用于制造业工人多层次身体疲劳预测的可穿戴网络。

IF 2.2 Q2 MULTIDISCIPLINARY SCIENCES
PNAS nexus Pub Date : 2024-10-15 eCollection Date: 2024-10-01 DOI:10.1093/pnasnexus/pgae421
Payal Mohapatra, Vasudev Aravind, Marisa Bisram, Young-Joong Lee, Hyoyoung Jeong, Katherine Jinkins, Richard Gardner, Jill Streamer, Brent Bowers, Lora Cavuoto, Anthony Banks, Shuai Xu, John Rogers, Jian Cao, Qi Zhu, Ping Guo
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引用次数: 0

摘要

制造业工人面临着长时间的体力活动,由于工作相关的疲劳,他们的经济和健康都受到了影响。持续监测身体疲劳并提供有意义的反馈对于减少制造业工作场所的人员和经济损失至关重要。本研究介绍了多模态可穿戴传感器和机器学习技术的新应用,以量化身体疲劳并应对工厂车间实时监控的挑战。与以往将疲劳视为二分变量的研究不同,我们的核心提法是围绕预测多层次疲劳的能力,从而提供对受试者身体状况更细致入微的了解。我们的多模态传感框架设计用于连续监测生命体征,包括心率、心率变异性、皮肤温度等,并通过战略性地将惯性运动单元放置在上半身的六个位置来监测运动体征。这种全面的传感器布置使我们能够捕捉到躯干和手臂的详细数据,超越了单点数据收集方法的能力。我们为机器学习模型开发了创新的非对称损失函数,从而提高了对数值疲劳水平的预测准确性,并支持实时推理。我们按照真实的生产协议收集了 43 名受试者的数据,并记录了他们自我报告的疲劳程度。在分析的基础上,我们对多层次疲劳监测系统进行了深入分析,并讨论了对工厂车间实际操作人员的实际评估结果。这项研究证明了我们系统的实用性,并为未来研究提供了一个宝贵的开放式数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wearable network for multilevel physical fatigue prediction in manufacturing workers.

Manufacturing workers face prolonged strenuous physical activities, impacting both financial aspects and their health due to work-related fatigue. Continuously monitoring physical fatigue and providing meaningful feedback is crucial to mitigating human and monetary losses in manufacturing workplaces. This study introduces a novel application of multimodal wearable sensors and machine learning techniques to quantify physical fatigue and tackle the challenges of real-time monitoring on the factory floor. Unlike past studies that view fatigue as a dichotomous variable, our central formulation revolves around the ability to predict multilevel fatigue, providing a more nuanced understanding of the subject's physical state. Our multimodal sensing framework is designed for continuous monitoring of vital signs, including heart rate, heart rate variability, skin temperature, and more, as well as locomotive signs by employing inertial motion units strategically placed at six locations on the upper body. This comprehensive sensor placement allows us to capture detailed data from both the torso and arms, surpassing the capabilities of single-point data collection methods. We developed an innovative asymmetric loss function for our machine learning model, which enhances prediction accuracy for numerical fatigue levels and supports real-time inference. We collected data on 43 subjects following an authentic manufacturing protocol and logged their self-reported fatigue. Based on the analysis, we provide insights into our multilevel fatigue monitoring system and discuss results from an in-the-wild evaluation of actual operators on the factory floor. This study demonstrates our system's practical applicability and contributes a valuable open-access database for future research.

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