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首页> 外文期刊>Atmospheric Pollution Research >Evolutionary procedure based model to predict ground–level ozone concentrations
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Evolutionary procedure based model to predict ground–level ozone concentrations

机译:基于进化程序的模型来预测地面臭氧浓度

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This study aims to predict the next day hourly average ozone (O3) concentrations using threshold autoregressive (TAR) models in which the threshold value and the threshold variable are defined by genetic algorithms. The procedure is also able to generate models with statistically significant regression parameters. The performance of TAR models was then compared to the one obtained with autoregressive (AR) and artificial neural network (ANN) models. Different TAR models were generated, corresponding to different threshold variables and values. For the training period, ANN model presented better results than TAR and AR models. However, in the test period, AR and one of the TAR models achieved better predictions of O3 concentrations than the ANN model. The distinction between the applied models became greater when they were evaluated in the prediction of the extreme values, for which the TAR model presented the best performance. The performance with respect to extreme values is a useful implication for the protection of public health as this model can provide more reliable early warnings about high O3 concentration episodes.
机译:本研究旨在使用阈值自回归(TAR)模型预测第二天的每小时平均臭氧(O 3 )浓度,该模型中的阈值和阈值变量由遗传算法定义。该程序还能够生成具有统计显着性回归参数的模型。然后将TAR模型的性能与通过自回归(AR)和人工神经网络(ANN)模型获得的模型进行比较。生成了不同的TAR模型,对应于不同的阈值变量和值。在训练期间,ANN模型的效果优于TAR和AR模型。然而,在测试期间,AR和一种TAR模型的O 3 浓度预测要比ANN模型更好。在对极端值的预测进行评估时,所应用的模型之间的区别变得更大,为此TAR模型表现出最佳性能。相对于极值的性能对于保护公共健康具有有益的意义,因为该模型可以提供有关高O 3 集中事件的更可靠的早期预警。

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