A georeferenced agent-based model to analyze the climate change impacts on ski tourism at a regional scale

One main argument for modeling socio-ecological systems is to advance the understanding of dynamic correlations among various human and environmental factors, including impacts and responses to environmental change. We explore the shift in skier distribution amongst ski resorts taking into account t...

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Bibliographic Details
Authors: Pons Pons, Marc, Johnson, Peter A., Rosas Casals, Martí|||0000-0002-5243-2601, Jover Comas, Eric
Format: article
Publication Date:2014
Country:España
Institution:Universitat Politècnica de Catalunya (UPC)
Repository:UPCommons. Portal del coneixement obert de la UPC
Language:English
OAI Identifier:oai:upcommons.upc.edu:2117/23644
Online Access:https://hdl.handle.net/2117/23644
https://dx.doi.org/10.1080/13658816.2014.933481
Access Level:Open access
Keyword:Climatic changes -- Andorra -- Mathematical models
Winter sports -- Andorra -- Environmental impact
Climate change
Winter tourism
Adaptation
GIS
Agent based model
Canvis climàtics -- Andorra -- Models matemàtics
Esports d'hivern -- Andorra -- Impacte ambientals
Àrees temàtiques de la UPC::Desenvolupament humà i sostenible::Degradació ambiental::Canvi climàtic
Description
Summary:One main argument for modeling socio-ecological systems is to advance the understanding of dynamic correlations among various human and environmental factors, including impacts and responses to environmental change. We explore the shift in skier distribution amongst ski resorts taking into account the behavioral adaptation of individuals due to the impact of climate change on snow conditions. This analysis is performed at a regional scale by means of a coupled gravity and georeferenced agentbased model. Four different scenarios are considered. Two scenarios assume an increase of winter mean temperature of +2°C and +4°C respectively, taking into account only natural snow conditions. Two additional scenarios add the effect of snowmaking to enhance the natural snow depth and extend the skiing season in the +2°C and +4°C base scenarios. Results show differing vulnerability levels, allowing the classification of ski resorts into three distinct groups: (1) highly vulnerable ski resorts with a strong reduction in visitors attendance for all climate change scenarios, characterized by unfavorable geographical and attractiveness conditions, making it difficult to ensure snow availability in the future; (2) low vulnerability ski resorts, with moderate reduction in season length during a high climate change scenario but no reduction (or even an increase) in a low one, characterized by ski resorts with a medium capacity and attractiveness to ensure enough snow conditions and capture skiers from other ski resorts; and (3) resilient ski resorts, with good conditions to ensure future snow-reliable seasons and outstanding attractiveness, allowing them to offer longer ski seasons than their competitors and potentially attracting skiers from other closed or marginal resorts. Ski resorts included in this last group increase their skier attenda nce in all climate change scenarios. Although similar studies in the literature foretell a significant reduction of the ski market in the near future, another probable effect outlined in this study is a redefinition of this market due to a redistribution of skiers, from vulnerable ski resorts to more resilient ones.