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Diagnosis method based on topology codification and neural network applied to an industrial camshaft

机译:基于拓扑编码和神经网络的诊断方法在工业凸轮轴上的应用

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Since the last years, there is an increasing interest from the industrial sector to provide the electromechanical systems with diagnosis capabilities. In this context, this work presents a novel monitoring scheme applied to diagnose faults in the main rotatory element of an industrial packaging machine, the camshaft. The developed diagnosis method considers a coherent procedure to process the acquired measurement. First, the current signals acquired from the main motor are processed in a normalized time-frequency map. Next, the characteristics fault patterns are identified and numerically characterized. A double self-organized map structure is proposed to manage the information till compress it to just two features by means of a topology codification of the data space. Finally, a neural network based classification algorithm is used to classify the condition of the camshaft. The effectiveness of this condition monitoring scheme has been verified by experimental results obtained from industrial machinery.
机译:自最近几年以来,工业界对提供具有诊断能力的机电系统的兴趣日益浓厚。在这种情况下,这项工作提出了一种新颖的监测方案,该方案可用于诊断工业包装机的主要旋转元件(凸轮轴)中的故障。发达的诊断方法考虑了一个连贯的过程来处理所获取的测量值。首先,从主电动机获取的电流信号在归一化的时频图中进行处理。接下来,识别特征故障模式并对其进行数字化表征。提出了一种双重自组织映射结构来管理信息,直到通过数据空间的拓扑编码将信息压缩为仅两个特征为止。最后,使用基于神经网络的分类算法对凸轮轴的状态进行分类。从工业机械获得的实验结果已经验证了该状态监视方案的有效性。

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