模糊PI型控制器的鲁棒整定方案

S. Chopra, R. Mitra, V. Kumar
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引用次数: 11

摘要

本文提出了一种基于模糊逻辑的模糊比例积分控制器的简单有效的整定方案。在这里,输入比例因子通过增益更新因子在线调整,增益更新因子的值由带有误差和误差变化的规则库确定,并根据所需的受控过程作为输入。从峰值超调、稳定时间和上升时间以及积分平方误差等性能指标对传统模糊控制器与自整定模糊PI型控制器的性能进行了比较。在某些系统中,除了阶跃设定点变化引起的响应外,还会加入随机噪声。仿真结果表明了该调谐机制的有效性和鲁棒性。此外,采用聚类方法对三个模糊推理块的模糊推理规则进行约简,减少了计算时间和内存。将基于聚类的模糊控制器与常规模糊控制器在两种情况下(带调优和不带调优)进行了比较。对各种线性和非线性过程进行了仿真分析,结果表明该方法大大减少了计算时间和内存
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A Robust Scheme for Tuning of Fuzzy PI Type Controller
In this paper, a simple and effective scheme for tuning of fuzzy PI (proportional-integral) controller based on fuzzy logic is proposed. Here the input scaling factors are tuned online by gain updating factors whose values are determined by rule base with the error and change in error as inputs according to the required controlled process. The performance comparison of conventional fuzzy logic controller with auto tuned fuzzy PI type controllers has been done in terms of several performance measures such as peak overshoot, settling time and rise time and integral square error (ISE). In addition to the responses due to step set-point change, a random noise is also added in some systems. Simulation results show the effectiveness and robustness of the proposed tuning mechanism. Furthermore, a clustering method is used to reduce the fuzzy inference rules of the three fuzzy reasoning blocks which reduces the computational time and memory. The clustering based fuzzy logic controllers is compared with those of conventional fuzzy logic controllers in both cases (with and without tuning). A simulation analysis of a wide range of linear and nonlinear processes is carried out and comparison of results shows computational time and memory is reduced to a great extent
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