Selecting regional climate scenarios for impact modelling studies

In climate change research ensembles of climate simulations are produced in an attempt to cover the uncertainty in future projections. Many climate change impact studies face difficulties using the full number of simulations available, and therefore often only subsets are used. Until now such subsets were chosen based on their representation of temperature change or by accessibility of the simulations. By using more specific information about the needs of the impact study as guidance for the clustering of simulations, the subset fits the purpose of climate change impact research more appropriately. Here, the sensitivity of such a procedure is explored, particularly with regard to the use of different climate variables, seasons, and regions in Europe. While temperature dominates the clustering, the resulting selection is influenced by all variables, leading to the conclusion that different subsets fit different impact studies best. Display Omitted We present a method to reduce ensembles of climate models.We use hierarchical clustering, SVD, Silhouettes and mean distances.To minimise the information loss the selection is fitted to the data application.The method shows strong sensitivity to the choice of variables/information provided.Strong need for a careful and thoughtful selection process is shown.

[1]  Anil K. Jain,et al.  Data clustering: a review , 1999, CSUR.

[2]  R. Vautard,et al.  EURO-CORDEX: new high-resolution climate change projections for European impact research , 2014, Regional Environmental Change.

[3]  R. Vautard,et al.  The European climate under a 2 °C global warming , 2014 .

[4]  C. Deser,et al.  Uncertainty in climate change projections: the role of internal variability , 2012, Climate Dynamics.

[5]  R. Vautard,et al.  Regional climate modeling on European scales: a joint standard evaluation of the EURO-CORDEX RCM ensemble , 2014 .

[6]  Jason P. Evans,et al.  Design of a regional climate modelling projection ensemble experiment - NARCliM , 2014 .

[7]  M. Haylock,et al.  Observed coherent changes in climatic extremes during the second half of the twentieth century , 2002 .

[8]  Robert Tibshirani,et al.  The Elements of Statistical Learning: Data Mining, Inference, and Prediction, 2nd Edition , 2001, Springer Series in Statistics.

[9]  Reto Knutti,et al.  The use of the multi-model ensemble in probabilistic climate projections , 2007, Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences.

[10]  C.-C. Jay Kuo,et al.  A new initialization technique for generalized Lloyd iteration , 1994, IEEE Signal Processing Letters.

[11]  L. Bärring,et al.  Future climate impact on spruce bark beetle life cycle in relation to uncertainties in regional climate model data ensembles , 2011 .

[12]  Karl E. Taylor,et al.  An overview of CMIP5 and the experiment design , 2012 .

[13]  P. Rousseeuw Silhouettes: a graphical aid to the interpretation and validation of cluster analysis , 1987 .

[14]  E. Hawkins,et al.  The Potential to Narrow Uncertainty in Regional Climate Predictions , 2009 .

[15]  Thomas Mendlik,et al.  Selecting climate simulations for impact studies based on multivariate patterns of climate change , 2015, Climatic Change.

[16]  Ed Hawkins,et al.  Time of emergence of climate signals , 2012 .

[17]  Peter J. Rousseeuw,et al.  Finding Groups in Data: An Introduction to Cluster Analysis , 1990 .

[18]  A. Thomson,et al.  The representative concentration pathways: an overview , 2011 .

[19]  P. Linden,et al.  ENSEMBLES: Climate Change and its Impacts - Summary of research and results from the ENSEMBLES project , 2009 .

[20]  F. Giorgi,et al.  Addressing climate information needs at the regional level: the CORDEX framework , 2009 .

[21]  Andrew P. Morse,et al.  DEVELOPMENT OF A EUROPEAN MULTIMODEL ENSEMBLE SYSTEM FOR SEASONAL-TO-INTERANNUAL PREDICTION (DEMETER) , 2004 .

[22]  B. Hewitson,et al.  Good Practice Guidance Paper on Assessing and Combining Multi Model Climate Projections , 2010 .

[23]  F. Giorgi,et al.  Weight assignment in regional climate models , 2010 .

[24]  W. Briggs Statistical Methods in the Atmospheric Sciences , 2007 .

[25]  Bin Zhang,et al.  Defining clusters from a hierarchical cluster tree: the Dynamic Tree Cut package for R , 2008, Bioinform..

[26]  Alex J. Cannon Selecting GCM Scenarios that Span the Range of Changes in a Multimodel Ensemble: Application to CMIP5 Climate Extremes Indices* , 2015 .