A novel two‐stage method to detect non‐technical losses in smart grids

Author:

Badawi Sufian A.1,Takruri Maen2ORCID,Al‐Bashayreh Mahmood G.1,Salameh Khouloud3,Humam Jumana3,Assaf Samar3,Aziz Mohammad R.4ORCID,Albadawi Ameera5,Guessoum Djamel26,ElBadawi Isam7,Al‐Hattab Mohammad8ORCID

Affiliation:

1. Department of Computer Science Faculty of Information Technology Applied Science Private University Amman Jordan

2. Center of Information Communication and Networking Education and Innovation (ICONET) American University of Ras Al Khaimah Ras Al Khaimah United Arab Emirates

3. Department of Computer Science and Engineering American University of Ras Al Khaimah Ras Al Khaimah United Arab Emirates

4. Department of Electrical Engineering College of Engineering American University of Sharjah Sharjah United Arab Emirates

5. Department of Computer Science College of Computing and Informatics University of Sharjah Sharjah United Arab Emirates

6. Ecole de Technologie Superieure Electrical Engineering Department Montreal Quebec Canada

7. Industrial Engineering Department College of Engineering University of Ha'il Ha'il Saudi Arabia

8. College of Engineering Al Ain University Al Ain UAE

Abstract

AbstractNumerous strategies have been proposed for the detection and prevention of non‐technical electricity losses due to fraudulent activities. Among these, machine learning algorithms and data‐driven techniques have gained prominence over traditional methodologies due to their superior performance, leading to a trend of increasing adoption in recent years. A novel two‐step process is presented for detecting fraudulent Non‐technical losses (NTLs) in smart grids. The first step involves transforming the time‐series data with additional extracted features derived from the publicly available State Grid Corporation of China (SGCC) dataset. The features are extracted after identifying abrupt changes in electricity consumption patterns using the sum of finite differences, the Auto‐Regressive Integrated Moving Average model, and the Holt‐Winters model. Following this, five distinct classification models are used to train and evaluate a fraud detection model using the SGCC dataset. The evaluation results indicate that the most effective model among the five is the Gradient Boosting Machine. This two‐step approach enables the classification models to surpass previously reported high‐performing methods in terms of accuracy, F1‐score, and other relevant metrics for non‐technical loss detection.

Publisher

Institution of Engineering and Technology (IET)

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