This study presents a novel feature-engineered–natural gradient descent ensemble-boosting (NGBoost) machine-learning framework for detecting fraud in power consumption data. The proposed framework was sequentially executed in three stages: data pre-processing, feature engineering, and model evaluation. It utilized the random forest algorithm-based imputation technique initially to impute the missing data entries in the acquired smart meter dataset. In the second phase, the majority weighted minority oversampling technique (MWMOTE) algorithm was used to avoid an unequal distribution of data samples among different classes. The time-series feature-extraction library and whale optimization algorithm were utilized to extract and select the most...
The role of electricity theft detection (ETD) is critical to maintain cost-efficiency in smart grids...
Several approaches have been proposed to detect any malicious manipulation caused by electricity fra...
The invent of advanced metering infrastructure (AMI) opens the door for a comprehensive analysis of ...
This study presents a novel feature-engineered–natural gradient descent ensemble-boosting (NGBoost) ...
This paper presents a novel supervised machine learning-based electric theft detection approach usin...
Electricity theft is a primary concern for utility providers, as it leads to substantial financial l...
This study evaluated the nature-inspired optimization algorithms to improve classification involving...
When analyzing smart metering data, both reading errors and frauds can be identified. The purpose of...
This paper presents a novel, sequentially executed supervised machine learning-based electric theft ...
Non-Technical Losses (NTLs) in electrical utilities, primarily related to electrical theft, signific...
In the electrical domain, a non-technical loss often refers to energy used but not paid for by a con...
Machine learning algorithms applied towards detection of non-technical losses are increasingly becom...
Theft of electricity poses a significant risk to the public and is the most costly non-technical los...
Modern power grids depend on the Advanced Metering Infrastructure (AMI) for consumption monitoring, ...
Smart meters are key elements of a smart grid. These data from Smart Meters can help us analyze ener...
The role of electricity theft detection (ETD) is critical to maintain cost-efficiency in smart grids...
Several approaches have been proposed to detect any malicious manipulation caused by electricity fra...
The invent of advanced metering infrastructure (AMI) opens the door for a comprehensive analysis of ...
This study presents a novel feature-engineered–natural gradient descent ensemble-boosting (NGBoost) ...
This paper presents a novel supervised machine learning-based electric theft detection approach usin...
Electricity theft is a primary concern for utility providers, as it leads to substantial financial l...
This study evaluated the nature-inspired optimization algorithms to improve classification involving...
When analyzing smart metering data, both reading errors and frauds can be identified. The purpose of...
This paper presents a novel, sequentially executed supervised machine learning-based electric theft ...
Non-Technical Losses (NTLs) in electrical utilities, primarily related to electrical theft, signific...
In the electrical domain, a non-technical loss often refers to energy used but not paid for by a con...
Machine learning algorithms applied towards detection of non-technical losses are increasingly becom...
Theft of electricity poses a significant risk to the public and is the most costly non-technical los...
Modern power grids depend on the Advanced Metering Infrastructure (AMI) for consumption monitoring, ...
Smart meters are key elements of a smart grid. These data from Smart Meters can help us analyze ener...
The role of electricity theft detection (ETD) is critical to maintain cost-efficiency in smart grids...
Several approaches have been proposed to detect any malicious manipulation caused by electricity fra...
The invent of advanced metering infrastructure (AMI) opens the door for a comprehensive analysis of ...