Editing Talk:1885: Ensemble Model

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Also ensembles are typically used for non-linear, chaotic systems and this should probably be somewhere in the explanation.   
 
Also ensembles are typically used for non-linear, chaotic systems and this should probably be somewhere in the explanation.   
 
[[Special:Contributions/162.158.62.159|162.158.62.159]] 17:06, 6 September 2017 (UTC)
 
[[Special:Contributions/162.158.62.159|162.158.62.159]] 17:06, 6 September 2017 (UTC)
βˆ’
:The global temperature doesn't decrease in any model. So I have changed this in the explanation and added the possibility of a depicted tornado, makes more sense for the big point at the beginning. Nevertheless I'm not sure what Randall means in this particular graph.--[[User:Dgbrt|Dgbrt]] ([[User talk:Dgbrt|talk]]) 14:35, 7 September 2017 (UTC)
 
  
 
Ensemble models are a form of a Monte Carlo Analysis.  They are used in many engineering analyses, usually to determine an upper limit for some particular limiting quantity.  The idea is that you do not necessarily believe any of the individual analyses, but that the ensemble forms an envelope of outcomes, so that if you design for the most extreme case, you can be confident that your design will not fail.  They are used to make sure that the design is robust and has margin to failure.  Of course, you cannot consider all of the uncertainties, which is why it is important to carefully identify sources of uncertainty before you do the analyses.  If you do generate an ensemble envelope, and the data for the particular event falls outside the envelope, it is time to seriously reconsider the models, or the sources of uncertainty.13:20, 7 September 2017 (UTC)~~
 
Ensemble models are a form of a Monte Carlo Analysis.  They are used in many engineering analyses, usually to determine an upper limit for some particular limiting quantity.  The idea is that you do not necessarily believe any of the individual analyses, but that the ensemble forms an envelope of outcomes, so that if you design for the most extreme case, you can be confident that your design will not fail.  They are used to make sure that the design is robust and has margin to failure.  Of course, you cannot consider all of the uncertainties, which is why it is important to carefully identify sources of uncertainty before you do the analyses.  If you do generate an ensemble envelope, and the data for the particular event falls outside the envelope, it is time to seriously reconsider the models, or the sources of uncertainty.13:20, 7 September 2017 (UTC)~~

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