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A maximum entropy radial basis function network based neuro-fuzzy controller

机译:基于最大熵径向基函数网络的神经模糊控制器

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This paper presents a systematic approach to constructing a self-organizing fuzzy controller. The proposed controller is built on a neuro-fuzzy system consisting of a maximum entropy self-organizing net (MESON) and a radial basis function network (RBFN). We develop the corresponding self-organizing algorithms. MESON, a new fuzzy clustering neural network model, combines the ideas of fuzzy membership values for learning rates based on the maximum entropy principle, and the structure and update rules of the Kohonen clustering network (KCN). The strategy proposed in our approach for the update rules of KCN is derived from the fixed-point iteration for the solution of nonlinear equations. This model eliminates the sensitivity to the choice of the initial configuration and yields a dynamic fuzzy clustering solution. MESON is used for the generation of fuzzy rules as well as the construction of RBFN for fuzzy inference.
机译:本文提出了一种构建自组织模糊控制器的系统方法。所提出的控制器基于神经模糊系统,该系统由最大熵自组织网络(MESON)和径向基函数网络(RBFN)组成。我们开发了相应的自组织算法。 MESON是一种新的模糊聚类神经网络模型,结合了基于最大熵原理的模糊隶属度值用于学习率的思想,以及Kohonen聚类网络(KCN)的结构和更新规则。我们的方法中提出的KCN更新规则所提出的策略是从定点迭代中得出的,用于求解非线性方程。该模型消除了对初始配置选择的敏感性,并产生了动态模糊聚类解决方案。 MESON用于生成模糊规则,以及用于模糊推理的RBFN的构造。

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