重型车辆铅酸蓄电池荷电状态估计的机器学习方法

Sara Luciani, Stefano Feraco, A. Bonfitto, A. Tonoli, N. Amati, Maurizio Quaggiotto
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引用次数: 1

摘要

在汽车框架中,对重型车辆铅酸电池的荷电状态(SOC)进行准确评估具有重要意义。SOC是一种不可观察的关键电池状态。此外,电池SOC的准确估计可以防止系统故障和电池损坏,由于电池本身的错误使用。在此背景下,本研究提出了一种基于机器学习的SOC估计技术。因此,该方法可用于重型车辆电气子系统的安全和性能监测。该方法利用遗传算法(GA)和人工神经网络(ann)相结合的方法进行SOC估计。具体而言,采用基于遗传算法的优化方法选择了具有外源输入的非线性自回归神经网络(NARX)的训练参数。作为基于遗传算法优化的结果,定义了基于神经网络的SOC估计器体系结构。然后,使用重型车辆实际驾驶任务中记录的实验数据集对所提出的SOC估计算法进行了训练和验证。代表保留铅酸电池的等效电路模型用于收集训练、验证和测试数据集,这些数据集复制了与电力消费者和客舱系统或重型车辆夜间停车有关的记录实验数据。本文阐述了所提出的SOC估计算法的体系结构以及用遗传算法识别神经网络参数的过程。该方法能够以较低的估计误差估计SOC,适合部署在常见的车载电池管理系统(BMS)上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Method for State of Charge Estimation in Lead-Acid Batteries for Heavy-Duty Vehicles
In the automotive framework, an accurate assessment of the State of Charge (SOC) in lead-acid batteries of heavy-duty vehicles is of major importance. SOC is a crucial battery state that is non-observable. Furthermore, an accurate estimation of the battery SOC can prevent system failures and battery damage due to a wrong usage of the battery itself. In this context, a technique based on machine learning for SOC estimation is presented in this study. Thus, this method could be used for safety and performance monitoring purposes in electric subsystem of heavy-duty vehicles. The proposed approach exploits a Genetic Algorithm (GA) in combination with Artificial Neural Networks (ANNs) for SOC estimation. Specifically, the training parameters of a Nonlinear Auto-Regressive with Exogenous inputs (NARX) ANN are chosen by the GA-based optimization. As a consequence of the GA-based optimization, the ANN-based SOC estimator architecture is defined. Then, the proposed SOC estimation algorithm is trained and validated with experimental datasets recorded during real driving missions performed by a heavy-duty vehicle. An equivalent circuit model representing the retained lead-acid battery is used to collect the training, validation and testing datasets that replicates the recorded experimental data related to electrical consumers and the cabin systems or during overnight stops in heavy-duty vehicles. This article illustrates the architecture of the proposed SOC estimation algorithm along with the identification procedure of the ANN parameters with GA. The method is able to estimate SOC with a low estimation error, being suitable for deployment on common on-board Battery Management Systems (BMS).
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