Water, Год журнала: 2024, Номер 16(22), С. 3163 - 3163
Опубликована: Ноя. 5, 2024
Rural wetlands are complex landscapes where rivers, croplands, and villages coexist, making water quality monitoring crucial for the well-being of nearby residents. UAV-based imagery has proven effective in capturing detailed features bodies, it a popular tool assessments. However, few studies have specifically focused on drone-based rural their seasonal variations. In this study, Xiangfudang Wetland Park, Jiaxin City, Zhejiang Province, China, was taken as study area to evaluate parameters, including total nitrogen (TN), phosphors (TP), chemical oxygen demand (COD), turbidity degree (TUB). We assessed these parameters across summer winter seasons using UAV multispectral field sample data. Four machine learning algorithms were evaluated compared inversion based situ survey data images. The results show that ANN algorithm yielded best estimating TN, COD, TUB, with validation R2 0.78, 0.76, 0.57, respectively; CatBoost performed TP estimation, RMSE values 0.72 0.05 mg/L. Based spatial estimation results, average COD concentration body 16.05 ± 9.87 mg/L summer, higher than (13.02 8.22 mg/L). Additionally, mean TUB 18.39 Nephelometric Turbidity Units (NTU) 20.03 NTU winter. This demonstrates novelty effectiveness wetlands, providing critical insights into variations areas.
Язык: Английский