电动汽车应用中先进电池管理系统的人工智能方法:面向未来研究机会的统计分析

Vehicles Pub Date : 2023-12-25 DOI:10.3390/vehicles6010002
M. S. H. Lipu, Md. Sazal Miah, T. Jamal, Tuhibur Rahman, Shaheer Ansari, Md. Siddikur Rahman, R. H. Ashique, ASM Shihavuddin, Mohammed Nazmus Shakib
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摘要

为了减少碳排放和解决全球环境问题,汽车行业对电动汽车(EV)给予了极大关注。然而,电池的性能和健康状况会随着时间的推移而恶化,从而对电动汽车的有效性产生负面影响。为了提高电动汽车的安全性和可靠性并有效优化其性能,人工智能(AI)方法在精确的电池健康诊断、故障分析和热管理方面得到了广泛的关注。因此,本研究分析和评估了人工智能方法在增强电动汽车电池管理系统(BMS)中的作用。为此,本研究基于 Scopus 数据库中 2014 年至 2023 年的 78 篇高度相关的出版物进行了深入的统计分析。统计分析评估了当前研究趋势、关键词评估、出版商、研究分类、国家分析、作者和合作等重要参数。此外,还对最先进的人工智能方法的目标、贡献、优势和劣势进行了批判性讨论。此外,还提出了一些重大问题和议题,以及一些重要的指示和建议,供未来发展参考。统计分析可以指导未来的研究人员开发新兴的 BMS 技术,以实现电动汽车的可持续运营和管理。
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Artificial Intelligence Approaches for Advanced Battery Management System in Electric Vehicle Applications: A Statistical Analysis towards Future Research Opportunities
In order to reduce carbon emissions and address global environmental concerns, the automobile industry has focused a great deal of attention on electric vehicles, or EVs. However, the performance and health of batteries can deteriorate over time, which can have a negative impact on the effectiveness of EVs. In order to improve the safety and reliability and efficiently optimize the performance of EVs, artificial intelligence (AI) approaches have received massive consideration in precise battery health diagnostics, fault analysis and thermal management. Therefore, this study analyzes and evaluates the role of AI approaches in enhancing the battery management system (BMS) in EVs. In line with that, an in-depth statistical analysis is carried out based on 78 highly relevant publications from 2014 to 2023 found in the Scopus database. The statistical analysis evaluates essential parameters such as current research trends, keyword evaluation, publishers, research classification, nation analysis, authorship, and collaboration. Moreover, state-of-the-art AI approaches are critically discussed with regard to targets, contributions, advantages, and disadvantages. Additionally, several significant problems and issues, as well as a number of crucial directives and recommendations, are provided for potential future development. The statistical analysis can guide future researchers in developing emerging BMS technology for sustainable operation and management in EVs.
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