Abstract

Abstract. The Canadian Sea Ice and Snow Evolution (CanSISE) Network is a climate research network focused on developing and applying state-of-the-art observational data to advance dynamical prediction, projections, and understanding of seasonal snow cover and sea ice in Canada and the circumpolar Arctic. This study presents an assessment from the CanSISE Network of the ability of the second-generation Canadian Earth System Model (CanESM2) and the Canadian Seasonal to Interannual Prediction System (CanSIPS) to simulate and predict snow and sea ice from seasonal to multi-decadal timescales, with a focus on the Canadian sector. To account for observational uncertainty, model structural uncertainty, and internal climate variability, the analysis uses multi-source observations, multiple Earth system models (ESMs) in Phase 5 of the Coupled Model Intercomparison Project (CMIP5), and large initial-condition ensembles of CanESM2 and other models. It is found that the ability of the CanESM2 simulation to capture snow-related climate parameters, such as cold-region surface temperature and precipitation, lies within the range of currently available international models. Accounting for the considerable disagreement among satellite-era observational datasets on the distribution of snow water equivalent, CanESM2 has too much springtime snow mass over Canada, reflecting a broader northern hemispheric positive bias. Biases in seasonal snow cover extent are generally less pronounced. CanESM2 also exhibits retreat of springtime snow generally greater than observational estimates, after accounting for observational uncertainty and internal variability. Sea ice is biased low in the Canadian Arctic, which makes it difficult to assess the realism of long-term sea ice trends there. The strengths and weaknesses of the modelling system need to be understood as a practical tradeoff: the Canadian models are relatively inexpensive computationally because of their moderate resolution, thus enabling their use in operational seasonal prediction and for generating large ensembles of multidecadal simulations. Improvements in climate-prediction systems like CanSIPS rely not just on simulation quality but also on using novel observational constraints and the ready transfer of research to an operational setting. Improvements in seasonal forecasting practice arising from recent research include accurate initialization of snow and frozen soil, accounting for observational uncertainty in forecast verification, and sea ice thickness initialization using statistical predictors available in real time.

Highlights

  • Seasonal snow cover and sea ice are integral to the cultural identity, history, and economy of northern nations like Canada

  • This study focuses on snow, sea ice, and related climate parameters and processes relevant to the Canadian land mass and the pan-Arctic region

  • We have assessed characteristics of snow, sea ice, and related climate parameters in Environment and Climate Change Canada’s (ECCC) Earth system model (ESM) CanESM2 and seasonal to interannual climate-prediction system Canadian Seasonal to Interannual Prediction System (CanSIPS), with a focus on the Canadian sector of the Northern Hemisphere. This assessment is intended to provide a baseline for future versions of the models with respect to these important societally relevant climate parameters. It has highlighted the application of the Blended-5 multi-source snow water equivalent (SWE) (Mudryk et al, 2015) and the CanESM2-LE of climate simulations

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Summary

Introduction

Seasonal snow cover and sea ice are integral to the cultural identity, history, and economy of northern nations like Canada. Dramatic changes in Canada’s snow cover and sea ice have been witnessed and documented (Derksen et al, 2012; Najafi et al, 2016) This has driven the need to better understand and predict these fields for the coming seasons, years, and decades. To address this need, Canada has helped lead the global effort to better observe and model snow, sea ice, and related climate parameters (such as northern high-latitude land-surface temperature and precipitation). Canada has helped lead the global effort to better observe and model snow, sea ice, and related climate parameters (such as northern high-latitude land-surface temperature and precipitation) This effort includes Canadian contributions to the International Polar Year A companion paper from the CanSISE Network (Mudryk et al, 2018) assesses 1981–2015 trends and 2020–2050 projections of Canadian snow cover and sea ice

Models and data used
Observed and simulated terrestrial snow climatology
Observed and simulated trends in terrestrial snow
Canadian Arctic sea ice in CanESM2
Snow- and sea-ice-related forecast performance and development of CanSIPS
Characteristics of CanSIPS related to seasonal forecasts of terrestrial snow
Sea ice forecasting with CanSIPS
Findings
Conclusions
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