Abstract

Climate projection studies of future changes in snow conditions and resulting rain-on-snow (ROS) flood events are subject to large uncertainties. Typically, emission scenario uncertainties and climate model uncertainties are included. This is the first study on this topic to also include quantification of natural climate variability, which is the dominant uncertainty for precipitation at local scales with large implications for e.g. runoff projections. To quantify natural climate variability, a weather generator was applied to simulate inherently consistent climate variables for multiple realizations of current and future climates at 100 m spatial and hourly temporal resolution over a 12 × 12 km high-altitude study area in the Swiss Alps. The output of the weather generator was used as input for subsequent simulations with an energy balance snow model. The climate change signal for snow water resources stands out as early as mid-century from the noise originating from the three sources of uncertainty investigated, namely uncertainty in emission scenarios, uncertainty in climate models, and natural climate variability. For ROS events, a climate change signal toward more frequent and intense events was found for an RCP 8.5 scenario at high elevations at the end of the century, consistently with other studies. However, for ROS events with a substantial contribution of snowmelt to runoff (>20 %), the climate change signal was largely masked by sources of uncertainty. Only those ROS events where snowmelt does not play an important role during the event will occur considerably more frequently in the future, while ROS events with substantial snowmelt contribution will mainly occur earlier in the year but not more frequently. There are two reasons for this: first, although it will rain more frequently in midwinter, the snowpack will typically still be too cold and dry and thus cannot contribute significantly to runoff; second, the very rapid decline in snowpack toward early summer, when conditions typically prevail for substantial contributions from snowmelt, will result in a large decrease in ROS events at that time of the year. Finally, natural climate variability is the primary source of uncertainty in projections of ROS metrics until the end of the century, contributing more than 70 % of the total uncertainty. These results imply that both the inclusion of natural climate variability and the use of a snow model, which includes a physically-based processes representation of water retention, are important for ROS projections at the local scale.

Highlights

  • The future decrease of snow depth and snow water equivalent in mountainous environments due to global warming has been 35 shown in several studies (e.g. Musselman et al, 2017; Marty et al, 2017; Verfaillie et al, 2018, Willibald et al, 2020)

  • There are two reasons for this: first, it will rain more frequently in midwinter, the snowpack will typically still be too cold and dry and cannot contribute significantly to runoff; second, the very rapid decline in snowpack toward early summer, when conditions typically prevail for substantial contributions from snowmelt, will result in a large decrease in ROS events at that time of the year

  • incoming shortwave radiation (ISWR) is underestimated in winter months, while incoming longwave radiation (ILWR) is overestimated in spring

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Summary

Introduction

The future decrease of snow depth and snow water equivalent in mountainous environments due to global warming has been 35 shown in several studies (e.g. Musselman et al, 2017; Marty et al, 2017; Verfaillie et al, 2018, Willibald et al, 2020). The role of internal climate variability on projections of 45 air temperature and precipitation has been quantified together with other uncertainty sources, e.g. emission scenario and climate model uncertainty (Hawkins and Sutton, 2009; 2011; Deser et al, 2012b, Fatichi et al, 2016). While it is possible for future research to reduce the amount of uncertainty if climate models are improved or emission scenarios are constrained, the amount of natural climate variability is not reducible These findings raise the question of how informative climate projections based only on climate model outputs are and will be at local scales (Fatichi et al, 2016). 55 Willibald et al (2020) studied the effects of internal climate variability on the change of mean and maximum snow depth at eight stations in the Swiss Alps and concluded that it is a major source of uncertainty for time horizons up to 50 years and more.

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