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Neural Learning In Automatic Fuzzy Systems Synthesis

机译:自动模糊系统合成中的神经学习

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This paper presents a self-organizing neural structure with neuron relocation features. The neural net is used in the automatic synthesis of a Dynamic Self-Organizing Fuzzy System (DSOFS). The neural relocation learning provides a way to add, adapt and/or remove the fuzzy rules and the reference fuzzy sets of the DSOFS. The neural equivalent of modifying the DSOFS rules is adding and/or disposing the neurons while learning the input output behaviour. This algorithm extends the topological orderinq concept [7,8]. A basin of attraction is supposed for every neuron (fuzzy rule) as a ground for the fuzzy reference sets construction. The DSOFS synthesis in a pattern recognition, problem is showed.
机译:本文介绍了具有神经元重定位特征的自组织神经结构。神经网络用于自动合成动态自组织模糊系统(DSOF)。神经迁移学习提供了一种添加,适应和/或删除模糊规则和DSOF的参考模糊集的方法。在学习输入输出行为的同时,修改DSOFS规则的神经等同物是在学习输入输出行为的同时添加和/或设置神经元。该算法扩展了拓扑诺源概念[7,8]。每个神经元(模糊规则)都应该是模糊参考集结构的地面的一种吸引力。在模式识别中的DSOFS合成,显示出问题。

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