基于NA-CORDEX输出的长期近地表温度预测

X. Li, Z. Li, Q. Zhang, P. Zhou, W. Huang
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引用次数: 8

摘要

温度是气候模式中最重要的参数之一,因为它对各种地球物理过程(如蒸发和降水)有重要影响。应用多个气候模型进行预测通常优于使用单个气候模型,并且神经网络在捕获非线性关系方面表现良好,这可以提供更可靠的温度预测。本文采用多层感知器(MLP)、时滞前馈神经网络(TLFN)和带外源输入的非线性自回归神经网络(NARX)三种神经网络算法,建立了基于北美协调区域降尺度实验(NA-CORDEX)输出的近地表日平均温度预测数据驱动模型。以加拿大安大略省的大鳟鱼湖为例,对所提出的基于神经网络的模型进行了应用和性能评估。结果表明,MLP、TLFN和NARX均能较准确地预测日近地表温度,决定系数(R2)均在0.84以上。三种基于神经网络的模型表现相似,在均方根误差和R2方面没有显著差异。基于神经网络的气候预测模型优于单个区域气候模型,预测结果更平滑,波动更小。本研究为利用神经网络模型生成可靠的日气温预报提供了技术基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Long-Term Near-Surface Temperature Based on NA-CORDEX Output
Temperature is one of the most important parameters in climate modeling, as it has significant impacts on various geophysical processes such as evaporation and precipitation. Applying multiple climate models for prediction generally outperforms the use of individual climate models, and neural networks perform well at capturing nonlinear relationships, which can provide more reliable temperature projections. In this study, three neural network algorithms, including Multi-layer Perceptron (MLP), Time-lagged Feed-forward Neural Networks (TLFN) and Nonlinear Auto-Regressive Networks with exogenous inputs (NARX), were used to develop data-driven models for predicting daily mean near-surface temperature based on North American Coordinated Regional Downscaling Experiment (NA-CORDEX) output. A case study of Big Trout Lake in Ontario, Canada was carried out to demonstrate the applications and to evaluate the performance of the proposed neural network based models. The results showed that MLP, TLFN, and NARX performed well in generating accurate daily near-surface temperature predictions with the coefficient of determination (R2) values above 0.84. The three neural network based models had similar performance with no significant difference in terms of root mean square error and R2. Neural network based climate prediction models outperformed each of the individual regional climate models and generated smoother predictions with less fluctuation. This study provides a technical basis for generating reliable predictions of daily temperature using neural networks based model.
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