Literature DB >> 35310371

Catchment scale runoff time-series generation and validation using statistical models for the Continental United States.

Douglas Patton1, Deron Smith2, Muluken E Muche1,3, Kurt Wolfe2, Rajbir Parmar2, John M Johnston2.   

Abstract

We developed statistical models to generate runoff time-series at National Hydrography Dataset Plus Version 2 (NHDPlusV2) catchment scale for the Continental United States (CONUS). The models use Normalized Difference Vegetation Index (NDVI) based Curve Number (CN) to generate initial runoff time-series which then is corrected using statistical models to improve accuracy. We used the North American Land Data Assimilation System 2 (NLDAS-2) catchment scale runoff time-series as the reference data for model training and validation. We used 17 years of 16-day, 250-m resolution NDVI data as a proxy for hydrologic conditions during a representative year to calculate 23 NDVI based-CN (NDVI-CN) values for each of 2.65 million NHDPlusV2 catchments for the Contiguous U.S. To maximize predictive accuracy while avoiding optimistically biased model validation results, we developed a spatio-temporal cross-validation framework for estimating, selecting, and validating the statistical correction models. We found that in many of the physiographic sections comprising CONUS, even simple linear regression models were highly effective at correcting NDVI-CN runoff to achieve Nash-Sutcliffe Efficiency values above 0.5. However, all models showed poor performance in physiographic sections that experience significant snow accumulation.

Entities:  

Year:  2022        PMID: 35310371      PMCID: PMC8931853          DOI: 10.1016/j.envsoft.2022.105321

Source DB:  PubMed          Journal:  Environ Model Softw        ISSN: 1364-8152            Impact factor:   5.288


  7 in total

1.  Assessing model fit by cross-validation.

Authors:  Douglas M Hawkins; Subhash C Basak; Denise Mills
Journal:  J Chem Inf Comput Sci       Date:  2003 Mar-Apr

2.  Phenology-adjusted dynamic curve number for improved hydrologic modeling.

Authors:  Muluken E Muche; Stacy L Hutchinson; J M Shawn Hutchinson; John M Johnston
Journal:  J Environ Manage       Date:  2019-01-30       Impact factor: 6.789

3.  Learning interactions via hierarchical group-lasso regularization.

Authors:  Michael Lim; Trevor Hastie
Journal:  J Comput Graph Stat       Date:  2015-09-16       Impact factor: 2.302

4.  CN-China: Revised runoff curve number by using rainfall-runoff events data in China.

Authors:  Huishu Lian; Haw Yen; Jr-Chuan Huang; Qingyu Feng; Lihuan Qin; Muhammad Amjad Bashir; Shuxia Wu; A-Xing Zhu; Jiafa Luo; Hongjie Di; Qiuliang Lei; Hongbin Liu
Journal:  Water Res       Date:  2020-04-02       Impact factor: 11.236

5.  GCN250, new global gridded curve numbers for hydrologic modeling and design.

Authors:  Hadi H Jaafar; Farah A Ahmad; Naji El Beyrouthy
Journal:  Sci Data       Date:  2019-08-12       Impact factor: 6.444

6.  Applying Machine Learning to Improve Simulations of a Chaotic Dynamical System Using Empirical Error Correction.

Authors:  Peter A G Watson
Journal:  J Adv Model Earth Syst       Date:  2019-05-21       Impact factor: 6.660

Review 7.  Array programming with NumPy.

Authors:  Charles R Harris; K Jarrod Millman; Stéfan J van der Walt; Ralf Gommers; Pauli Virtanen; David Cournapeau; Eric Wieser; Julian Taylor; Sebastian Berg; Nathaniel J Smith; Robert Kern; Matti Picus; Stephan Hoyer; Marten H van Kerkwijk; Matthew Brett; Allan Haldane; Jaime Fernández Del Río; Mark Wiebe; Pearu Peterson; Pierre Gérard-Marchant; Kevin Sheppard; Tyler Reddy; Warren Weckesser; Hameer Abbasi; Christoph Gohlke; Travis E Oliphant
Journal:  Nature       Date:  2020-09-16       Impact factor: 49.962

  7 in total

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