充电平衡数据的随机森林回归:一种电动汽车电池健康状态估计方法

Alexander Lamprecht, Moritz Riesterer, S. Steinhorst
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引用次数: 5

摘要

最近,电动汽车(ev)变得越来越普遍。然而,它们的大规模采用受到其储能系统(ESS)容量有限的阻碍。目前,锂离子(Li-ion)技术主要用于移动应用,然而,它们的能量密度和成本对可行的电动汽车电池组的最大尺寸构成了严格的限制。因此,尽可能有效地利用现有技术至关重要。为了在整个使用寿命内有效地使用电池组,需要考虑电池的健康状态(SoH)。在本文中,我们提出了一种新的基于电池组在主动充电平衡(ACB)过程中的行为的SoH估计方法。从这种行为中我们推导出一个度规,并证明它与SoH密切相关。我们使用这个度量,连同其他单元参数,来训练随机森林(RF)回归估计器。为了收集训练数据,我们实施了一个模块化的模拟框架,该框架能够重现充电和放电周期、充电平衡过程以及电池组在整个生命周期内的老化行为。除了表明平衡行为与SoH之间存在很强的相关性外,我们还能够估计电池的SoH,其容量和电阻的准确度分别为1.94%和4.28%。我们的容量SoH估计优于最先进的机器学习方法,而我们是极少数甚至提供高精度阻力估计的人之一。
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Random Forest Regression of Charge Balancing Data: A State of Health Estimation Method for Electric Vehicle Batteries
Recently, Electric Vehicles (EVs) are becoming more widespread. However, their mass adoption is hindered by the limited capacity of their Energy Storage System (ESS). Nowadays mainly Lithium-ion (Li-ion) technology is used for mobile applications, however, their energy density and cost put a hard limit on the maximum size of viable EV battery packs. Therefore, it is crucial to use existing technologies as effective as possible. To efficiently use a battery pack over its entire lifetime, the State of Health (SoH) of the cells needs to be taken into account. In this paper, we propose a novel SoH estimation method, based on the battery pack’s behavior during Active Charge Balancing (ACB). From this behavior we are deriving a metric and show that it strongly correlates with the SoH. We use this metric, together with other cell parameters, to train a Random Forest (RF) regression estimator. To gather the training data, we implemented a modular simulation framework, that is able to reproduce the charging and discharging cycles, the charge balancing processes, as well as the aging behavior of battery packs over their entire lifetime. Besides showing a strong correlation between balancing behavior and SoH, we are able to estimate the cells’ SoH with an accuracy of 1.94 % for the capacity and 4.28 % for the resistance, respectively. Our capacity SoH estimation outperforms state-of the-art machine learning approaches, while we are among very few to even provide an estimate for the resistance with a high accuracy.
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