首页> 外文会议>International Conference on Signal Processing(ICSP'06); 20061116-20; Guilin(CN) >A Fault Diagnosis Method Combined Neural Network with Rough Set
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A Fault Diagnosis Method Combined Neural Network with Rough Set

机译:神经网络与粗糙集相结合的故障诊断方法

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The neural network combined with the rough set theory is used to perform fault diagnosis tasks of the Self-propelled Gun(SPG). We employ a feature extraction algorithm based on rough set to pre-process the raw fault information that would be used by neural network as the training samples. Rough set method can effectively decrease the dimension of the information space. Using this algorithm, the training samples for the neural network can be reduced dramatically, and the training time of the network is decreased. The neural networks adopted were of the feed-forward variety with one hidden layer. They were trained using back-propagation. The method can reduce the false alarm rate and missing alarm rate of the fault diagnosis system effectively, and can detect the composed faults while keep good robustness.
机译:结合粗糙集理论的神经网络用于执行自行火炮(SPG)的故障诊断任务。我们采用基于粗糙集的特征提取算法对原始故障信息进行预处理,以供神经网络用作训练样本。粗糙集方法可以有效地减小信息空间的维数。使用该算法,可以大大减少神经网络的训练样本,并减少网络的训练时间。所采用的神经网络是具有一层隐藏层的前馈类型。他们接受了反向传播训练。该方法可以有效降低故障诊断系统的误报率和漏报率,在保持良好鲁棒性的同时,可以检测出复合故障。

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