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An Air Quality Predictive Model of Licang of Qingdao City Based on BP Neural Network

机译:基于BP神经网络的青岛市柯唐空气质量预测模型

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摘要

In order to obtain high precision results of urban air quality forecast, we propose a short-term predictive model of air quality in this paper, which is on the basis of the ambient air quality monitoring data and relevant meteorological data of a monitoring site in Licang district of Qingdao city in recent three years. The predictive model is based on BP neural network and used to predict the ambient air quality in the next some day or within a certain period of hours. In the design of the predictive model, we apply LM algorithm, Simulated Annealing algorithm and Early Stopping algorithm into BP network, and use a reasonable method to extract the historical data of two years as the training samples, which are the main reasons why the prediction results are better both in speed and in accuracy. And when predicting within a certain period of hours, we also adopt an average and equivalent idea to reduce the error accuracy, which brings us good results.
机译:为了获得城市空气质量预测的高精度结果,我们提出了本文的空气质量的短期预测模型,这是基于Licang的环境空气质量监测数据和监测网站的相关气象数据青岛市近三年。预测模型基于BP神经网络,并且用于预测未来一天或在一定时间内的环境空气质量。在预测模型的设计中,我们将LM算法,模拟退火算法和早期停止算法应用于BP网络,并使用合理的方法将两年的历史数据提取为训练样本,这是预测的主要原因结果在速度和准确性方面都更好。在一定时间内预测时,我们还采用平均值和等同的想法来降低误差精度,从而为我们带来了良好的效果。

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