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

机译:机器学习技术在加拿大安大略省雪水等同估计的区域偏差校正

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摘要

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.
机译:雪是安大略省水能预算的重要贡献者,对水资源管理和洪水预测的影响。雪水当量?(SWE)描述了储存在积雪中的水量,并且在推导出雪花估算中是重要的。然而,在整个安大略省都只有有限数量的稀疏分布雪调查网站(n = 383)。雪数据同化系统?(Snodas)是每日,1公里的网格产品,在该地区提供统一的空间覆盖率;然而,我们在这里展示了Snodas的SWE估计显示与2011年到2018年的原位观察相比,Snodas的Swe估计显示出50%(16mm SWE)的强烈正平均偏差。本研究评估了多种复杂性的多种统计技术,包括使用绝对平均偏差和RMSE作为评估标准的偏置校正Snodas SWE估计的简单减法,线性回归和机器学习方法。结果表明,随机森林?(RF)算法在减少Snodas SWE中的偏压下最有效,绝对平均偏置为0.2mm,并且与原位观察相比,3.64mm的偏差。其他方法,例如平均偏差减法和线性回归,在偏差减小方面有些有效;但是,只有RF?方法捕获偏置的非线性及其续际变异性。将RF模型应用于完整的时空域,显示SWE偏差是在春季熔化期间的春季熔化期间最大的,距离湖泊的44.5°N和East(Downwind)。作为一个独立的验证,我们也将估计的雪花卷与观察到的水文进行了比较,并证明未经校正的Snodas SWE在春季自文的时间时与不切实际的大量相关联,而偏置的SWE值与观察到的放电体积高度一致。

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