IoT-Aware Architecture to Guarantee Safety of Maintenance Operators in Industrial Plants

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied System Innovation Pub Date : 2023-03-28 DOI:10.3390/asi6020046
Teodoro Montanaro, Ilaria Sergi, Ilaria Stefanizzi, L. Landi, Luciano Di Donato, L. Patrono
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引用次数: 2

Abstract

One of the most important factors that influence people’s daily lives and their well-being at work is the so-called “worker safety”. Different literature works demonstrated the positive effects on worker mood and well-being brought by the awareness of being in a safe environment and, consequently, less prone to accidents. Every working environment should guarantee safety protection to employees and operators both in normal operations and extraordinary duties (e.g., maintenance operations), however, the industrial domain is the one that is more exposed to risks for workers. Different technologies already accomplished such requirements in “normal” operations, nonetheless, the literature still lacks solutions to also monitor and guide operators during exceptional and dangerous operations (e.g., maintenance). The combination of IoT and Industry 4.0 can guide the research toward the resolution of the maintenance-related exposed problems. This paper proposes an IoT-aware architecture for the industrial domain to support maintenance operators. It was designed to guide them step by step while real-time monitoring plant, machinery, and other employees working in the same area. During the maintenance procedure, the operator is guided in the proper execution of every single step required by maintenance and an autonomous IoT system monitors the status of the different parts of the plants and machinery to, then, authorize and show, the next steps foreseen in the maintenance process. To test the feasibility and usefulness of the proposed system, a prototype was developed and functionally tested through the exploitation of a machinery simulator and a real lathe machine.
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物联网感知架构保障工业厂房维护人员安全
影响人们日常生活和工作幸福感的最重要因素之一就是所谓的“工人安全”。不同的文献作品证明了在安全环境中的意识对工人的情绪和幸福感带来的积极影响,从而减少了事故的发生。每个工作环境都应该保证员工和操作员在正常操作和特殊任务(例如维修操作)中的安全保护,然而,工业领域是工人更容易暴露于风险的领域。不同的技术已经在“正常”作业中实现了这些要求,然而,文献中仍然缺乏在异常和危险作业(例如维护)期间监控和指导操作人员的解决方案。物联网与工业4.0的结合可以引导研究解决与维护相关的暴露问题。本文提出了一种工业领域的物联网感知架构,以支持维护操作员。它的设计是为了指导他们一步一步,同时实时监控工厂、机器和在同一区域工作的其他员工。在维护过程中,操作员被指导正确执行维护所需的每一个步骤,一个自主的物联网系统监控工厂和机械不同部分的状态,然后授权和显示维护过程中预见的下一步。为了验证该系统的可行性和实用性,开发了原型机,并通过机械模拟器和实际车床进行了功能测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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