Battery Modeling and Lifetime Prediction

J. P. Salameh, Nagham El Ghossein, M. E. Hassan, N. Karami, M. Najjar
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引用次数: 4

Abstract

Battery Management Systems (BMS) are gaining greater interest by researchers due to the excessive increase of battery dependent electrical/electronic systems. Batteries are becoming more abundantly used worldwide, mainly in wireless mobile electrical devices, as well as Hybrid Electric Vehicles (HEVs) and Electric Vehicles (EVs). Moreover, batteries emerged as the only device capable of storing transformed energy, henceforth they formed the power banks of all renewable energy systems extending from solar panels, wind turbines, etc. This paper targets modeling various types of batteries, which implemented into the BMS can give an insight on their performance. Parameters of three common models for various types of batteries were identified. Moreover, a common method that gives an insight on the lifespan of any battery under examination was found. This technique was based on several measurements taken at the laboratory and relies on using the Bayesian classifier for finding the state of health of a tested battery. Fast methods are introduced starting from modeling batteries to knowing their lifespan.
电池建模和寿命预测
由于依赖电池的电气/电子系统的过度增加,电池管理系统(BMS)越来越受到研究人员的关注。电池在全球范围内的应用越来越广泛,主要用于无线移动电子设备,以及混合动力电动汽车(hev)和电动汽车(ev)。此外,电池成为唯一能够储存转化能量的设备,从此它们形成了从太阳能电池板、风力涡轮机等所有可再生能源系统的电源库。本文的目标是对各种类型的电池进行建模,将其实现到BMS中可以深入了解其性能。确定了不同类型电池的三种常用型号的参数。此外,还发现了一种常见的方法,可以了解任何被检查电池的寿命。这项技术是基于在实验室进行的几次测量,并依赖于使用贝叶斯分类器来发现被测电池的健康状态。介绍了从电池建模到电池寿命计算的快速方法。
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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CiteScore
0.30
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