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Time-suboptimal predictive control of four-in-wheel driven electric vehicles

机译:四轮驱动电动汽车的次优预测控制

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The paper deals with the approximately time optimal control of four in-wheel-driven (4WD) electric cars in a test path under state and input constraints with initial perturbations. The path is divided into sections allowing that path information for the actual section appears in real time based on sensor fusion. For each section a separate optimum control problem is solved in a receding horizon predictive control (RHPC) fashion using the single-track model (2WD) of the vehicle. The problem is given as a dynamic nonlinear optimal control problem (DNOCP) and solved by reformulating it to a static nonlinear program (NLP) using discretization and direct multiple shooting methods. A novel method is presented to convert the RHPC optimal solution to the optimal control of 4WD cars. The conversion assures similar motion of the CoG points of both models and optimal distribution of the longitudinal wheel forces. For closed loop control of 4WD vehicle a discrete time model predictive control (MPC) is proposed which uses the optimal reference signals and the distributed wheel forces and optimizes the perturbations with analytically solvable end constraints.
机译:本文研究了在状态和输入约束条件下具有初始扰动的测试路径中的四轮驱动(4WD)电动汽车的近似时间最优控制。路径分为多个部分,允许基于传感器融合实时显示实际部分的路径信息。对于每个部分,使用车辆的单轨模型(2WD)以后视预测控制(RHPC)的方式解决了单独的最优控制问题。该问题作为动态非线性最优控制问题(DNOCP)给出,并通过离散化和直接多重射击方法将其重新格式化为静态非线性程序(NLP)得以解决。提出了一种将RHPC最优解转换为四驱车最优控制的新方法。转换可确保两个模型的CoG点的运动相似,并确保纵向车轮力的最佳分布。对于四轮驱动车辆的闭环控制,提出了一种离散时间模型预测控制(MPC),该模型使用最佳参考信号和分布的车轮力,并通过可解析的端部约束来优化扰动。

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