尺寸
多目标优化
电池(电)
计算机科学
能源管理
数学优化
储能
支持向量机
帕累托原理
汽车工程
动态规划
电容器
功率(物理)
能量(信号处理)
工程类
电压
算法
人工智能
电气工程
数学
机器学习
艺术
视觉艺术
物理
统计
量子力学
作者
Mince Li,Li Wang,Yujie Wang,Zonghai Chen
标识
DOI:10.1109/tpel.2021.3070393
摘要
Sizing optimization and energy management strategy (EMS) are two key points for the application of the hybrid energy storage system (HESS) in electric vehicles. This article aims to conduct the sizing optimization of HESS and apply an adaptive real-time EMS for practice. First, considering the system cost and battery lifespan, the multiobjective grey wolf optimizer is used to obtain the Pareto front. Second, with optimal parameters, the offline optimal power splitting results by dynamic programming (DP) under different driving patterns are analyzed. Then, the random forests (RF) method is used to learn control rules from the DP results. Driving pattern recognition (DPR) is implemented by the support vector machine (SVM). The intelligent EMS is composed of RF to guide power distribution and SVM to realize DPR. Finally, a combined load cycle involving different driving patterns is used for verification. Results illustrate that the proposed adaptive RF-based EMS can demonstrate a notable superiority in terms of battery protection, ultra-capacitor utilization, and system efficiency. Compared with the ordinary RF-based EMS without DPR, the proposed method can reduce total energy loss by 0.74%–9.49%, and reduce the battery Ah-throughput by 0.5%–19.83% under unknown driving cycles.
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