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Wear Fault Diagnosis of Machinery Based on Neural Networks and Gray Relationships

机译:基于神经网络和灰色关联度的机械磨损故障诊断

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摘要

In this paper, the regular characteristic of wear particles related to fault type of machines based on condition monitoring of reciprocal machinery is discussed. The typical wear particles spectrum is established according to the equipment structure, friction and wear rule and the characteristic of wear particles; The identification technology of wear particles is proposed based on neural networks and a gray relationship; an intelligent wear particles identification system is designed. The diagnosis example shows that this system can promote the accuracy and the speed of wear particles identification.
机译:本文研究了基于往复机械状态监测的与机械故障类型有关的磨粒规律特征。根据设备结构,摩擦磨损规律和磨损颗粒的特性建立典型的磨损颗粒谱。提出了一种基于神经网络和灰色关联的磨损颗粒识别技术。设计了一种智能的磨粒识别系统。诊断实例表明,该系统可以提高磨损颗粒识别的准确性和速度。

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