Application of machine learning techniques for regional bias correction of snow water equivalent estimates in Ontario, Canada

Bibliographic Details
Title: Application of machine learning techniques for regional bias correction of snow water equivalent estimates in Ontario, Canada
Authors: F. King, A. R. Erler, S. K. Frey, C. G. Fletcher
Source: Hydrology and Earth System Sciences, Vol 24, Pp 4887-4902 (2020)
Publisher Information: Copernicus Publications, 2020.
Publication Year: 2020
Collection: LCC:Technology
LCC:Environmental technology. Sanitary engineering
LCC:Geography. Anthropology. Recreation
LCC:Environmental sciences
Subject Terms: Technology, Environmental technology. Sanitary engineering, TD1-1066, Geography. Anthropology. Recreation, Environmental sciences, GE1-350
More Details: Snow is a critical contributor to Ontario's water-energy budget, with impacts on water resource management and flood forecasting. Snow water equivalent (SWE) describes the amount of water stored in a snowpack and is important in deriving estimates of snowmelt. However, only a limited number of sparsely distributed snow survey sites (n=383) exist throughout Ontario. The SNOw Data Assimilation System (SNODAS) is a daily, 1 km gridded SWE product that provides uniform spatial coverage across this region; however, we show here that SWE estimates from SNODAS display a strong positive mean bias of 50 % (16 mm SWE) when compared to in situ observations from 2011 to 2018. This study evaluates multiple statistical techniques of varying complexity, including simple subtraction, linear regression and machine learning methods to bias-correct SNODAS SWE estimates using absolute mean bias and RMSE as evaluation criteria. Results show that the random forest (RF) algorithm is most effective at reducing bias in SNODAS SWE, with an absolute mean bias of 0.2 mm and RMSE of 3.64 mm when compared with in situ observations. Other methods, such as mean bias subtraction and linear regression, are somewhat effective at bias reduction; however, only the RF method captures the nonlinearity in the bias and its interannual variability. Applying the RF model to the full spatio-temporal domain shows that the SWE bias is largest before 2015, during the spring melt period, north of 44.5∘ N and east (downwind) of the Great Lakes. As an independent validation, we also compare estimated snowmelt volumes with observed hydrographs and demonstrate that uncorrected SNODAS SWE is associated with unrealistically large volumes at the time of the spring freshet, while bias-corrected SWE values are highly consistent with observed discharge volumes.
Document Type: article
File Description: electronic resource
Language: English
ISSN: 1027-5606
1607-7938
Relation: https://hess.copernicus.org/articles/24/4887/2020/hess-24-4887-2020.pdf; https://doaj.org/toc/1027-5606; https://doaj.org/toc/1607-7938
DOI: 10.5194/hess-24-4887-2020
Access URL: https://doaj.org/article/2a03688314f54db39be360877cfe9503
Accession Number: edsdoj.2a03688314f54db39be360877cfe9503
Database: Directory of Open Access Journals
More Details
ISSN:10275606
16077938
DOI:10.5194/hess-24-4887-2020
Published in:Hydrology and Earth System Sciences
Language:English