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首页> 外文期刊>Ecological Modelling >Effective 1-day ahead prediction of hourly surface ozone concentrations in eastern Spain using linear models and neural networks
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Effective 1-day ahead prediction of hourly surface ozone concentrations in eastern Spain using linear models and neural networks

机译:使用线性模型和神经网络提前1天有效预测西班牙东部每小时的小时臭氧浓度

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摘要

The aim of this research was to develop pure predictive models in order to provide 24 h advance forecasts of the hourly ozone concentration for the rural site of Carcagente (Valencia, Spain) and the urban sites of Paterna (Valencia, Spain) and Alcoy (Alicante, Spain) over 4 years from 1996 to 1999. The peculiarity of the model presented here is that it uses past and previously predicted information of inputs exclusively, thus being this is the first genuine 24 It advance 03 predictive model with neural networks. We used autoregressive-moving average with exogenous inputs (ARMAX), multilayer perceptrons and FIR neural networks. Five performance measures yield reasonably good results in the three sampling sites. The results indicate that the models developed predict the 03 time series more effectively compared with previous procedures based on dynamical system theory. The neural network's models yield better results than linear models when exogenous inputs are included. The prediction accuracy of these models enables, for the first time, an effective warning to be made in cases where EU public information threshold values are exceeded. (C) 2002 Elsevier Science B.V. All rights reserved. [References: 43]
机译:这项研究的目的是开发纯净的预测模型,以便为Carcagente(西班牙巴伦西亚)的农村地区以及Paterna(西班牙巴伦西亚)和Alcoy(阿利坎特)的城市地区的每小时臭氧浓度提供24小时的提前预报。 (西班牙))从1996年到1999年的4年中。这里展示的模型的独特之处在于,它仅使用过去和先前预测的输入信息,因此这是第一个真正的带有神经网络的24 It Advance 03预测模型。我们将自回归移动平均值与外来输入(ARMAX),多层感知器和FIR神经网络结合使用。在三个采样点中,五项性能指标可得出相当不错的结果。结果表明,与基于动态系统理论的先前过程相比,开发的模型更有效地预测了03时间序列。当包含外部输入时,神经网络的模型比线性模型产生更好的结果。这些模型的预测准确性首次使在超过欧盟公共信息阈值的情况下能够发出有效警告。 (C)2002 Elsevier Science B.V.保留所有权利。 [参考:43]

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