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Effect of different areal precipitation estimation methods on the accuracy of a reservoir runoff inflow forecast model
Resource type
Authors/contributors
- Zhong, Wei (Author)
- Li, Ruirui (Author)
- Liu, Yan Quan (Author)
- Xu, Jin (Author)
Title
Effect of different areal precipitation estimation methods on the accuracy of a reservoir runoff inflow forecast model
Abstract
Areal precipitation estimation directly affects the accuracy of reservoir runoff inflow forecasts and flood dispatching decision-making. Because of the heterogeneous spatial and temporal precipitation distributions in large basins, inadequate precipitation stations normally have a negative impact on forecast accuracy. Using the Panjia-kou reservoir runoff inflow forecast as the research subject, this paper adopts the Thiessen polygon block, square grid computing, and DEM (digital elevation model) methods to estimate average regional areal precipitation. Based on the estimation, a model for the Panjia-kou reservoir runoff forecast is developed. The results indicate that different areal precipitation estimation methods have significantly different effects on the accuracy of the reservoir runoff inflow forecast. When the average regional precipitation estimation from the DEM method is used as an input to the model, the simulation results are accurate and are much better than those from the other two average regional precipitation estimation methods.
Proceedings Title
IOP Conference Series: Earth and Environmental Science
Publisher
Institute of Physics Publishing
Date
December 2018
Volume
208
Pages
012043
Citation Key
zhongEffectDifferentAreal2018
Accessed
12/26/19, 3:22 PM
Language
English
Library Catalog
Institute of Physics
Extra
2 citations (Crossref) [2023-10-31]
Citation Key Alias: lens.org/009-272-786-643-178, pop00315
Citation
Zhong, W., Li, R., Liu, Y. Q., & Xu, J. (2018). Effect of different areal precipitation estimation methods on the accuracy of a reservoir runoff inflow forecast model. IOP Conference Series: Earth and Environmental Science, 208, 012043. https://doi.org/10.1088/1755-1315/208/1/012043
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