Generalized State of Health Estimation Approach based on Neural Networks for Various Lithium-Ion Battery Chemistries

Steffen Bockrath, M. Pruckner
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引用次数: 2

Abstract

The aging estimation of lithium-ion batteries is a central mission for a safe and efficient handling of lithium-ion batteries over the whole battery lifetime. However, especially the absence of precise diagnostic measurements within real-world applications yields the aging estimation a complex challenge. Moreover, the non-linear aging of lithium-ion batteries is strongly dependent on various operating and environmental conditions and the specific battery cell chemistry. This paper presents a generalized state of health estimation approach based on a neural network that can be used for different lithium-ion battery chemistries. The presented algorithm is able to estimate the aging of lithium-ion batteries by using information obtained from raw sensor data without executing further preprocessing or feature engineering steps. It is firstly shown that the developed temporal convolutional network accurately estimates the state of health for three different lithium-ion battery chemistries by only using high-level parameters from partial charging profiles. In addition, the obtained high-level parameters can provide relevant information needed for a battery passport. The final neural network is trained using transfer learning approaches to model the state of health development of a Lithium-Nickel-Cobalt-Aluminum-Oxide (NCA), a Lithium-Nickel-Cobalt-Manganese-Oxide (NCM) and, an NCM-NCA battery cell. The overall mean absolute percentage error of the generalized state of health estimation is 1.43%.
基于神经网络的各种锂离子电池化学成分健康状态广义估计方法
锂离子电池的老化估计是锂离子电池在整个寿命周期内安全有效处理的核心任务。然而,特别是在实际应用中缺乏精确的诊断测量,使得老化估计成为一个复杂的挑战。此外,锂离子电池的非线性老化在很大程度上取决于各种操作条件和环境条件以及特定的电池化学成分。本文提出了一种基于神经网络的广义健康状态估计方法,可用于不同的锂离子电池化学成分。该算法无需进一步的预处理或特征工程步骤,就可以利用从原始传感器数据中获得的信息来估计锂离子电池的老化。首先表明,所开发的时间卷积网络仅使用部分充电曲线的高级参数就能准确估计三种不同锂离子电池化学物质的健康状态。此外,获得的高级参数可以提供电池护照所需的相关信息。最后的神经网络使用迁移学习方法进行训练,以模拟锂-镍-钴-氧化铝(NCA)、锂-镍-钴-锰-氧化物(NCM)和NCM-NCA电池的健康发展状态。广义健康状况估计的总体平均绝对百分比误差为1.43%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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