Integrated uncertain models for runoff forecasting and crop planting structure optimization of the Shiyang River Basin, north-west China

To improve the accuracy of runoff forecasting, an uncertain multiple linear regression (UMLR) model is presented in this study. The proposed model avoids the transfer of random error generated in the independent variable to the dependent variable, as this affects prediction accuracy. On this basis,...

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Bibliographic Details
Main Author: Fan ZHANG, Mo LI, Shanshan GUO, Chenglong ZHANG, Ping GUO
Format: Article
Language:English
Published: Higher Education Press 2018-05-01
Series:Frontiers of Agricultural Science and Engineering
Subjects:
Online Access:http://academic.hep.com.cn/fase/fileup/2095-7505/PDF/1510908374626-1138775978.pdf
Description
Summary:To improve the accuracy of runoff forecasting, an uncertain multiple linear regression (UMLR) model is presented in this study. The proposed model avoids the transfer of random error generated in the independent variable to the dependent variable, as this affects prediction accuracy. On this basis, an inexact two-stage stochastic programming (ITSP) model is used for crop planting structure optimization (CPSO) with the inputs that are interval flow values under different probabilities obtained from the UMLR model. The developed system, in which the UMLR model for runoff forecasting and the ITSP model for crop planting structure optimization are integrated, is applied to a real case study. The aim of the developed system is to optimize crops planting area with limited available water resources base on the downstream runoff forecasting in order to obtain the maximum system benefit in the future. The solution obtained can demonstrate the feasibility and suitability of the developed system, and help decision makers to identify reasonable crop planting structure under multiple uncertainties.
ISSN:2095-7505