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Self-organizing map approach for classification of mechanical and rotor faults on induction motors

机译:自组织映射方法用于感应电动机的机械故障和转子故障分类

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Two neural network-based schemes for fault diagnosis and identification on induction motors are presented in this paper. Fault identification is performed using self-organizing maps neural networks. The first scheme uses the information of the motor phase current for feeding the network, in order to perform the diagnosis of load unbalance and shaft misalignment faults. The network is trained using data generated through the simulation of a motor-load system model, which allows including the effects of load unbalance and shaft misalignment. The second scheme is based on the motor’s active and reactive instantaneous powers, in order to detect and diagnose faults whose characteristic frequencies are very close each other, such as broken rotor bars and oscillating loads. This network is trained using data obtained through the experimental measurements. Additional experimental data are later applied to both networks in order to validate the proposal. It is demonstrated that the proposed strategies are able to correctly identify, both unbalanced and misaligned load, as well as broken bars and low-frequency oscillating loads, thus avoiding the need for an expert to perform the task.
机译:提出了两种基于神经网络的异步电动机故障诊断和识别方案。使用自组织映射神经网络执行故障识别。第一种方案使用电动机相电流的信息为网络供电,以便执行负载不平衡和轴未对准故障的诊断。使用通过模拟电机负载系统模型生成的数据来训练网络,该数据可以包括负载不平衡和轴未对准的影响。第二种方案基于电动机的有功和无功瞬时功率,以检测和诊断特征频率彼此非常接近的故障,例如转子条断裂和负载振荡。使用通过实验测量获得的数据来训练该网络。后来将更多实验数据应用于两个网络,以验证提案。事实证明,所提出的策略能够正确地识别不平衡和未对准的负载,以及断条和低频振荡负载,从而避免了由专家来执行任务。

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