基于物联网的无人机辅助MEC智能工厂二氧化碳液位监测与自动化决策系统

M. Masuduzzaman, R. Nugraha, S. Shin
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引用次数: 3

摘要

监测智能工厂中的二氧化碳气体水平是必不可少的,因为高浓度的二氧化碳气体会对人体产生负面影响,导致各种身体问题。本文介绍了一种基于物联网(IoT)的智能工厂二氧化碳气体浓度监测和自动化决策系统,该系统采用无人机(UAV)和多址边缘计算(MEC)技术。首先,使用不同的物联网设备使用气体传感器连续监测和检测二氧化碳气体水平数据。针对无线传感器网络存在的汇聚节点故障和集中采集数据的缺点,提出了一种基于无人机的CO2气体液位连续监测方法。此外,考虑到无人机有限的电池容量和低处理能力,通过从无人机卸载传感器数据利用MEC-enabled数据处理技术。最后,设计了一个基于区块链的安全决策系统,在二氧化碳气体含量过高的紧急情况下,通过提醒所有员工撤离智能工厂。结果分析表明,物联网设备可以使用无人机成功监测和检测智能工厂中的二氧化碳气体水平。此外,如果二氧化碳水平过高,无人机可以安全地将传感器数据卸载到MEC服务器进行分析并做出自动决策,提醒智能工厂的所有员工撤离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IoT-based CO2 Gas-level Monitoring and Automated Decision-making System in Smart Factory using UAV-assisted MEC
Monitoring the CO2 gas level in a smart factory is essential as the high levels of CO2 gas negatively affect the human body, causing various physical problems. This paper presents an Internet of Things (IoT) based CO2 gas level monitoring and automated decision-making system inside a smart factory using the unmanned aerial vehicle (UAV) and multi-access edge computing (MEC) technique. Firstly, different IoT device is used to continuously monitor and detect the CO2 gas level data using gas sensors. Due to the drawback of sink node failure and the centralized data collection technique of wireless sensor networks, a UAV-based continuous CO2 gas level monitoring approach has been introduced in this study. Moreover, the MEC-enabled data processing technique is utilized by offloading the sensor data from the UAV considering its limited battery capacity and low processing power. Finally, a blockchain-based secure decision-making system is designed to evacuate the smart factory premises by alerting all employees in an emergency case of an excessive level of CO2 gas existence. Result analysis shows that the IoT devices can successfully monitor and detect the CO2 gas level in the smart factory using the UAV. Furthermore, the UAV can securely offload sensor data to the MEC server to analyze and make an automated decision to alert all employees in a smart factory to evacuate if CO2 levels are too high.
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