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3 months ago

Data-driven computing in elasticity via kernel regression

{Yoshihiro Kanno}

Abstract

This paper presents a simple nonparametric regression approach to data-driven computing in elasticity. We apply the kernel regression to the material data set, and formulate a system of nonlinear equations solved to obtain a static equilibrium state of an elastic structure. Preliminary numerical experiments illustrate that, compared with existing methods, the proposed method finds a reasonable solution even if data points distribute coarsely in a given material data set.

Benchmarks

BenchmarkMethodologyMetrics
stress-strain-relation-on-non-linearKernel Regression
Time (ms): 7.18

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Data-driven computing in elasticity via kernel regression | Papers | HyperAI