GTAR: a new ensemble evolutionary autoregressive approach to model dissolved organic carbon

A. Danandeh Mehr, H. Marttila, Ali Torabi Haghighi, Danny Croghan, Nasrin Fathollahzadeh Attar
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引用次数: 1

Abstract

This article explores the forecasting capabilities of three classic linear and nonlinear autoregressive modeling techniques and proposes a new ensemble evolutionary time series approach to model and forecast daily dynamics in stream dissolved organic carbon (DOC). The model used data from the Oulankajoki River basin, a boreal catchment in Northern Finland. The models that were evolved used both accuracy and parsimony measures including autoregressive (AR), vector autoregressive (VAR), and self-exciting threshold autoregressive (SETAR). The new method, called genetic-based SETAR (GTAR), evolved through the integration of state-of-the-art genetic programming with SETAR. To develop the models, high-resolution DOC concentration and daily streamflow (as the external input for VAR) were measured at the same gauging station throughout the ice free season. The results showed that all the models characterize the DOC dynamics with an acceptable 1-day-ahead forecasting accuracy. Use of the streamflow time series as an exogenous variable did not increase the predictive accuracy of AR models. Moreover, the hybrid GTAR provided the best accuracy for the holdout testing data and proved to be a suitable approach for predicting DOC in boreal conditions.
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GTAR:一种新的集成进化自回归方法来模拟溶解有机碳
本文探讨了三种经典线性和非线性自回归建模技术的预测能力,并提出了一种新的集成进化时间序列方法来模拟和预测河流溶解有机碳(DOC)的日动态。该模型使用了芬兰北部北部集水区奥兰卡约基河流域的数据。进化的模型使用了准确性和简约性措施,包括自回归(AR)、向量自回归(VAR)和自激阈值自回归(SETAR)。这种新方法被称为基于遗传的SETAR (GTAR),是通过将最先进的遗传规划与SETAR相结合而发展起来的。为了开发模型,在整个无冰季节在同一测量站测量了高分辨率DOC浓度和日流量(作为VAR的外部输入)。结果表明,所有模型均能较好地描述DOC动态,预报精度可接受。使用流时间序列作为外生变量并没有增加AR模型的预测精度。此外,混合GTAR为固结试验数据提供了最好的精度,并被证明是北方条件下预测DOC的合适方法。
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