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Online estimation of lithium-ion battery capacity using sparse Bayesian learning

机译:基于稀疏贝叶斯学习的锂离子电池容量在线估计

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Lithium-ion (Li-ion) rechargeable batteries are used as one of the major energy storage components for implantable medical devices. Reliability of Li-ion batteries used in these devices has been recognized as of high importance from a broad range of stakeholders, including medical device manufacturers, regulatory agencies, patients and physicians. To ensure a Li-ion battery operates reliably, it is important to develop health monitoring techniques that accurately estimate the capacity of the battery throughout its life-time. This paper presents a sparse Bayesian learning method that utilizes the charge voltage and current measurements to estimate the capacity of a Li-ion battery used in an implantable medical device. Relevance Vector Machine (RVM) is employed as a probabilistic kernel regression method to learn the complex dependency of the battery capacity on the characteristic features that are extracted from the charge voltage and current measurements. Diving to the sparsity property of RVM, the proposed method generates a reduced-scale regression model that consumes only a small fraction of the CPU time required by a full-scale model, which makes online capacity estimation computationally efficient. 10 years' continuous cycling data and post-explant cycling data obtained from Li-ion prismatic cells are used to verify the performance of the proposed method. (C) 2015 Elsevier B.V. All rights reserved.
机译:锂离子(Li-ion)可充电电池被用作可植入医疗设备的主要能量存储组件之一。这些设备中使用的锂离子电池的可靠性已得到包括医疗设备制造商,监管机构,患者和医生在内的广泛利益相关者的高度重视。为确保锂离子电池可靠运行,重要的是要开发健康监测技术,以准确估算电池在整个使用寿命期间的容量。本文提出了一种稀疏贝叶斯学习方法,该方法利用充电电压和电流测量结果来估计可植入医疗设备中使用的锂离子电池的容量。相关向量机(RVM)被用作概率核回归方法,以了解电池容量对从充电电压和电流测量中提取的特征的复杂依赖性。考虑到RVM的稀疏性,所提出的方法生成了缩减比例的回归模型,该模型仅消耗了满比例模型所需的一小部分CPU时间,从而使在线容量估算在计算效率上更高。从锂离子棱柱形电池获得的10年连续循环数据和植入后的循环数据用于验证所提出方法的性能。 (C)2015 Elsevier B.V.保留所有权利。

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