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Filter Design and Optimization of Electromechanical Actuation Systems Using Search and Surrogate Algorithms for More-Electric Aircraft Applications

机译:使用搜索和代理算法进行机电致动系统对更多电气飞机应用的过滤器设计和优化

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摘要

In this article, the dc filter design and optimization problem is studied for dc electrical power distribution systems onboard more-electric aircraft. Component sizing models are built to serve as the basis of the optimization whose objectives are mass and power loss of this filter. A categorization strategy of search and surrogate algorithms is proposed and used for the target multiobjective optimization problem (MOOP). A genetic algorithm is utilized as a search algorithm to identify potential best solutions based on a set of filter sizing functions (subject to constraints). In addition, two machine learning (ML) algorithms are considered as surrogate algorithms to address the same optimization problem. In the ML training process, a constraint violation model is applied since there are various constraints in optimization, and this kind of classification model is relatively difficult to train. A support vector machine is applied for the constraint violation model; after that, two artificial neural networks are trained as the final surrogate model for mapping design variables to filter performance. To address these issues, a novel category of search and surrogate algorithms is proposed. Both algorithms are explored to solve the filter MOOP, and their optimization results are compared at the end.
机译:在本文中,研究了DC电力分配系统的DC滤波器设计和优化问题。构建组件大小模型以作为优化的基础,其目标是该过滤器的质量和功率损耗。提出了一种搜索和代理算法的分类策略,并用于目标多目标优化问题(MOOP)。遗传算法用作搜索算法,用于基于一组滤波器大小函数来识别潜在的最佳解决方案(受约束)。此外,两台机器学习(ML)算法被认为是代理算法来解决相同的优化问题。在M1训练过程中,应用了约束违规模型,因为优化中存在各种限制,并且这种分类模型相对难以训练。支持向量机用于约束违规模型;之后,两个人工神经网络被视为最终的替代模型,用于映射设计变量以过滤性能。为了解决这些问题,提出了一种新颖的搜索和代理算法。探索了这两种算法以解决滤波器MOOP,并在最后进行比较它们的优化结果。

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