Jojo, I really think you miss the point.  Let assume a moment the global
average temperature was 6C above average.  That is 42.8 degrees Fahrenheit!
 You and the deniers have got to get an understanding of what that means.
 It means extinction of life as we know it.  I know you deniers think some
how man kind will survive.  To be honest, I think that is doubtful.
 Economic systems will not survive, food supplies will not provide, and
warring political systems will doom the planet.

I really don't need to say much more, reality will take control and play
out future events that the deniers will bitch about all the way to the
extinction of man.




On Sun, Aug 24, 2014 at 9:38 PM, David Roberson <dlrober...@aol.com> wrote:

> Eric, I realize how complex the problem that these guys are facing must
> be.  That is the root cause of their problem.  You have listed several good
> points and I will take them into consideration.
>
> My main issue with the current models is that new processes and
> interactions are being uncovered frequently which modify the behavior of
> the models in a significant manner.  I ask what would be the output of a
> model at the end of this century that had all of the known and
> unknown pertinent factors taken into consideration?  The recent
> acknowledgement of a new factor that allows for a 30 year pause in
> temperature rise is not an issue to be taken lightly.  It also inflicts
> upon me the concern that there are likely more of these factors that remain
> hidden as of today.
>
> I suspect you have relied upon curve fitting routines in the past and
> realize that enough variables can be chosen and adjusted to match any set
> of input data as closely as desired as long as that data is sparse.  You
> also probably realize that a polynomial fit to a high power order yields
> coefficients that vary depending upon the order of the polynomial chosen.
> Many combinations of coefficients will fit the input/output data over a
> restricted range.  The problem shows up once you use those
> different coefficients to project the curve forwards into unknown future
> points.
>
> We are now clearly in witness to an example of the type of problem that I
> am speaking of.  The old data apparently matched the functional
> relationship that the modelers have chosen to an excellent degree until the
> pause.  They were confident that no pause would appear and many suggested
> that they would be worried if the pause lasted for more than about 5
> years.  As we know that time period came and passed and the pause continued
> which forced many of these guys to seek an explanation.
>
> Now, after several more years of unexpected pause, they have come up with
> their best explanation due to the 30 year Atlantic current cycle.  Where
> was this cycle included during the long hockey stick period?  Some might
> consider that the high rate of heating during the earlier period might have
> come about due to added heating by this same cycle.  That certainly makes
> sense to me.
>
> So, I can not help but to question predictions that have been based upon a
> defective model.  Furthermore, how confident can you possibly be that these
> guys now have all the important factors included within their models?  The
> proof can only be demonstrated by the performance of the models during a
> period of time where they show reasonable results that compare to the real
> world.  We are seeking knowledge of the world's climate in 100 years time
> as we make plans to counter the expected dangers.  It is non sense to trust
> a model that does not work 20 years into the future for this purpose.  The
> past fits are trivial and can always be obtained by curve fitting.  The
> future fit reveals how good the model actually performs.  That is
> where they are lacking.
>
> Eric, when I design an electrical network that is built and tested I
> expect it to perform as my model predicts.  If I measured results that were
> seriously in error I would not recommend the circuit to others for the same
> application with known problems.  Instead I would dig deeper into the model
> and devices until the results match the model fairly well.  I have in fact
> done this on several occasions.  Only then is the model useful to generate
> predictions of value.
>
> Dave
>
>
>
>
> -----Original Message-----
> From: Eric Walker <eric.wal...@gmail.com>
> To: vortex-l <vortex-l@eskimo.com>
> Sent: Sun, Aug 24, 2014 4:51 pm
> Subject: Re: [Vo]:global warming?
>
>   On Sun, Aug 24, 2014 at 12:43 PM, David Roberson <dlrober...@aol.com>
> wrote:
>
>  Eric, I suppose the difference between your beliefs and mine amounts to
>> my expectation that the climate change scientists should be held to a high
>> standard as is required of most other endeavors.  You apparently are
>> willing to give them a free pass since you have a gut feeling that they are
>> right to some degree.
