科西嘉岛城市臭氧浓度人工神经网络预报

Wani W. Tamas, G. Notton, C. Paoli, C. Voyant, M. Nivet, A. Balu
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引用次数: 7

摘要

大气污染物浓度预测是大气质量监测的重要内容。负责监测科西嘉岛(法国)空气质量的组织Qualitair Corse需要开发一个短期预测模型,以引导其向公众提供信息的使命。现有各种确定性模式可用于当地预报,但需要重要的计算资源、对大气过程的良好了解,而且由于当地气候或地理的特殊性可能不准确,如在地中海的多山岛屿科西嘉岛所观察到的那样。因此,我们在这项研究中重点关注统计模型,特别是人工神经网络(ann),它在利用当地测量数据提前一小时预测臭氧浓度方面显示出良好的效果。本研究的目的是建立一个能够提前24小时预测科西嘉岛臭氧的预测器,以便能够预测污染峰值的形成并采取适当的预防措施。已知特定的气象条件会导致科西嘉的特定污染事件(例如撒哈拉沙尘事件)。因此,人工神经网络模型将与污染物和气象数据一起用于业务预测。用1年的测试数据集计算该模型的一致性指数,达到0.88。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Urban Ozone Concentration Forecasting with Artificial Neural Network in Corsica
Abstract Atmospheric pollutants concentration forecasting is an important issue in air quality monitoring. Qualitair Corse, the organization responsible for monitoring air quality in Corsica (France), needs to develop a short-term prediction model to lead its mission of information towards the public. Various deterministic models exist for local forecasting, but need important computing resources, a good knowledge of atmospheric processes and can be inaccurate because of local climatical or geographical particularities, as observed in Corsica, a mountainous island located in the Mediterranean Sea. As a result, we focus in this study on statistical models, and particularly Artificial Neural Networks (ANNs) that have shown good results in the prediction of ozone concentration one hour ahead with data measured locally. The purpose of this study is to build a predictor realizing predictions of ozone 24 hours ahead in Corsica in order to be able to anticipate pollution peaks formation and to take appropriate preventive measures. Specific meteorological conditions are known to lead to particular pollution event in Corsica (e.g. Saharan dust events). Therefore, an ANN model will be used with pollutant and meteorological data for operational forecasting. Index of agreement of this model was calculated with a one year test dataset and reached 0.88.
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