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Input strategy analysis for an air quality data modelling procedure at a local scale based on neural network

机译:基于神经网络的局部空气质量数据建模过程的输入策略分析

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摘要

In recent years, a significant part of the studies on air pollutants has been devoted to improve statistical techniques for forecasting the values of their concentrations in the atmosphere. Reliable predictions of pollutant trends are essential not only for setting up preventive measures able to avoid risks for human health but also for helping stakeholders to take decision about traffic limitations. In this paper, we present an operating procedure, including both pollutant concentration measurements (CO, SO2, NO2, O-3, PM10) and meteorological parameters (hourly data of atmospheric pressure, relative humidity, wind speed), which improves the simple use of neural network for the prediction of pollutant concentration trends by means of the integration of multivariate statistical analysis. In particular, we used principal component analysis in order to define an unconstrained mix of variables able to improve the performance of the model. The developed procedure is particularly suitable for characterizing the investigated phenomena at a local scale.
机译:近年来,空气污染物研究的很大一部分致力于改进统计技术,以预测其在大气中的浓度值。对污染物趋势的可靠预测不仅对于建立能够避免人类健康风险的预防措施至关重要,而且对于帮助利益相关者做出有关交通限制的决定都是至关重要的。在本文中,我们提出了一种操作程序,包括污染物浓度测量(CO,SO2,NO2,O-3,PM10)和气象参数(大气压,相对湿度,风速的每小时数据),这提高了简单易用性多元统计分析集成的神经网络预测污染物浓度趋势。特别是,我们使用主成分分析来定义无限制的变量组合,从而能够改善模型的性能。所开发的程序特别适合于局部表征所研究的现象。

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