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Data Driven Estimation of Electric Vehicle Battery State of Charge Informed By Multi-Physics Modeling

机译:数据驱动估计电动车电池电量的充电状态通过多物理建模信息

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State of charge (SOC) estimation in lithium-ion batteries (LIBs) is a crucial task of the battery management system (BMS) in electric vehicle (EV) applications. An accurate evaluation of the remaining capacity in a battery is cumbersome due to the non-linear and coupled behavior of the physical processes involved in the battery operation, in particular when LIBs is integrated in dynamic systems with many components such as in EV. With the continued progress in the development of data driven models, different machine learning (ML) and, more specifically, deep learning (DL) techniques have been proposed to predict the SOC in EV. While these models have been proven to be effective in estimating the SOC variation, the reliability of learning-based algorithms is highly dependent on the data collected for the training and validation purposes. The most straightforward methodology for data collection consists of discharging a lithium-ion cell in a laboratory by applying a discharge current which aims to represent the vehicle's operation. However, such an approach could not allow to generate data representing realistic driving conditions since the dynamics of components, such as the electric motor and the powertrain system, which have an impact on the SOC and external conditions such as the speed of the wind are not taken into account. In this work, we propose a modeling framework based upon Matlab/Simulink automotive simulations of EV in order to generate a dataset reflecting practical driving conditions. The generated datasets have been used to train ML and DL models for the final SOC estimation. In particular, the most accurate estimation of SOC is obtained with the Long Short Term Memory (LSTM) network, a Recurrent Neural Network (RNN) designed for times series predictions with long term dependencies. Furthermore, employing a multiphysics modeling of the LIBs' operation comprising the electric motor, the powertrain system and the overall vehicle dynamic, allows to investigate the effect of EV's driving on the electrochemical processes and reactions occurring inside the battery of different chemistries. For this purpose, we use an electrochemical model of LIBs developed in Comsol Multiphysics combined with EV simulation, in order to study the degradation of the battery as a result of multiple charge and discharge cycles representing the vehicle operation. In particular, formation/decomposition of the solid electrolyte interphase (SEI) at the negative electrode has been considered as a possible degradation phenomenon. Thus, in addition to the development of training data for learning based techniques for SOC estimation informed by EV simulations, the proposed modeling approach allows the investigation of the battery functionality and degradation under realistic driving conditions.
机译:锂离子电池(LIBS)的充电状态(SOC)估计是电动车辆(EV)应用中电池管理系统(BMS)的重要任务。由于电池操作中所涉及的物理过程的非线性和耦合行为,特别是当电池操作中的物理过程的非线性和耦合行为进行了精确评估,特别是当Libs集成在具有诸如EV中的许多组件的动态系统中时。随着数据驱动模型的开发,不同机器学习(ML)以及更具体地,深度学习(DL)技术的持续进展情况已经提出预测EV中的SOC。虽然已经证明这些模型在估计SOC变异方面是有效的,但基于学习的算法的可靠性高度依赖于为培训和验证目的收集的数据。数据收集的最直接的方法包括通过施加旨在代表车辆操作的放电电流来排出实验室中的锂离子电池。然而,这种方法不能允许生成代表现实驾驶条件的数据,因为诸如电动机和动力系系统的部件的动力学,这对SOC和外部条件(例如风的速度)产生影响而不是考虑到。在这项工作中,我们提出了一种基于Matlab / Simulink汽车模拟EV的建模框架,以产生反映实用驾驶条件的数据集。生成的数据集已用于培训ML和DL模型以进行最终SOC估计。特别地,利用长短短期存储器(LSTM)网络,经常性神经网络(RNN)获得了最精确的SOC估计,该复发性神经网络(RNN)设计用于长期依赖性的时间序列预测。此外,采用包括电动机,动力总成系统和整体车辆动态的Libs操作的多体型建模,允许研究EV的驾驶对电化学过程和不同化学电池内部发生的反应的影响。为此目的,我们使用在COMSOL Multiphysics中开发的LIB的电化学模型与EV模拟结合,以研究电池的劣化,而由于多电荷和放电循环代表车辆操作。特别地,在负极处的固体电解质相互作用(SEI)的形成/分解已被认为是可能的降解现象。因此,除了通过EV模拟通知的基于学习的SOC估计技术的培训数据之外,所提出的建模方法允许在现实驾驶条件下调查电池功能和劣化。

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