The multi-source electromechanical coupling makes the energy management of fuel cell electric vehicles (FCEVs) relatively nonlinear and complex especially in the types of 4-wheel-drive (4WD) FCEVs. Accurate state observing for complicated nonlinear system is the basis for fantastic energy managing in FCEVs. Aiming at releasing the energy-saving potential of FCEVs, a novel learning-based robust model predictive control (LRMPC) strategy is proposed for a 4WD FCEV, contributing to suitable power distribution among multiple energy sources. The well-designed strategy based on machine learning (ML) translates the knowledge of the nonlinear system to the explicit controlling scheme with superior robust performance. To start with, ML methods with high regression accuracy and superior generalization ability are trained offline to establish the precise state observer for SOC. Then, explicit data tables for SOC generated by state observer are used for grabbing accurate state changing, whose input features include the vehicle status and the states of vehicle components. To be specific, the vehicle velocity estimation for providing future speed reference is constructed by deep forest. Next, the components including explicit data tables and vehicle velocity estimation are combined with model predictive control (MPC) to release the state-of-the-art energy-saving ability for the multi-freedom system in FCEVs, whose name is LRMPC. At last, the detailed assessment is performed in simulation test to validate the advancing performance of LRMPC. The corresponding results highlight the optimal control effect in energy-saving potential and strong real-time application ability of LRMPC.
翻译:多源电子机械联结使燃料电池电动车辆(FCEVs)的能源管理相对非线性和复杂,特别是在四轮驱动(4WD)FCEV类型中,燃料电池电动车辆(FCEVs)的能源管理相对非线性和复杂性。对复杂的非线性系统进行准确的观测是FCEVs极佳的能源管理的基础。为了释放FCEVs的节能潜力,为4WD FC FCEV提出了一个新的基于学习的稳健模型预测控制(LRMPC)战略,有助于多能源源之间的适当电力分配。基于机器学习(ML)的精心设计的战略将非线性系统的知识转化为明确的控制计划,其性能表现优强的系统。首先,具有高回归精确度和超强的通用能力的MLLEVC方法被培训出,以建立SOC的准确的州观察员。随后,州观察员为SOC制作的清晰的数据表用于获取准确的状态变化,其投入特征包括车辆状况和车辆部件的状态。具体而言,为提供未来快速模型参考基准基准参考参考度参考系统,由深层的REPC的准确的REPC 能力估算,其精确测试能力评估,其最精度数据表和最精确性能性能-在FDMDMDMDMDMDMDMDMDMDMMMMMMMMMMMM的交付中,其最精确性能中,其交付的交付。