基于分而治之遗传算法的红外运动传感系统优化设计

Guodong Feng, Yuebin Yang, Xuemei Guo, Guoli Wang
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引用次数: 5

摘要

本文研究了在人类跟随机器人背景下,用于人体运动定位的红外运动传感系统的优化设计。具体来说,我们的目标是找到最佳的方位敏感热释电红外(PIR)传感器阵列的数量和位置,以提高定位性能。这种优化设计导致了一个多目标、混合整数-离散-连续和变维优化问题,这阻止了使用传统的多目标优化技术,包括遗传算法(GA)。本文探讨了基于分治算法的遗传算法在解决这一优化设计问题中的应用。该方法分为三个步骤:首先,根据分治原则,将优化设计问题分解为一组子优化问题;然后用标准遗传算法求解子优化问题;最后,通过融合子优化问题的结果解,找到最优解。通过一个设计实例说明了所提出的设计方法,并通过实验研究进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal design of infrared motion sensing system using divide-and-conquer based genetic algorithm
This paper studies the optimal design of an infrared motion sensing system for human motion localization in the context of human-following robots. Specifically, we aim to find the optimal number and placement of bearing-sensitive pyroelectric infrared (PIR) sensor arrays for improving localization performance. This optimal design leads to a multiobjective, mixed-integer-discrete-continuous and variable-dimensional optimization problem, which prevents from using conventional multiobjective optimization techniques including genetic algorithm (GA). This paper explores the use of divide-and-conquer based GA in solving this optimal design problem. The proposed approach consists of three steps: firstly, following divide-and-conquer principle, the optimal design problem is decomposed into a set of sub-optimization problems; then the sub-optimization problems are solved with standard GA; finally, the optimal solution is found through fusing the resulting solutions of sub-optimization problems. The proposed design approach is illustrated with a design example, and verified with experimental studies.
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