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Local search for learning algorithm in adaptive fuzzy inference system

机译:自适应模糊推理系统中的局部搜索学习算法

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In this paper, a local search for learning mechanism was proposed to improve the adaptive fuzzy inference system. The adaptive fuzzy inference system is a complementary technology based on the concept of fuzzy theory, if-then rules and fuzzy reasoning. The learning or training capability of this system is provided by the neural network through a learning mechanism. The learning algorithm we have proposed in this paper is based on the local search. The simulation is carried out based on the famous Mackey-Glass time series. Our results show that the local research for learning algorithm in adaptive fuzzy inference system is useful and effective because it requires less memory and it is able to overcome the disadvantages of the gradient descent. This demonstrates that the local search is very suitable for learning mechanism in the adaptive fuzzy inference system.
机译:本文提出了一种局部搜索的学习机制,以改进自适应模糊推理系统。自适应模糊推理系统是基于模糊理论,if-then规则和模糊推理概念的补充技术。该系统的学习或训练能力由神经网络通过学习机制提供。我们在本文中提出的学习算法是基于局部搜索的。该模拟是基于著名的Mackey-Glass时间序列进行的。我们的结果表明,自适应模糊推理系统中对学习算法的局部研究是有用和有效的,因为它需要较少的内存并且能够克服梯度下降的缺点。这表明本地搜索非常适合于自适应模糊推理系统中的学习机制。

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