机器学习与可再生能源革命:探索可持续未来的太阳能和风能解决方案,包括能源储存方面的创新

IF 9.9 1区 环境科学与生态学 Q1 DEVELOPMENT STUDIES Sustainable Development Pub Date : 2024-01-08 DOI:10.1002/sd.2885
Abu Danish Aiman Bin Abu Sofian, Hooi Ren Lim, Heli Siti Halimatul Munawaroh, Zengling Ma, K. Chew, P. Show
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引用次数: 0

摘要

本文评估了太阳能和风能的全球应用现状,探讨了它们在满足能源需求方面的优势和局限性。文章研究了太阳能和风能的历史和演变发展、全球可再生能源使用趋势以及包括浮动太阳能和垂直轴风力涡轮机在内的未来技术。此外,还探讨了智能电网技术和储能技术对于提高可再生能源的有效性和可靠性的重要性。此外,还评估了电动汽车 (EV) 在现代智能电网中的作用。此外,还探讨了太阳能和风能的经济效益、最新技术发展及其对环境和社会的影响。太阳能和风能在满足日益增长的全球能源需求方面的潜力,以及可再生能源产业面临的问题和机遇,都显示出了良好的前景。将机器学习应用于太阳能和风能发电对可持续能源生产至关重要。机器学习有助于设计、优化、降低成本,最重要的是,有助于提高太阳能和风能的效率,包括推进能源存储。本评估报告是决策者、行业领导者和研究人员的重要资源,他们的目标是让世界变得更清洁、更可持续。归根结底,本评估报告显示了太阳能和风能在满足全球能源需求和实现可持续发展目标方面的巨大潜力。
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Machine learning and the renewable energy revolution: Exploring solar and wind energy solutions for a sustainable future including innovations in energy storage
This article evaluates the present global condition of solar and wind energy adoption and explores their benefits and limitations in meeting energy needs. It examines the historical and evolutionary growth of solar and wind energy, global trends in the usage of renewable energy, and upcoming technologies, including floating solar and vertical‐axis wind turbines. The importance of smart grid technology and energy storage alternatives for enhancing the effectiveness and dependability of renewable energy is explored. In addition, the role of Electric Vehicles (EVs) in a modern smart grid has been assessed. Furthermore, the economic benefits, and most recent technological developments of solar and wind energy and their environmental and social ramifications. The potential of solar and wind energy to meet the increasing global energy demand and the problems and opportunities facing the renewable energy industry have shown excellent promise. Machine learning applications for solar and wind energy generation are vital for sustainable energy production. Machine learning can help in design, optimization, cost reduction, and, most importantly, in improving the efficacy of solar and wind energy, including advancing energy storage. This assessment is a crucial resource for policymakers, industry leaders, and researchers who aim to make the world cleaner and more sustainable. Ultimately, this review has shown the great potential of solar and wind energy in meeting global energy demands and sustainable goals.
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来源期刊
CiteScore
17.30
自引率
11.20%
发文量
168
期刊介绍: Sustainable Development is a publication that takes an interdisciplinary approach to explore and propose strategies for achieving sustainable development. Our aim is to discuss and address the challenges associated with sustainable development and the Sustainable Development Goals. All submissions are subjected to a thorough review process to ensure that our readers receive valuable and original content of the highest caliber.
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