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Tropospheric Ozone Formation Estimation in Urban City Bangi Using Artificial Neural Network (ANN)

机译:利用人工神经网络(ANN)估算班吉市区对流层臭氧形成

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摘要

Due to the rapid development of economy and society around the world, the most urban city is experiencing tropospheric ozone or commonly known as ground-level air pollutants. The concentration of air pollutants must be identified as an early precaution step by the local environmental or health agencies. This work aims to apply the artificial neural network (ANN) in estimating the ozone concentration forecast in Bangi. It consists of input variables such as temperature, relative humidity, concentration of nitrogen dioxide, time, UVA and UVB rays obtained from routine monitoring, and data recorded. Ten hidden layer is utilized to obtain the optimized ozone concentration, which is the output layer of the ANN framework. The finding showed that the meteorology condition and emission patterns play an important part in influencing the ozone concentration. However, a single network is sufficient enough to estimate the concentration despite any circumstances. Thus, it can be concluded that ANN is able to give reliable and satisfactory estimations of ozone concentration for the following day.
机译:由于世界各地经济和社会的飞速发展,大多数城市都在经历对流层臭氧或通常被称为地面空气污染物的现象。必须由当地环境或卫生机构确定空气污染物的浓度,作为早期预防步骤。这项工作旨在将人工神经网络(ANN)用于估算班吉的臭氧浓度预报。它由输入变量组成,例如温度,相对湿度,二氧化氮浓度,时间,通过常规监测获得的UVA和UVB射线以及记录的数据。利用十个隐藏层获得优化的臭氧浓度,这是ANN框架的输出层。该发现表明,气象条件和排放模式在影响臭氧浓度方面起着重要作用。但是,即使有任何情况,单个网络也足以估算浓度。因此,可以得出结论,ANN能够在第二天给出可靠且令人满意的臭氧浓度估算值。

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