[HTML][HTML] Data-Driven Machine Learning Methods for Nontechnical Losses of Electrical Energy Detection: A State-of-the-Art Review

A Pazderin, F Kamalov, PY Gubin, M Safaraliev… - Energies, 2023 - mdpi.com
Nontechnical losses of electrical energy (NTLEE) have been a persistent issue in both the
Russian and global electric power industries since the end of the 20th century. Every year …

AI Techniques in Detection of NTLs: A Comprehensive Review

R Yadav, M Yadav, Ranvijay, Y Sawle… - … Methods in Engineering, 2024 - Springer
In the operation of power grid, worldwide, non-technical losses (NTLs) occur in a massive
amount of proportion which is observed up to 40% of the total electric transmission and …

An attention-based wide and deep CNN with dilated convolutions for detecting electricity theft considering imbalanced data

R Xia, Y Gao, Y Zhu, D Gu, J Wang - Electric Power Systems Research, 2023 - Elsevier
For the increasingly serious phenomenon of electricity theft, many researchers are trying to
detect it. Traditional detection methods rely on physical inspection, which has low detection …

[PDF][PDF] COMSATS University Islamabad

M Ali, B Tariq - 2022 - researchgate.net
1 Energy management and efficient asset utilization play an important role in the economic
development of a country. The electricity produced at the power station faces two types of …

[HTML][HTML] Detecting nontechnical losses in smart meters using a MLP-GRU deep model and augmenting data via theft attacks

B Kabir, U Qasim, N Javaid, A Aldegheishem, N Alrajeh… - Sustainability, 2022 - mdpi.com
The current study uses a data-driven method for Nontechnical Loss (NTL) detection using
smart meter data. Data augmentation is performed using six distinct theft attacks on benign …

Using machine learning ensemble method for detection of energy theft in smart meters

AI Kawoosa, D Prashar, M Faheem… - IET Generation …, 2023 - Wiley Online Library
Electricity theft is a primary concern for utility providers, as it leads to substantial financial
losses. To address the issue, a novel extreme gradient boosting (XGBoost)‐based model …

[HTML][HTML] Deep learning-based meta-learner strategy for electricity theft detection

F Shehzad, Z Ullah, M Alhussein… - Frontiers in Energy …, 2023 - frontiersin.org
Electricity theft damages power grid infrastructure and is also responsible for huge revenue
losses for electric utilities. Integrating smart meters in traditional power grids enables real …

[HTML][HTML] A deep learning technique Alexnet to detect electricity theft in smart grids

N Khan, M Amir Raza, D Ara, S Mirsaeidi… - Frontiers in Energy …, 2023 - frontiersin.org
Electricity theft (ET), which endangers public safety, creates a problem with the regular
operation of grid infrastructure and increases revenue losses. Numerous machine learning …

A self-decision ant colony clustering algorithm for electricity theft detection

Z Yang, L Liu, N Li, H Li - Engineering Applications of Artificial Intelligence, 2024 - Elsevier
The load data features of some electricity-theft consumers during the theft period are similar
to those of normal consumers, making these electricity-theft consumers outliers from the …

Exploiting machine learning to tackle peculiar consumption of electricity in power grids: A step towards building green smart cities

A Ali, L Khan, N Javaid, M Aslam… - IET Generation …, 2024 - Wiley Online Library
The increasing demand for electricity in daily life highlights the need for Smart Cities (SC) to
use energy efficiently. Both technical and Non‐Technical Losses (NTL), particularly those …