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A double-distribution statistical algorithm for composite laminate optimization

机译:复合材料层合板优化的双分布统计算法

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The paper proposes a new evolutionary algorithm termed Double-Distribution Optimization Algorithm (DDOA). DDOA belongs to the family of estimation of distribution algorithms (EDA) that build a statistical model of promising regions of the design space based on sets of good points and use it to guide the search. The efficiency of these algorithms is heavily dependent on the model accuracy. In this work, a generic framework for enhancing the model accuracy by incorporating statistical variable dependencies is presented. The proposed algorithm uses two distributions simultaneously: the marginal distributions of the design variables, complemented by the distribution of physically meaningful auxiliary variables. The combination of the two generates more accurate distributions of promising regions at a low computational cost. The paper demonstrates the efficiency of DDOA for three laminate optimization problems where the design variables are the fiber angles, and the auxiliary variables are integral quantities called lamination parameters. The results show that the reliability of DDOA in finding the optima is greater than that of simple EDA and a standard genetic algorithm, and that its advantage increases with the problem dimension.
机译:本文提出了一种新的进化算法,称为双分布优化算法(DDOA)。 DDOA属于分布算法估计(EDA)家族,该算法基于一组优点点建立设计空间中有希望的区域的统计模型,并用其指导搜索。这些算法的效率在很大程度上取决于模型的准确性。在这项工作中,提出了通过合并统计变量依赖性来增强模型准确性的通用框架。所提出的算法同时使用两种分布:设计变量的边际分布,并辅以物理上有意义的辅助变量的分布。两者的结合以较低的计算成本产生了有希望的区域的更准确的分布。本文展示了DDOA在三个层压板优化问题上的效率,其中设计变量为纤维角度,辅助变量为积分量,称为层压参数。结果表明,DDOA在寻找最优解方面的可靠性高于简单的EDA和标准遗传算法,并且其优势随着问题的维度而增加。

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