Research Unit of Advanced Robotics and Human-Centred Technologies, Università Campus Bio-Medico di Roma, 00128 Rome, Italy.
Sensors (Basel). 2023 Feb 1;23(3):1575. doi: 10.3390/s23031575.
In Industry 4.0 scenarios, wearable sensing allows the development of monitoring solutions for workers' risk prevention. Current approaches aim to identify the presence of a risky event, such as falls, when it has already occurred. However, there is a need to develop methods capable of identifying the presence of a risk condition in order to prevent the occurrence of the damage itself. The measurement of vital and non-vital physiological parameters enables the worker's complex state estimation to identify risk conditions preventing falls, slips and fainting, as a result of physical overexertion and heat stress exposure. This paper aims at investigating classification approaches to identify risk conditions with respect to normal physical activity by exploiting physiological measurements in different conditions of physical exertion and heat stress. Moreover, the role played in the risk identification by specific sensors and features was investigated. The obtained results evidenced that k-Nearest Neighbors is the best performing algorithm in all the experimental conditions exploiting only information coming from cardiorespiratory monitoring (mean accuracy 88.7±7.3% for the model trained with , and ).
在工业 4.0 场景中,可穿戴传感器允许开发用于工人风险预防的监测解决方案。当前的方法旨在识别已经发生的危险事件(如跌倒)的存在。然而,需要开发能够识别风险状况存在的方法,以防止损害本身的发生。生命和非生命生理参数的测量使工人的复杂状态估计能够识别防止跌倒、滑倒和昏厥的风险状况,这是由于身体过度劳累和热应激暴露造成的。本文旨在研究通过在不同的体力消耗和热应激条件下利用生理测量来识别与正常体力活动相关的风险条件的分类方法。此外,还研究了特定传感器和特征在风险识别中的作用。所得结果表明,k-最近邻算法在所有实验条件下都是表现最好的算法,仅利用来自心肺监测的信息(在 、 和 训练的模型的平均准确度为 88.7±7.3%)。