Genetic Artificial Hummingbird Algorithm-Support Vector Machine for Timely Power Theft Detection.

Autor: Gbafore E; Department of Electrical and Information Engineering University of Nairobi, Nairobi 301971, Kenya., Segera DR; Department of Electrical and Information Engineering University of Nairobi, Nairobi 301971, Kenya., Kiruki CRM; Department of Electrical and Information Engineering University of Nairobi, Nairobi 301971, Kenya.
Jazyk: angličtina
Zdroj: TheScientificWorldJournal [ScientificWorldJournal] 2024 Sep 02; Vol. 2024, pp. 5568922. Date of Electronic Publication: 2024 Sep 02 (Print Publication: 2024).
DOI: 10.1155/2024/5568922
Abstrakt: Utilities face serious obstacles from power theft, which calls for creative ways to maintain income and improve operational effectiveness. This study presents a novel hybrid genetic artificial hummingbird algorithm-support vector machine classifier to detect power theft. The proposed algorithm combines the artificial hummingbird algorithm exploration phase with the genetic algorithm's mutation and crossover operators, to optimize the support vector machine's hyperparameters and categorize users as fraudulent or nonfraudulent. It utilizes 7,270 rows of labeled historical electricity consumption data from the Liberia Electricity Corporation over 15 independent runs. The methodology entailed data preprocessing, data split into training, validation, and testing sets in an 80-10-10 ratio, z-score normalization, optimization, training, validation, testing, and computation of six evaluation metrics. Its performance is compared with 13 metaheuristic classifiers and the conventional support vector machine. Findings indicate that the genetic artificial hummingbird algorithm-support vector machine outperforms the 13 rivals and the standard support vector machine in the six assessment measures with an accuracy score of 0.9986, precision of 0.9971, f _score of 0.9986, recall of 1, Matthews correlation coefficient of 0.9972, and g _mean of 0.9987. Furthermore, 90% of the time, Wilcoxon rank-sum tests revealed statistically significant differences between the algorithm and its rivals, demonstrating its superiority. The average run time is 4,656 seconds, the 3 rd highest among its competitors. Despite the time complexity trade-off, its excellent performance on the unimodal and multimodal benchmark test functions, placing joint best in 7 out of 7 and 5 out of 6, respectively, provides important insights into the model's capacity to balance exploitation and exploration, improve local search, and avoid becoming stuck in the local optimum. These findings address important metaheuristic optimization gaps highlighting the model's potential for power theft detection.
Competing Interests: The authors declare that they have no conflicts of interest.
(Copyright © 2024 Emmanuel Gbafore et al.)
Databáze: MEDLINE