A Study on Design Method of Smart Device for Industrial Disaster Detection and Index Derivation for Performance Evaluation

Ran Hee Lee, Ki Tae Bae, Joon Hoi Choi
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Abstract

There are various ICT technologies continuously being developed to reduce damage by industrial accidents. And research is being conducted to minimize damage in case of industrial accidents by utilizing sensors, IoT, big data, machine learning and artificial intelligence. In this paper, we propose a design method for a smart device capable of multilateral communication between devices and smart repeater in the communication shaded Areas such as closed areas of industrial sites, mountains, oceans, and coal mines. The proposed device collects worker’s information such as worker location and movement speed, and environmental information such as terrain, wind direction, temperature, and humidity, and secures a safe distance between workers to warn in case of a dangerous situation and is designed to be attached to a helmet. For this, we proposed functional requirements for smart devices and design methods for implementing each requirement using sensors and modules in smart device. And we derived evaluation items for performance evaluation of the smart device and proposed an evaluation environment for performance evaluation in mountainous area.
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工业灾害智能检测设备设计方法及性能评价指标推导研究
为了减少工业事故的损害,不断开发各种信息通信技术。同时,利用传感器、物联网(IoT)、大数据、机器学习、人工智能(ai)等,正在研究将工业事故造成的损失降到最低。在本文中,我们提出了一种能够在工业场所、山区、海洋和煤矿等封闭区域的通信阴影区域中实现设备与智能中继器之间多边通信的智能设备的设计方法。该装置收集工人的位置、移动速度等信息,以及地形、风向、温度、湿度等环境信息,并确保工人之间的安全距离,以便在发生危险情况时发出警告,该装置被设计为附着在头盔上。为此,我们提出了智能设备的功能需求,以及利用智能设备中的传感器和模块实现每个需求的设计方法。推导了智能设备性能评价的评价项目,提出了山区智能设备性能评价的评价环境。
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