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A cascaded evolutionary multi-objective optimization for solving the unbiased universal electric motor family problem

机译:解决无偏通用电动机族问题的级联进化多目标优化

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For a successful business model the efficient development and design of a comprehensive product family plays a crucial part in many real world applications. A product family as it occurs, e.g., in the automotive domain consists of a product platform which covers the commonalities of product variants and the derived product variants. While product variants need to be fast and flexibly adjusted to market needs, from manufacturing and development point of view an underlying product platform with a large number of common parts is required to increase cost efficiency. For the design and evaluation of optimization methods for product family development, in the present paper the universal electric motor (UEM) family problem is considered, as it provides a fair trade-off between complexity and computational costs compared to real world application scenarios in the automotive domain. Since especially solving this problem without usage of pre-knowledge comes with high computational costs, a cascaded evolutionary multi-objective optimization based on NSGA-II with concatenation of product Pareto fronts is proposed in the present paper to efficiently reduce computational time. Besides providing sets of Pareto solutions to the unbiased UEM family problem the effects of considering solutions of prior platform optimizations as starting point for follow-up optimizations under changing requirements are evaluated.
机译:对于成功的商业模型,全面的产品系列的有效开发和设计在许多实际应用中至关重要。例如在汽车领域中出现的产品系列由覆盖产品变型和派生产品变型的共性的产品平台组成。尽管需要根据市场需求快速灵活地调整产品变型,但是从制造和开发的角度来看,需要具有大量通用零件的基础产品平台来提高成本效率。对于产品系列开发的优化方法的设计和评估,本文考虑了通用电动机(UEM)系列问题,因为与实际应用场景相比,通用电机(UEM)系列问题提供了复杂性和计算成本之间的公平折衷。汽车领域。由于特别是在不使用预知识的情况下解决该问题会带来高昂的计算成本,因此,本文提出了一种基于NSGA-II与乘积Pareto前沿串联的级联进化多目标优化算法,以有效地减少计算时间。除了为无偏UEM系列问题提供Pareto解决方案集之外,还评估了考虑将先前平台优化的解决方案作为不断变化的需求下的后续优化起点的效果。

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