Battery Optimization by Machine Learning Algorithms: Research Gap via Bibliometric Analysis
Technological developments enable low-carbon transitions to be accelerated by conceptualization systems and innovations for research and development to generate clean energy. Batteries are becoming one of the essential parts of the science of electrical power sources. Lithium-ion batteries are part of the change and development factors in technologies that significantly impact the portable devices sector and the development of electric vehicles. Designing the material structure and composition of battery manufacturing with the help of engineering system design will form a much more optimal battery. Machine learning algorithms can easily optimize the battery’s composition through battery experiment test data history to produce a more optimal battery configuration. This study is prepared to identify research gaps in topics related to machine learning for battery optimization. Related studies about machine learning for battery optimization are identified using bibliometric analysis and systematic literature review of the study search index through database Scopus-indexed publications. The results from this paper reveal energy management systems and strategies, hybrid vehicles, other optimization algorithms, battery electrodes, and the safety of batteries as the particular research gap according to machine learning for battery optimization. This paper expects research on battery optimization using machine learning methods will continue to be developed to maximize the potential of machine learning algorithms in helping the research process.
Authors:
Nico Hananda, Azure Kamul, Christian Harito, Endang Djuana, Gregorius Natanael Elwirehardja, Bens Pardamean, Fergyanto E. Gunawan, Arief S. Budiman, Muhammad Asrol, A. A. N. Perwira Redi, Tim Pasang
The 4th International Conference of Biospheric Harmony Advanced Research (ICOBAR 2022)