures and why it is impossible to declare one year either warmer or colder than any other year. He is also one of the co-authors of the paper which was awarded a prestigious Ebert Prize as best paper for 2002 by American Pharmaceutical Association. He is peer reviewer for several International Journals dealing with modeling of experimental data and member of the EU grants committee in Brussels.

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ferdberple
April 15, 2013 8:57 pm

There is of course a weakness in the method in the limited number of years compared in calculating the differences. This would need to be expanded before confidence could be placed in the results.

ferdberple
April 15, 2013 9:05 pm

My take on the methodology is that the author is not trying to show that there might have been warming. Rather to shows that this is not unequivocal, because there are some years in the present that cannot be distinguished from some years 100 years ago. This should not be the case if the result is unequivocal.

k scott denison
April 15, 2013 9:35 pm

NeedleFactory says:
April 15, 2013 at 8:01 pm
k scott denison asks (at 4:14 pm)
… Out of curiosity … if you were to take … the best observations available and simply present the data without averaging, grinding, etc. what do the results look like?

_____________
The issue is that the “averages” are actually not averages of data at the same locations, etc. but are geographically averaged, etc.
Always pays to start by just looking at the data, station by station.
I know that the BEST project showed something like 30% of stations showed cooling trends. Would be interesting to see what the total “temperature days” difference for the cooling and warming stations would be. Not after geographic projections and manipulations.

jeez
April 15, 2013 10:14 pm

ferdberple says:
“That is not an argument. Specify on what grounds so we can judge. Otherwise your statement is abusive and irrelevant.”
Sorry ferd, but the statement Leif quoted:
“Can we detect unambiguous warming trend over 161 years at Armagh (UK) in thermometer data? All we need to do is to take difference between the youngest (2004) and the oldest (1844) annual fingerprints and display it as a histogram.”
IS ABSOLUTELY NONSENSE! How can it be anything else. ALL WE NEED TO DO? Just two years, just compare histograms. That’s it? That’s all we need to do? No other analysis or perspective necessary? Is the level of the discussion so juvenile that you need this explained? I can explain further if you really want. Now don’t make me go ALL CAPS on you any more.

Espen
April 16, 2013 12:41 am

I don’t really understand the point of finding a pair of years where every day in year 2 is warmer than the same day in year 1. But I look forward to the cluster analysis in part two, that sounds like a very good idea!

