Abstract

Power companies are responsible for producing and transferring the required amount of electricity from grid stations to individual households. Many countries suffer huge losses in billions of dollars due to non-technical loss (NTL) in power supply companies. To deal with NTL, many machine learning classifiers have been employed in recent time. However, few has been studied about the performance evaluation metrics that are used in NTL detection to evaluate how good or bad the classifier is in predicting the non-technical loss. This paper first uses three classifiers: random forest, K-nearest neighbors and linear support vector machine to predict the occurrence of NTL in a real dataset of an electric supply company containing approximately 80,000 monthly consumption records. Then, it computes 14 performance evaluation metrics across the three classifiers and identify the key scientific relationships between them. These relationships provide insights into deciding which classifier can be more useful under given scenarios for NTL detection. This work can be proved to be a baseline not only for the NTL detection in power industry but also for the selection of appropriate performance evaluation metrics for NTL detection.

Highlights

  • Power supply companies are considered the backbone for any country

  • The results show that optimized fuzzy logic and support vector machine (SVM) outperformed Boolean rules

  • On the basis of the results obtained from testing, different performance evaluation metrics are calculated which form a strong foundation in identifying different criterion for the selection of suitable classifiers for non-technical losses (NTL) detection

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Summary

Introduction

Power supply companies are considered the backbone for any country. India loses 4.5 billion USD every year on account of NTL. This loss can range upto 50% of the total electricity produced in developing countries (McDaniel and McLaughlin 2009). The developed countries, including USA and UK, suffer a loss of $1–$6 billion annually (Alam et al 2004). May it be unintentional or an intentional NTL, any power supply company wants to minimize it by first detecting it and addressing it properly.

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