Rainfall-Runoff Modelling Using Hydrological Connectivity Index and Artificial Neural Network Approach

被引:51
|
作者
Asadi, Haniyeh [1 ]
Shahedi, Kaka [1 ]
Jarihani, Ben [2 ]
Sidle, Roy C. [2 ,3 ]
机构
[1] Sari Agr Sci & Nat Resources Univ, Dept Watershed Management, Sari 4818168984, Iran
[2] Univ Sunshine Coast, Sustainabil Res Ctr, Sunshine Coast, Qld 4556, Australia
[3] Univ Cent Asia, Mt Soc Res Inst, Khorog 736000, Tajikistan
关键词
rainfall-runoff modelling; Artificial Neural Network; Index of Connectivity; input selection; TIME-SERIES; FUZZY-LOGIC; SEDIMENT; CATCHMENT; FLOW; SIMULATION; PERFORMANCE; PREDICTION; MANAGEMENT; VARIABLES;
D O I
10.3390/w11020212
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The input selection process for data-driven rainfall-runoff models is critical because input vectors determine the structure of the model and, hence, can influence model results. Here, hydro-geomorphic and biophysical time series inputs, including Normalized Difference Vegetation Index (NDVI) and Index of Connectivity (IC; a type of hydrological connectivity index), in addition to climatic and hydrologic inputs were assessed. Selected inputs were used to develop Artificial Neural Networks (ANNs) in the Haughton River catchment and the Calliope River catchment, Queensland, Australia. Results show that incorporating IC as a hydro-geomorphic parameter and remote sensing NDVI as a biophysical parameter, together with rainfall and runoff as hydro-climatic parameters, can improve ANN model performance compared to ANN models using only hydro-climatic parameters. Comparisons amongst different input patterns showed that IC inputs can contribute to further improvement in model performance, than NDVI inputs. Overall, ANN model simulations showed that using IC along with hydro-climatic inputs noticeably improved model performance in both catchments, especially in the Calliope catchment. This improvement is indicated by a slight increase (9.77% and 11.25%) in the Nash-Sutcliffe efficiency and noticeable decrease (24.43% and 37.89%) in the root mean squared error of monthly runoff from Haughton River and Calliope River, respectively. Here, we demonstrate the significant effect of hydro-geomorphic and biophysical time series inputs for estimating monthly runoff using ANN data-driven models, which are valuable for water resources planning and management.
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页数:20
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