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Erschienen in: Water Resources Management 11/2017

05.05.2017

A Case Study on a Combination NDVI Forecasting Model Based on the Entropy Weight Method

verfasst von: Shengzhi Huang, Bo Ming, Qiang Huang, Guoyong Leng, Beibei Hou

Erschienen in: Water Resources Management | Ausgabe 11/2017

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Abstract

It is critically meaningful to accurately predict NDVI (Normalized Difference Vegetation Index), which helps guide regional ecological remediation and environmental managements. In this study, a combination forecasting model (CFM) was proposed to improve the performance of NDVI predictions in the Yellow River Basin (YRB) based on three individual forecasting models, i.e., the Multiple Linear Regression (MLR), Artificial Neural Network (ANN), and Support Vector Machine (SVM) models. The entropy weight method was employed to determine the weight coefficient for each individual model depending on its predictive performance. Results showed that: (1) ANN exhibits the highest fitting capability among the four forecasting models in the calibration period, whilst its generalization ability becomes weak in the validation period; MLR has a poor performance in both calibration and validation periods; the predicted results of CFM in the calibration period have the highest stability; (2) CFM generally outperforms all individual models in the validation period, and can improve the reliability and stability of predicted results through combining the strengths while reducing the weaknesses of individual models; (3) the performances of all forecasting models are better in dense vegetation areas than in sparse vegetation areas.

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Metadaten
Titel
A Case Study on a Combination NDVI Forecasting Model Based on the Entropy Weight Method
verfasst von
Shengzhi Huang
Bo Ming
Qiang Huang
Guoyong Leng
Beibei Hou
Publikationsdatum
05.05.2017
Verlag
Springer Netherlands
Erschienen in
Water Resources Management / Ausgabe 11/2017
Print ISSN: 0920-4741
Elektronische ISSN: 1573-1650
DOI
https://doi.org/10.1007/s11269-017-1692-8

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