Abstract

Monitoring water quality of inland lakes and reservoirs is a great concern for the public and government in China. Water turbidity is a reliable and direct indicator that can reflect the water quality. Remote sensing has become an efficient technology for monitoring large-scale water turbidity. This study aims to search an optimal regression model to accurately predict water turbidity using remote sensing data. To achieve this goal, 187 water samples were collected from field campaigns across Northeast China in 2018, of which the samples were gathered within 6 days of Sentinel-2 overpasses. The spectral reflectance data was used as independent variables for modeling. The simple regression (SR), partial least squares regression (PLSR), support vector regression (SVR), extreme learning machine (ELM), back-propagation neural network (BP), classification and regression tree (CART), gradient boosting decision tree (GBDT), random forest (RF), and K-nearest neighbor (KNN) were used to compare. From model validation, we identified GBDT as the best regression model (R2=0.88, RMSE=9.90 NTU, MAE=6.71 NTU). We applied GBDT to retrieve the water turbidity and obtained a satisfactory result. Feature selection technique from tree-based ensemble method was also tested. We selected B2, B3, B4 and B5 as the important variables because of their high ability to explain the variation of turbidity. These results demonstrated the significance of using a promising method to retrieve water turbidity using Sentinel-2 imagery at the regional scale. It is beneficial to monitor the spatial-temporal distribution of water turbidity; support water quality management and inland water environment protection.

Highlights

  • L AKES and reservoirs are important inland water resources, which play a significant role in ecological environment, industrial production, and human wellbeing [1], [2]

  • Among all the sampled lakes and reservoirs, GXKL covers a largest area of 4412.2 km2, with higher turbidity

  • This study showed the feasibility of estimating the water turbidity using Sentinel-2 imagery in a large study area

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Summary

Introduction

L AKES and reservoirs are important inland water resources, which play a significant role in ecological environment, industrial production, and human wellbeing [1], [2]. Lakes and reservoirs are capable of regulating runoff, adjusting regional climate, supporting navigation, and flood control [5] They serve other functions such as agricultural production and recreational purpose which advance the local economic efficiency [6], [7]. Many water quality parameters, such as chlorophyll-a (Chla) concentration, total suspended solids (TSS), and colored dissolved organic matters (CDOM), are often used to measure the condition of water[4], [8], [9]. These water constituent concentrations jointly modulated water turbidity.

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