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Attention Recurrent Neural Network-Based Severity Estimation Method for Interturn Short-Circuit Fault in Permanent Magnet Synchronous Machines

机译:注意力复发性神经网络的严重性估算方法,用于永磁同步机中干扰短路故障

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摘要

With the development of smart factories, deep learning, which automatically extracts features and diagnoses faults, has become an important approach for fault diagnosis. In this article, a novel interturn short-circuit fault (ISCF) diagnosis approach using an attention-based recurrent neural network is proposed. An encoder–decoder architecture using an attention mechanism diagnoses the ISCF by estimating a fault indicator that directly reflects the severity of the fault, using currents and rotational speed signals as inputs. The attention mechanism helps the decoding process in accurate diagnosis and solves the long-term dependence problem of the encoder–decoder structure. The proposed algorithm uses only three-phase current and rotational speed as the inputs to evaluate the severity of the ISCF and enable early stage diagnosis of ISCF. The diagnosis of ISCF is achieved in various operating points and fault conditions, and no additional sensors, such as voltage and vibration sensors, are required. Experimental results for various operating and fault conditions demonstrate that the proposed method effectively diagnoses ISCFs.
机译:随着智能工厂的发展,深度学习,自动提取特征和诊断故障,已成为故障诊断的重要方法。在本文中,提出了一种新颖的,使用基于关注的经常性神经网络的新型干扰短路故障(ISCF)诊断方法。使用注意机制的编码器解码器架构通过估计直接反映故障的严重性的故障指示器,使用电流和转速信号作为输入来诊断ISCF。注意机制有助于解码过程准确诊断并解决编码器解码器结构的长期依赖性问题。所提出的算法仅使用三相电流和转速作为评估ISCF的严重程度的输入,并使ISCF的早期诊断能够。在各种操作点和故障条件下实现了ISCF的诊断,并且不需要额外的传感器,例如电压和振动传感器。各种操作和故障条件的实验结果表明,所提出的方法有效地诊断了ISCFS。

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