Water function zone: A method to improve the accuracy of remote sensing retrieval of water bodies

IF 7 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Bo Zhao , Anbing Zhang , Hefeng Wang , Jiyu Pang , Yikai Hou , Pengfei Ma , Bofan Zhao
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Abstract

In water monitoring, it is always a hot issue to exploring a method to improve the accuracy of remote sensing inversion. To this end, based on the actual investigation of the surrounding environment and water quality characteristics of the Fuyang river, this study has established five distinct water functional zones: reservoir (RS), village river (VR), industrial river (IR), artificial lake (AL), and urban river (UR), which are considered as subdivided datasets. Meanwhile, considering that lakes and reservoirs typically contain relatively stationary or slow-moving water bodies, while river channels are characterized by moving water bodies, three multi-type datasets have been constructed for comparison. These are based on the morphological and flow characteristics of different regions within the Fuyang river and include river channel (R), lake (L), and whole basin (W). Based on multi-spectral images of unmanned aerial vehicle (UAV) and measured water quality data, ten types of inversion models were to invert six kinds of water quality parameters, and compare and analyze the performance of the optimal inversion model of the corresponding data sets. The results show that the multivariate regression model is superior to the univariate regression model, and the mean coefficient of determination (R2) of the subdivided data set is 0.936, and the root mean square error (RMSE) and mean absolute error (MAE) appear decrease in different degrees compared with the W with 3.573 and 2.662, respectively. The mean ratio performance to interquartile (RPIQ) of the corresponding model in UR and VR are 3.963 and 2.748, respectively. Extremely Randomized Trees (ERT) model is more suitable for the inversion of multi-type data sets lacking obvious water quality characteristics and with complex components, while Categorical Boosting (CatBoost) model is more suitable for the inversion of subdivided data sets with obvious water quality characteristics. The current method has practical guiding significance for improving the application level of water monitoring technology in ecological environment protection and urban water resources protection.

水功能区:提高水体遥感检索精度的方法
在水环境监测中,探索提高遥感反演精度的方法一直是一个热点问题。为此,本研究在对富阳河周边环境和水质特征进行实际调查的基础上,建立了水库(RS)、村庄河道(VR)、工业河道(IR)、人工湖(AL)和城市河道(UR)五个不同的水功能区,并将其作为细分数据集。同时,考虑到湖泊和水库通常包含相对静止或缓慢流动的水体,而河道则以流动水体为特征,因此构建了三种多类型数据集进行比较。这些数据集基于富阳江不同区域的形态和水流特征,包括河道(R)、湖泊(L)和全流域(W)。基于无人机(UAV)多光谱图像和实测水质数据,采用十种反演模型对六种水质参数进行反演,并比较分析相应数据集最优反演模型的性能。结果表明,多元回归模型优于单变量回归模型,细分数据集的平均判定系数(R2)为 0.936,均方根误差(RMSE)和平均绝对误差(MAE)与 W 相比出现不同程度的下降,分别为 3.573 和 2.662。UR 和 VR 中相应模型的平均性能与四分位数之比(RPIQ)分别为 3.963 和 2.748。极端随机化树(ERT)模型更适用于水质特征不明显、成分复杂的多类型数据集的反演,而分类提升(CatBoost)模型更适用于水质特征明显的细分数据集的反演。本方法对提高水监测技术在生态环境保护和城市水资源保护中的应用水平具有现实指导意义。
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来源期刊
Ecological Indicators
Ecological Indicators 环境科学-环境科学
CiteScore
11.80
自引率
8.70%
发文量
1163
审稿时长
78 days
期刊介绍: The ultimate aim of Ecological Indicators is to integrate the monitoring and assessment of ecological and environmental indicators with management practices. The journal provides a forum for the discussion of the applied scientific development and review of traditional indicator approaches as well as for theoretical, modelling and quantitative applications such as index development. Research into the following areas will be published. • All aspects of ecological and environmental indicators and indices. • New indicators, and new approaches and methods for indicator development, testing and use. • Development and modelling of indices, e.g. application of indicator suites across multiple scales and resources. • Analysis and research of resource, system- and scale-specific indicators. • Methods for integration of social and other valuation metrics for the production of scientifically rigorous and politically-relevant assessments using indicator-based monitoring and assessment programs. • How research indicators can be transformed into direct application for management purposes. • Broader assessment objectives and methods, e.g. biodiversity, biological integrity, and sustainability, through the use of indicators. • Resource-specific indicators such as landscape, agroecosystems, forests, wetlands, etc.
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