TECHNICAL PAPERS
Jul 15, 2002

Estimating Evapotranspiration using Artificial Neural Network

Publication: Journal of Irrigation and Drainage Engineering
Volume 128, Issue 4

Abstract

This study investigates the utility of artificial neural networks (ANNs) for estimation of daily grass reference crop evapotranspiration (ETo) and compares the performance of ANNs with the conventional method (Penman–Monteith) used to estimate ETo. Several issues associated with the use of ANNs are examined, including different learning methods, number of processing elements in the hidden layer(s), and the number of hidden layers. Three learning methods, namely, the standard back-propagation with learning rates of 0.2 and 0.8, and backpropagation with momentum were considered. The best ANN architecture for estimation of daily ETo was obtained for two different data sets (Sets 1 and 2) for Davis, Calif. Using data of Set 1, the networks were trained with daily climatic data (solar radiation, maximum and minimum temperature, maximum and minimum relative humidity, and wind speed) as input and the Penman–Monteith (PM) estimated ETo as output. The best ANN architecture was selected on the basis of weighted standard error of estimate (WSEE) and minimal ANN architecture. The ANN architecture of 6-7-1, (six, seven, and one neuron(s) in the input, hidden, and output layers, respectively) gave the minimum WSEE (less than 0.3 mm/day) for all learning methods. This value was lower than the WSEE (0.74 mm/day) between the PM method and lysimeter measured ETo as reported by Jensen et al. in 1990. Similarly, ANNs were trained, validated, and tested using the lysimeter measured ETo and corresponding climatic data (Set 2). Again, all learning methods gave less WSEE (less than 0.60 mm/day) as compared to the PM method (0.97 mm/day). Based on these results, it can be concluded that the ANN can predict ETo better than the conventional method (PM) for Davis.

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Published In

Go to Journal of Irrigation and Drainage Engineering
Journal of Irrigation and Drainage Engineering
Volume 128Issue 4August 2002
Pages: 224 - 233

History

Received: Mar 19, 2001
Accepted: Dec 13, 2001
Published online: Jul 15, 2002
Published in print: Aug 2002

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Authors

Affiliations

M. Kumar
Research Scholar, Dept. of Agricultural and Food Engineering, Indian Institute of Technology, Kharagpur WB 721 302, India.
N. S. Raghuwanshi
Associate Professor, Dept. of Agricultural and Food Engineering, Indian Institute of Technology, Kharagpur WB 721 302, India.
R. Singh
Associate Professor, Dept. of Agricultural and Food Engineering, Indian Institute of Technology, Kharagpur WB 721 302, India.
W. W. Wallender
Professor, Dept. of Biological and Agricultural Engineering and Dept. of Hydrologic Science, Univ. of California, Davis, CA 95616.
W. O. Pruitt
Emeritus Irrigation Engineer, Dept. of Hydrologic Science, Univ. of California, Davis, CA 95616.

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