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A SELF-COGNIZANT DYNAMIC SYSTEM APPROACH FOR HEALTH MANAGEMENT: LITHIUM-ION BATTERY CASE STUDY

机译:一种用于健康管理的自我认知动力系统方法:锂离子电池案例研究

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Safe and reliable operation of lithium-ion batteries as major energy storage devices is of vital importance, as unexpected battery failures could result in enormous economic and societal losses. Accurate estimation of the state-of-charge (SoC) and state-of-health (SoH) for an operating battery system, as a critical task for battery health management, greatly depends on the validity and generalizability of battery models. Due to the variability and uncertainties involved in battery design, manufacturing, and operation, developing a generally applicable battery physical model is a big challenge. To eliminate the dependency of SoC and SoH estimation on battery physical models, this paper presents a generic self-cognizant dynamic system approach for lithium-ion battery health management, which integrates an artificial neural network (ANN) with a dual extended Kalman filter (DEKF) algorithm. The ANN is trained offline to model the battery terminal voltages to be used by the DEKF. With the trained ANN, the DEKF algorithm is then employed online for SoC and SoH estimation, where voltage outputs from the trained ANN model are used in DEKF state-space equations to replace the battery physical model. Experimental results are used to demonstrate the effectiveness of the developed self-cognizant dynamic system approach for battery health management.
机译:锂离子电池作为主要储能设备的安全可靠运行至关重要,因为意外的电池故障可能会导致巨大的经济和社会损失。作为电池健康管理的一项重要任务,准确估算运行中的电池系统的充电状态(SoC)和健康状态(SoH)很大程度上取决于电池模型的有效性和可推广性。由于电池设计,制造和操作中涉及的可变性和不确定性,开发通用的电池物理模型是一个巨大的挑战。为了消除SoC和SoH估计对电池物理模型的依赖性,本文提出了一种用于锂离子电池健康管理的通用自识别动态系统方法,该方法将人工神经网络(ANN)与双扩展卡尔曼滤波器(DEKF)集成在一起) 算法。对ANN进行离线训练,以对DEKF要使用的电池端子电压进行建模。利用训练有素的人工神经网络,然后将DEKF算法在线用于SoC和SoH估计,其中,训练有素的人工神经网络模型的电压输出将用于DEKF状态空间方程式中,以代替电池物理模型。实验结果用于证明所开发的自我认知动态系统方法对电池健康管理的有效性。

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