The State Key Laboratory of Mechanical System and Vibration, School of Mechanical Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.
Department of Automation, University of Science and Technology of China, Hefei 230026, China.
Sensors (Basel). 2020 Dec 3;20(23):6915. doi: 10.3390/s20236915.
The recent explosion of wearable electronics has led to widespread interest in harvesting human movement energy, particularly during walking, for clinical and health applications. However, the amount of energy available to harvest and the required metabolic rate for wearable energy harvesting varies across subjects. In this paper, we utilize custom energy harvesting sliding shoes to develop and evaluate multivariate linear regression models to predict metabolic rate and energy harvesting rate during overground walking outside of the lab. Subjects performed 200 m self-selected normal and fast walking trials on flat ground with custom sliding shoes. Metabolic rate was measured with a portable breathing analysis system and energy harvesting rate was measured directly from the generator on the custom sliding shoes. Model performance was determined by comparing the difference between actual and predicted metabolic and energy harvesting rates. Overall, predictive modeling closely matched the actual values, and there was no statistical difference between actual and predicted average metabolic rate or between actual and predicted average energy harvesting rate. Energy harvesting sliding shoes could potentially be used for a variety of wearable devices to reduce onboard energy storage, and these findings could serve to inform expected energy harvesting rates and associated required metabolic cost for a diverse array of medical and health applications.
近年来,可穿戴电子产品的爆炸式发展引发了人们对人体运动能量收集的广泛兴趣,特别是在行走过程中,用于临床和健康应用。然而,可用于收集的能量量以及可穿戴能量收集所需的代谢率因受试者而异。在本文中,我们利用定制的能量收集滑行鞋来开发和评估多元线性回归模型,以预测实验室外地面行走时的代谢率和能量收集率。受试者穿着定制的滑行鞋在平地进行了 200 米自选的正常和快速行走试验。代谢率通过便携式呼吸分析系统进行测量,能量收集率则直接从定制滑行鞋上的发电机测量。通过比较实际和预测的代谢率和能量收集率之间的差异来确定模型性能。总体而言,预测模型与实际值非常匹配,实际平均代谢率与预测平均代谢率之间以及实际平均能量收集率与预测平均能量收集率之间均无统计学差异。能量收集滑行鞋可用于各种可穿戴设备,以减少板载储能,这些发现可以为各种医疗和健康应用提供预期的能量收集率和相关的所需代谢成本信息。