Air Pollution Matter Prediction Using Recurrent Neural Networks with Sequential Data

Y. B. Lim, I. Aliyu, C. Lim
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引用次数: 10

Abstract

Air pollutants such as fine dust and ozone are important factors in human health management. In this work, the future air quality of Daegu metropolitan city is predicted by using the past air quality data. Due to the time series nature of the data, we use recurrent neural networks for the experiments. The data is measured in units of one hour using various air quality sensors. Experiments were performed based on length of input data (time step) in order to obtain the optimal length. Various optimization functions and neural network structure were also investigated. The prediction accuracy of fine dust was found to be the most predictable among other environmental pollutants. Also, it was observed that learning models for nearby areas can be used to predict similar pollutant in another area without having to go through a separate learning process.
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基于序列数据的递归神经网络预测空气污染物质
细尘、臭氧等空气污染物是影响人体健康管理的重要因素。利用过去的空气质量数据,对大邱市未来的空气质量进行了预测。由于数据的时间序列性质,我们使用循环神经网络进行实验。这些数据是用各种空气质量传感器以一小时为单位测量的。根据输入数据的长度(时间步长)进行实验,以获得最佳长度。研究了各种优化函数和神经网络结构。在其他环境污染物中,细颗粒物的预测精度是最可预测的。此外,人们还观察到,附近地区的学习模型可以用来预测另一个地区的类似污染物,而无需经过单独的学习过程。
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