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Optimal braking control for an independent four wheel-motor-driven electric vehicle

机译:独立四轮电动机驱动电动车辆的最佳制动控制

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The lightweight, integrated, and high performance motor-wheel driven electric vehicle is clean, energy saving, and safe, and has the potential to form the ideal electric vehicle for the future. This paper proposes an optimal fuzzy neural network braking control strategy to determine the allocation of the front and rear regenerative braking torque and friction braking torque for the independent four Wheel-Motor-Driven (4WMD) electric vehicle. The proposed fuzzy neural network controller applies a five-layered neural network to map relations between the inputs (required total braking torque and battery State Of Charge (SOC)) and the outputs (front and rear in-wheel-motor regenerative braking torques), and uses a genetic algorithm to optimize offline the weights and thresholds of this fuzzy neural network to determine the dynamic allocation of the front and rear in-wheel-motor regenerative braking torque and friction braking torque. The objective is to maximize the battery SOC at the end of braking, and the constraints are the required braking speed of the vehicle, the limited regenerative braking torque of an in-wheel-motor, and the allowable SOC range of the battery. A lightweight independent 4WMD electric vehicle model (including vehicle longitudinal dynamic model, tyres, in-wheel motors, batteries and disc brakes) and this fuzzy neural network braking control model are built in the Matlab/Simulink environment, and are simulated and validated under different braking scenarios. The simulation results illustrate that this optimal braking control is better than the simple rule-based braking control, recovering more regenerative braking energy while meeting the vehicle braking performance requirements.
机译:轻质,集成,高性能的电动轮驱动电动车是干净,节能和安全的,并且有可能形成未来理想的电动车。本文提出了一种最佳的模糊神经网络制动控制策略,以确定独立的四轮电动机驱动(4WMD)电动车辆的前后再生制动扭矩和摩擦制动扭矩的分配。所提出的模糊神经网络控制器应用五层神经网络来映射输入之间的关系(所需的总制动扭矩和电池电量(SOC))和输出(前后轮式电动机再生制动扭矩),并使用遗传算法优化该模糊神经网络的重量和阈值,以确定前轮和后轮车载再生制动扭矩和摩擦制动扭矩的动态分配。该目的是在制动结束时最大化电池SOC,并且约束是车辆所需的制动速度,轮内电动机的有限的再生制动扭矩,以及电池的允许SOC范围。 Matlab / Simulink环境中建立了轻量级的独立4WMD电动车型(包括车辆纵向动态模型,轮胎,轮胎,轮胎,电池和盘式制动器),并在不同的情况下模拟和验证制动情景。仿真结果说明,这种最佳制动控制优于简单的基于规则的制动控制,在满足车辆制动性能要求时恢复更加再生的制动能量。

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