Application of artificial neural networks to the design of subsurface drainage systems in Libyan agricultural projects

Date

2021-05-18

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier

Department

Type

Article

ISSN

2214-5818

Format

Free to read from

Citation

Ellafi MA, Deeks LK, Simmons RW. (2021) Application of artificial neural networks to the design of subsurface drainage systems in Libyan agricultural projects. Journal of Hydrology: Regional Studies, Volume 35, June 2021, Article number 100832

Abstract

Study region The study data draws on the drainage design for Hammam agricultural project (HAP) and Eshkeda agricultural project (EAP), located in the south of Libya, north of the Sahara Desert. The results of this study are applicable to other arid areas.

Study focus This study aims to improve the prediction of saturated hydraulic conductivity (Ksat) to enhance the efficacy of drainage system design in data-poor areas. Artificial Neural Networks (ANNs) were developed to estimate Ksat and compared with empirical regression-type Pedotransfer Function (PTF) equations. Subsequently, the ANNs and PTFs estimated Ksat values were used in EnDrain software to design subsurface drainage systems which were evaluated against designs using measured Ksat values.

New hydrological insights Results showed that ANNs more accurately predicted Ksat than PTFs. Drainage design based on PTFs predictions (1) result in a deeper water-level and (2) higher drainage density, increasing costs. Drainage designs based on ANNs predictions gave drain spacing and water table depth equivalent to those predicted using measured data. The results of this study indicate that ANNs can be developed using existing and under-utilised data sets and applied successfully to data-poor areas. As Ksat is time-consuming to measure, basing drainage designs on ANN predictions generated from alternative datasets will reduce the overall cost of drainage designs making them more accessible to farmers, planners, and decision-makers in least developed countries.

Description

Software Description

Software Language

Github

Keywords

Arid areas, Sub-surface drainage, Pedotransfer functions, Agricultural drainage design, Artificial neural networks, Saturated hydraulic conductivity

DOI

Rights

Attribution 4.0 International

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