电动汽车电池性能监测算法综述

R. J. Vijaya Saraswathi, V. Krishnakumar, V. Vasan Prabhu
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引用次数: 0

摘要

电动汽车因其不依赖可再生能源和不排放有害气体而获得了很高的需求。考虑到目前各个城市的高污染状况,电动汽车是最可行的解决方案。电动汽车也有其自身的缺点。电动汽车电池的有效性、充电站或充电点的可用性、电池剩余寿命和电池健康状况的正确预测被认为是电动汽车的主要问题。使用各种收费算法来缓解许多这些问题。电动汽车的电池部分起着重要作用。目前已经开发了许多算法来监测电动汽车电池的各种参数并预测其行为模式。本文讨论了用于优化电阻-电容(RC)电路参数的RC参数优化算法,该电路通常用于模拟电动汽车电池的行为。这些算法用于增强对电池充电状态(SOC)和健康状态(SOH)的估计。讨论了遗传算法(GA)、差分进化算法(DE)、粒子群算法(PSO)、模拟退火算法(SA)和Levenberg-Marquardt算法(LM)等优化算法。本文还概述了用于监测电动汽车电池性能的各种算法。这些算法有助于提高电池SOC和SOH估计的准确性,并可用于优化电动汽车电池的性能。但是,算法的选择取决于应用程序的特定需求和可用数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Review Of Various Algorithms Used To Monitor The Performance Of EV Battery
Electric vehicles (EV) are gaining a high demand due to its non-reliance on renewable energy and no release of harmful gases. Considering the current condition of high-level pollution in various cities, electric vehicles are the most feasible solution for this problem. Electric vehicles also come with their own disadvantages. The effectiveness of the EV battery, availability of charging station or charging points, correct prediction of remaining battery life and battery health are considered the major issues in EV. Various charging algorithms are used to alleviate many of these problems. The battery part of EV’s plays a major role. Many algorithms have been developed to monitor various parameters of the battery of EVs and also predict their behavioural pattern. The paper discusses the RC parameter optimization algorithms which are used to optimize the parameters of a resistor-capacitor (RC) circuit, which is often used to model the behaviour of an EV battery. These algorithms are used for enhancing the estimates of the battery's State of Charge (SOC) and State of Health (SOH). The optimization algorithms such as Genetic Algorithm (GA), Differential Evolution (DE), Particle Swarm Optimization (PSO), Simulated Annealing (SA) and Levenberg-Marquardt (LM) algorithms are discussed. An overview of various algorithms that are used to monitor EV battery’s performance are also discussed here. These algorithms can help to improve the exactness in estimation of the battery's SOC and SOH, and can be used to optimize the performance of EV batteries. However, the algorithm choice depends on the application's specific requirements and the available data.
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