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Using portable physiological sensors to estimate energy cost for ‘body-in-the-loop’ optimization of assistive robotic devices

机译:使用便携式生理传感器估算辅助机器人设备“在环”优化的能源成本

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Lower-limb assistive robotic devices have the potential to restore ambulation in people with movement disorders. The assistance provided by these devices is governed by a large number of parameters that must be tuned on a subject-specific basis. Recently, our group developed `body-in-the-loop' optimization algorithms, and demonstrated that they can be used to automatically determine the user's energetically optimal parameter setting. However, this algorithm relies on real-time estimates of energetic cost collected via indirect calorimetry, which is unsuited for long-term use. The purpose of this study was to estimate energy cost using data from portable, wearable sensors. We collected global signals (heart rate, electrodermal activity, skin temperature, oxygen saturation) and local signals (EMG, accelerometry) from 10 healthy subjects performing 6 different activities. We trained five multiple linear regression models with different subsets of the collected data, and concluded that the regression model trained with both global and local signals performed the best for all subjects (R2=0.94±0.02). This work has the potential to result in translational, clinically-relevant tuning algorithms for assistive robotic devices. This material is based upon work supported by the National Science Foundation Graduate Research Fellowship Program under Grant No. 1256260. This material is also based upon work supported by the National Science Foundation under Grant No. 1536188. Any opinions, findings, and conclusions or recommendations expressed in this material are those of the author(s) and do not necessarily reflect the views of the National Science Foundation.
机译:低肢辅助机器人设备有可能恢复运动障碍人士的救护。这些设备提供的援助由必须以特定于科学的基础调整的大量参数。最近,我们的组开发了“循环循环的优化算法”,并说明它们可用于自动确定用户的能量上最佳参数设置。然而,该算法依赖于通过间接量热法收集的能量成本的实时估计,这是不合适的长期使用。本研究的目的是使用来自便携式可穿戴传感器的数据来估计能量成本。我们收集了全局信号(心率,电源,皮肤温度,氧气饱和度)和局部信号(EMG,加速度),来自10个不同活动的10个健康受试者。我们训练了五个多个线性回归模型,具有不同的收集数据的子集,并得出结论,以全局和本地信号培训的回归模型对所有科目的最佳方式(R 2 = 0.94±0.02)。这项工作有可能导致辅助机器人设备的翻译,临床相关的调谐算法。本材料基于国家科学基金会研究生研究所授予第12562606号的国家科学基金会研究生研究所基于工作。此材料还基于国家科学基金会授予第1536188号的国家科学基金会的工作。任何意见,调查结果和结论或建议在本材料中表达是作者的那些,并不一定反映国家科学基金会的意见。

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