Li Mei, Xu Jie, Wang Zelong, Liu Shuaihang
Mechanical and Electrical Engineering College, Hainan University, Haikou 570100, China.
Sensors (Basel). 2024 Mar 8;24(6):1757. doi: 10.3390/s24061757.
Electric vehicles with hub motors have integrated the motor into the wheel, which increase the unsprung mass of the vehicle, and intensifies the vibration of the underspring components. The motor excitation during driving also intensifies the wheel vibration. The coupling effect between the two makes the performance of electric vehicles deteriorate. The article employed a disc-type permanent-magnet motor as the hub motor, taking into consideration the increase in sprung mass caused by the hub motor and the adverse effects of vertical vibration from motor excitation. Based on random road-surface excitation, and considering the secondary excitation caused by wheel motor drive and vehicle-road coupling, a coupled-dynamics model of a semi-active-suspension vehicle-road system for vertical vehicle motion is investigated under multiple excitations. Using body acceleration, suspension deflection, and dynamic tire load as evaluation indicators, a BP neural network PID controller based on the sparrow search algorithm optimization is proposed for the semi-active-suspension system. Compared with PID control and particle swarm optimization (PSO-BPNN-PID), the research findings indicate that the optimized semi-active suspension significantly improves the ride comfort of hub-motor electric vehicles, and meets the requirements for control performance under different vehicle driving conditions.
轮毂电机电动汽车将电机集成在车轮中,这增加了车辆的非簧载质量,并加剧了簧下部件的振动。行驶过程中的电机激励也会加剧车轮振动。两者之间的耦合效应使电动汽车的性能恶化。考虑到轮毂电机导致的簧载质量增加以及电机激励引起的垂直振动的不利影响,本文采用盘式永磁电机作为轮毂电机。基于随机路面激励,考虑车轮电机驱动和车辆-道路耦合引起的二次激励,研究了垂直车辆运动的半主动悬架车辆-道路系统在多种激励下的耦合动力学模型。以车身加速度、悬架挠度和动态轮胎载荷为评价指标,针对半主动悬架系统提出了一种基于麻雀搜索算法优化的BP神经网络PID控制器。与PID控制和粒子群优化(PSO-BPNN-PID)相比,研究结果表明,优化后的半主动悬架显著提高了轮毂电机电动汽车的乘坐舒适性,并满足了不同车辆行驶条件下的控制性能要求。