首页> 外文会议>ASME biennial conference on engineering systems design and analysis;ESDA2010 >IMPROVING PERFORMANCE OF AN ARTIFICIAL NEURAL NETWORK BASED GEARBOX FAULT DIAGNOSIS SYSTEM
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IMPROVING PERFORMANCE OF AN ARTIFICIAL NEURAL NETWORK BASED GEARBOX FAULT DIAGNOSIS SYSTEM

机译:基于人工神经网络的齿轮箱故障诊断系统的性能改进

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The automatic vibration monitoring methods of gears and gearboxes due to their extensive applications in industry are improving. Hence, their vibration signal and its derived features, has been an interesting topic for researchers in this field. On the other hand, optimizing the number of vibration signal features used in the detection and diagnosis process is crucial for increasing the fault detection speed of automatic condition monitoring systems. In this paper, a system based on multiple layer perceptron artificial neural networks (MLP ANNs) is designed to diagnose different types of fault in a gearbox. Using a feature selection method, the system is optimized through eliminating unimportant features of vibration signals. This method is based on a simple and fast sensitivity evaluation process, which results in a considerable estimation, despite its simplicity. Consequently, the system's speed increases, while the classification error decreases or remains constant in some other cases. An experimental test rig data set is used to verify the effectiveness and accuracy of the mentioned method. Four different types of data which are generated through the test rig setup are: no fault condition, 5% fault (5% eroded tooth) gear, 20% eroded tooth gear and the broken tooth gear. The results verify that eliminating some input features of gear vibration signal, using this method, will increase the accuracy and detection speed of gear fault diagnosis methods. The improved systems with fewer input features and higher precision, facilitates the development of online automatic condition monitoring systems.
机译:由于齿轮和变速箱在工业中的广泛应用,自动振动监测方法正在改进。因此,它们的振动信号及其派生特性一直是该领域研究人员关注的话题。另一方面,优化在检测和诊断过程中使用的振动信号特征的数量对于提高自动状态监视系统的故障检测速度至关重要。本文设计了一种基于多层感知器人工神经网络(MLP ANN)的系统来诊断齿轮箱中不同类型的故障。使用特征选择方法,通过消除振动信号的不重要特征来优化系统。该方法基于简单而快速的灵敏度评估过程,尽管它很简单,但仍会产生可观的估计。因此,在某些其他情况下,系统的速度会提高,而分类误差会降低或保持恒定。实验试验台数据集用于验证所提方法的有效性和准确性。通过测试装置的设置生成的四种不同类型的数据是:无故障条件,5%故障(5%腐蚀齿)齿轮,20%腐蚀齿齿轮和断齿齿轮。结果证明,使用这种方法消除齿轮振动信号的某些输入特征,将提高齿轮故障诊断方法的准确性和检测速度。经过改进的系统具有较少的输入功能和较高的精度,从而促进了在线自动状态监视系统的开发。

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