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One method of translating the fuzzy rules into neural network of the fault diagnosis system

机译:一种将模糊规则转化为故障诊断系统神经网络的一种方法

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Based on the analysis of fuzzy rules and the certainty factor transitive algorithm of the fault diagnosis system, one method of translating the fuzzy rules into an artificial neural network is researched. According to the fuzzy rules and its certainty factor transitive algorithm, the teacher samples of the neural network can be obtained. The weights and thresholds matrix of the neural network can be obtained by samples learning, so the new fault samples can be diagnosed. According to the diagnosis result obtained from the testing samples, this method can diagnose rapidly, it also has strong generalization ability and high accuracy, at the same time the method can eliminate the conflict in the reasoning process.
机译:基于对故障诊断系统的模糊规则和确定性因子传递算法的分析,研究了一种将模糊规则转化为人工神经网络的一种方法。根据模糊规则及其确定性因子传递算法,可以获得神经网络的教师样本。通过样本学习可以获得神经网络的权重和阈值矩阵,因此可以诊断新的故障样本。根据从测试样品获得的诊断结果,该方法可以迅速诊断,它还具有强大的泛化能力和高精度,同时该方法可以消除推理过程中的冲突。

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