Fuzzy-sliding model reference learning control of inverted pendulum with big bang — Big crunch optimization method

M. Aliasghary, I. Eksin, M. Güzelkaya
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引用次数: 6

Abstract

In this paper, a fuzzy-sliding model reference learning controller is proposed in which optimal scaling factors are assigned for the fuzzy sliding mode controllers. As the name of this study suggest the method is a breeding or hybrid combination of the fuzzy-sliding mode control (FSMC) and fuzzy model reference learning control (FMRLC) which inherits the benefits of these two methods. The main advantage of the proposed controller is that the number of rules has been reduced dramatically in comparison with the traditional FMRLC since fuzzy-sliding mode controllers are invoked in place of standard fuzzy logic controllers. The input and output scaling factors of fuzzy sliding mode controllers are adjusted using big bang - big crunch optimization method to provide an optimal result. The simulations for the proposed method are done on the inverted pendulum system. The results of these simulations demonstrate that the FS-MRLC achieves a robust performance with minimum number of fuzzy rules.
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基于大爆炸-大压缩优化方法的倒立摆模糊滑模参考学习控制
本文提出了一种模糊滑模参考学习控制器,该控制器为模糊滑模控制器分配最优尺度因子。正如本研究的名称所示,该方法是模糊滑模控制(FSMC)和模糊模型参考学习控制(FMRLC)的繁殖或混合组合,继承了这两种方法的优点。所提出的控制器的主要优点是,与传统的FMRLC相比,由于调用模糊滑模控制器代替标准模糊逻辑控制器,因此规则的数量大大减少。采用大爆炸-大压缩优化方法对模糊滑模控制器的输入和输出比例因子进行调整,以获得最优结果。并在倒立摆系统上进行了仿真。仿真结果表明,FS-MRLC在模糊规则数量最少的情况下具有较好的鲁棒性。
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