Abstract

Power semiconductor devices in the power converters used for motor drives are susceptible to wear-out and failure, especially when operated in harsh environments. Therefore, detection of degradation of power devices is crucial for ensuring the reliable performance of power converters. In this paper, a deep learning approach for online classification of the health states of the snubber resistors in the Insulated Gate Bipolar Transistors (IGBTs) in a three-phase Brushless DC (BLDC) motor drive is proposed. The method can locate one out of the six IGBTs experiencing a snubber resistor degradation problem by measuring the voltage waveforms of the three shunt resistors using voltage sensors. The range of the degradation of the snubber resistors for successful classification is also investigated. The off-the-shelf deep Convolutional Neural Network (CNN) architecture ResNet50 is used for transfer learning to determine which snubber resistor has degraded. The dataset for evaluating the above classification scheme of IGBT degradation is obtained by measuring the shunt voltage waveforms with varying snubber resistance and reference current. Then, the three-phase voltage waveforms are converted into greyscale images and RGB spectrogram images, which are later fed into the deep CNN. Experiments are carried out on the greyscale image dataset and the spectrogram image dataset using four-fold cross-validation. The results show that the proposed scheme can classify seven classes (one class for normal condition and six classes for abnormal condition in one of the six IGBTs in a three-phase BLDC drive) with over 95% average accuracy within a specific range of snubber resistance. Using grayscale images and using spectrogram-based RGB images yields similar accuracy.

Highlights

  • Brushless DC (BLDC) motors have been widely used in a large spectrum of consumer electric applications for their merits such as high efficiency and low maintenance cost [1,2,3,4]

  • In the BLDC drive system, the power converter plays a vital role in transporting energy between the power source and the motor

  • The reliability of the power converter is of particular concern, since the power devices in the converter are considered vulnerable parts and prone to failures [5,6,7,8,9]

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Summary

Introduction

Brushless DC (BLDC) motors have been widely used in a large spectrum of consumer electric applications for their merits such as high efficiency and low maintenance cost [1,2,3,4]. With the vast development of artificial intelligence, deep learning algorithms have been used in numerous applications [17,18,19], and have been introduced in monitoring power converters [20,21,22,23] Even though these knowledge-based methods usually require a huge amount of data, they are receiving more and more attention when the explicit models or the signal patterns of a system are not available straightforward. A deep learning-based online classification scheme to identify which Insulated Gate Bipolar Transistors (IGBT) has degraded snubber resistor in the power converter for a three-phase BLDC motor drive is proposed.

Dataset
Findings
Deep CNN Architecture
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