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A Neural Network model forecasting for prediction of hourly ozone concentration in Corsica

机译:预测科西嘉岛每小时臭氧浓度的神经网络模型预测

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This paper presents the first results of a research project aimed at building a pollution peaks predictor using Artificial Neural Networks (ANNs) with data measured locally. We focus more particularly on the ozone concentration prediction in the Corsica Island at horizon “h+1”. We mainly look at the Multi-Layer Perceptron (MLP) network which is the most used of ANNs architectures both in the Environment domain and in the time series forecasting. We have demonstrated that an optimized MLP with endogenous, exogenous and time indicator inputs can forecast hourly ozone concentration with acceptable accuracy. The final results indicate that our predictor has an average Mean Absolute Percentage Error (MAPE) equal to 10.5%. Knowing that the devices measurement accuracy is around 10%, these results are considered as very convincing by “Qualitair Corse”, regional organization responsible for monitoring air quality. We have also tested in "real conditions" our predictor: indeed, several ozone pollution peaks occurred during the months of June and August 2010. While PREV''AIR, the national air quality forecasting and mapping system, cannot predict the August''s peaks, it appears that our optimized MLP is able to predict them in both cases.
机译:本文介绍了一个研究项目的第一个结果,该项目旨在利用人工神经网络(ANN)建立具有本地测量数据的污染峰值预测器。我们更特别地关注地平线“ h + 1”处科西嘉岛的臭氧浓度预测。我们主要看一下多层感知器(MLP)网络,它是在环境领域和时间序列预测中最常用的ANN架构。我们已经证明,具有内源,外源和时间指示符输入的优化MLP可以以可接受的精度预测每小时的臭氧浓度。最终结果表明,我们的预测变量的平均平均绝对百分比误差(MAPE)等于10.5%。知道这些设备的测量精度约为10%,这些结果被负责监测空气质量的区域组织“ Qualitair Corse”认为是非常令人信服的。我们还在“真实条件”下测试了我们的预测因子:的确,在2010年6月和2010年8月期间发生了几次臭氧污染峰值。而国家空气质量预报和制图系统PREV''AIR无法预测8月的臭氧污染峰值。峰值,看来我们优化的MLP能够在两种情况下预测它们。

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