基于小波和ISCCP D2数据统计的世界云量特征提取

Xiupeng Jia, Peng Huang, Wenyi Zhang
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引用次数: 0

摘要

为了从ISCCP D2数据集中提取云覆盖特征,采用小波与统计相结合的特征提取方法。该方法考虑了云量的特点和应用需求,将自相关函数、偏自相关函数与小波变换相结合。从特征可以得出结论:(1)小波分析的特征比原始序列的特征更明显;(2) ISCCP D2数据集的云量序列大部分为平稳序列,自相关函数(AF)和部分自相关函数(PAF)显示这些序列存在日循环。因此,建立ARIMA模式估算全球小区域的云量是可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
World cloud cover feature extraction base on wavelet and statistics from ISCCP D2 dataset
In order to extract cloud cover feature from ISCCP D2 dataset, a method of feature extraction using wavelet and statistics was used. This method concerned the characteristic of the cloud cover and the applications requirement, and combined the autocorrelation function, partial autocorrelation function with the wavelet method. We can get the conclusion from the features: (1) the features from wavelet analysis are more evident than the features from original series; (2) most of the cloud amount series in ISCCP D2 dataset are stationary series, and the autocorrelation functions (AF) and partial autocorrelation functions (PAF) shows there are diurnal cycle in these series. As a result, it is possible to establish ARIMA model to estimate the cloud amount for a small region in the world.
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