Application of Neural Networks for Hydrologic Process Understanding at a Midwestern Watershed

Author:

Aliev Annushka12ORCID,Koya Sinan Rasiya2,Kim Incheol2,Eun Jongwan2,Traylor Elbert3,Roy Tirthankar2ORCID

Affiliation:

1. Department of Civil and Environmental Engineering, University of Maryland, College Park, MD 20742, USA

2. Department of Civil and Environmental Engineering, University of Nebraska, Lincoln, NE 68588, USA

3. Nebraska Department of Environment and Energy, Lincoln, NE 68521, USA

Abstract

The Shell Creek Watershed (SCW) is a rural watershed in Nebraska with a history of chronic flooding. Beginning in 2005, a variety of conservation practices have been employed in the watershed. Those practices have since been credited with attenuating flood severity and improving water quality in SCW. This study investigated the impacts of 13 different controlling factors on flooding at SCW by using an artificial neural network (ANN)-based rainfall-runoff model. Additionally, flood frequency analysis and drought severity analysis were conducted. Special emphasis was placed on understanding how flood trends change in light of conservation practices to determine whether any relation exists between the conservation practices and flood peak attenuation, as the strategic conservation plan implemented in the watershed provides a unique opportunity to examine the potential impacts of conservation practices on the watershed. The ANN model developed in this study showed satisfactory discharge–prediction performance, with a Kling–Gupta Efficiency (KGE) value of 0.57. It was found that no individual controlling variable used in this study was a significantly better predictor of flooding in SCW, and therefore all 13 variables were used as inputs, which resulted in the satisfactory ANN model discharge–prediction performance. Furthermore, it was observed that after conservation planning was implemented in SCW, the magnitude of anomalous peak flows increased, while the magnitude of annual peak flows decreased. However, more comprehensive assessment is necessary to identify the relative impacts of conservation practices on flooding in the basin.

Funder

National Science Foundation

Nebraska Department of Environment and Energy

Publisher

MDPI AG

Subject

Earth-Surface Processes,Waste Management and Disposal,Water Science and Technology,Oceanography

Reference28 articles.

1. NWS (2021, June 28). Flooding in Nebraska. National Weather Service, Available online: https://www.weather.gov/safety/flood-states-ne.

2. A Hydrometeorological Assessment of the Historic 2019 Flood of Nebraska, Iowa, and South Dakota;Flanagan;Bull. Am. Meteorol. Soc.,2020

3. Salter, P. (2019). ‘Just a Terrible Mess’—Ranchers, Farmers Left with Dead Animals, Flooded Fields, Work to Be Done, Journal Star.

4. Ducey, M. (2019). ‘An Utter Disaster’: Ag Losses from Nebraska Flooding Could Top $1 Billion, Omaha World-Herald.

5. Characterizing Antecedent Conditions Prior to Annual Maximum Flood Events in a High-Elevation Watershed Using Self-Organizing Maps;Holman;J. Hydrometeorol.,2018

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