Classification of Air Pollution Levels using Artificial Neural Network

F. Hamami, Inayatul Fithriyah
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引用次数: 6

Abstract

Air pollution can be a threat to the human environment. It becomes a global issue in the world for every country. Air pollution is caused by many factors and becomes dangerous if the concentration level exceeds the normal levels. Several gasses including PM10, SO2, CO, O3, and NO2 can be hazard pollution. These gasses concentration can be sensed by IoT sensors. When the concentration is exceeds the threshold, it become unhealthy condition for human life. This paper proposes to classify air pollution level from IoT data for understanding current condition of air quality. This research proposes neural network methods to classify data into three air pollution levels. The neural network architecture is built from a combination of hidden layers, number of neurons and number of epochs. Based on the experiment, the accuracy of the neural network model can achieve up to 96.61%.
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基于人工神经网络的空气污染等级分类
空气污染会对人类环境造成威胁。这对每个国家来说都是一个全球性的问题。空气污染是由许多因素引起的,如果浓度超过正常水平就会变得危险。包括PM10、SO2、CO、O3和NO2在内的几种气体都是有害污染。这些气体浓度可以通过物联网传感器检测。当浓度超过阈值时,就会对人的生命产生不良影响。本文提出利用物联网数据对空气污染程度进行分类,以了解当前空气质量状况。本研究提出神经网络方法,将数据分为三个空气污染等级。神经网络架构是由隐藏层、神经元数量和epoch数量的组合构建的。实验结果表明,该神经网络模型的准确率可达96.61%。
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