Model Predictive Control Design for Electric Vehicle Based on Improved Physics-Inspired Optimization Algorithms

Q3 Environmental Science Tikrit Journal of Engineering Sciences Pub Date : 2023-12-05 DOI:10.25130/tjes.30.4.12
M. S. Alkreem, N. H. Abbas
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Abstract

Abstract: This paper introduces the mathematical model of the leader-follower electric vehicle (EV). Consequently, the system was analyzed to obtain stability and performance. Model Predictive Control (MPC) is also proposed to fix the EV system issues. Moreover, two optimization algorithms are applied to optimize the performance of the MPC: electrically charged particle optimization (ECPO) and improved chaotic electromagnetic field optimization (ICEFO). The MPC scheme is based on the Adaptive Cruise Control System (ACCS), applied to two vehicles: the leader and follower. In this context, the simulation results of both optimization methods with the MPC scheme are presented in the result section. Finally, a comparison is made to show the proposed controller’s effectiveness with the improved optimization algorithms. Also, the ACC electric vehicle tracking system was achieved at 98% with the reference input.
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基于改进物理优化算法的电动汽车模型预测控制设计
摘要:本文介绍了领跑者-追随者电动汽车(EV)的数学模型。随后,分析了系统的稳定性和性能。同时还提出了模型预测控制(MPC)来解决电动汽车系统问题。此外,还应用了两种优化算法来优化 MPC 的性能:带电粒子优化 (ECPO) 和改进的混沌电磁场优化 (ICEFO)。MPC 方案基于自适应巡航控制系统 (ACCS),适用于两辆车:领跑者和跟随者。在此背景下,结果部分介绍了两种优化方法与 MPC 方案的仿真结果。最后,比较显示了建议的控制器与改进的优化算法的有效性。此外,在参考输入的情况下,ACC 电动汽车跟踪系统的跟踪率达到了 98%。
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CiteScore
1.50
自引率
0.00%
发文量
56
审稿时长
8 weeks
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