Machine Learning based Smart Electricity Monitoring & Fault Detection for Smart City 4.0 Ecosystem

- Authors: Subhash Mondal1, Suharta Banerjee2, Sugata Ghosh3, Adrija Dasgupta4, Diganta Sengupta5
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View Affiliations Hide Affiliations1 Department of Computer Science and Engineering, Meghnad Saha Institute of Technology, Kolkata, India 2 Department of Computer Science and Engineering, Meghnad Saha Institute of Technology, Kolkata, India 3 Department of Computer Science and Engineering, Meghnad Saha Institute of Technology, Kolkata, India 4 Department of Computer Science and Engineering, Meghnad Saha Institute of Technology, Kolkata, India 5 Department of Computer Science and Engineering, Meghnad Saha Institute of Technology, Kolkata, India
- Source: Data Science and Interdisciplinary Research: Recent Trends and Applications , pp 90-102
- Publication Date: September 2023
- Language: English
Growing electricity needs among the vast majority of the population seconded by a voluminous increase in electrical appliances have led to a huge surge in electric power demands. With thediminishing unit price of electric meters and increase of loading, it has been observed that a certain amount of electric meters generate faulty readings after exhaustive usage. This results in erroneous meter readings thereby affecting the billings. We propose a fault detecting learning algorithm that is trained by early meter readings and compares the actual meter reading (AMR) with the predicted meter reading (PMR). The decision matrix generates an alarm if |PMR-AMR| gt;T; where T equals the threshold limit. T itself is decided by the learning algorithm depending upon the meter variance. Moreover, our system also detects if there is any power theft as such an action would result in a sudden rise in AMR. The learning algorithm deploys six binary classifiers which reflect an accuracy of 98.24% for the detection module and an error rate of 1.26% for the prediction module. nbsp;
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