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Autonomic system for updating fuzzy neural network and control system using the fuzzy neural network

机译:用于更新模糊神经网络的自主系统和使用模糊神经网络的控制系统

摘要

An autonomic system for updating a fuzzy neural network includes a process of calculating an estimated value based on fuzzy inference by using a neural network structure, wherein a parameter to be adjusted or identified by fuzzy inference and outputted from the neural network is made to correspond to coupling loads which are updated by learning, i.e., fuzzy rules and membership functions are adjusted by learning. This system is characterized in that the addition and deletion of fuzzy rules are conducted based on changes in output errors in an autonomic manner, thereby effectively obtaining appropriate numbers of fuzzy rules optimal for an object such as a vehicle engine having strong non-linearity. Fuzzy rules are formed by a combination of membership functions representing variables such as an engine speed and a throttle angle.
机译:一种用于更新模糊神经网络的自主系统,包括通过使用神经网络结构基于模糊推理来计算估计值的过程,其中使要通过模糊推理进行调整或识别并从神经网络输出的参数对应于通过学习来更新耦合载荷,即通过学习来调整模糊规则和隶属函数。该系统的特征在于,基于输出误差的变化以自主方式进行模糊规则的添加和删除,从而有效地获得对于诸如非线性较强的车辆发动机之类的对象而言最优的适当数量的模糊规则。模糊规则由隶属函数的组合构成,这些隶属函数表示变量,例如发动机转速和节气门角度。

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