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A high precision fuzzy-neural controller based on data remodification

机译:基于数据修改的高精度模糊神经控制器

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Fuzzy logic and neural networks have wide applications in intelligent systems. The research describes a high precision fuzzy neural controller design method in which a feedforward network learns fuzzy rules offline while employing an analytical approach in place of the conventional error back propagation method which can be time consuming to implement. Through repeated modifications of the system inputs, the proposed technique restores valuable information often lost during fuzzification. As a result, interpolation and data remodification properties inherently rooted in the controller significantly improve the system response.
机译:模糊逻辑和神经网络在智能系统中具有广泛的应用。该研究描述了一种高精度模糊神经控制器设计方法,其中前馈网络在采用分析方法代替可能耗时实现的传统错误反向传播方法的同时离线学习模糊规则。通过对系统输入的重复修改,所提出的技术在模糊化期间恢复了有价值的信息经常丢失。结果,控制器中固有地生根的插值和数据重新发电特性显着提高了系统响应。

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