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具有外部输入的非线性自回归神经网络用于台风淹没水位预测。

Nonlinear autoregressive neural networks with external inputs for forecasting of typhoon inundation level.

作者信息

Ouyang Huei-Tau

机构信息

National Ilan University, No. 1, Sec. 1, Shennong Rd., Yilan County 260, Yilan City, Taiwan.

出版信息

Environ Monit Assess. 2017 Aug;189(8):376. doi: 10.1007/s10661-017-6100-6. Epub 2017 Jul 5.

Abstract

Accurate inundation level forecasting during typhoon invasion is crucial for organizing response actions such as the evacuation of people from areas that could potentially flood. This paper explores the ability of nonlinear autoregressive neural networks with exogenous inputs (NARX) to predict inundation levels induced by typhoons. Two types of NARX architecture were employed: series-parallel (NARX-S) and parallel (NARX-P). Based on cross-correlation analysis of rainfall and water-level data from historical typhoon records, 10 NARX models (five of each architecture type) were constructed. The forecasting ability of each model was assessed by considering coefficient of efficiency (CE), relative time shift error (RTS), and peak water-level error (PE). The results revealed that high CE performance could be achieved by employing more model input variables. Comparisons of the two types of model demonstrated that the NARX-S models outperformed the NARX-P models in terms of CE and RTS, whereas both performed exceptionally in terms of PE and without significant difference. The NARX-S and NARX-P models with the highest overall performance were identified and their predictions were compared with those of traditional ARX-based models. The NARX-S model outperformed the ARX-based models in all three indexes, whereas the NARX-P model exhibited comparable CE performance and superior RTS and PE performance.

摘要

在台风侵袭期间准确预测淹没水位对于组织应对行动至关重要,例如将人员从可能被洪水淹没的地区疏散。本文探讨了具有外部输入的非线性自回归神经网络(NARX)预测台风引发的淹没水位的能力。采用了两种类型的NARX架构:串并联(NARX-S)和平行(NARX-P)。基于对历史台风记录中的降雨和水位数据的互相关分析,构建了10个NARX模型(每种架构类型各5个)。通过考虑效率系数(CE)、相对时间偏移误差(RTS)和峰值水位误差(PE)来评估每个模型的预测能力。结果表明,通过使用更多的模型输入变量可以实现较高的CE性能。两种模型的比较表明,NARX-S模型在CE和RTS方面优于NARX-P模型,而在PE方面两者表现均出色且无显著差异。确定了总体性能最高的NARX-S和NARX-P模型,并将它们的预测结果与传统的基于ARX的模型的预测结果进行了比较。NARX-S模型在所有三个指标上均优于基于ARX的模型,而NARX-P模型表现出相当的CE性能以及优越的RTS和PE性能。

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