DocumentCode
3362196
Title
A hillslope infiltration and runoff prediction model of neural networks optimized by genetic algorithm
Author
Bai, Peng ; Song, Xiaoyu ; Wang, Juan ; Shi, Wenjuan ; Wang, Quanjiu
Author_Institution
Northwest Key Lab. of Water Resource & Environ. Ecology, Xi´´an Univ. of Technol., Xi´´an, China
fYear
2010
fDate
26-28 June 2010
Firstpage
1256
Lastpage
1259
Abstract
Based on the measured data of hillslope simulated rainfall experiment in the Loess Plateau of China, the method of back-propagation neural networks optimized by genetic algorithms was used to establish the hillslope runoff and infiltration model. The rainfall intensity, rainfall duration, initial soil water content and slope were selected as the model inputs, the runoff volume and infiltration volume were the model outputs. Through of simulating and predicting, the results showed that simulation mean reletive errors were respectively 6.32% and 1.93%, the prediction mean reletive errors were 5.71% and 1.92%, respectively. In order to compare the prediction effects with other models, the unoptimized back-propagation neural network model and the Philip regression model under the condiction of fixed rainfall intensity were applied to predict the infiltration amount, the comprasion results showed the mean reletive errors of three models in infiltration amount prediction were separately 1.92%, 5.29% and 9.10%, the maximum mean reletive errors were separately 6.48%,25.88%, 20.36%, the prediction effects of optimized back-propagation networks had a better performance than the other two models obviously.
Keywords
backpropagation; genetic algorithms; geophysics computing; hydrology; neural nets; rain; regression analysis; Philip regression model; backpropagation neural networks; fixed rainfall intensity; genetic algorithm; hillslope infiltration; hillslope runoff; hillslope simulated rainfall experiment; infiltration volume; initial soil water content; prediction mean reletive errors; rainfall duration; runoff prediction model; runoff volume; simulation mean reletive errors; unoptimized backpropagation neural network model; Biological system modeling; Environmental factors; Genetic algorithms; Mathematical model; Neural networks; Optimization methods; Predictive models; Soil; Temperature distribution; Water resources; genetic algorithm; infiltration; neural networks; prediction model; runoff;
fLanguage
English
Publisher
ieee
Conference_Titel
Mechanic Automation and Control Engineering (MACE), 2010 International Conference on
Conference_Location
Wuhan
Print_ISBN
978-1-4244-7737-1
Type
conf
DOI
10.1109/MACE.2010.5536382
Filename
5536382
Link To Document