一种用于运动控制应用的改进模糊学习算法[永磁同步电动机]

J. Silva Neto, H. Le-Huy
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引用次数: 7

摘要

本文提出了一种改进的模糊自适应方法来构建或改变模糊控制器中的知识库。模糊逻辑自适应机制(FLAM)的目标是根据参考模型输出信号与系统输出信号的比较,改变FLC规则基表中的规则定义。该模型由模糊逆模型和知识库修正器组成。该学习算法具有局部效应,但不同于以往的模糊策略,它对每条主动规则使用一个加权因子,以避免不必要的控制信号切换。在基于TMS320C30 dsp的永磁同步电机速度模糊控制方案中验证了该方法的有效性。模糊逻辑自适应策略易于实现。由于改进的算法,即使在系统参数剧烈变化的情况下,也具有快速的学习特性和良好的跟踪特性。
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An improved fuzzy learning algorithm for motion control applications [PM synchronous motors]
In this paper, the authors describe an improved fuzzy adaptation method to construct or change the knowledge base in the fuzzy logic controller (FLC). The objective of the fuzzy logic adaptation mechanism (FLAM) is to change the rules definition in the FLC rule base table, according to the comparison between a reference model output signal and the system output. The FLAM is composed by a fuzzy inverse model and a knowledge base modifier. The learning algorithm has a local effect but differently from previous fuzzy strategies it uses a weighting factor for each active rule, to avoid unnecessary control signal switching. They show the efficiency of this method in a TMS320C30 DSP-based speed fuzzy control scheme of a permanent magnet synchronous motor (PMSM). The fuzzy logic adaptive strategy can be easily implemented. It has fast learning features and very good tracking characteristics even under severe variations of the system parameters, due to the improved algorithm.
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