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Multi-decadal mass balance series of three Kyrgyz glaciers inferred from modelling constrained with repeated snow line observations

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Supplement of The Cryosphere, 12, 1899–1919, 2018 https://doi.org/10.5194/tc-12-1899-2018-supplement © Author(s) 2018. This work is distributed under the Creative Commons Attribution 4.0 License.

Supplement of

Multi-decadal mass balance series of three Kyrgyz glaciers inferred from

modelling constrained with repeated snow line observations

M. Barandun et al.

Correspondence to:Martina Barandun ([email protected])

• tc-12-1899-2018-supplement-title-page.pdf • suplementary_data – 1_Abramov * SCAF_observed.txt * model_evaluation.txt * model_results_daily_1993.txt * model_results_daily_1994.txt * model_results_daily_1998.txt * model_results_daily_1999.txt * model_results_daily_2000.txt * model_results_daily_2001.txt * model_results_daily_2002.txt * model_results_daily_2003.txt * model_results_daily_2004.txt * model_results_daily_2005.txt * model_results_daily_2006.txt * model_results_daily_2007.txt * model_results_daily_2008.txt * model_results_daily_2009.txt * model_results_daily_2010.txt * model_results_daily_2011.txt * model_results_daily_2012.txt * model_results_daily_2013.txt * model_results_daily_2014.txt * model_results_daily_2015.txt * model_results_daily_2016.txt – 2_GlacierNo354

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* SCAF_observed.txt * model_evaluation.txt * model_results_daily_2004.txt * model_results_daily_2005.txt * model_results_daily_2006.txt * model_results_daily_2007.txt * model_results_daily_2008.txt * model_results_daily_2009.txt * model_results_daily_2010.txt * model_results_daily_2011.txt * model_results_daily_2012.txt * model_results_daily_2013.txt * model_results_daily_2014.txt * model_results_daily_2015.txt * model_results_daily_2016.txt – 3_Golubin * SCAF_observed.txt * model_evaluation.txt * model_results_daily_2000.txt * model_results_daily_2001.txt * model_results_daily_2002.txt * model_results_daily_2003.txt * model_results_daily_2004.txt * model_results_daily_2005.txt * model_results_daily_2006.txt * model_results_daily_2007.txt * model_results_daily_2008.txt * model_results_daily_2009.txt * model_results_daily_2010.txt * model_results_daily_2011.txt * model_results_daily_2012.txt * model_results_daily_2013.txt * model_results_daily_2014.txt * model_results_daily_2015.txt * model_results_daily_2016.txt – read_me.txt

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