基于物联网的智能粉尘监测系统

IF 1.7 Q2 ENGINEERING, MULTIDISCIPLINARY Journal of Engineering Pub Date : 2024-06-01 DOI:10.31026/j.eng.2024.06.03
A. Y. Hassan, M. Saleh
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引用次数: 0

摘要

沙尘经常造成健康风险和气候变化,是当今人类面临的最危险问题之一。荒漠化、干旱、农业生产方式以及邻近地区的沙尘暴都会带来这一问题。基于深度学习(DL)长短期记忆(LSTM)的回归是提高沙尘预测和监测准确性的一个拟议解决方案。拟议的系统由两部分组成:第一步,利用 LSTM 和密集层构建系统,用于检测沙尘;第二步,利用拟议的无线传感器网络(WSN)和物联网(IoT)模型作为预测和监测模型。DL 系统训练和测试部分的实验应用于尘埃现象的历史数据。其数据是通过伊拉克气象组织和地震学(IMOS)原始数据集收集的,共有 170237 行和 10 列。LSTM 模型耗时少、计算复杂度低、层数少,同时对沙尘预测有效且准确。仿真结果表明,在相同的学习率和稠密层向量精确特征值的情况下,模型的均方误差测试值为 0.12877,平均绝对误差(MAE)测试值为 0.07411。最后,建议的模型提高了监控性能。
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Intelligent Dust Monitoring System Based on IoT
Dust is a frequent contributor to health risks and changes in the climate, one of the most dangerous issues facing people today. Desertification, drought, agricultural practices, and sand and dust storms from neighboring regions bring on this issue. Deep learning (DL) long short-term memory (LSTM) based regression was a proposed solution to increase the forecasting accuracy of dust and monitoring. The proposed system has two parts to detect and monitor the dust; at the first step, the LSTM and dense layers are used to build a system using to detect the dust, while at the second step, the proposed Wireless Sensor Networks (WSN) and Internet of Things (IoT) model is used as a forecasting and monitoring model. The experiment DL system train and test part was applied to dust phenomena historical data. Its data has been collected through the Iraqi Meteorological Organization and Seismology (IMOS) raw dataset with 170237 of 17023 rows and 10 columns. The LSTM model achieved small time, computationally complexity of, and layers number while being effective and accurate for dust prediction. The simulation results reveal that the model's mean square error test reaches 0.12877 and Mean Absolute Error (MAE) test is 0.07411 at the same rates of learning and exact features values of vector in the dense layer, representing a neural network layer deeply is connected to the LSTM training proposed model. Finally, the model suggested enhances monitoring performance.
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来源期刊
Journal of Engineering
Journal of Engineering ENGINEERING, MULTIDISCIPLINARY-
CiteScore
4.20
自引率
0.00%
发文量
68
期刊介绍: Journal of Engineering is a peer-reviewed, Open Access journal that publishes original research articles as well as review articles in several areas of engineering. The subject areas covered by the journal are: - Chemical Engineering - Civil Engineering - Computer Engineering - Electrical Engineering - Industrial Engineering - Mechanical Engineering
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