Wind speed forecasting using a combined deep learning model with slime mould optimization DOI
K. Natarajan, Jai Govind Singh

International Journal of Green Energy, Journal Year: 2025, Volume and Issue: unknown, P. 1 - 22

Published: April 17, 2025

Language: Английский

A comprehensive review of AI-enhanced smart grid integration for hydrogen energy: Advances, challenges, and future prospects DOI
Morteza SaberiKamarposhti, Hesam Kamyab, Santhana Krishnan

et al.

International Journal of Hydrogen Energy, Journal Year: 2024, Volume and Issue: 67, P. 1009 - 1025

Published: Jan. 19, 2024

Language: Английский

Citations

52

Optimizing renewable energy systems through artificial intelligence: Review and future prospects DOI Creative Commons
Kingsley Ukoba, Kehinde O. Olatunji,

Eyitayo Adeoye

et al.

Energy & Environment, Journal Year: 2024, Volume and Issue: 35(7), P. 3833 - 3879

Published: May 22, 2024

The global transition toward sustainable energy sources has prompted a surge in the integration of renewable systems (RES) into existing power grids. To improve efficiency, reliability, and economic viability these systems, synergistic application artificial intelligence (AI) methods emerged as promising avenue. This study presents comprehensive review current state research at intersection AI, highlighting key methodologies, challenges, achievements. It covers spectrum AI utilizations optimizing different facets RES, including resource assessment, forecasting, system monitoring, control strategies, grid integration. Machine learning algorithms, neural networks, optimization techniques are explored for their role complex data sets, enhancing predictive capabilities, dynamically adapting RES. Furthermore, discusses challenges faced implementation such variability, model interpretability, real-time adaptability. potential benefits overcoming include increased yield, reduced operational costs, improved stability. concludes with an exploration prospects emerging trends field. Anticipated advancements explainable reinforcement learning, edge computing, discussed context impact on Additionally, paper envisions AI-driven solutions smart grids, decentralized development autonomous management systems. investigation provides important insights landscape applications

Language: Английский

Citations

45

The rising role of artificial intelligence in renewable energy development in China DOI
Xiaojing Zhang, Khalid Khan, Xuefeng Shao

et al.

Energy Economics, Journal Year: 2024, Volume and Issue: 132, P. 107489 - 107489

Published: March 20, 2024

Language: Английский

Citations

22

Meta-heuristics and deep learning for energy applications: Review and open research challenges (2018–2023) DOI Creative Commons

Eghbal Hosseini,

Abbas M. Al-Ghaili, Dler Hussein Kadir

et al.

Energy Strategy Reviews, Journal Year: 2024, Volume and Issue: 53, P. 101409 - 101409

Published: May 1, 2024

The synergy between deep learning and meta-heuristic algorithms presents a promising avenue for tackling the complexities of energy-related modeling forecasting tasks. While excels in capturing intricate patterns data, it may falter achieving optimality due to nonlinear nature energy data. Conversely, offer optimization capabilities but suffer from computational burdens, especially with high-dimensional This paper provides comprehensive review spanning 2018 2023, examining integration within frameworks applications. We analyze state-of-the-art techniques, innovations, recent advancements, identifying open research challenges. Additionally, we propose novel framework that seamlessly merges into paradigms, aiming enhance performance efficiency addressing problems. contributions include: 1. Overview advancements MHs, DL, integration. 2. Coverage trends 2023. 3. Introduction Alpha metric evaluation. 4. Innovative harmonizing MHs DL

Language: Английский

Citations

17

Multi-objective optimization and algorithmic evaluation for EMS in a HRES integrating PV, wind, and backup storage DOI Creative Commons

Ahmed A. Shaier,

Mahmoud M. Elymany, Mohamed A. Enany

et al.

Scientific Reports, Journal Year: 2025, Volume and Issue: 15(1)

Published: Jan. 7, 2025

Abstract This manuscript focuses on optimizing a Hybrid Renewable Energy System (HRES) that integrates photovoltaic (PV) panels, wind turbines (WT), and various energy storage systems (ESS), including batteries, supercapacitors (SCs), hydrogen storage. The system uses multi-objective optimization strategy to balance power management, aiming minimize costs reduce the likelihood of loss supply probability (LPSP). Seven different algorithms are assessed identify most efficient one for achieving these objectives, with goal selecting algorithm best balances cost efficiency performance. is across three operational scenarios: (1) when meets demand help from backup systems, (2) exceeds depleted, (3) generation surpasses full. HBA-based effectively manages flow storage, ensuring grid stability minimizing overcharging risks. offers reliable sustainable isolated microgrids, managing production, distribution. research sets new benchmark future studies in decentralized particularly balancing technical economic feasibility.

Language: Английский

Citations

2

Analyzing the Role of Renewable Energy in Meeting the Sustainable Development Goals: A Bibliometric Analysis DOI Creative Commons
Bartolomé Marco‐Lajara, Javier Martínez‐Falcó, Eduardo Sánchez‐García

et al.

