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An Efficient boosted C5.0 decision-tree-based classification approach for detecting non-technical losses in power utilities

Saeed, Muhammad Salman and Mustafa, Mohd. Wazir and Ullah Sheikh, Usman and Ahmed Jumani, Touqeer and Khan, Ilyas and Atawneh, Samer and Hamadneh, Nawaf N. (2020) An Efficient boosted C5.0 decision-tree-based classification approach for detecting non-technical losses in power utilities. Energies, 13 (12). p. 3242. ISSN 1996-1073

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Official URL: http://dx.doi.org/10.3390/en13123242

Abstract

Electricity fraud in billing are the primary concerns for Distribution System Operators (DSO). It is estimated that billions of dollars are wasted annually due to these illegal activities. DSOs around the world, especially in underdeveloped countries, still utilize conventional time consuming and inefficient methods for Non-Technical Loss (NTL) detection. This research work attempts to solve the mentioned problem by developing an efficient energy theft detection model in order to identify the fraudster customers in a power distribution system. The key motivation for the present study is to assist the DSOs in their fight against energy theft. The proposed computational model initially utilizes a set of distinct features extracted from the monthly consumers' consumption data, obtained from Multan Electric Power Company (MEPCO) Pakistan, to segregate the honest and the fraudulent customers. The Pearson's chi-square feature selection algorithm is adopted to select the most relevant features among the extracted ones. Finally, the Boosted C5.0 Decision Tree (DT) algorithm is used to classify the honest and the fraudster consumers based on the outcomes of the selected features. To validate the superiority of the proposed NTL detection approach, its performance is matched with that of few state-of-the-art machine learning algorithms (one of most exciting recent technologies in Artificial Intelligence), like Random Forest (RF), Support Vector Machine (SVM), Artificial Neural Network (ANN) and Extreme Gradient Bossting (XGBoost). The proposed NTL detection method provides an accuracy of 94.6%, Sensitivity of 78.1%, Specificity of 98.2%, F1 score 84.9% and Precision of 93.2% which are significantly higher than that of the same for the above-mentioned algorithms.

Item Type:Article
Uncontrolled Keywords:Artificial intelligence, Power utilities
Subjects:T Technology > TK Electrical engineering. Electronics Nuclear engineering
Divisions:Electrical Engineering
ID Code:90888
Deposited By: Widya Wahid
Deposited On:31 May 2021 13:22
Last Modified:31 May 2021 13:22

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