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Prediction of water distribution uniformity of sprinkler irrigation system based on machine learning algorithms

Khadiga T. Elhussiny, Ahmed M. Hassan, Ahmed Abu Habssa, Ali Mokhtar

2023Scientific Reports16 citationsDOIOpen Access PDF

Abstract

Abstract The coefficients of uniformity Christiansen's uniformity coefficient (CU) and distribution uniformity (DU) are an important parameter for designing irrigation systems, and are an accurate measure for water lose. In this study, three machine learning algorithms Random forest (RF), extreme gradient boosting (XGB) and random forest-extreme gradient boosting (XGB-RF) were developed to predict the water distribution uniformity based on operating pressure, heights of sprinkler, discharge, nozzle diameter, wind speed, humidity, highest and lowest temperature for three different impact sprinklers (KA-4, FOX and 2520) for square and triangular system layout based on four scenarios (input combinations). The main findings were; the highest CU value was 86.7% in the square system of 2520 sprinkler under 200 kPa, 0.5 m height and 0.855 m 3 /h (Nozzle 2.5 mm). Meanwhile, in the triangular system, it was 87.3% under the same pressure and discharge and 1 m height. For applied machine learning, the highest values of R 2 were 0.796, 0.825 and 0.929 in RF, XGB and XGB-RF respectively in the first scenario for CU. Moreover, for the DU, the highest values of R 2 were 0.701, 0.479 and 0.826 in RF, XGB and XGB-RF respectively in the first scenario. The obtained results revealed that the sprinkler height had the lowest impact on modeling of the water distribution uniformity.

Topics & Concepts

NozzleRandom forestDistribution uniformityMathematicsGradient boostingAlgorithmBoosting (machine learning)Machine learningStatisticsArtificial intelligenceComputer scienceMaterials scienceMechanical engineeringComposite materialEngineeringIrrigation Practices and Water ManagementPlant Water Relations and Carbon DynamicsHydrology and Watershed Management Studies
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