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A Study on Occupational Health and Safety Practices on Construction Site Workers for Finding Discomfort Level

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  • Suchismita Satapathy

    (KIIT University, India)

Abstract

Both physical and mental comfort is essential in every workplace for improving productivity. Work environment distress is exceptionally normal for laborers utilized in proactive tasks; especially the specialists occupied with building locales in India are occupied with various kinds of active work in inconvenient conditions in outrageous environment dust, and so on. So, research should be crucial for concentrating on distress levels. Along these lines, the specialists need to consider sufficient security the executives rehearse notwithstanding appropriate working stances. Consequently, an endeavor was made in this review to distinguish the potential assignment execution-related danger factors and the related uneasiness levels for the specialists occupied with building destinations with the plan to give conceivable ergonomic arrangements, to such an extent that the exhibitions of laborers' can be improved to an ideal level. In this article, an effort is taken to measure both physical and mental (psychological) discomfort levels of construction site workers.

Suggested Citation

  • Suchismita Satapathy, 2023. "A Study on Occupational Health and Safety Practices on Construction Site Workers for Finding Discomfort Level," International Journal of Social Ecology and Sustainable Development (IJSESD), IGI Global, vol. 14(1), pages 1-15, January.
  • Handle: RePEc:igg:jsesd0:v:14:y:2023:i:1:p:1-15
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    References listed on IDEAS

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