不确定非线性系统中2型模糊控制器的进化整定技术

S. Mohammadi, A. Gharaveisi, M. Mashinchi
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引用次数: 9

摘要

不确定性是实际应用中控制系统的固有部分。在这种系统中使用的各种仪器在其测量中产生不确定性,从而影响数据收集的完整性。传统模糊系统中使用的一类模糊集不能完全处理存在的不确定性,而二类模糊系统中使用的二类模糊集可以更好地处理这种不确定性,因为它们提供了更多的参数和更多的设计自由度。有一些隶属函数可以被几个变量参数化,当进行优化时,隶属度优化问题可以简化为参数优化问题。本文用一种新的强化学习算法研究了非线性系统中2型模糊隶属函数的参数优化问题。将所提出的扩展离散动作强化学习自动机算法的结果与离散动作强化学习自动机和连续动作强化学习自动机算法的结果进行了比较。通过计算机仿真研究了该方法在初始误差减小和误差收敛问题上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An evolutionary tuning technique for type-2 fuzzy logic controller in a non-linear system under uncertainty
Uncertainty is an inherent part in control systems used in real world applications. Various instruments used in such systems produce uncertainty in their measurements and thus influence the integrity of the data collection. Type-1 fuzzy sets used in conventional fuzzy systems cannot fully handle the uncertainties present but type-2 fuzzy sets that are used in type-2 fuzzy systems can handle such uncertainties in a better way because they provide more parameters and more design degrees of freedom. There are membership functions which can be parameterised by a few variables and when optimized, the membership optimization problem can be reduced to a parameter optimization problem. This paper deals with the parameter optimization of the type-2 fuzzy membership functions using a new proposed reinforcement learning algorithm in a nonlinear system. The results of the proposed method referred to as Extended Discrete Action Reinforcement Learning Automata algorithm are compared to the results obtained by the Discrete Action Reinforcement Learning Automata and Continuous Action Reinforcement Learning Automata algorithms. The Performance of the proposed method on initial error reduction and error convergence issues are also investigated by computer simulations.
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