Apogba Joseph Nzotiyine, Anornu Geophrey Kwame, Koon Arthur B, Dekongmen Benjamin Wullobayi, Sunkari Emmanuel Daanoba, Fynn Obed Fiifi, Kpiebaya Prosper
Civil Engineering Department-Regional Water and Environmental Sanitation Centre Kumasi, Kwame Nkrumah University of Science and Technology, Kumasi, Ghana.
Department of Geology, College of Engineering, University of Liberia, Fendall Campus, Liberia.
Heliyon. 2024 Mar 30;10(7):e28527. doi: 10.1016/j.heliyon.2024.e28527. eCollection 2024 Apr 15.
The main objective of this study was to map the quality of groundwater for domestic use in the Nabogo Basin, a sub-catchment of the White Volta Basin in Ghana, by applying machine learning techniques. The study was conducted by applying the Random Forest (RF) machine learning algorithm to predict groundwater quality, by utilizing factors that influence groundwater occurrence and quality such as Elevation, Topographical Wetness Index (TWI), Slope length (LS), Lithology, Soil type, Normalize Different Vegetation Index (NDVI), Rainfall, Aspect, Slope, Plan Curvature (PLC), Profile Curvature (PRC), Lineament density, Distance to faults, and Drainage density. The groundwater quality of the area was predicted by building a Random Forest model based on computed Arithmetic Water Quality Indices (WQI) (as dependent variable) of existing boreholes, to serve as an indicator of the groundwater quality. The predicted WQI of groundwater in the study area shows that it ranges from 9.51 to 69.99%. This implied that 21.97 %, 74.40 %, and 3.63 % of the study area had respectively the likelihood of excellent. The models were found to perform much better with an RMSE of 23.03 and an R value of 0.82. The study conducted highlighted an essential understanding of the groundwater quality in the study area, paving the way for further studies and policy development for groundwater management.
本研究的主要目的是通过应用机器学习技术,绘制加纳白沃尔特河流域的一个子流域纳博戈盆地的生活用水地下水质量图。该研究通过应用随机森林(RF)机器学习算法来预测地下水质量,利用了诸如海拔、地形湿度指数(TWI)、坡长(LS)、岩性、土壤类型、归一化植被指数(NDVI)、降雨量、坡向、坡度、平面曲率(PLC)、剖面曲率(PRC)、线性密度、到断层的距离和排水密度等影响地下水赋存和质量的因素。通过基于现有钻孔的计算算术水质指数(WQI)(作为因变量)构建随机森林模型来预测该地区的地下水质量,以此作为地下水质量的指标。研究区域内地下水的预测WQI显示其范围为9.51%至69.99%。这意味着研究区域分别有21.97%、74.40%和3.63%的可能性水质极佳。发现这些模型表现良好,均方根误差为23.03,R值为0.82。该研究突出了对研究区域地下水质量的重要理解,为进一步开展地下水管理研究和政策制定铺平了道路。