A comparative analysis of SPSA algorithms for induction motor adaptive control

F. Cupertino, E. Mininno, D. Naso
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引用次数: 1

Abstract

This paper describes the implementation of a self- optimizing embedded control scheme for an induction motor drive. The online design problem is formulated as a search problem and solved with a stochastic optimization algorithm. The objective function takes in account the tracking error, and is directly measured on the hardware bench. The online optimization is performed with the simultaneous perturbation stochastic approximation (SPSA) algorithms, which offer a very effective tradeoff between simplicity of implementation, speed of convergence and quality of the final solutions. Among the known SPSA algorithms considered in this paper, we also propose a novel variant inspired to the concept of elitism frequently used in evolutionary computation. To assess the relative performances of the various algorithms, the paper carries out a comprehensive analysis of a control scheme for an induction motor drive subject to time-varying load disturbances.
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感应电机自适应控制的SPSA算法比较分析
本文介绍了一种自优化的嵌入式感应电机驱动控制方案的实现。将在线设计问题表述为一个搜索问题,并采用随机优化算法求解。目标函数考虑了跟踪误差,直接在硬件台架上测量。在线优化采用同步摄动随机逼近(SPSA)算法进行,该算法在实现的简单性、收敛速度和最终解的质量之间提供了非常有效的权衡。在本文考虑的已知SPSA算法中,我们还提出了一种新的变体,灵感来自于进化计算中经常使用的精英主义概念。为了评估各种算法的相对性能,本文对受时变负载干扰的感应电动机驱动的控制方案进行了全面分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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