反向传播神经网络在古气候中的应用

Hongli Wang, Xueyuan Kuang, Jian Liu
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引用次数: 4

摘要

目前,模拟资料的低分辨率和不确定性严重制约了局部地区古气候变化的研究。为了将大尺度模拟数据应用于局部地区的古气候研究,提出了一种基于三层反向传播神经网络(BPNN)的有效降尺度模型。利用观测数据和ECHO-G模拟数据对BPNN模型进行训练和测试。经过适当的训练和验证,BPNN模型显示出了对古气候估计的能力,并应用该模型重建了近千年来安徽-湖北地区的月(1月和7月)和年平均气温和降水。结果表明,BPNN模型从观测和模拟中提取了有用的气候信息,提供了相当准确的古气候估计。该降尺度方法是将bp神经网络应用于局部古气候模拟的一次成功尝试,同时提高了利用大尺度模拟数据研究局部古气候变率的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of back propagation neural network in paleoclimate
Studies of paleoclimate variations in local regions are seriously restricted by the low resolution and uncertainties of the simulated data at present. In order to apply large-scale modeling data to paleoclimate research in local regions, an effective downscaling model based on three-layer back propagation neural network (BPNN) is developed. Observational and ECHO-G simulated data are employed to train and test the BPNN model. With proper training and validation, BPNN model exhibits its ability to paleoclimate estimation, it is applied to reconstruct monthly (January and July) and annual mean temperature and precipitation in Anhui-Hubei region during the last millennium. The results indicate that BPNN model extracts useful climatic information from observation and simulation and provides fairly accurate paleoclimate estimation. This downscaling method is a successful trial of applying BPNN in local area of paleoclimate modeling, in the meantime, it improves the capacity of researching on paleoclimate variability in local regions using large-scale modeling data.
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