Technical Papers
Sep 12, 2016

Event Runoff and Sediment-Yield Neural Network Models for Assessment and Design of Management Practices for Small Agricultural Watersheds

Publication: Journal of Hydrologic Engineering
Volume 22, Issue 2

Abstract

This study presents the development of novel artificial neural networks (ANN) models for assessment of best management practices (BMPs) for controlling runoff and sediment yield from small agricultural watersheds. The ANN models integrate complex nonlinear effects of key climatic, topographic, drainage, and management characteristics and can evaluate BMP effectiveness without presumptions about their physical mechanisms or performance. Thirty-two ANN models were developed and tested. Penalty-related criteria and statistical model performance evaluation parameters were used to select the two models (one for runoff, one for sediment yield) with an optimum number of input parameters and hidden nodes. Event based monitoring data (n=248) at the outlet of seven watersheds (1.4–30.2 ha) in southwestern Wisconsin were used to train, validate, and test the models. Statistical parameters (e.g., R2=0.760.93) suggested that the ANN models performed well. Sensitivity analysis for the BMP parameters showed that the runoff model was heavily influenced by length of grassed waterway and channel density; the sediment-yield model was mainly affected by upland crop type and tillage.

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Acknowledgments

This research is based upon work supported by the National Institute of Food and Agriculture, U.S. Department of Agriculture, under WIS01530. The authors also wish to thank Dennis Busch and Randy Mentz (University of Wisconsin-Platteville Pioneer Farm) and Eric Cooley (University of Wisconsin Discovery Farms) for providing the data used in this paper.

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Journal of Hydrologic Engineering
Volume 22Issue 2February 2017

History

Received: Oct 12, 2015
Accepted: Jul 12, 2016
Published online: Sep 12, 2016
Published in print: Feb 1, 2017
Discussion open until: Feb 12, 2017

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Harsh Vardhan Singh [email protected]
Postdoctoral Research Associate, Tropical Research and Education Center, 18905 SW 280th St., Homestead, FL 33031; Formerly, Graduate Student, Dept. of Biological Systems Engineering, Univ. of Wisconsin, 460 Henry Mall, Madison, WI 53706 (corresponding author). E-mail: [email protected]
Anita M. Thompson
Professor, Dept. of Biological Systems Engineering, Univ. of Wisconsin, 460 Henry Mall, Madison, WI 53706.
Bahram Gharabaghi
Professor, School of Engineering, Univ. of Guelph, Thornborough Bldg., Guelph, ON, Canada N1G 2W1.

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