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首页> 外文期刊>Stochastic environmental research and risk assessment >Spectral band decomposition combined with nonlinear models: application to indoor formaldehyde concentration forecasting
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Spectral band decomposition combined with nonlinear models: application to indoor formaldehyde concentration forecasting

机译:光谱带分解与非线性模型相结合:在室内甲醛浓度预测中的应用

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摘要

This paper proposes a new approach for forecasting continuous indoor air quality time series and in particular the concentration of a common air pollutant in offices like formaldehyde. Forecasting is achieved through the combination of the spectral band decomposition using fast Fourier transform and nonlinear time series modeling. Two nonlinear models have been tested: a threshold autoregressive (TAR) model and a Chaos dynamics-based modeling. This study shows the benefit of the Fourier decomposition coupled with nonlinear modeling of each extracted component, compared to forecasting applied directly on the raw data. Both TAR and Chaos dynamics models are able to reproduce nonlinearities, with slightly better performance in the case of the second model. These hybrid models provide good performance on forecast time horizon up to 12 h ahead.
机译:本文提出了一种新的方法来预测室内连续空气质量时间序列,尤其是预测办公室(如甲醛)中常见空气污染物的浓度。通过结合使用快速傅里叶变换的光谱带分解和非线性时间序列建模来进行预测。已经测试了两个非线性模型:阈值自回归(TAR)模型和基于混沌动力学的建模。这项研究表明,与直接应用于原始数据的预测相比,傅里叶分解与每个提取成分的非线性建模相结合的好处。 TAR和Chaos动力学模型都能够重现非线性,在第二个模型的情况下,性能稍好。这些混合模型可在长达12小时的预测时间范围内提供良好的性能。

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