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arxiv: 1702.01574 · v2 · pith:Q6REP4EQnew · submitted 2017-02-06 · ⚛️ physics.comp-ph

Data Driven Computing with Noisy Material Data Sets

classification ⚛️ physics.comp-ph
keywords datadrivencomputingdistance-minimizingmax-entachievedanalysisassign
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We formulate a Data Driven Computing paradigm, termed max-ent Data Driven Computing, that generalizes distance-minimizing Data Driven Computing and is robust with respect to outliers. Robustness is achieved by means of clustering analysis. Specifically, we assign data points a variable relevance depending on distance to the solution and on maximum-entropy estimation. The resulting scheme consists of the minimization of a suitably-defined free energy over phase space subject to compatibility and equilibrium constraints. Distance-minimizing Data Driven schemes are recovered in the limit of zero temperature. We present selected numerical tests that establish the convergence properties of the max-ent Data Driven solvers and solutions.

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