[以物流为例,使用机器学习来预测压力]。

Zeitschrift fur Arbeitswissenschaft Pub Date : 2021-01-01 Epub Date: 2021-07-13 DOI:10.1007/s41449-021-00263-w
Hermann Foot, Benedikt Mättig, Michael Fiolka, Tim Grylewicz, Michael Ten Hompel, Veronika Kretschmer
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引用次数: 1

摘要

自20世纪初以来,人们一直在研究应力及其复杂效应。总之,工作世界中各种各样的心理和生理压力源会导致机体紊乱和疾病。由于压力的生理和主观后果各不相同,因此无法确定绝对的阈值。本文利用机器学习方法研究了生理和主观应激参数模式的系统识别和应激预测。物流部门作为一个实际的应用案例,其中压力因素往往植根于活动和工作组织。防止压力的一个设计元素是工作休息。ML方法用于研究在生理和主观参数的基础上预测应力的程度,以便单独推荐休息。本文介绍了物流动态中断管理软件解决方案的初步情况。实际意义:“动态突破”软件解决方案的目的是预防因物流中的精神和身体压力因素而产生的压力,并长期保持员工的健康,满意,适合工作和生产力。个性化休息作为一种设计元素,可以支持公司根据物流的动态需求更灵活地部署人力资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

[Use of machine learning for the prediction of stress using the example of logistics].

[Use of machine learning for the prediction of stress using the example of logistics].

[Use of machine learning for the prediction of stress using the example of logistics].

[Use of machine learning for the prediction of stress using the example of logistics].

Stress and its complex effects have been researched since the beginning of the 20th century. The manifold psychological and physical stressors in the world of work can, in sum, lead to disorders of the organism and to illness. Since the physical and subjective consequences of stress vary individually, no absolute threshold values can be determined. Machine learning (ML) methods are used in this article to research the systematic recognition of patterns of physiological and subjective stress parameters and to predict stress. The logistics sector serves as a practical application case in which stress factors are often rooted in the activity and work organisation. One design element of the prevention of stress is the work break. ML methods are used to investigate the extent to which stress can be predicted on the basis of physiological and subjective parameters in order to recommend breaks individually. The article presents the interim status of a software solution for dynamic break management for logistics.Practical Relevance: The aim of the software solution "Dynamic Break" is to preventively prevent stress resulting from mental and physical stress factors in logistics and to keep employees healthy, satisfied, fit for work and productive in the long term. Individualized rest breaks as a design element can support companies in deploying human resources more flexibly in line with the dynamic requirements of logistics.

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