Machine learning‐assisted anomaly detection for power line components: A case study in Pakistan

Author:

Basit Abdul1,Manzoor Habib Ullah12ORCID,Akram Muhammad1,Gelani Hasan Erteza1,Hussain Sajjad2

Affiliation:

1. Department of Electrical Engineering University of Engineering and Technology Lahore Pakistan

2. James Watt School of Engineering University of Glasgow Glasgow UK

Abstract

AbstractA continuous supply of electricity is necessary to maintain an acceptable standard of life, and the power distribution system's overhead line components play a crucial role in this matter. In Pakistan, identifying defective parts often necessitates human involvement. An unmanned aerial vehicle was used to gather a collection of 10,343 photos to automate this procedure. Using supervised and unsupervised machine learning methods, a number of automated anomaly detection systems were created. Support vector machine, random forest, VGG16, and ResNet50 were used as supervised machine learning models, and a convolutional auto‐encoder was used as the unsupervised machine learning model. VGG16 achieved the best accuracy of 99.00% while random forest achieved the worst accuracy of 72.49%. The convolutional auto‐encoder was successful in distinguishing between normal and abnormal components. The aforementioned machine learning models can be put on unmanned aerial vehicles to immediately identify defective parts.

Publisher

Institution of Engineering and Technology (IET)

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