Elhussiny Khadiga T, Hassan Ahmed M, Habssa Ahmed Abu, Mokhtar Ali
Department of Agricultural Engineering, Faculty of Agriculture, Cairo University, Giza, 12613, Egypt.
Department of Mechanical Power, Mataria Faculty of Engineering, Helwan University, Helwan, Egypt.
Sci Rep. 2023 Nov 28;13(1):20885. doi: 10.1038/s41598-023-47688-3.
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/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 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 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.
均匀系数(克里斯琴森均匀系数(CU))和分布均匀度(DU)是设计灌溉系统的重要参数,也是衡量水分损失的精确指标。在本研究中,开发了三种机器学习算法——随机森林(RF)、极端梯度提升(XGB)和随机森林 - 极端梯度提升(XGB - RF),用于基于运行压力、喷头高度、流量、喷嘴直径、风速、湿度、最高和最低温度,针对三种不同的撞击式喷头(KA - 4、FOX和2520),在基于四种情景(输入组合)的方形和三角形系统布局下预测水分分布均匀度。主要研究结果如下:在2520喷头的方形系统中,在200 kPa、0.5 m高度和0.855 m/h(喷嘴2.5 mm)条件下,最高CU值为86.7%。同时,在三角形系统中,在相同压力和流量以及1 m高度下,该值为87.3%。对于应用的机器学习,在第一种情景下,CU在RF、XGB和XGB - RF中的最高R值分别为0.796、0.825和0.929。此外,对于DU,在第一种情景下,RF、XGB和XGB - RF中的最高R值分别为0.701、0.479和0.826。所得结果表明,喷头高度对水分分布均匀度建模的影响最小。