School of Geography and Planning, Sun Yat-sen University, Guangzhou, 510275, China.
Zhuhai Ecological Environment Monitoring Station of Guangdong Province, Zhuhai, 519070, China.
Environ Pollut. 2024 Feb 1;342:123104. doi: 10.1016/j.envpol.2023.123104. Epub 2023 Dec 7.
Reservoirs play important roles in the drinking water supply for urban residents, agricultural water provision, and the maintenance of ecosystem health. Satellite optical remote sensing of water quality variables in medium and micro-sized inland waters under oligotrophic and mesotrophic status is challenging in terms of the spatio-temporal resolution, weather conditions and frequent nutrient status changes in reservoirs, etc., especially when quantifying non-optically active components (non-OACs). This study was based on the surface reflectance products of unmanned aerial vehicle (UAV) multispectral images, Sentinel-2B Multispectral instrument (MSI) images and Landsat 7 Enhanced Thematic Mapper Plus (ETM+) by utilizing fuzzy C-means (FCM) clustering algorithm was combined with band combination (BC) model to construct the FCM-BC empirical model, and used mixed density network (MDN), extreme gradient boosting (XGBoost), deep neural network (DNN) and support vector regression (SVR) machine learning (ML) models to invert 12 kinds of optically active components (OACs) and non-OACs. Compared with the unclustered BC (UC) model, the mean coefficient of determination (MR) of the FCM-BC models was improved by at least 46.9%. MDN model showed best accuracy (R in the range of 0.60-0.98) and stability (R decreased by up to 13.2%). The accuracy of UAV was relatively higher in both empirical methods and machine learning methods. Additionally, the spatio-temporal distribution maps of four water quality variables were mapped based on the MDN model and UAV images, all platforms showed good consistency. An inversion strategy of water quality variables in various monitoring frequencies and weather conditions were proposed finally. The purpose of introducing the UAV platform was to cooperate with the satellite to improve the monitoring response ability of OACs and non-OACs in small and micro-sized oligotrophic and mesotrophic water bodies.
水库在为城镇居民提供饮用水、农业供水以及维护生态系统健康方面发挥着重要作用。在贫营养和中营养状态下,对中型和小型内陆水域的水质变量进行卫星光学遥感具有时空分辨率、天气条件和水库中频繁的营养状态变化等方面的挑战,尤其是在量化非光学活性成分(非-OAC)时。本研究基于无人机(UAV)多光谱图像、Sentinel-2B 多光谱仪器(MSI)图像和 Landsat 7 增强专题制图仪加(ETM+)的地表反射率产品,利用模糊 C 均值(FCM)聚类算法结合波段组合(BC)模型构建 FCM-BC 经验模型,并使用混合密度网络(MDN)、极端梯度提升(XGBoost)、深度神经网络(DNN)和支持向量回归(SVR)机器学习(ML)模型反演 12 种光学活性成分(OAC)和非-OAC。与未聚类的 BC(UC)模型相比,FCM-BC 模型的平均决定系数(MR)至少提高了 46.9%。MDN 模型表现出最佳的准确性(R 在 0.60-0.98 范围内)和稳定性(R 下降高达 13.2%)。UAV 在经验方法和机器学习方法中的准确性都相对较高。此外,基于 MDN 模型和 UAV 图像绘制了四个水质变量的时空分布图,所有平台都显示出很好的一致性。最后提出了一种在各种监测频率和天气条件下反演水质变量的策略。引入 UAV 平台的目的是与卫星合作,提高小型和微型贫营养和中营养水体中 OAC 和非-OAC 的监测响应能力。