Abstract

Hydrogenerators are strategic assets for power utilities. Their reliability and availability can lead to significant benefits. For decades, monitoring and diagnosis of hydrogenerators have been at the core of maintenance strategies. A significant part of generator diagnosis relies on Partial Discharge (PD) measurements, because the main cause of hydrogenerator breakdown comes from failure of its high voltage stator, which is a major component of hydrogenerators. A study of all stator failure mechanisms reveals that more than 85% of them involve the presence of PD activity. PD signal can be detected from the lead of the hydrogenerator while it is running, thus allowing for on-line diagnosis. Hydro-Quebec has been collecting more than 33 000 unlabeled PD measurement files over the last decades. Up to now, this diagnostic technique has been quantified based on global PD amplitudes and integrated PD energy irrespective of the source of the PD signal. Several PD sources exist and they all have different relative risk, but in order to recognize the nature of the PD, or its source, the judgement of experts is required. In this paper, we propose a new method based on visual data analysis to build a PD source classifier with a minimum of labeled data. A convolutional variational autoencoder has been used to help experts to visually select the best training data set in order to improve the performances of the PD source classifier.

Highlights

  • One of the main problems that all industries face is the massive high dimensionality unlabeled data

  • In this paper, we have described an innovative method based on a Convolutional Variational Autoencoder (CVAE) to build a Partial Discharge (PD) source classifier

  • We tested our method on more than 33 000 unlabeled PD measurement files collected by Hydro-Québec during the last 30 years

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Summary

Introduction

One of the main problems that all industries face is the massive high dimensionality unlabeled data. Artificial Neural Networks (ANNs) and Deep Learning (DL) are the leading machine-learning tools for intelligent condition monitoring and diagnosis used for mechanical systems. A major assumption accepted by default, is that the training and testing data are taking from same feature distribution [1]. Hydro-Québec which has an electric generating capacity of 36 GW from its 62 hydroelectric power plants, has collected a large number of measurement files. Each hydrogenerator is worth several million to tens of millions of dollars and is subject to preventive maintenance comprising both systematic and conditional maintenance.

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