peter azlac
April 16, 2013 2:27 am

I completely agree with your statement that we have to examine each temperature record and not some mythical global average. Global warming/cooling does not exist except as a concept. What does exist is changes in climate by climate zone, hence the Koppen classification, that results in a movement of zonal boundaries – for example the boundaries of the green areas of the Sahel. And these changes can be linked to solar activity and resulting ocean oscillations.
What I do not agree with is your statement :
“ So if one wants, for some bizarre reason, to compare two annual patterns then one year can be unequivocally declared as warmer only if each daily reading of that year is larger than each corresponding daily reading of another year:”
Warmth is an indication of heat which is based on heat capacity, involving specific heat and energy flux, whereas temperature is only an indication of the heat flow. In agriculture changes in annual or seasonal warmth are measured in heat units that are based on the cumulative difference between min and max daily temperatures and a specific temperature that varies by by crop. A certain annual number of heat units, sunshine hours, soil moisture within the normal crop growth cycle are required. That is why we can say that for every 1 oC fall in annual average temperature the growth zone for grains moves about 170 km south, depending on altitude, aspect etc. Of course this statement should be stated not as annual average temperature but as these growth parameters based on heat units etc. Alberta, Canada, will be one of the first to be affected by the coming global cooling so I give you a reference to the use of these measures there.
http://www1.agric.gov.ab.ca/$department/deptdocs.nsf/all/sag6301
In “climate change” we are concerned with changes in energy flux (SWR – OLR) that drives the hydrological cycle and via pressure differences the winds and weather that supply or deny water to climate zones – e.g. the well known link between drought and flood in the SE USA that is linked to the ENSO cycle. Willis has shown that convective cooling keeps the SST within narrow bounds whereas Clive Best has shown that differences soil moisture for the same latitude have a big effect on MAT, hence the heat units calculation.
http://clivebest.com/blog/?p=3258
This means that whereas two years may have the same annual average temperature they can be very different in terms of our ability to grow food. That is the most significant aspect of climate change that is ignored by the IPCC in using computer models based on global average temperature rather than zonal changes in heat units, sunshine hours, precipitation and the timing of these factors in relation to the growth cycle of crops. And of course increased atmospheric carbon dioxide, up to 1200 ppm is known to increase crop yields and drought resistance so we should be increasing atmospheric concentrations not the attempting to depress crop growth.
In this respect temperature and moisture measurements have to be very local – on the farms where the crops are grown. This means that the ability of the various temperature series to predict (or project) the effects of future climate change are problematic. As an example, Vukcevic refers to the problems with the temperature series at Armagh, pointing out the problems of industrialization on the results until it came into line with CET:
“ …. In the 1980’s the UHI effect reached a plateau, and onward both the Armagh and CET move at approximately same rate. The above difference would imply that the UHI component in the CET is of order of 0.3C.”
However, CET is hardly a perfect record, being based on at least 15 changes of station, with seven since 1958 and with the contribution from Ringway Airport, that is embedded in Greater Manchester and subject to heavy industry similar to Belfast, only removed in 2004. An experiment at Armagh to test for UHI effects found major differences in min and max with other local stations that were installed to test this and that have been put down to differences in surface roughness as per the claims of Roger Pielke Sr.
“Mean temperature differences between Observatory (O) and the mean of the three rural (R) stations (A,C & D), February to October 1996
Means O R O-R
deg.C
tmax 14.63 14.52 0.11
tmin 6.9 6.53 0.41
The mean difference in daily maxima between the Observatory and the mean of the three rural stations is found to be 0.11oC, whilst the difference in minima is 0.41oC, with the Observatory station warmer than the mean of the rural stations in both instances.”
This effectively trashes the use of griding with homoginistation so beloved of the CRU and GISS. Incidentally, instead of trying to find a UHI effect in these series we should be looking at the impacts of soil moisture and surface roughness – that is why we see warming and cooling stations intermixed throughout the SE of the USA and which will not be picked up by MODIS or population data as they are either natural due to changes in the ENSO cyles or due to changs in agriculture.
UHI study of the UK Armagh Observatory
Posted on August 26, 2010 by Anthony Watts
http://wattsupwiththat.com/2010/08/26/uhi-study-of-the-uk-armagh-observatory/
The lack of data on heat units and other factors that affect crop growth and the experience of the UHI experiment at Armagh tell me that relying on the official temperature series as used to support the whole IPCC CAGW mantra is not only nonsense but dangerous nonsense for those who live and rely on food production in marginal climate zones such as the Sahel. Not only do w have a lack of adequate local temperature measures but also of surface SWR. Further, in areas where most of the SWR is received and crops are grown under irrigation the Class A Pan Evaporation units show a decrease in evaporation over the period that atmospheric carbon dioxide has been increasing so, along with the missing “hotspot” disproving the IPCC claims of feedback from water vapour that is required for their CAGW myth.
http://www.science.org.au/natcoms/nc-ess/documents/nc-ess-pan-evap.pdf
Also, from a crop growth viewpoint the important point about Armagh is that Hathaway has found a link not just with NAO as per CET but with solar activity.
http://solarscience.msfc.nasa.gov/papers/wilsorm/WilsonHathaway2006c.pdf

Keitho
Editor
April 16, 2013 2:37 am

Dear Dr Darko Butina, that was a most excellent article. Clear in its simplicity and revealing in what it portrays. Thank you.

Martyn
April 16, 2013 3:26 am

Please Label the axes on the graphs and use figure numbers in the graphs.
It would leave the article looking more professional.

Johan i Kanada
April 16, 2013 4:37 am

Yes, there is certainly a need to rely on actual measurements as opposed to models.
The rest is pretty much nonsense.

TLM
April 16, 2013 5:49 am

As others here have said, it is total nonsense to say that every day in a year has to be warmer than the equivalent day in a previous year or location to prove that it is warmer.
Quite often there is the odd day in the UK where it is warmer than Egypt. There is often a jokey headline in the tabloid press when that happens “London warmer than Cairo!” accompanied by a gratuitous picture of a bikini clad girl lying on the grass in Hyde Park. Of course this is totally meaningless. Anybody who has been to Cairo knows that it is “warmer” than London.
If you don’t like averages why not try counting instead? Assuming there is one meaningful temperature measurement each day – say T-Max, one approach might be to compare each day in each location and subtract T-Max in one location from T-Max in the other. You could then count the number of days in each location where T-Max was higher than the other.
You might then find that in Cairo on 360 out of 365 days that T-Max was higher than Brighton. I think you could then reliably say that Cairo is warmer than Brighton!
You could then do the same for T-Min and I suspect you would get a similar result.
Personally I think averaging is absolutely fine – provided it is done carefully with good data. It is also essential if you are going to find out the magnitude of any differences.
I have to say, regardless of the good Doctor’s scientific background that this paper seems to discard common sense and invents spurious made-up statistical “rules” to somehow discredit the temperature record.
As my daughter would say, an “epic fail!”