Energies, Journal Year: 2023, Volume and Issue: 16(7), P. 3137 - 3137

Published: March 30, 2023

Academic contributions regarding the Sustainable Development Goals (SDGs) and renewable energy have been steadily increasing, given their essential relevance to economic, societal, environmental progress. This research aims examine structure of scientific knowledge on connection between SDGs by utilizing bibliometric methods analyzing 3132 articles published 1992 2022. Results indicate a sharp rise in production rate since 2015, Environmental Sciences as most prevalent area study, leading role publishers Elsevier, MDPI, Springer publication papers related subject. Consequently, this may prove useful for both novice veteran researchers who wish further understanding academic energy.

Language: Английский

Citations

35

Renewable energy sources integration via machine learning modelling: A systematic literature review DOI Creative Commons

Talal Alazemi,

Mohamed Darwish, Mohammed Radi

et al.

Heliyon, Journal Year: 2024, Volume and Issue: 10(4), P. e26088 - e26088

Published: Feb. 1, 2024

The use of renewable energy sources (RESs) at the distribution level has become increasingly appealing in terms costs and technology, expecting a massive diffusion near future placing several challenges to power grid. Since RESs depend on stochastic —solar radiation, temperature wind speed, among others— they introduce high uncertainty grid, leading imbalance deteriorating network stability. In this scenario, managing forecasting RES is vital successfully integrate them into grids. Traditionally, physical- statistical-based models have been used predict outputs. Nevertheless, former are computationally expensive since rely solving complex mathematical atmospheric dynamics, whereas latter usually consider linear models, preventing from addressing challenging scenarios. recent years, advances machine learning techniques, which can learn historical data, allowing analysis large-scale datasets either under non-uniform characteristics or noisy provided researchers with powerful data-driven tools that outperform traditional methods. paper, systematic literature review conducted identify most widely learning-based approaches forecast results show deep artificial neural networks, especially long-short term memory accurately model autoregressive nature output, ensemble strategies, allow handling large amounts highly fluctuating best suited ones. addition, promising integrating forecasted output decision-making problems, such as unit commitment, address economic, operational managerial grid discussed, solid directions for research provided.

Language: Английский

Citations

15

Contributions of artificial intelligence and digitization in achieving clean and affordable energy DOI Creative Commons
Omojola Awogbemi, Daramy Vandi Von Kallon, K. Sunil Kumar

et al.

Intelligent Systems with Applications, Journal Year: 2024, Volume and Issue: 22, P. 200389 - 200389

Published: May 19, 2024

Concerned by the continuous decline in quality of life, poverty, environmental degradation, and escalated war conflicts, United Nations 2015 instituted 17 Sustainable Development Goals (SDGs) 169 targets. Access to clean, modern, affordable energy, also known as SDG 7, is one goals. Universal access electricity metrics for measuring a good life it fundamentally affects education, healthcare, food security, job creation, other socioeconomic indices. To achieve this goal targets, there has been increased traction research, development, actionable plans, policies, activities governments, scientific community, environmentalists, development experts, stakeholders achieving goal. This review presents various avenues which AI digitization can provide impetus 7. The global trends attaining clean electricity, cooking fuel, renewable energy efficiency, international public financial flows between 2005 2021 are reviewed while contribution towards meeting 7 highlighted. study concludes that deployment into sector will catalyze attainment 2030, provided ethical issues, regulatory concerns, manpower shortage, shortcomings effectively handled. recommends adequate infrastructural upgrades, modernization data collection, storage, analysis capabilities, improved awareness professional collaborative innovation, promotion legal issues ways advancing universal 2030. Going forward, more collaborations academic research institutions producers help produce experts professionals propel innovative digital technologies sector.

Language: Английский

Citations

14

Artificial intelligence for hydrogen-enabled integrated energy systems: A systematic review DOI Creative Commons
Siripond Mullanu,

Caslon Chua,

Andreea Molnar

et al.

International Journal of Hydrogen Energy, Journal Year: 2024, Volume and Issue: unknown

Published: Aug. 1, 2024

Hydrogen-enabled Integrated Energy Systems (H-IES) stand out as a promising solution with the potential to replace current non-renewable energy systems. However, their development faces challenges and has yet achieve widespread adoption. These main include complexity of demand supply balancing, dynamic consumer demand, in integrating utilising hydrogen. Typical management strategies within domain rely heavily on accurate models from experts or conventional approaches, such simulation optimisation which cannot be satisfied real-world operation H-IES. Artificial Intelligence (AI) Advanced Data Analytics (ADA), especially Machine Learning (ML), ability overcome these challenges. ADA is extensively used across several industries, however, further investigation into incorporation hydrogen for purpose enabling H-IES needs investigated. This paper presents systematic literature review study research gaps, directions, benefits ADA, well role

Language: Английский

Citations

14

An interpretable horizontal federated deep learning approach to improve short-term solar irradiance forecasting DOI

Zenan Xiao,

Bixuan Gao, Xiaoqiao Huang

et al.

Journal of Cleaner Production, Journal Year: 2024, Volume and Issue: 436, P. 140585 - 140585

Published: Jan. 1, 2024

Language: Английский

Citations

11