利用神经网络对空气污染水平进行短期预测

G. Ibarra-Berastegi, J. Sáenz, A. Ezcurra, A. Elias, A. Barona
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引用次数: 11

摘要

本文重点预测了西班牙毕尔巴鄂地区6个地点的5种污染物(SO2、CO、NO2、NO和O3)在8小时前的每小时水平。为此,建立了216个基于神经网络(NN)的模型。用于拟合神经网络的数据库是该地区自2000年以来存在的交通、气象和空气污染网络的历史记录。然后,对这些模型进行了相同网络的数据测试,但对应于2001年。在第一阶段,对216个案例中的每一个案例,使用对应于2000年的数据建立了基于不同类型神经网络的100个模型。在适用于2001年数据时,R2、d1、FA2和RMSE的最佳值同时具有95%置信水平的标准下,最终确定了最佳模型。根据传感器的不同,每小时由于数据预测的差距而可能发生的情况从11%到38%不等。根据污染物、地点和预报前的小时数,选择了不同类型的模型。使用这些基于神经网络的模型可以为毕尔巴鄂的空气污染网络提供短期、实时的预测能力,该网络最初是为诊断目的而设计的。这些模型在区域内不同传感器上的表现从预测1 h前NO2的最大值R2=0.88到预测8 h前臭氧的最小值R2=0.15。这些边界和可能预测的案例数量的限制代表了毕尔巴鄂网络在实际操作条件下可以提供的最大预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using neural networks for short-term prediction of air pollution levels
The present paper focuses on the prediction of hourly levels up to 8 hours ahead for five pollutants (SO2, CO, NO2, NO and O3) and six locations in the area of Bilbao (Spain. To that end, 216 models based on neural networks (NN) have been built. The database used to fit the NN's has been historical records of the traffic, meteorological and air pollution networks existing in the area corresponding to year 2000. Then, the models have been tested on data from the same networks but corresponding to year 2001. At a first stage, for each of the 216 cases, 100 models based on different types of neural networks have been built using data corresponding to year 2000. The final identification of the best model has been made under the criteria of simultaneously having at a 95% confidence level the best values of R2, d1, FA2 and RMSE when applied to data of year 2001. The number of hourly cases in which due to gaps in data predictions have been possible range from 11% to 38% depending on the sensor. Depending on the pollutant, location and number of hours ahead the prediction is made, different types of models have been selected. The use of these models based on NN's can provide Bilbao's air pollution network originally designed for diagnosis purposes, with short-term, real time forecasting capabilities. The performance of these models at the different sensors in the area range from a maximum value of R2=0.88 for the prediction of NO2 1 hour ahead, to a minimum value of R2=0.15 for the prediction of ozone 8 hours ahead. These boundaries and the limitation in the number of cases that predictions are possible represent the maximum forecasting capability that Bilbao's network can provide in real-life operating conditions.
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