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Battery State of Health Estimate Strategies: From Data Analysis to End-Cloud Collaborative Framework

Kaiyi Yang, Lisheng Zhang, Zhengjie Zhang, Hanqing Yu, Wentao Wang, Mengzheng Ouyang, Cheng Zhang, Qi Sun, Xiaoyu Yan, Shichun Yang, Xinhua Liu

2023Batteries49 citationsDOIOpen Access PDF

Abstract

Lithium-ion batteries have become the primary electrical energy storage device in commercial and industrial applications due to their high energy/power density, high reliability, and long service life. It is essential to estimate the state of health (SOH) of batteries to ensure safety, optimize better energy efficiency and enhance the battery life-cycle management. This paper presents a comprehensive review of SOH estimation methods, including experimental approaches, model-based methods, and machine learning algorithms. A critical and in-depth analysis of the advantages and limitations of each method is presented. The various techniques are systematically classified and compared for the purpose of facilitating understanding and further research. Furthermore, the paper emphasizes the prospect of using a knowledge graph-based framework for battery data management, multi-model fusion, and cooperative edge-cloud platform for intelligent battery management systems (BMS).

Topics & Concepts

Computer scienceBattery (electricity)Cloud computingReliability (semiconductor)State of healthEnergy managementReliability engineeringEnergy storageSystems engineeringEnergy (signal processing)Power (physics)EngineeringStatisticsPhysicsQuantum mechanicsMathematicsOperating systemAdvanced Battery Technologies ResearchAdvancements in Battery MaterialsAdvanced Battery Materials and Technologies
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