Optimising energy distribution and detecting vulnerabilities in networks using artificial intelligence

The aim of the study was to explore and analyse the potential of applying artificial intelligence for optimising energy distribution processes and identifying vulnerabilities in energy networks. The work focused on the study of methods, algorithms, and approaches that enabled increased efficiency in...

Full description

Saved in:
Bibliographic Details
Main Authors: D. Koshkin, O. Sadovoy, A. Rudenko, V. Sokolik
Format: Article
Language:English
Published: National University of Life and Environmental Sciences of Ukraine 2025-05-01
Series:Machinery & Energetics
Subjects:
Online Access:https://technicalscience.com.ua/journals/t-16-2-2025/optimizatsiya-energorozpodilu-ta-viyavlennya-vrazlivostey-u-merezhakh-za-dopomogoyu-shtuchnogo-intelektu
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849253561942147072
author D. Koshkin
O. Sadovoy
A. Rudenko
V. Sokolik
author_facet D. Koshkin
O. Sadovoy
A. Rudenko
V. Sokolik
author_sort D. Koshkin
collection DOAJ
description The aim of the study was to explore and analyse the potential of applying artificial intelligence for optimising energy distribution processes and identifying vulnerabilities in energy networks. The work focused on the study of methods, algorithms, and approaches that enabled increased efficiency in managing energy systems, reduced energy losses, improved network resilience to external threats, and ensured more accurate forecasting of supply and demand. Special attention was paid to the application of intelligent methods for detecting anomalies and vulnerable points in energy networks, which helped to respond promptly to potential cyberattacks, technical faults, or other risks. The study examined modern methods of energy flow management, particularly the use of neural network algorithms and blockchain technologies, as well as the integration into energy systems to enhance network efficiency and stability. The application of machine learning algorithms, such as convolutional and recurrent neural networks, significantly improved load forecasting accuracy and adaptability to changing network conditions. Load forecasting methods, including neural networks, decision trees, and reinforcement learning, contributed to reducing energy consumption and preventing overloads. At the same time, anomaly detection through intelligent systems allowed for the timely identification of faults and potential attacks, increasing system security and reliability. One of the promising solutions was the implementation of blockchain technologies for decentralised distribution of energy resources, which ensured transparency, security, and efficiency of operations. Load forecasting and energy resource management through intelligent systems made it possible to create more adaptive, self-regulating, and stable energy networks
format Article
id doaj-art-6efa115949ff4d73942935fe6ca1e682
institution Kabale University
issn 2663-1334
2663-1342
language English
publishDate 2025-05-01
publisher National University of Life and Environmental Sciences of Ukraine
record_format Article
series Machinery & Energetics
spelling doaj-art-6efa115949ff4d73942935fe6ca1e6822025-08-20T03:56:17ZengNational University of Life and Environmental Sciences of UkraineMachinery & Energetics2663-13342663-13422025-05-01162364810.31548/machinery/2.2025.36557Optimising energy distribution and detecting vulnerabilities in networks using artificial intelligenceD. KoshkinO. SadovoyA. RudenkoV. SokolikThe aim of the study was to explore and analyse the potential of applying artificial intelligence for optimising energy distribution processes and identifying vulnerabilities in energy networks. The work focused on the study of methods, algorithms, and approaches that enabled increased efficiency in managing energy systems, reduced energy losses, improved network resilience to external threats, and ensured more accurate forecasting of supply and demand. Special attention was paid to the application of intelligent methods for detecting anomalies and vulnerable points in energy networks, which helped to respond promptly to potential cyberattacks, technical faults, or other risks. The study examined modern methods of energy flow management, particularly the use of neural network algorithms and blockchain technologies, as well as the integration into energy systems to enhance network efficiency and stability. The application of machine learning algorithms, such as convolutional and recurrent neural networks, significantly improved load forecasting accuracy and adaptability to changing network conditions. Load forecasting methods, including neural networks, decision trees, and reinforcement learning, contributed to reducing energy consumption and preventing overloads. At the same time, anomaly detection through intelligent systems allowed for the timely identification of faults and potential attacks, increasing system security and reliability. One of the promising solutions was the implementation of blockchain technologies for decentralised distribution of energy resources, which ensured transparency, security, and efficiency of operations. Load forecasting and energy resource management through intelligent systems made it possible to create more adaptive, self-regulating, and stable energy networkshttps://technicalscience.com.ua/journals/t-16-2-2025/optimizatsiya-energorozpodilu-ta-viyavlennya-vrazlivostey-u-merezhakh-za-dopomogoyu-shtuchnogo-intelektuload forecastingdigital transformationmicrogridsrisk assessmentneural network models
spellingShingle D. Koshkin
O. Sadovoy
A. Rudenko
V. Sokolik
Optimising energy distribution and detecting vulnerabilities in networks using artificial intelligence
Machinery & Energetics
load forecasting
digital transformation
microgrids
risk assessment
neural network models
title Optimising energy distribution and detecting vulnerabilities in networks using artificial intelligence
title_full Optimising energy distribution and detecting vulnerabilities in networks using artificial intelligence
title_fullStr Optimising energy distribution and detecting vulnerabilities in networks using artificial intelligence
title_full_unstemmed Optimising energy distribution and detecting vulnerabilities in networks using artificial intelligence
title_short Optimising energy distribution and detecting vulnerabilities in networks using artificial intelligence
title_sort optimising energy distribution and detecting vulnerabilities in networks using artificial intelligence
topic load forecasting
digital transformation
microgrids
risk assessment
neural network models
url https://technicalscience.com.ua/journals/t-16-2-2025/optimizatsiya-energorozpodilu-ta-viyavlennya-vrazlivostey-u-merezhakh-za-dopomogoyu-shtuchnogo-intelektu
work_keys_str_mv AT dkoshkin optimisingenergydistributionanddetectingvulnerabilitiesinnetworksusingartificialintelligence
AT osadovoy optimisingenergydistributionanddetectingvulnerabilitiesinnetworksusingartificialintelligence
AT arudenko optimisingenergydistributionanddetectingvulnerabilitiesinnetworksusingartificialintelligence
AT vsokolik optimisingenergydistributionanddetectingvulnerabilitiesinnetworksusingartificialintelligence