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首页> 外文期刊>Journal of Computational and Applied Mathematics >Shape functional optimization with restrictions boosted with machine learning techniques
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Shape functional optimization with restrictions boosted with machine learning techniques

机译:借助机器学习技术增强形状功能优化并增加限制

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摘要

Shape optimization is a widely used technique in the design phase of a product. Current ongoing improvement policies require a product to fulfill a series of conditions from the perspective of mechanical resistance, fatigue, natural frequency, impact resistance, etc. All these conditions are translated into equality or inequality restrictions which must be satisfied during the optimization process that is necessary in order to determine the optimal shape. This article describes a new method for shape optimization that considers any regular shape as a possible shape, thereby improving on traditional methods limited to straight profiles or profiles established a priori. Our focus is based on using functional techniques and this approach is, based on representing the shape of the object by means of functions belonging to a finite-dimension functional space. In order to resolve this problem, the article proposes an optimization method that uses machine learning techniques for functional data in order to represent the perimeter of the set of feasible functions and to speed up the process of evaluating the restrictions in each iteration of the algorithm. The results demonstrate that the functional approach produces better results in the shape optimization process and that speeding up the algorithm using machine learning techniques ensures that this approach does not negatively affect design process response times.
机译:形状优化是产品设计阶段中广泛使用的技术。当前的持续改进政策要求产品从机械阻力,疲劳性,固有频率,抗冲击性等角度满足一系列条件。所有这些条件都转化为相等或不相等的限制,在优化过程中必须满足这些限制。为了确定最佳形状是必需的。本文介绍了一种用于形状优化的新方法,该方法将任何规则形状都视为可能的形状,从而改进了限于笔直轮廓或先验轮廓的传统方法。我们的重点是使用功能技术,而这种方法是基于通过属于有限维功能空间的功能来表示对象的形状。为了解决此问题,本文提出了一种优化方法,该方法将机器学习技术用于功能数据,以表示可行函数集的周长,并加快算法每次迭代中评估限制的过程。结果表明,该功能方法在形状优化过程中产生了更好的结果,并且使用机器学习技术加速算法可确保该方法不会对设计过程的响应时间产生负面影响。

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