首页> 外文OA文献 >A LQR washout algorithm for a driving simulator equipped with a hexapod platform : the relationship of neuromuscular dynamics with the sensed illness rating
【2h】

A LQR washout algorithm for a driving simulator equipped with a hexapod platform : the relationship of neuromuscular dynamics with the sensed illness rating

机译:配备六脚架平台的驾驶模拟器的LQR淘汰算法:神经肌肉动力与感觉疾病等级的关系

摘要

This study proposes a method and an experimental validation to analyze dynamics response of the drivers with respect to the type of the control used in the hexapod driving simulator. In this article, two different forms of motion platform tracking control have been performed:- Classical motion cueing algorithm- LQR motion cueing algorithmFor each situation, the EMG (electromyography) data have been registered from arm muscles of the drivers (flexor carpi radialis, brachioradialis). In addition, the acceleration based illness ratings (IR) have been computed.In order to process the data of the EMG and IR, the linear regression with a significance level of 0.05 has been assigned. Three cases have been evaluated:1) Time exposure neuromuscular dynamics and vestibular–vehicle level conflict illness ratings2) Time exposure neuromuscular dynamics and vestibular level sensed illness ratings3) Impulse dynamics effect between the neuromuscular (EMG) and the vestibular dynamics (IR)The results have showed that:a) The vibration exposure condition: When the total RMS acceleration frequency weighted average IR increases, the EMG average total power increases too by driving the classical motion cueing algorithm. However, in contrast to this, the EMG average RMS total power decreases while the IR increases during the LQR motion cueing algorithm.b) Impulse effect condition: As the IR augments; the EMG average RMS total power also increases for the optimal motion cueing algorithm but it decreases for the classical algorithm.
机译:这项研究提出了一种方法和实验验证,以分析驾驶员对六脚架驾驶模拟器中使用的控件类型的动态响应。在本文中,执行了两种不同形式的运动平台跟踪控制:-经典运动提示算法-LQR运动提示算法对于每种情况,已从驾驶员的手臂肌肉(radial腕腕,radi臂肌)记录EMG(肌电图)数据)。此外,还计算了基于加速度的疾病评级(IR)。为了处理EMG和IR数据,已指定显着性水平为0.05的线性回归。已评估了三例:1)时间暴露神经肌肉动力学和前庭-水平冲突疾病等级2)时间暴露神经肌肉动力学和前庭水平感知疾病等级3)神经肌肉(EMG)和前庭动力学(IR)之间的脉冲动力学效应结果表明:a)振动暴露条件:当驱动经典运动提示算法时,当总RMS加速频率加权平均IR增加时,EMG平均总功率也增加。但是,与此相反,在LQR运动提示算法期间,EMG平均RMS总功率降低而IR升高。b)脉冲效应条件:随着IR的增加;最佳运动提示算法的EMG平均RMS总功率也会增加,而经典算法会降低。

著录项

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号