A Particle Swarm Algorithm for Multiobjective Design Optimization

Eric Ochlak, B. Forouraghi
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引用次数: 18

Abstract

Many engineering design problems are characterized by presence of several conflicting objectives. This requires efficient search of the feasible design region for optimal solutions which simultaneously satisfy multiple design objectives. The search is further complicated in view of the fact that because of inherent manufacturing variations it is often necessary to allocate tolerances to design variables while guaranteeing low variances for product/process performance measures. Particle swarm optimization (PSO) is a powerful search technique with faster convergence rates than traditional evolutionary algorithms. This paper introduces a new PSO-based approach to multiobjective engineering design by incorporating the central quality-control notion of tolerance design. Unlike classical optimization techniques which rely on single-point representation of designs, the modified PSO algorithm allocates tolerances to design variables and flies a swarm of hypercubic particles through the feasible space. To demonstrate the utility of the proposed method, the multiobjective design of an I-beam is presented
多目标设计优化的粒子群算法
许多工程设计问题的特点是存在几个相互冲突的目标。这就要求对可行设计区域进行高效搜索,寻找同时满足多个设计目标的最优解。由于固有的制造变化,通常有必要为设计变量分配公差,同时保证产品/过程性能测量的低差异,因此搜索进一步复杂化。粒子群优化(PSO)是一种强大的搜索技术,具有比传统进化算法更快的收敛速度。本文介绍了一种新的基于pso的多目标工程设计方法,该方法将公差设计作为质量控制的核心概念。与传统优化技术依赖于设计的单点表示不同,改进的粒子群优化算法为设计变量分配公差,并使一群超立方粒子在可行空间中飞行。为了证明所提方法的实用性,以工字梁的多目标设计为例
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