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基于加权平均新方法利用哨兵-2卫星数据绘制水库水质图:贝叶斯最大熵的应用

Mapping reservoir water quality from Sentinel-2 satellite data based on a new approach of weighted averaging: Application of Bayesian maximum entropy.

作者信息

Nikoo Mohammad Reza, Zamani Mohammad G, Zadeh Mahshid Mohammad, Al-Rawas Ghazi, Al-Wardy Malik, Gandomi Amir H

机构信息

Department of Civil and Architectural Engineering, Sultan Qaboos University, Muscat, Oman.

Department of Civil and Environmental Engineering, Colorado State University, Fort Collins, USA.

出版信息

Sci Rep. 2024 Jul 16;14(1):16438. doi: 10.1038/s41598-024-66699-2.

Abstract

In regions like Oman, which are characterized by aridity, enhancing the water quality discharged from reservoirs poses considerable challenges. This predicament is notably pronounced at Wadi Dayqah Dam (WDD), where meeting the demand for ample, superior water downstream proves to be a formidable task. Thus, accurately estimating and mapping water quality indicators (WQIs) is paramount for sustainable planning of inland in the study area. Since traditional procedures to collect water quality data are time-consuming, labor-intensive, and costly, water resources management has shifted from gathering field measurement data to utilizing remote sensing (RS) data. WDD has been threatened by various driving forces in recent years, such as contamination from different sources, sedimentation, nutrient runoff, salinity intrusion, temperature fluctuations, and microbial contamination. Therefore, this study aimed to retrieve and map WQIs, namely dissolved oxygen (DO) and chlorophyll-a (Chl-a) of the Wadi Dayqah Dam (WDD) reservoir from Sentinel-2 (S2) satellite data using a new procedure of weighted averaging, namely Bayesian Maximum Entropy-based Fusion (BMEF). To do so, the outputs of four Machine Learning (ML) algorithms, namely Multilayer Regression (MLR), Random Forest Regression (RFR), Support Vector Regression (SVRs), and XGBoost, were combined using this approach together, considering uncertainty. Water samples from 254 systematic plots were obtained for temperature (T), electrical conductivity (EC), chlorophyll-a (Chl-a), pH, oxidation-reduction potential (ORP), and dissolved oxygen (DO) in WDD. The findings indicated that, throughout both the training and testing phases, the BMEF model outperformed individual machine learning models. Considering Chl-a, as WQI, and R-squared, as evaluation indices, BMEF outperformed MLR, SVR, RFR, and XGBoost by 6%, 9%, 2%, and 7%, respectively. Furthermore, the results were significantly enhanced when the best combination of various spectral bands was considered to estimate specific WQIs instead of using all S2 bands as input variables of the ML algorithms.

摘要

在阿曼等干旱地区,提高水库排放的水质面临着巨大挑战。这种困境在瓦迪代卡大坝(WDD)尤为明显,在那里,满足下游对充足优质水的需求是一项艰巨的任务。因此,准确估计和绘制水质指标(WQIs)对于研究区域内陆地区的可持续规划至关重要。由于传统的水质数据收集程序耗时、费力且成本高昂,水资源管理已从收集实地测量数据转向利用遥感(RS)数据。近年来,WDD受到各种驱动因素的威胁,如来自不同来源的污染、泥沙淤积、养分径流、盐分入侵、温度波动和微生物污染。因此,本研究旨在使用一种新的加权平均程序,即基于贝叶斯最大熵的融合(BMEF),从哨兵 - 2(S2)卫星数据中检索和绘制瓦迪代卡大坝(WDD)水库的水质指标,即溶解氧(DO)和叶绿素 - a(Chl - a)。为此,考虑到不确定性,使用这种方法将四种机器学习(ML)算法的输出,即多层回归(MLR)、随机森林回归(RFR)、支持向量回归(SVRs)和极端梯度提升(XGBoost)组合在一起。在WDD中,从254个系统样地采集了水温(T)、电导率(EC)、叶绿素 - a(Chl - a)、pH值、氧化还原电位(ORP)和溶解氧(DO)的水样。研究结果表明,在训练和测试阶段,BMEF模型均优于单个机器学习模型。以Chl - a作为水质指标,决定系数(R平方)作为评估指标,BMEF分别比MLR、SVR、RFR和XGBoost高出6%、9%、2%和7%。此外,当考虑各种光谱波段的最佳组合来估计特定水质指标,而不是使用所有S2波段作为ML算法的输入变量时,结果得到了显著改善。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/788b/11252294/1590fa25d857/41598_2024_66699_Fig1_HTML.jpg

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