一种新的基于实时优化和周期不变集的运动线索算法

Martin Soyer, Sorin Olaru, Zhou Fang
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引用次数: 6

摘要

本文研究了用于驾驶仿真的运动线索算法的控制设计。随着驾驶辅助系统的发展和自动驾驶的逐步发展,汽车制造商开始关注高性能驾驶模拟,以便在生产前验证新功能和驾驶舒适性。由于工作空间大小和致动器阻力的限制,目前驾驶模拟器的工作环境受到限制。作为操作平台软件的一部分,控制模块必须通过保证驾驶员的真实加速感受来管理驾驶室的位置。为此,通常在模型预测控制(MPC)框架内设计控制器。然而,大的预测范围和约束跟踪问题意味着沉重的计算负担。为了降低实时优化的复杂度,本文提出了一种新的基于mpc的运动提示算法,该算法将周期不变集作为关键概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel Motion Cueing Algorithm based on real-time optimization and periodic invariant sets
This paper deals with control design of Motion Cueing Algorithms for driving simulation. The development of driving-assistance systems and the gradual move towards autonomous driving led automobile manufacturers to focus on high performance driving simulation in order to validate novel functionalities and driving confort before production. Driving simulators are currently constrained environments because of the workspace size and the actuators resistance. As part of the software operating the platform, a control block has to manage the position of a cabin by guaranteeing realistic acceleration feelings to a driver. In this purpose, the controller is usually design within Model Predictive Control (MPC) framework. However large prediction horizons and constrained tracking problems implies heavy computational burden. In this paper, a novel MPC-based motion cueing algorithm is proposed considering periodic invariant sets as a key concept to decrease the complexity of the real-time optimization.
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