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Using Non-invasive Wearable Sensors to Estimate Perceived Fatigue Level in Manual Material Handling Tasks

机译:使用非侵入性可穿戴传感器来估计手动材料处理任务中的感知疲劳水平

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Physical fatigue in manual material handling (MMH) may cause musculoskeletal disorders (MSDs), which threatens the well-being of workers. However, conventional techniques for measuring fatigue have their limitations and are difficult to implement in realistic working conditions without sufficient resources. In this study, we proposed a method utilizing non-invasive wearable sensors to collect bio-signals (respiration, photo-plethysmography, and elec-trodermal activity) and estimate perceived physical fatigue. Six participants volunteered in two MMH tasks at two paces. Subsets of five bio-signal measures were selected to estimate perceived fatigue levels using a universal regression model and six individualized regression models. We classified perceived fatigue into three levels and examined the correct classification rate of the estimated fatigue levels. Correct classification rates for the general model and the individualized models were 67% and 80%, respectively. Results confirm the feasibility to predict fatigue level using wearable sensors, but the regression models should be used with caution.
机译:手动材料处理(MMH)中的物理疲劳可能导致肌肉骨骼障碍(MSDS),威胁到工人的福祉。然而,用于测量疲劳的常规技术具有它们的局限性,并且难以在现实工作条件下实现而没有足够的资源。在这项研究中,我们提出了一种利用非侵入性可穿戴传感器的方法来收集生物信号(呼吸,光学体积和电瘤活动)并估计感知的物理疲劳。六位参与者在两个步伐中志愿的两个MMH任务。选择五个生物信号措施的子集以使用普遍回归模型和六个个性化回归模型来估计感知疲劳水平。我们将感知疲劳分为三个级别,并检查了估计疲劳水平的正确分类率。普通模型和个性化模型的正确分类率分别为67%和80%。结果确认使用可穿戴传感器预测疲劳水平的可行性,但应谨慎使用回归模型。

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