Fault detection of contactor using acoustic monitoring

Author:

Inoue Katsuhito1ORCID,Stewart Edward1,Entezami Mani1

Affiliation:

1. The University of Birmingham, Birmingham, UK

Abstract

Recently, condition monitoring methods using the sound of the machine have attracted attention. Since approaching high voltage equipment increases the risk of electrocuting, non-contact data acquisition is desirable. Most of the research targets of acoustic monitoring are rotating machines and it is not clear whether it is effective for machines that switch between two states, such as contactors and circuit breakers. In this work, several investigations have been carried out on the acoustic condition monitoring of contactor. The Mel-frequency cepstrum coefficients (MFCCs) were obtained from the sound data of the contactors under normal and simulated fault conditions. Support Vector Machine (SVM) was trained with MFCCs and found that it could detect and diagnose contactor faults with high accuracy.

Funder

university of birmingham

Publisher

SAGE Publications

Subject

Mechanical Engineering

Reference31 articles.

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2. METI Kinki Branch of Chubu Kinki Industrial Safety and Inspection Department. Accident/disaster information, https://www.safety-kinki.meti.go.jp/jikosaigai_jirei.html (accessed 19 October 2021).

3. Indianapolis Power & Light Company. Root cause analysis for center substation 138 kV circuit breaker event onJanuary 16, 2012, https://www.in.Gov/iurc/files/Center_Substation_Root_Cause_Analysis.pdf (2012, accessed 12 August 2021).

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