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首页> 外文期刊>Stochastic environmental research and risk assessment >A non-linear and non-stationary perspective for downscaling mean monthly temperature: a wavelet coupled second order Volterra model
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A non-linear and non-stationary perspective for downscaling mean monthly temperature: a wavelet coupled second order Volterra model

机译:平均月温度下降的非线性和平稳观点:小波耦合二阶Volterra模型

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This study presents a multiscale framework for downscaling of the General Circulation Model (GCM) outputs to the mean monthly temperature at regional scale using a wavelet based Second order Voltera (SoV) model. The models are developed using the reanalysis climatic data from the National Centers for Environmental Prediction (NCEP) and are validated using the simulated climatic dataset from the Can CM4 GCM for five locations in the Krishna river basin, India. K-means clustering, based on the multiscale wavelet entropy of the predictors, is used for obtaining the clusters of the input climatic variables. Principal component analysis (PCA) is used to obtain the representative variables from each cluster. These input variables are then used to develop a wavelet based multiscale model using Second order Volterra approach to simulate observed mean monthly temperature for the selected locations in the basin. These models are called W-P-SoV models in this paper. For the purpose of comparison, linear multi-resolution models are developed using Multiple Linear regression (MLR) and are called W-P MLR models. The performance of the models is further compared with other Wavelet-PCA based models coupled with Multiple linear regression models (P-MLR) and Artificial Neural Networks (P-ANN), and, stand-alone MLR and ANN to establish the superiority of the proposed approach. The results indicate that the performance of the wavelet based models is superior in terms of downscaling accuracy when compared with the other models used.
机译:这项研究提出了一个多尺度框架,用于使用基于小波的二阶Voltera(SoV)模型将总循环模型(GCM)的输出缩减到区域规模的平均月温度。这些模型是使用来自国家环境预测中心(NCEP)的重新分析气候数据开发的,并使用来自Can CM4 GCM的模拟气候数据集对印度克里希纳河流域的五个位置进行了验证。基于预测变量的多尺度小波熵,K均值聚类用于获得输入气候变量的聚类。主成分分析(PCA)用于从每个聚类中获取代表变量。这些输入变量然后用于使用二阶Volterra方法开发基于小波的多尺度模型,以模拟盆地中选定位置的观测平均月温度。这些模型在本文中称为W-P-SoV模型。为了进行比较,使用多重线性回归(MLR)开发了线性多分辨率模型,并将其称为W-P MLR模型。该模型的性能进一步与其他基于Wavelet-PCA的模型,多个线性回归模型(P-MLR)和人工神经网络(P-ANN)以及独立的MLR和ANN进行了比较,以建立模型的优越性。建议的方法。结果表明,与使用的其他模型相比,基于小波的模型在降尺度精度方面的性能优越。

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