Application of Machine Learning In Renewable Energy: A Bibliometric Analysis of a Decade

S. Ajibade, D. D. C. Flores, Muhammad Ayaz, Y. Dodo, F. O. Areche, Anthonia O. Adediran, O. J. Oyebode, Johnry Dayupay
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Abstract

Machine learning studies in the field of renewable energy are analysed here (REML). So, from 2012 to 2021, we looked at the publication tendencies (PT) and bibliometric analysis (BA) of REML research that was indexed by Elsevier Scopus. Key insights into the research landscape, scientific discoveries, and technological advancement were revealed by BA, while PT highlighted REML’s important players, top cited papers, and financing organisations. In total, the PT discovered 1,218 works, 397 of which were conference papers and 106 were reviews. Because it spans the disciplines of science, technology, engineering, and mathematics, REML research is exhaustive, varied, and consequential. The most productive researchers, countries, and sponsors include Ravinesh C. Deo, the United States’ National Renewable Energy Laboratory, and China’s National Natural Science Foundation. Journal prestige and open access are valued by contributors, as seen by the success of Applied Energy and Energies. Productivity among REML’s key stakeholders is boosted by collaborations and research funding. Keyword co-occurrence analysis was used to categorise REML research into four broad topic areas: systems, technologies, tools/technologies, and socio-technical dynamics. According to the results, ML plays a crucial role in the prediction, operation, and optimisation of RET as well as the design and development of RE-related materials.
机器学习在可再生能源中的应用:十年文献计量学分析
本文分析了可再生能源领域的机器学习研究。因此,从2012年到2021年,我们研究了Elsevier Scopus索引的REML研究的出版趋势(PT)和文献计量分析(BA)。BA揭示了对研究前景、科学发现和技术进步的关键见解,而PT则重点介绍了REML的重要参与者、被引用最多的论文和融资机构。共发现1218篇论文,其中397篇是会议论文,106篇是评论。因为它跨越了科学、技术、工程和数学等学科,所以REML研究是详尽的、多样的和重要的。最有成果的研究人员、国家和赞助者包括Ravinesh C. Deo、美国国家可再生能源实验室和中国国家自然科学基金。正如《应用能源》和《能源》的成功所看到的那样,期刊声望和开放获取受到贡献者的重视。REML主要利益相关者之间的生产力通过合作和研究资金得到提高。关键词共现分析将REML研究分为四大主题领域:系统、技术、工具/技术和社会技术动态。根据研究结果,机器学习在RET的预测、操作和优化以及re相关材料的设计和开发中起着至关重要的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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