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A Motion Cueing Algorithm Based on Model Predictive Control Using Terminal Conditions in Urban Driving Scenario

机译:基于模型预测控制的运动提示算法在城市驾驶场景中使用终端条件的模型预测控制

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The motion cueing algorithm (MCA) is in charge of the real vehicle motion feeling regeneration for the driver of the simulation-based motion platform (SBMP) with respect to its limitations. The model predictive control (MPC) has been newly employed in developing MCAs to calculate the optimal input signals for delivering the best motion feeling to the SBMP's drivers while respecting the boundaries of the platform. The stability of the MCA based on MPC has become one of the main issues for some scenarios, such as an urban driving scenario, which involves sudden decelerations/accelerations (stop and start moving), sharp and large turn, and slalom movement. The urban driving scenario destabilizes the current MCA based on MPC and leads the undesired motion fluctuations, which create an unpleasant motion artifact for the SBMP drivers. Therefore, the displacement of the SBMP should be penalized conservatively to respect the workspace boundaries for all driving scenarios. This will make the motion conservative and can cause some motion-feeling error. In this article, the concept of terminal conditions (weights and states) are employed for the first time to design and develop a new generation of MCA based on MPC to enhance the performance of the model for different scenarios, such as the heavy-traffic scenario in the urban areas. Also, the stability of the MPC by considering the terminal conditions is investigated in the MCA domain. Then, the MCA based on MPC by considering terminal conditions is developed using the MATLAB software with a presentation of the urban motion scenario. The outcomes demonstrate the effectiveness of the designed model with a common MCA based on MPC without the consideration of the terminal conditions.
机译:运动提示算法(MCA)负责关于其限制的基于模拟的运动平台(SBMP)的驾驶员的真实车辆运动感觉再生。模型预测控制(MPC)已经新用在开发MCAS以计算用于在尊重平台的边界的同时向SBMP驱动器提供最佳运动感的最佳输入信号。基于MPC的MCA的稳定性已成为某些情况的主要问题之一,例如城市驾驶场景,涉及突然减速/加速(停止和开始移动),尖锐且较大的转弯和斜坡运动。城市驾驶场景基于MPC稳定当前的MCA,并导致不期望的运动波动,为SBMP驱动程序创造一个令人不快的运动伪影。因此,SBMP的位移应该保守地惩罚,以尊重所有驾驶场景的工作空间边界。这将使运动保守,并可能导致一些运动误差。在本文中,终端条件(权重和状态)的概念首次采用设计和开发基于MPC的新一代MCA,以增强模型的不同方案的性能,例如重交通方案在市区。此外,在MCA结构域中研究了MPC通过考虑终端条件的稳定性。然后,通过考虑终端条件的基于MPC的MCA使用MATLAB软件开发,具有城市运动场景的呈现。结果证明了所设计模型的有效性,基于MPC在不考虑终端条件的情况下基于MPC的常见MCA。

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