Clustering discretization methods for generation of material performance databases in machine learning and design optimization

Volume: 64, Issue: 2, Pages: 281 - 305
Published: May 22, 2019
Abstract
Mechanical science and engineering can use machine learning. However, data sets have remained relatively scarce; fortunately, known governing equations can supplement these data. This paper summarizes and generalizes three reduced order methods: self-consistent clustering analysis, virtual clustering analysis, and FEM-clustering analysis. These approaches have two-stage structures: unsupervised learning facilitates model complexity reduction and...
Paper Details
Title
Clustering discretization methods for generation of material performance databases in machine learning and design optimization
Published Date
May 22, 2019
Volume
64
Issue
2
Pages
281 - 305
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