利用深度卷积网络的迁移学习分析 PMSM 短路检测系统

M. Skowron
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引用次数: 0

摘要

现代永磁同步电机(PMSM)诊断系统现已与深度神经网络等先进的人工智能技术相结合。然而,此类系统的设计主要集中在选定的损坏类型或额定参数范围有限的电机类型上。迁移学习(TL)思想的应用允许全自动提取通用故障症状,可用于各种诊断任务。在研究中,考虑了在 PMSM 定子绕组故障检测系统中使用 TL 思想的可能性。该方法基于 PMSM 目标诊断应用中为其他类型电机或数学模型确定的定子缺陷特征症状。本文比较了使用深度卷积网络 TL 的 PMSM 电机匝间短路故障检测系统。由于使用卷积神经网络(CNN)对直相电流信号进行分析,因此可以确保高精度的故障检测,同时缩短对故障发生的反应时间。所使用的技术基于使用预训练结构的权重系数矩阵,该矩阵可根据不同的诊断信息源进行调整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of PMSM Short-Circuit Detection Systems Using Transfer Learning of Deep Convolutional Networks
Modern permanent magnet synchronous motor (PMSM) diagnostic systems are now combined with advanced artificial intelligence techniques, such as deep neural networks. However, the design of such systems is mainly focussed on a selected type of damage or motor type with a limited range of rated parameters. The application of the idea of transfer learning (TL) allows the fully automatic extraction of universal fault symptoms, which can be used for various diagnostic tasks. In the research, the possibility of using the TL idea in the implementation of PMSM stator windings fault-detection systems was considered. The method is based on the characteristic symptoms of stator defects determined for another type of motor or mathematical model in the target diagnostic application of PMSM. This paper presents a comparison of PMSM motor inter-turn short circuit fault detection systems using TL of a deep convolutional network. Due to the use of direct phase current signal analysis by the convolutional neural network (CNN), it was possible to ensure high accuracy of fault detection with simultaneously short reaction time to occurring fault. The technique used was based on the use of a weight coefficient matrix of a pre-trained structure, the adaptation of which was carried out for different sources of diagnostic information.
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