4.7 Article

Worker's physical fatigue classification using neural networks

Journal

EXPERT SYSTEMS WITH APPLICATIONS
Volume 198, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2022.116784

Keywords

Deep Learning; Fatigue; Physical activity

Funding

  1. Fondo Europeo de Desarrollo Regional'' (FEDER)
  2. Consejeria de Economia, Conocimiento, Empresas y Universidad'' of the Junta de Andalucia, under Programa Operativo FEDER 2014-2020 [US-1263715]

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Physical fatigue is not only a sign of physical condition and rest needs, but also an important symptom of various diseases. This study utilizes machine learning techniques to design a system capable of classifying fatigue variations caused by physical activity collected every 10 minutes by workers.
Physical fatigue is not only an indication of the user's physical condition and/or need for sleep or rest, but can also be a significant symptom of various diseases. This fatigue affects the performance of workers in jobs that involve some continuous physical activity, and is the cause of a large proportion of accidents at work. The physical fatigue is commonly measured by the perceived exertion (RPE). Many previous studies have attempted to continuously monitor workers in order to detect the level of fatigue and prevent these accidents, but most have used invasive sensors that are difficult to place and prevent the worker from performing their tasks correctly. Other works use activity measurement sensors such as accelerometers, but the large amount of information obtained is difficult to analyse in order to extract the characteristics of each fatigue state. In this work, we use a dataset that contains data from inertial sensors of several workers performing various activities during their working day, labelled every 10 min based on their level of fatigue using questionnaires and the Borg fatigue scale. Applying Machine Learning techniques, we design, develop and test a system based on a neural network capable of classifying the variation of fatigue caused by the physical activity collected every 10 min; for this purpose, a feature extraction is performed after the time decomposition done with the Discrete Wavelet Transform (DWT). The results show that the proposed system has an accuracy higher than 92% for all the cases, being viable for its application in the proposed scenario.

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