Optimization of Running Blade Prosthetics Utilizing Crow Search Algorithm Assisted by Artificial Neural Networks

Rosel Solís Manuel Javier, J. D. B. Ramirez, Javier Molina Salazar, Juan Antonio Ruiz Ochoa, Antonio Gómez Roa
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引用次数: 5

Abstract

A crow search algorithm (CSA) was applied to perform the optimization of a running blade prosthetics (RBP) made of composite materials like carbon fibre layers and cores of acrylonitrile butadiene styrene (ABS). Optimization aims to increase the RBP displacement limited by the Tsai-Wu failure criterion. Both displacement and the Tsai-Wu criterion are predicted using artificial neural networks (ANN) trained with a database constructed from finite element method (FEM) simulations. Three different cases are optimized varying the carbon fibre layers orientations: –45°/45°, 0°/90°, and a case with the two-fibre layer orientations intercalated. Five geometric parameters and a number of carbon fibre layers are selected as design parameters. A sensitivity analysis is performed using the Garzon equation. The best balance between displacement and failure criterion was found with fibre layers oriented at 0°/90°. The optimal candidate with –45°/45° orientation presents higher displacement; however, the Tsai-Wu criterion was less than 0.5 and not suitable for RBP design. The case with intercalated fibres presented a minimal displacement being the stiffer RBP design. The damage concentrates mostly in the zone that contacts the ground. The sensitivity study found that the number of layers and width were the most important design parameters.
基于人工神经网络的乌鸦搜索算法优化叶片假肢
采用乌鸦搜索算法(CSA)对碳纤维层和丙烯腈-丁二烯-苯乙烯(ABS)芯等复合材料制成的运动叶片假肢(RBP)进行了优化设计。优化的目的是在Tsai-Wu破坏准则的限制下增加RBP位移。位移和Tsai-Wu准则都是用人工神经网络(ANN)来预测的,而人工神经网络是用有限元法(FEM)模拟建立的数据库来训练的。优化了三种不同的碳纤维层方向:-45°/45°,0°/90°,以及两层纤维层方向插入的情况。选取5个几何参数和碳纤维层数作为设计参数。利用Garzon方程进行敏感性分析。当纤维层取向为0°/90°时,发现位移和破坏准则之间的最佳平衡。-45°/45°取向的最优候选体具有较高的位移;但Tsai-Wu判据小于0.5,不适合RBP设计。嵌入纤维的情况下呈现最小位移是刚性RBP设计。破坏主要集中在与地面接触的区域。灵敏度研究发现,层数和宽度是最重要的设计参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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