Journal
SCIENCE OF THE TOTAL ENVIRONMENT
Volume 870, Issue -, Pages -Publisher
ELSEVIER
DOI: 10.1016/j.scitotenv.2023.161852
Keywords
Google Earth Engine; Distributed hydrological model; Efficiency and uncertainty; Remote sensing; Remote sensing hydrological station technology
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This study used twelve remote sensing data sources provided by GEE to drive a typical RS-DHM and RSHS, and quantitatively analyzed the contribution of GEE to reducing uncertainties in the hydrological model. The results showed that GEE significantly improved data preparation and parameter adjustment, enhancing the reliability and operational efficiency of the hydrological model.
The coupling of multisource remote sensing data and the lack of measured runoff introduce input data and model parameters uncertainties to the remote sensing-driven distributed hydrological model (RS-DHM). The PB satellite remote sensing datasets of the Google Earth Engine (GEE) are widely used in RS-DHM and remote sensing runoff inversion research, but whether GEE can reduce the two abovementioned uncertainties is still unknown. To answer this question, twelve remote sensing data sources provided by GEE were used in this study to drive a typical RS-DHM called the remote sensing-driven distributed time-variant gain model (RS-DTVGM) and the remote sensing runoff inversion technology called remote sensing hydrological station (RSHS), and the contribution of GEE to the improving hydrological model uncertainties was quantitatively analyzed from 2001 to 2020. The results showed that (1) the GEE-based improved data preparation not only effectively reduced the uncertainty in the input data with better spatialtemporal continuity and a 6.20 % reduction in the total area occupied by invalid grids, but also enhanced the operational efficiency by reducing the image number, memory size and data processing time of the satellite remote sensing data by 83.63 %, 99.53 %, and 98.73 %, respectively; (2) the GEE-based RSHS technology provided sufficient data support for parameter adjustment and accuracy validation of the RS-DTVGM, which effectively reduced the uncertainty in the model parameters and increased the Nash efficiency coefficient (NSE) in the calibration and validation period from 0.67 to 0.87 and 0.75, respectively; and (3) the calibrated RS-DTVGM was more reliable and robust, and its runoff and evapotranspiration were consistent with the actual statistical data. In the future, GEE and RSHS technology should be
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