Anomaly Detection in Power Generation Plants Using Machine Learning and Neural Networks

Mulongo, Jecinta and Atemkeng, Marcellin and Ansah-Narh, Theophilus and Rockefeller, Rockefeller and Nguegnang, Gabin Maxime and Garuti, Marco Andrea (2020) Anomaly Detection in Power Generation Plants Using Machine Learning and Neural Networks. Applied Artificial Intelligence, 34 (1). pp. 64-79. ISSN 0883-9514

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Abstract

The availability of constant electricity supply is a crucial factor to the performance of any industry. Nevertheless, the unstable supply of electricity in Cameroon has led to countless periods of electricity load shedding, hence, making the management of the telecom industry to fall on backup power supply such as diesel generators. The fuel consumption of these generators remain a challenge due to some perturbations in the mechanical fuel level gauges and lack of maintenance at the base stations resulting to fuel pilferage. In order to overcome these effects, we detect anomalies in the recorded data by learning the patterns of the fuel consumption using four classification techniques namely; support vector machines (SVM), K-Nearest Neighbors (KNN), Logistic Regression (LR), and MultiLayer Perceptron (MLP) and then compare the performance of these classification techniques on a test data. In this paper, we show the use of supervised machine learning classification based techniques in detecting anomalies associated with the fuel consumed dataset from TeleInfra base stations using the generator as a source of power. Here, we perform the normal feature engineering, selection, and then fit the model classifiers to obtain results and finally, test the performance of these classifiers on a test data. The results of this study show that MLP has the best performance in the evaluation measurement recording a score of 96%
in the K-fold cross validation test. In addition, because of class imbalance in the observation, we use the precision-recall curve instead of the ROC curve and registered the probability of the Area Under Curve (AUC) as 0.98
.

Item Type: Article
Subjects: Librbary Digital > Computer Science
Depositing User: Unnamed user with email support@librbarydigit.com
Date Deposited: 19 Jun 2023 09:49
Last Modified: 14 Sep 2024 04:39
URI: http://info.openarchivelibrary.com/id/eprint/1003

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