节点文献

基于SARIMA-BP神经网络组合方法的MODIS叶面积指数时间序列建模与预测

Modeling and Predicting of MODIS Leaf Area Index Time Series Based on a Hybrid SARIMA and BP Neural Network Method

  • 推荐 CAJ下载
  • PDF下载
  • 不支持迅雷等下载工具,请取消加速工具后下载。

【作者】 姜春雷张树清张策李华朋丁小辉

【Author】 JIANG Chun-lei;ZHANG Shu-qing;ZHANG Ce;LI Hua-peng;DING Xiao-hui;Northeast Institute of Geography and Agroecology,Chinese Academy of Sciences;University of Chinese Academy of Sciences;Lancaster Environment Centre,Lancaster University;

【机构】 中国科学院东北地理与农业生态研究所中国科学院大学Lancaster Environment Centre,Lancaster University

【摘要】 植被叶面积指数(LAI)时间序列的建模及预测是陆面过程模型和遥感数据同化方法的重要组成部分。MODIS数据产品MOD15A2是目前应用最为广泛的LAI数据源之一,然而MODIS LAI时间序列产品包含了一些低质量的数据,例如由于云层、气溶胶等的影响,该产品在时间和空间上缺乏连续性。MODIS LAI时间序列包含线性部分和外在干扰产生的非线性部分,单一的线性方法或非线性方法都不能对其精确建模和预测。首先利用Savitzky-Golay(SG)滤波和线性插值平滑受到干扰的LAI时间序列,然后采用季节自回归积分滑动平均(SARIMA)方法、BP神经网络方法及二者的组合方法(SARIMA-BP)对MODIS LAI时间序列进行建模及预测。在SARIMA-BP神经网络组合方法中,各自在线性与非线性建模的优势得以充分发挥,其中SARIMA方法用于建模及预测LAI时间序列中的线性部分,BP神经网络方法用于对非线性残差部分进行建模及预测。实验结果显示:SG滤波和线性插值后的LAI时间序列比原LAI时间序列更平滑;SARIMA-BP神经网络组合方法的决定系数为0.981,比SARIMA和BP神经网络的0.941和0.884更接近于1;SARIMA-BP神经网络组合方法的预测值同观测值之间的相关系数为0.991,高于SARIMA(0.971)和BP神经网络(0.942)的相关系数。由此得出结论:SARIMA-BP神经网络组合方法对MODIS LAI时间序列具有更好的适应性,其建模和预测准确性高于SARIMA方法或BP神经网络方法。

【Abstract】 The modeling and predicting of vegetation Leaf area index(LAI)is an important component of land surface model and assimilation of remote sensing data.The MODIS LAI product(i.e.MOD15A2)is one of the most widely used LAI data sources.However,the time series of MODIS LAI contains some data of low quality.For example,because of the influence of the cloud,aerosol,etc.,the MODIS LAI presents the characteristics of the discontinuous in time and space.In fact,the time series of MODIS LAI include both linear and nonlinear components,which cannot be accurately modeled and predicted by either linear method or nonlinear method alone.In this paper,the original LAI time series data were first smoothed with Savitzky-Golay(SG)filtration and linear interpolation;SARIMA,BP neural network and a hybrid method of SARIMA-BP neural network were then used for modeling and predicting MODIS LAI time series.The SARIMA-BP neural network combined both SARIMA and BP neural network,which could model the linear and the nonlinear component of MODIS LAI time series respectively.That is,the final result of SARIMA-BP neural network was the sum of results of the two methods.Experiments showed that the time series of MODIS LAI that were smoothed with the SG filtration and linear interpolation were more smooth than original time series,with a determination coefficient up to 0.981,closer to 1than that of SARIMA(0.941)and BP neural network(0.884);the correlation coefficient between SARIMA-BP neural network and the observation is 0.991,higher than that of between SARIMA(0.971)or BP neural network(0.942)SARIMA and the observation.Thus,it can be concluded that,the proposed SARIMA-BP neural network method can better adapt to the LAI time series,and it outperforms the SARIMA and BP neural network methods.

【基金】 国家自然科学基金项目(41271196);中国科学院重点部署项目(KZZD-EW-07-02)资助
  • 【文献出处】 光谱学与光谱分析 ,Spectroscopy and Spectral Analysis , 编辑部邮箱 ,2017年01期
  • 【分类号】Q948;TP79
  • 【被引频次】20
  • 【下载频次】636
节点文献中: 

本文链接的文献网络图示:

本文的引文网络