Robert of Ottawa
April 16, 2013 5:50 am

That’s the amusing thing. OMG, it’ll get 1C warmer over the next 100 years.
Here in Ottawa, Canada, the nation’s capital BTW, the temperature varies 60C or more over the 6 months, January/July.
Of course it doesn’t vary at all April/October 🙂

Steve Keohane
April 16, 2013 5:54 am

While there are many complaints, I think Darko Butina has confronted a fallacy of ‘climate science with its own argument. Any weakness is in the original use of temperature to indicate enthalpy when it does not. Any temperature measurement sans RH% and probably atmospheric pressure cannot be used to tell if the world is warming or not. Period.

April 16, 2013 5:58 am

If all the suggestions about why the differences in the Temperatures measured at Armagh are artifacts of the location in relation to Belfast or Lough Neagh, or are due to industrialisation or de-industrialisation in northern Ireland, or the passage of the clean air act and other such comments are germane, perhaps someone can explain why the average calculated annual temperature has a very convincing linear relationship with the length of the sunspot cycles

Chuck Nolan
April 16, 2013 6:13 am

The arguments against this paper are scientific, data referenced and logical.
Not to mention completely lame.
If you want in this debate cut the technobabble.
They don’t use it.
Hansen doesn’t say sea level rose 4cms. He says it will rise 20 meters because of the coal trains of death. Mann doesn’t say the temperature went from 15C to 15.012C he says it will increase 6C because of greedy big oil.
They have no compelling evidence to hit the people over the head with, just sound bites, stunts and staged pictures.
They cut AC to the US Capital for Pete’s sake.
They show lots of pix of :
Hurricanes
Floods
Displaced people
Black carbon dust on snow
Dried up river beds
Receding glaciers
Cute cuddly polar bear cubs
And the hockey stick.

None of it demonstrates CAGW , which is a term they never use.
PR people, not scientists are what is controlling the BS.
They call us global warming deniers and shout that we caused all of the a fore mentioned problems.
Emotion is where they have sent this discussion and emotion is what we will need to counter it
Most laymen have heard of ice ages with woolly mammoths and warm eras with giant reptiles so we know the climate has been here before. They never mention these periods.
We need pix of dead birds struck down by wind mills, baby seals eaten live by polar bears and old people suffering from lack of heat. Pictures that show the very poor scrounging dumps, using dung for cooking and the filthy water and lack of sanitary conditions. Show what trying to stop prosperity does to people of color who are the poorest among us.
I don’t think most poor people care if Al Gore’s house ends up submerged.
They don’t care about the science of tomorrow. They just want to eat, today.
It’s time to tack …. prepare to come about.
Show why they are the bad guys in no uncertain terms.
cn

CC Squid
Reply to  Chuck Nolan
April 16, 2013 10:07 am

You forgot to mention the people in the US who lost their homes due to the increase in gas prices. The middle and lower middle class could buy an inexpensive home in the outlying suburbs, now they cannot afford to drive to and from work. The choice was between the necessities of life for their families and the mortgage.

ferdberple
April 16, 2013 6:32 am

TLM says:
April 16, 2013 at 5:49 am
As others here have said, it is total nonsense to say that every day in a year has to be warmer than the equivalent day in a previous year or location to prove that it is warmer.
==========
The author has not said that. It is a straw man argument, a logical fallacy. The author has said this is test to see if warming is “unequivocal”. A phrase used by the IPCC and others.
What the author has shown is that there are years in the past that are indistinguishable from years in the present, so the argument that warming is unequivocal is the real nonsense.

ferdberple
April 16, 2013 6:39 am

peter azlac says:
April 16, 2013 at 2:27 am
That is the most significant aspect of climate change that is ignored by the IPCC in using computer models based on global average temperature…
===========
Agreed. Climate is not temperature. Two areas with exactly the same average temperature can have very different climates. For example, a rain forest and a desert can have the exact same average temperate, yet they could not be more different climate-wise.
By concentrating on average temperature, Climate Science is ignoring climate.

