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A model predictive control approach combined unscented Kalman filter vehicle state estimation in intelligent vehicle trajectory tracking:

机译:结合无味卡尔曼滤波器的车辆状态估计的模型预测控制方法在智能车辆轨迹跟踪中的应用:

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Trajectory tracking and state estimation are significant in the motion planning and intelligent vehicle control. This article focuses on the model predictive control approach for the trajectory tracking of the intelligent vehicles and state estimation of the nonlinear vehicle system. The constraints of the system states are considered when applying the model predictive control method to the practical problem, while 4-degree-of-freedom vehicle model and unscented Kalman filter are proposed to estimate the vehicle states. The estimated states of the vehicle are used to provide model predictive control with real-time control and judge vehicle stability. Furthermore, in order to decrease the cost of solving the nonlinear optimization, the linear time-varying model predictive control is used at each time step. The effectiveness of the proposed vehicle state estimation and model predictive control method is tested by driving simulator. The results of simulations and experiments show that great and robust perfor...
机译:轨迹跟踪和状态估计在运动计划和智能车辆控制中非常重要。本文着重于模型预测控制方法,用于智能车辆的轨迹跟踪和非线性车辆系统的状态估计。当将模型预测控制方法应用于实际问题时,考虑了系统状态的约束,同时提出了四自由度车辆模型和无味卡尔曼滤波器来估计车辆状态。车辆的估计状态用于提供具有实时控制的模型预测控制并判断车辆的稳定性。此外,为了降低求解非线性优化的成本,在每个时间步均使用线性时变模型预测控制。通过驾驶模拟器测试了所提出的车辆状态估计和模型预测控制方法的有效性。仿真和实验结果表明,该系统具有强大的性能。

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