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Comparison of point forecast accuracy of model averaging methods in hydrologic applications

机译:水文应用模型平均法的点预报精度比较

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摘要

Multi-model averaging is currently receiving a surge of attention in the atmospheric, hydrologic, and statistical literature to explicitly handle conceptual model uncertainty in the analysis of environmental systems and derive predictive distributions of model output. Such density forecasts are necessary to help analyze which parts of the model are well resolved, and which parts are subject to considerable uncertainty. Yet, accurate point predictors are still desired in many practical applications. In this paper, we compare a suite of different model averaging techniques by their ability to improve forecast accuracy of environmental systems. We compare equal weights averaging (EWA), Bates-Granger model averaging (BGA), averaging using Akaike's information criterion (AICA), and Bayes' Information Criterion (BICA), Bayesian model averaging (BMA), Mallows model averaging (MMA), andrnGranger-Ramanathan averaging (GRA) for two different hydrologic systems involving water flow through a 1950 km~2 watershed and 5 m deep vadose zone. Averaging methods with weights restricted to the multi-dimensional simplex (positive weights summing up to one) are shown to have considerably larger forecast errors than approaches with unconstrained weights. Whereas various sophisticated model averaging approaches have recently emerged in the literature, our results convincingly demonstrate the advantages of GRA for hydrologic applications. This method achieves similar performance as MMA and BMA, but is much simpler to implement and use, and computationally much less demanding.
机译:目前,多模型平均在大气,水文和统计文献中引起了广泛关注,以明确处理环境系统分析中的概念模型不确定性,并得出模型输出的预测分布。这种密度预测对于帮助分析模型的哪些部分可以很好地解析以及哪些部分具有很大的不确定性是必要的。然而,在许多实际应用中仍需要精确的点预测器。在本文中,我们通过提高环境系统预测准确性的能力来比较一套不同的模型平均技术。我们比较了相等加权平均(EWA),贝茨-格兰杰模型平均(BGA),使用Akaike信息标准(AICA)和贝叶斯信息准则(BICA),贝叶斯模型平均(BMA),马洛斯模型平均(MMA), andrnGranger-Ramanathan平均(GRA)用于两个不同的水文系统,涉及流经1950 km〜2分水岭和5 m深渗流带的水流。权重限于多维单纯形的平均方法(正权重合计为一)显示出比无约束权重的方法具有更大的预测误差。尽管最近文献中出现了各种复杂的模型平均方法,但我们的结果令人信服地证明了GRA在水文应用中的优势。该方法具有与MMA和BMA相似的性能,但实现和使用起来更简单,并且对计算的要求也更低。

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