RUNOFF ESTIMATION IN URBAN CATCHMENT USING ARTIFICIAL NEURAL NETWORK MODELS

被引:0
作者
Bakhshaei, Mahsa [1 ]
Ahmadi, Hassan [1 ]
Motamedvaziri, Baharak [1 ]
Najafi, Payam [2 ]
机构
[1] Islamic Azad Univ, Tehran, Iran
[2] Islamic Azad Univ, Esfahan, Iran
来源
SISTEMAS & GESTAO | 2020年 / 15卷 / 02期
关键词
Urban catchment; runoff estimation; artificial neural network; machine learning; RIVER FLOW; PREDICTION; FEEDFORWARD; PERFORMANCE;
D O I
10.20985/1980-5160.2020.v15n2.1657
中图分类号
C93 [管理学];
学科分类号
12 ; 1201 ; 1202 ; 120202 ;
摘要
Many types of physical models have been developed for runoff estimation with successful results. However, accurate runoff estimation remains a challenging problem owing to the lack of field data and the complexity of its hydrological process. In this paper, a machine learning method for runoff estimation is presented as an alternative approach to the physical model. Various types of input variables and Artificial Neural Network (ANN) architectures were examined in this study. Results showed that a two-layer network with the tansig activation function and the Levenberg-Marquardt learning algorithm had the best performance. For this architecture, the most effective input vector consists of a catchment perimeter, canal length, slope, runoff coefficient, and rainfall intensity. However, results of multivariate analysis of variance indicated the significant interaction effect of input data and the ANN architecture. Thus, to create a suitable ANN model for runoff estimation, a systematic determination of the input vector is necessary.
引用
收藏
页码:170 / 180
页数:11
相关论文
共 38 条
[1]   Investigating the role of saliency analysis with a neural network rainfall-runoff model [J].
Abrahart, RJ ;
See, L ;
Kneale, PE .
COMPUTERS & GEOSCIENCES, 2001, 27 (08) :921-928
[2]  
Aff andi A., 2008, LOWLAND TECHNOLOGY I, V10, P76
[3]  
Ahmad S., 2001, BRIDG GAP M WORLDS W
[4]  
Back A. D., 1999, NEUR NETW 1999 IJCNN
[5]   Stormwater pollutant loads modelling: epistemological aspects and case studies on the influence of field data sets on calibration and verification [J].
Bertrand-Krajewski, Jean-Luc .
WATER SCIENCE AND TECHNOLOGY, 2007, 55 (04) :1-17
[6]   Input determination for neural network models in water resources applications. Part 1 - background and methodology [J].
Bowden, GJ ;
Dandy, GC ;
Maier, HR .
JOURNAL OF HYDROLOGY, 2005, 301 (1-4) :75-92
[7]  
Braddock RD, 1998, ENVIRONMETRICS, V9, P419, DOI 10.1002/(SICI)1099-095X(199807/08)9:4<419::AID-ENV312>3.0.CO
[8]  
2-D
[9]   FORECASTING THE BEHAVIOR OF MULTIVARIATE TIME-SERIES USING NEURAL NETWORKS [J].
CHAKRABORTY, K ;
MEHROTRA, K ;
MOHAN, CK ;
RANKA, S .
NEURAL NETWORKS, 1992, 5 (06) :961-970
[10]   Flood prediction in southern strip of Caspian Sea watershed [J].
Chavoshi, S. ;
Sulaiman, Wan Nor A. ;
Saghafian, B. ;
Bin Sulaiman, Md Nasir ;
Manaf, L. Abd .
WATER RESOURCES, 2013, 40 (06) :593-605