Data-driven structural design optimization for petal-shaped auxetics using isogeometric analysis

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Abstract

Focusing on the structural optimization of auxetic materials using data-driven methods, a back-propagation neural network (BPNN) based design framework is developed for petal-shaped auxetics using isogeometric analysis. Adopting a NURBS-based parametric modelling scheme with a small number of design variables, the highly nonlinear relation between the input geometry variables and the effective material properties is obtained using BPNN-based fitting method, and demonstrated in this work to give high accuracy and efficiency. Such BPNN-based fitting functions also enable an easy analytical sensitivity analysis, in contrast to the generally complex procedures of typical shape and size sensitivity approaches.

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Wang, Y., Liao, Z., Shi, S., Wang, Z., & Poh, L. H. (2020). Data-driven structural design optimization for petal-shaped auxetics using isogeometric analysis. CMES - Computer Modeling in Engineering and Sciences, 122(2), 433–458. https://doi.org/10.32604/cmes.2020.08680

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