Machine Learning Applications in Renewable Energy (MLARE) Research: A Publication Trend and Bibliometric Analysis Study (2012–2021)

Author:

Ajibade Samuel-Soma M.1ORCID,Bekun Festus Victor23ORCID,Adedoyin Festus Fatai4ORCID,Gyamfi Bright Akwasi5ORCID,Adediran Anthonia Oluwatosin6

Affiliation:

1. Department of Computer Engineering, Istanbul Ticaret University, Istanbul 34445, Turkey

2. Faculty of Economics Administrative and Social Sciences, Istanbul Gelisim University, Istanbul 34310, Turkey

3. Department of Economics, Adnan Kassar School of Business, Lebanese American University, Beirut 1102-2801, Lebanon

4. Department of Computing and Informatics, Bournemouth University, Poole BH12 5BB, UK

5. School of Management, Sir Padampat Singhania University, Bhatewar, Udaipur 313601, India

6. Department of Estate Management, The Federal Polytechnic, Ado Ekiti 23401, Nigeria

Abstract

This study examines the research climate on machine learning applications in renewable energy (MLARE). Therefore, the publication trends (PT) and bibliometric analysis (BA) on MLARE research published and indexed in the Elsevier Scopus database between 2012 and 2021 were examined. The PT was adopted to deduce the major stakeholders, top-cited publications, and funding organizations on MLARE, whereas BA elucidated critical insights into the research landscape, scientific developments, and technological growth. The PT revealed 1218 published documents comprising 46.9% articles, 39.7% conference papers, and 6.0% reviews on the topic. Subject area analysis revealed MLARE research spans the areas of science, technology, engineering, and mathematics among others, which indicates it is a broad, multidisciplinary, and impactful research topic. The most prolific researcher, affiliations, country, and funder are Ravinesh C. Deo, National Renewable Energy Laboratory, United States, and the National Natural Science Foundation of China, respectively. The most prominent journals on the top are Applied Energy and Energies, which indicates that journal reputation and open access are critical considerations for the author’s choice of publication outlet. The high productivity of the major stakeholders in MLARE is due to collaborations and research funding support. The keyword co-occurrence analysis identified four (4) clusters or thematic areas on MLARE, which broadly describe the systems, technologies, tools/technologies, and socio-technical dynamics of MLARE research. Overall, the study showed that ML is critical to the prediction, operation, and optimization of renewable energy technologies (RET) along with the design and development of RE-related materials.

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences,General Environmental Science

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