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Rough Sets Based Hybrid Intelligent Fault Diagnosis for Precision Test Turntable

机译:基于粗集的精密测试转台混合智能故障诊断

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This paper is concerned with fault diagnosis for the precision test turntable (PTT). Using rough set theory combine with neural network, a forward greedy reduce algorithm based on rough set is presented to pre-process the raw fault information. By calculating the dependence and significance of the condition, the core attributes are gained and finally the reduction of the raw fault information is obtained. The worst case of computational complexity of reduction and the total computational times of the algorithm are presented. The reduced decision table will be used by the neural network as the training samples. Rough set method can effectively decrease the dimension of the information space. In this algorithm, the training samples for the neural network can be reduced dramatically, and the training time of the network is decreased. The method can detect the composed faults while keeping good robustness, and can reduce the false alarm rate and the missing alarm rate of the fault diagnosis system effectively.
机译:本文涉及精密测试转台(PTT)的故障诊断。结合粗糙集理论和神经网络,提出了一种基于粗糙集的前向贪婪约简算法,对原始故障信息进行预处理。通过计算条件的依存性和重要性,获得了核心属性,最后得到了原始故障信息的约简。提出了减少计算复杂度的最坏情况以及该算法的总计算时间。简化后的决策表将被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。在该算法中,可以大大减少神经网络的训练样本,并减少了网络的训练时间。该方法能够在保持良好鲁棒性的同时,对组合的故障进行检测,可以有效降低故障诊断系统的误报率和漏报率。

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