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Platform design variable identification for a product family using multi-objective particle swarm optimization

机译:使用多目标粒子群算法的产品系列平台设计变量识别

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The variability of products affects customers' satisfaction by increasing flexibility in decision-making for choosing a product based on their preferences in competitive market environments. In product family design, decision-making for determining a platform design strategy or the degree of commonality in a platform can be considered as a multidisciplinary optimization problem with respect to design variables, production cost, company's revenue, and customers' satisfaction. In this paper, we investigate evolutionary algorithms and module-based design approaches to identify an optimal platform strategy in a product family. The objective of this paper is to apply a multi-objective particle swarm optimization (MOPSO) approach to determine design variables for the best platform design strategy based on commonality and design variation within the product family. We describe modifications to apply the proposed MOPSO to the multi-objective problem of product family design and allow designers to evaluate varying levels of platform strategies. To demonstrate the effectiveness of the proposed approach, we use a case study involving a family of General Aviation Aircraft. We show that the proposed optimization algorithm can provide a proper solution in product family design process through experiments. The limitations of the approach and future work are also discussed.
机译:产品的可变性通过增加在竞争市场环境中根据客户偏好选择产品的决策灵活性,影响客户的满意度。在产品系列设计中,用于确定平台设计策略或平台通用性的决策可以被视为涉及设计变量,生产成本,公司收入和客户满意度的多学科优化问题。在本文中,我们研究了进化算法和基于模块的设计方法,以确定产品系列中的最佳平台策略。本文的目的是应用多目标粒子群优化(MOPSO)方法,基于产品系列中的通用性和设计差异,确定最佳平台设计策略的设计变量。我们描述了将拟议的MOPSO应用于产品系列设计的多目标问题的修改,并允许设计人员评估不同级别的平台策略。为了证明该方法的有效性,我们使用了一个涉及通用航空飞机家族的案例研究。通过实验表明,所提出的优化算法可以为产品系列设计过程提供合适的解决方案。还讨论了该方法的局限性和未来的工作。

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