>>
>
>  I don't think anyone is arguing for giving climate scientists a free
> pass for anything they want to do, anymore than we would argue here for
> giving physicists a free pass to endlessly pour money into ITER or the
> National Ignition Facility; certainly not me.  I'm arguing for humility
> before expertise gradually developed in understanding a wicked problem.  We
> can question policy and funding decisions that are based on uncertain
> conclusions.  But stepping in and saying that we (the general public) are
> in as good a position to weigh the data as capable climate scientists is to
> lose a sense of the proportion in the face of the amount of time and effort
> that must be expended to discern signal from noise in a complex domain.
>
>  Without such humility, we are prone to a little bit of unintentional
> hubris.  It is similar to making the following statements as members of the
> general public:
>
>    - What you electrical engineers are saying about instantaneous power
>    is bunk.  I know that if the sine and the cosine fluctuate too rapidly,
>    they'll jam together like the keys on a typewriter and throw the power out
>    of hoc.
>    - Making a practical quantum computer is not as hard as you guys make
>    it out to be, for I have built one out of an erector set and rubber bands
>    and know something about the basic principles involved.
>    - Moore's law is not at all insurmountable.  The electrical engineers
>    are simply failing to see that if you add in some refrigeration lines, the
>    temperature will be sufficiently decreased to allow a continued exponential
>    increase in circuit density.  This is simple thermodynamics.
>
> This is probably what we sound like to people who have studied climate
> science when we interject with our analyses without having spent years of
> our lives trying to understand the nuances of the problem.  One hesitates
> to do something similar in the context of LENR, and only does so because
> almost no one who has the proper qualifications is willing to undergo the
> stigma that will attach to anyone in physics who publicly examines LENR.
>
>  The overfitting of a model to a set of data is a generally known risk,
> and ways of avoiding it are taught in undergraduate courses.  If we do not
> give climate scientists the benefit of the doubt on this one, we will be
> proceeding from an assumption that they're incompetent.
>
>  In trying to understand what climate scientists are doing, I would draw
> an analogy to using our knowledge of radioactive decay half-lives to
> understand how much of a radionuclide will exist after a certain amount of
> time.  Because the process is a stochastic one, the knowledge of the
> half-life is close to useless in predicting whether an individual nucleus
> will decay at a certain time.  But over a period of time, the half-life
> will allow one to calculate the amount of the original radionuclide
> remaining to within a high degree of precision.  I doubt that this ability
> was something that was acquired overnight.  It probably took a few years of
> trial and error to empirically tease out the exponential decay relation.
>  But even when they were working with less than reliable models, I'm
> guessing they were able to discern the general trend.
>
>  Another analogy to what climate scientists are trying to do is to that
> of a mechanical engineer attempting to predict the temperature of an engine
> that has been running for a certain period of time.  It is probably
> difficult to predict the temperature at a specific thermocouple at an
> instance in time beyond a certain broad range.  But I'm guessing that it's
> not too hard to anticipate the average temperature across the thermocouples
> after one has become familiar with the operating characteristics of the
> engine in question.  Climate scientists are doing something similar, but at
> a stage when the laws of thermodynamics were less well understood.
>  Nonetheless general trends can be discerned.
>
>  I would not at all be surprised if the relevant time ranges for useful
> predictions in climate change models were on the order of decades.  Each
> system being modeled has its own range of times within which statements are
> relevant.  In some nuclear decays, the time range for some decays is on the
> order of 10^-8 - 10^-20 seconds.  I would be surprised, in fact, if climate
> scientists were able to bring model predictions to within less than tens of
> years, given the great amount of latency involved for changes to show up in
> the system.
>
>  As for climate scientists adjusting their models periodically in the
> face of new facts, I am reminded of a quote attributed to Keynes, who was
> responding to a similar complaint:  "When my information changes, I alter
> my conclusions. What do you do, sir?"
>
>  Eric
>
>

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