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A Hybrid Arima And Artificial Neural Networks Model To Forecast Particulate Matter In Urban Areas: The Case Of Temuco, Chile

机译:混合Arima和人工神经网络模型预测城市地区的颗粒物:以智利Temuco为例

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摘要

Air quality time series consists of complex linear and non-linear patterns and are difficult to forecast. Box-Jenkins Time Series (ARIMA) and multilinear regression (MLR) models have been applied to air quality forecasting in urban areas, but they have limited accuracy owing to their inability to predict extreme events. Artificial neural networks (ANN) can recognize non-linear patterns that include extremes. A novel hybrid model combining ARIMA and ANN to improve forecast accuracy for an area with limited air quality and meteorological data was applied to Temuco, Chile, where residential wood burning is a major pollution source during cold winters, using surface meteorological and PM_(10) measurements. Experimental results indicated that the hybrid model can be an effective tool to improve the PM_(10) forecasting accuracy obtained by either of the models used separately, and compared with a deterministic MLR. The hybrid model was able to capture 100% and 80% of alert and pre-emergency episodes, respectively. This approach demonstrates the potential to be applied to air quality forecasting in other cities and countries.
机译:空气质量时间序列包含复杂的线性和非线性模式,很难预测。 Box-Jenkins时间序列(ARIMA)和多线性回归(MLR)模型已应用于城市地区的空气质量预测,但由于无法预测极端事件,因此其准确性有限。人工神经网络(ANN)可以识别包括极端在内的非线性模式。一种结合了ARIMA和ANN的新型混合模型,以提高对空气质量和气象数据有限的地区的预测准确性,该方法应用于智利的特木科(Temuco),智利的居民木材燃烧是寒冷冬季的主要污染源,使用地面气象学和PM_(10)测量。实验结果表明,该混合模型可以作为一种有效的工具,可以提高通过单独使用任一模型获得的PM_(10)预测准确性,并与确定性MLR进行比较。混合模型能够分别捕获警报事件和紧急事件前的100%和80%。这种方法证明了在其他城市和国家中应用于空气质量预测的潜力。

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