Abstract

Abstract. The snow water equivalent (SWE) is an important parameter of surface hydrological and climate systems, and it has a profound impact on Arctic amplification and climate change. However, there are great differences among existing SWE products. In the land region above 45∘ N, the existing SWE products are associated with a limited time span and limited spatial coverage, and the spatial resolution is coarse, which greatly limits the application of SWE data in cryosphere change and climate change studies. In this study, utilizing the ridge regression model (RRM) of a machine learning algorithm, we integrated various existing SWE products to generate a spatiotemporally seamless and high-precision RRM SWE product. The results show that it is feasible to utilize a ridge regression model based on a machine learning algorithm to prepare SWE products on a global scale. We evaluated the accuracy of the RRM SWE product using hemispheric-scale snow course (HSSC) observational data and Russian snow survey data. The mean absolute error (MAE), RMSE, R, and R2 between the RRM SWE products and observed SWEs are 0.21, 25.37 mm, 0.89, and 0.79, respectively. The accuracy of the RRM SWE dataset is improved by 28 %, 22 %, 37 %, 11 %, and 11 % compared with the original AMSR-E/AMSR2 (SWE), ERA-Interim SWE, Global Land Data Assimilation System (GLDAS) SWE, GlobSnow SWE, and ERA5-Land SWE datasets, respectively, and it has a higher spatial resolution. The RRM SWE product production method does not rely heavily on an independent SWE product; it takes full advantage of each SWE dataset, and it takes into consideration the altitude factor. The MAE ranges from 0.16 for areas within <100 m elevation to 0.29 within the 800–900 m elevation range. The MAE is best in the Russian region and worst in the Canadian region. The RMSE ranges from 4.71 mm for areas within <100 m elevation to 31.14 mm within the >1000 m elevation range. The RMSE is best in the Finland region and worst in the Canadian region. This method has good stability, is extremely suitable for the production of snow datasets with large spatial scales, and can be easily extended to the preparation of other snow datasets. The RRM SWE product is expected to provide more accurate SWE data for the hydrological model and climate model and provide data support for cryosphere change and climate change studies. The RRM SWE product is available from “A Big Earth Data Platform for Three Poles” (https://doi.org/10.11888/Snow.tpdc.271556) (Li et al., 2021).

Highlights

  • The IPCC (Intergovernmental Panel on Climate Change) AR6 (Sixth Assessment Report) notes that the Northern Hemisphere spring snow cover has greatly decreased since 1950, and the feedback effect of the climate system caused by this reduction is extremely large (Masson-Delmotte et al, 2021)

  • The snow water equivalent (SWE) data observed at stations from 1979 to 2014 are used as sample training data, and the AMSRE/AMSR2 SWE, ERA-Interim SWE, Global Land Data Assimilation System (GLDAS) SWE, GlobSnow SWE, ERA5-Land SWE data, and DEM data are input into the ridge regression model of a machine learning algorithm for training

  • We propose a method to fuse multisource SWE data by a ridge regression model based on machine learning

Read more

Summary

Introduction

The IPCC (Intergovernmental Panel on Climate Change) AR6 (Sixth Assessment Report) notes that the Northern Hemisphere spring snow cover has greatly decreased since 1950, and the feedback effect of the climate system caused by this reduction is extremely large (Masson-Delmotte et al, 2021). An effective method was used in a study by Pulliainen et al (2020), who applied a bias correction to GlobSnow and reanalysis data products based on SWE snow course measurements to obtain improved estimates on annual peak snow mass and SWE in the Northern Hemisphere. Another effective method is to fuse all kinds of SWE data in time and space, integrate the advantages of all kinds of data, and generate a relatively complete SWE dataset. The spatial coverage of the RRM SWE product covers all land regions north of 45◦ N

Research region
Grid SWE data description
Ridge regression machine learning algorithm for preparing the SWE
Site data and evaluation metrics
Accuracy evaluation method for datasets
Overall accuracy evaluation of the RRM SWE product
Accuracy evaluation of the RRM SWE product at different altitudes and regions
Conclusions
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call