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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Human Behavior Model-Based Predictive Control of Longitudinal Brain-Controlled Driving
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Human Behavior Model-Based Predictive Control of Longitudinal Brain-Controlled Driving

机译:基于人类的行为模型的纵向脑控制驾驶预测控制

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摘要

Using brain signals rather than limbs to drive a vehicle may not only help persons with disabilities to acquire driving ability, but also provide a new alternative interface for healthy people to control a vehicle. However, the longitudinal driving performance of brain-controlled vehicles (BCVs) at a relatively high speed is not good enough. In this paper, to improve the performance of the longitudinal brain-control driving, we propose a new predictive control method based on the models of human behaviors and vehicle dynamics. The proposed method is designed to maintain rear-end safety of BCVs and driver ride comfort while ensuring the maximum control authority of brain-control drivers. Driver-and-hardware-in-the-loop experiments are conducted with different subjects under three kinds of scenarios to validate the proposed method. The results show that the proposed method is effective in maintaining rear-end safety and driver ride comfort while preserving driver intention.
机译:使用脑信号而不是四肢驾驶车辆可能不仅可以帮助残疾人获得驾驶能力,而且还为健康人提供了一种新的替代界面来控制车辆。然而,以相对高速的脑控制车辆(BCV)的纵向驱动性能不够好。本文提高了纵向脑控制驾驶的性能,我们提出了一种基于人类行为和车辆动态模型的新预测控制方法。该拟议的方法旨在保持BCVS和驾驶员的后端安全,同时确保脑控制驱动器的最大控制权。驾驶员和硬件在循环实验中,在三种情况下使用不同的受试者进行,以验证提出的方法。结果表明,该方法在保持驾驶员意图的同时保持后端安全和驾驶员驾驶舒适性。

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