Optimisation of Internal Model Control Performance Indices for Autonomous Vehicle Suspension

J. A. Bala, T. Karataev, Sadiq Thomas, T. A. Folorunso, A. Aibinu
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Abstract

Autonomous vehicles (AVs) have grown in popularity and acceptability due to their unique capacity to reduce pollution, road accidents, human error, and traffic congestion. Vehicle suspension is an important component of a car chassis since it affects the performance of vehicle dynamics. As a result, enhancing suspension performance and stability is critical in order to achieve a more pleasant and safer car. Although there are several suspension control methods, they all suffer from fixed gain characteristics that are prone to nonlinearities, disturbances, and the inability to be tuned online. This research provides a comparison of Internal Model Control (IMC) performance metrics for vehicle suspension control. The IMC approach was tuned using the Genetic Algorithm and the Particle Swarm Optimisation algorithms. The performance of each of these schemes was analysed and compared in order to determine the approach with the best performance in terms of AV suspension control. The performance of the system response was compared to that of the traditional IMC. According to the comparison analysis, the optimized IMC systems had lower IAE, ITAE, ISE, rising time, and settling time values than the traditional IMC. Furthermore, there were no overshoots in any of the controllers.
自动驾驶汽车悬架内模控制性能指标优化
自动驾驶汽车(AVs)由于其独特的减少污染、道路事故、人为错误和交通拥堵的能力而越来越受欢迎和接受。汽车悬架是汽车底盘的重要组成部分,它影响着汽车的动力学性能。因此,为了实现更舒适、更安全的汽车,提高悬架性能和稳定性至关重要。虽然有几种悬架控制方法,但它们都具有固定增益特性,容易产生非线性、干扰和无法在线调谐。本研究对汽车悬架控制的内模控制性能指标进行了比较。使用遗传算法和粒子群优化算法对IMC方法进行了调整。为了确定在自动驾驶汽车悬架控制方面具有最佳性能的方法,对每种方案的性能进行了分析和比较。并与传统IMC的系统响应性能进行了比较。对比分析表明,优化后的IMC系统的IAE、ITAE、ISE、上升时间和沉降时间值均低于传统IMC系统。此外,在任何控制器中都没有超调。
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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