基于组合隐层超参数的便携式神经网络空气质量监测系统

Cindy Ulan Purwanti, H. Mahmudah, Rahardita Widyatra Sudibyo, Ilham Dwi Pratama, Nur Menik Rohmawati
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引用次数: 0

摘要

交通运输和工业部门正在迅速发展,以空气污染的形式产生了积极和消极的后果。根据全球健康与污染联盟(GAHP)的数据,2017年全球有340万人死于与空气污染有关的原因,其中12.37万人死于空气污染。因此,本研究建立了一个便携式系统来监测空气质量,并使用人工神经网络(ANN)对其进行分类,分类结果显示在Android应用程序上。空气质量分类是通过改变人工神经网络(ANN)的超参数来完成的,如隐藏层神经元的数量、dropout和批大小,同时利用气体参数PM10、PM2.5、NO2、SO2、CO和03。分类结果也将分为五个类别:良好、中等、满意、差和极差的空气质量。该系统旨在提供准确的结果。
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Portable Air Quality Monitoring System in ANN Using Combination Hidden Layer Hyperparameters
The transportation and industrial sectors are growing rapidly, with positive and negative consequences in the form of air pollution. According to the Global Alliance on Health and Pollution (GAHP), 3.4 million people died from air pollution-related causes worldwide in 2017, with 123,700 of them dying as a result of air pollution. As a result, a portable system was built in this study to monitor air quality and categorize it using the Artificial Neural Network (ANN), with the classification results displayed on an Android application. Air quality classification is accomplished by varying the hyperparameters of the Artificial Neural Network (ANN), such as the number of hidden layer neurons, dropout, and batch size, while utilizing the gas parameters PM10, PM2.5, NO2, SO2, CO, and 03. The classification results will also be classified into five categories: good, moderate, satisfactory, poor, and very poor air quality. The system is intended to give accurate results.
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