Computationally-efficient Motion Cueing Algorithm via Model Predictive Control

A. Chadha, Vishrut Jain, A. Lazcano, Barys Shyrokau
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引用次数: 1

Abstract

Driving simulators have been used in the automotive industry for many years because of their ability to perform tests in a safe, reproducible and controlled immersive virtual environment. The improved performance of the simulator and its ability to recreate in-vehicle experience for the user is established through motion cueing algorithms (MCA). Such algorithms have constantly been developed with model predictive control (MPC) acting as the main control technique. Currently, available MPC-based methods either compute the optimal controller online or derive an explicit control law offline. These approaches limit the applicability of the MCA for real-time applications due to online computational costs and/or offline memory storage issues. This research presents a solution to deal with issues of offline and online solving through a hybrid approach. For this, an explicit MPC is used to generate a look-up table to provide an initial guess as a warm-start for the implicit MPC-based MCA. From the simulations, it is observed that the presented hybrid approach is able to reduce online computation load by shifting it offline using the explicit controller. Further, the algorithm demonstrates a good tracking performance with a significant reduction of computation time in a complex driving scenario using an emulator environment of a driving simulator.
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基于模型预测控制的高效计算运动线索算法
驾驶模拟器已经在汽车行业中使用了多年,因为它们能够在安全、可复制和可控的沉浸式虚拟环境中进行测试。通过运动线索算法(MCA)建立了模拟器的改进性能和为用户重现车内体验的能力。这类算法以模型预测控制(MPC)为主要控制技术不断得到发展。目前,现有的基于mpc的方法要么在线计算最优控制器,要么离线导出显式控制律。由于在线计算成本和/或离线内存存储问题,这些方法限制了MCA对实时应用程序的适用性。本研究提出了一种通过混合方法来处理离线和在线解决问题的解决方案。为此,使用显式MPC来生成查找表,以提供初始猜测,作为隐式基于MPC的MCA的预热启动。仿真结果表明,该方法通过显式控制器将在线计算量转移到离线状态,从而减少了在线计算量。此外,在驾驶模拟器的仿真环境中,该算法在复杂驾驶场景中具有良好的跟踪性能,显著减少了计算时间。
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