Brian Macker
April 16, 2013 6:39 am

Embarrassing analysis. Using this reasoning we would not be able to say summer was warmer than winter unless temperatures on every single day of summer exceeded those in winter. Why bother adjusting for yearly swings in temperature by lining up the graphs if you are not going to compensate from daily swings? If temperatures can swing daily by 30 degrees then this analysis will not agree that average yearly temperature has risen until things are 30 degrees warmer. Those calling this brilliant should understand that they are not equipped with the tools to do basic math let alone science.

Brian Macker
April 16, 2013 6:43 am

If you don’t like simple math like averages then maybe try sorting all the temps over the year and looking at the area between the graphs then.

ferdberple
April 16, 2013 6:55 am

jeez says:
April 15, 2013 at 10:14 pm
“Can we detect unambiguous warming …
IS ABSOLUTELY NONSENSE! How can it be anything else.
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You have ignored the word “unambiguous “.
Science is not a voting system. It doesn’t matter how many examples you find that something is true. If you find a single example that something is false, then it is false. No ifs, no ands, no buts.
Climate Science is not conducting science, it is engaged in politics when it searches for positive confirmation. Somewhere along the line the school system has failed the recent crop of scientists. They have been taught political correctness and labelled it science.
What you are seeing in this paper is old school science. The way it used to be taught when we actually had to build things that worked. When folks actually used real data and opened their eyes and used their brains to analyze the results. Before we had computers to cook the books and tell us the “right” answer.

Chuck Nolan
April 16, 2013 6:56 am

ferdberple says:
April 16, 2013 at 6:39 am
…..By concentrating on average temperature, Climate Science is ignoring climate.
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Great idea to ignore climate because that’s what they do.
People need to see graphs with real temperature so they see how ridiculous alarmists are.
That way, we can all play by the same rules.
cn

April 16, 2013 6:58 am

Enthalpy is the only scientific method of comparing energy in the climate system. Temperatures are only part of the equation, the other part is the amount of heat stored in the water vapor in the atmosphere. Without knowing that any discussion of global heating/cooling is useless. Moreover, what humans experience is the enthalpy of a location, not the temperature itself. In many areas, the “feels like” temperature is given along with the dry bulb temperature. You notice the difference between a temperature of 88 and a feels like temperature of 94.
It would be interesting to see some of Willis’ analysis of thunderstorms and their effects noted in the change in enthalpy, before and after the rainfall. That would certainly address the heat loss as a result of the thunderstorm. I think the magnitude of the change will surprise a lot of people. That heat engine is incredibly powerful.

Climate agnostic
April 16, 2013 7:15 am

The best and maybe only way to “measure” climate change is to observe nature. Glaciers melting, species advancing into new areas or retreating to old ones and forest lines moving upwards or downwards on mountains. Thus nature is a reliable thermometer.

Chuck Nolan
April 16, 2013 7:18 am

You can’t make a talking point out of Enthalpy.
You can’t make a sound bite out of Enthalpy.
You can’t make a sound bullet out of Enthalpy.
That’s why they don’t try.
cn

ferdberple
April 16, 2013 7:47 am

Interesting paper. Explains why Climate Science under-estimates the probability of extreme events being natural.
“Fractal systems extend over many scales and so cannot be characterized by a single characteristic average number (Liebovitch and Scheurle, 2000). ”
http://arxiv.org/ftp/arxiv/papers/0805/0805.3426.pdf
Fractal Fluctuations and Statistical Normal Distribution
A. M. Selvam
Deputy Director (Retired)
Indian Institute of Tropical Meteorology, Pune 411 008, India

Theo Goodwin
April 16, 2013 8:17 am

I applaud Darko Butina’s efforts to create a framework that takes thermometer readings as the data for claims about surface temperatures in climate science. His product is less than satisfying but might be improved.
The motivation for his product is clear. Anomalies do not report observations and were designed to make calculation of trends simple and easy. Thus climate science takes trends as its ultimate evidence. A science that rests on trends will never be accepted among the hard sciences. Using trends, climate science will lock itself in the prison occupied by economics.
Some have objected to Butina’s project that the necessary observations, thermometer readings, are not available for all needed times and places and that we must make do with what we have. But what we have, trends, provide no real connection to the world. The best thing for the future of climate science would be to create a regime for collecting data in the world. Whether that regime uses thermometer measurements or something else must be debated. Now is the proper time to undertake discussion of such a regime because climate science is in its infancy.