A nonlinear data-driven model for synthetic generation of annual streamflows

被引:21
|
作者
Sudheer, K. P. [1 ]
Srinivasan, K. [1 ]
Neelakantan, T. R. [2 ]
Srinivas, V. V. [3 ]
机构
[1] Indian Inst Technol, Dept Civil Engn, Madras 600036, Tamil Nadu, India
[2] SASTRA Deemed Univ, Sch Civil Engn, Thanjavur 613402, India
[3] Indian Inst Sci, Dept Civil Engn, Bangalore 560012, Karnataka, India
关键词
data-driven models; radial basis function neural network; moving block bootstrap; stream flow generation; non-linear hybrid;
D O I
10.1002/hyp.6764
中图分类号
TV21 [水资源调查与水利规划];
学科分类号
081501 ;
摘要
A hybrid model that blends two non-linear data-driven models, i.e. an artificial neural network (ANN) and a moving block bootstrap (MBB), is proposed for modelling annual streamflows of rivers that exhibit complex dependence. In the proposed model, the annual streamflows are modelled initially using a radial basis function ANN model. The residuals extracted from the neural network model are resampled using the non-parametric resampling technique MBB to obtain innovations, which are then added back to the ANN-modelled flows to generate synthetic replicates. The model has been applied to three annual streamflow records with variable record length, selected from different geographic regions, namely Africa, USA and former USSR. The performance of the proposed ANN-based non-linear hybrid model has been compared with that of the linear parametric hybrid model. The results from the case studies indicate that the proposed ANN-based hybrid model (ANNHM) is able to reproduce the skewness present in the streamflows better compared to the linear parametric-based hybrid model (LPHM), owing to the effective capturing of the non-linearities. Moreover, the ANNHM, being a completely data-driven model, reproduces the features of the marginal distribution more closely than the LPHM, but offers less smoothing and no extrapolation value. It is observed that even though the preservation of the linear dependence structure by the ANNHM is inferior to the LPHM, the effective blending of the two non-linear models helps the ANNHM to predict the drought and the storage characteristics efficiently. Copyright (c) 2007 John Wiley & Sons, Ltd.
引用
收藏
页码:1831 / 1845
页数:15
相关论文
共 50 条
  • [1] Data-driven synthetic wavefront generation for boundary layer data
    Utley, Jeffrey W.
    Buzzard, Gregery T.
    Bouman, Charles A.
    Kemnitz, Matthew R.
    UNCONVENTIONAL IMAGING, SENSING, AND ADAPTIVE OPTICS 2024, 2024, 13149
  • [2] Data-Driven ICS Network Simulation for Synthetic Data Generation
    Kim, Minseo
    Jeon, Seungho
    Cho, Jake
    Gong, Seonghyeon
    ELECTRONICS, 2024, 13 (10)
  • [3] Towards Safer Data-Driven Forecasting of Extreme Streamflows
    Matos, Jos P.
    Portela, Maria M.
    Schleiss, Anton J.
    WATER RESOURCES MANAGEMENT, 2018, 32 (02) : 701 - 720
  • [4] STOCHASTIC GENERATION OF ANNUAL STREAMFLOWS
    SRIKANTHAN, R
    MCMAHON, TA
    JOURNAL OF THE HYDRAULICS DIVISION-ASCE, 1980, 106 (12): : 2011 - 2028
  • [5] A data-driven model for nonlinear marine dynamics
    Xu, Wenzhe
    Maki, Kevin J.
    Silva, Kevin M.
    OCEAN ENGINEERING, 2021, 236
  • [6] STOCHASTIC GENERATION OF ANNUAL STREAMFLOWS
    Srikanthan, R.
    McMahon, Thomas A.
    1980, 106 (12): : 2011 - 2028
  • [7] PROCESS MODEL FOR DATA-DRIVEN BUSINESS MODEL GENERATION
    Benta, Christian
    Wilberg, Julian
    Hollauer, Christoph
    Omer, Mayada
    DS87-2 PROCEEDINGS OF THE 21ST INTERNATIONAL CONFERENCE ON ENGINEERING DESIGN (ICED 17), VOL 2: DESIGN PROCESSES, DESIGN ORGANISATION AND MANAGEMENT, 2017, : 347 - 356
  • [8] Data-driven generation of synthetic wind speeds: A comparative study
    D'Ambrosio, Daniele
    Schoukens, Johan
    De Troyer, Tim
    Zivanovic, Miroslav
    Runacres, Mark Charles
    IET RENEWABLE POWER GENERATION, 2022, 16 (05) : 922 - 932
  • [9] BAYESIAN GENERATION OF SYNTHETIC STREAMFLOWS
    VICENS, GJ
    RODRIGUEZ-ITURBE, I
    SCHAAKE, JC
    WATER RESOURCES RESEARCH, 1975, 11 (06) : 827 - 838
  • [10] Synggen: fast and data-driven generation of synthetic heterogeneous NGS cancer data
    Scandino, Riccardo
    Calabrese, Federico
    Romanel, Alessandro
    BIOINFORMATICS, 2023, 39 (01)