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An integrated neural network model for PM10 forecasting

机译:用于PM10预报的集成神经网络模型

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We have developed an integrated artificial neural network model to forecast the maxima of 24h average of PM 10 concentrations I day in advance and we have applied it to the case of five monitoring stations in the city of Santiago, Chile. Inputs to the model are concentrations measured until 7 PM at the five stations on the present day plus measured and forecast values of meteorological variables. Outputs are the expected maxima concentrations for the following day at the site of the same five stations. The greatest of the concentrations among the five forecasts defines air quality for the following day. According to the range where the concentrations fall, three levels or classes of air quality are defined: good (A), bad (B) and critical (C). We have adjusted the parameters of the models using 2001 and 2002 data to forecast 2003 conditions and 2002 and 2003 data in order to forecast 2004 values. Forecast values using the neural model are compared with the results obtained with a linear model with the same input variables and with persistence. According to the results reported here, overall, the neural model seems more accurate, although a good choice of input variables appears to be very important. (c) 2006 Elsevier Ltd. All rights reserved.
机译:我们已经开发了一个集成的人工神经网络模型来提前一天预测PM 10浓度的24小时平均值最大值,并将其应用于智利圣地亚哥市的五个监测站。该模型的输入是在今天的五个站点中测量到晚上7点为止的浓度,加上气象变量的测量值和预测值。输出是第二天在相同五个站点的站点的预期最大浓度。五次预报中最大的一次集中定义了第二天的空气质量。根据浓度下降的范围,定义了空气质量的三个级别或类别:好(A),差(B)和严重(C)。我们使用2001年和2002年的数据调整了模型的参数,以预测2003年的状况,并使用2002年和2003年的数据预测2004年的值。将使用神经模型的预测值与具有相同输入变量且具有持久性的线性模型的结果进行比较。根据此处报告的结果,总的来说,尽管输入变量的选择非常重要,但神经模型似乎更准确。 (c)2006 Elsevier Ltd.保留所有权利。

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