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Introduction of Chinese Participants Knowledge Exchange on Climate Change and Glaciers October 11-‐15, 2016, Switzerland WANG, Yanjun Nanjing University of Information Science and Technology (NUIST) ZHAI, Song China Meteorological Administration (CMA) GAO, Chao Department of Geography, Anhui Normal University WANG, Run School of Resources and Environmental Science, Hubei University JIANG, Tong National Centre on Climate Change (NCCC) China Meteorological Administration (CMA) 2 Chinese Map 3 Vulnerability and Risk Assessment of Climatic Disasters in China Wang Yanjun Nanjing University of Information Science and Technology(NUIST) WANG, Yanjun Nanjing University of Information Science and Technology (NUIST) EDUCATIONS: Sept.2003 --- June 2006 Nanjing Institute of Geography and Limnology, Chinese Academy of Sciences (CAS) Ph.D., Physical geography Sept.2000 --- June 2003 Nanjing Normal University M.Sc, Physical geography Sept.1996 --- June 2000 Hunan Normal University B.Sc., Geography 5 WANG, Yanjun REPRESENTATIVE PUBLICATIONS: 1、Wang Yanjun, Wen Shanshan, Li Xiucang, Thomas Fischer,Su Buda, Wang Run, Jiang Tong. Spatiotemporal distributions of influential tropical cyclones and associated economic losses in China in 1984–2015, Natural Hazards, 2016, DOI 10.1007/s11069-016-2531-6 2、Wang Yanjun, Gao Chao, Zhai Jianqing, et al.,. Spatio-temporal changes of exposure and vulnerability to floods in China. Advances in Climate Change Research. 2015, doi: 10.1016/j.accre.2015.03.002 3、Gao Chao,Yao Mengting, Wang Yanjun (CA), et al., Assessment of three hydrological models: a case study for different catchment size and input temporal resolution. Hydrological Sciences Journal. 2015 4、Buda Su,Xiaofan Zeng,Jianqing Zhai,Yanjun Wang,Xiucang Li. Projected precipitation and streamflow under SRES and RCP emission scenarios in the Songhuajiang River basin, China. Quaternary International,2014. 1-11.http://dx.doi.org/ 10.1016/j.quaint.2014.03.049 5、Wang Yanjun, Gao Chao,Wang Anqian, et al.Temporal and spatial variation of exposure and vulnerability of flood disaster in China. Progressus Inquisitiones De Mutatione Climatis, 2014,10(6):391-398.(in Chinese) 6 Time series of population and economic vulnerability to floods in China Population vulnerability(%) 16 y = 0,2516x + 3,1243 R² = 0,4578 12 8 4 0 1984 1987 1990 1993 1996 1999 2002 2005 2008 2011 Year Economic vulnerability(%) 4 y = -0,0359x + 1,4312 R² = 0,1698 3 2 1 0 1984 1987 1990 1993 1996 1999 Year 2002 2005 2008 2011 Spatial variation of population and economic vulnerability to floods Risk mapping of floods in China Floods Disaster hazardaffected body Element Hazard Exposure Vulnerability Risk Population Economy Crop Risk Mapping of rainstorm waterlogging in Nanjing Hazard mapping vulnerability Exposure Risk mapping Data Engineer! Administrative Officer ZHAI Song China Meteorological Administration (CMA) ZHAI, Song China Meteorological Administration (CMA) EDUCATIONS: Sept.1995 --- June 1999 China Agricultural University B.Sc., Water Conservancy and Irrigation ! Climate Change and Impact on Water Resources in the Huai River Basin (Hydrological model; ANN, HBV and SWIM) Dr. Gao Chao, Department of Geography, Anhui Normal University GAO, Chao Department of Geography, Anhui Normal University EDUCATIONS: 09/1997-07/2001 B.Sc., at Department of Geography, Anhui NormalUniv. 09/2003-07/2006 M.Sc., at Department of Geography, Anhui NormalUniv. 09/2007-07/2010 Ph.D., at Nanjing institute of Geography&Limnology, CAS,China GAO, Chao REPRESENTATIVE PUBLICATIONS: ! 1、C. Gao, M.T. Yao, Y.J. Wang, J.Q. Zhai, S. Buda, T. Fischer, X. F. Zeng & W.P. Wang (2015):Hydrological model comparison and assessment: criteria from catchment scales and temporal resolution, Hydrological Sciences Journal. DOI: 10.1080/02626667.2015.1057141 2、Chao Gao, Zhengtao Zhang, Jianqing Zhai. Research on meteorological thresholds of drought and flood disaster: a case study in the Huai River Basin, China.Stochastic Environmental Research & Risk Assessment.2015, 29:157-167 3、GAO Chao,CHEN Shi,ZHAI Jianqing,ZHANG Zhengtao,LIU Qing. 2014. On threshold of drought and flood disasters in Huaihe River basin.Advances in Water Science, 25(1):36-44. 4、Chao Gao, Shi Chen, Jian Yu. River islands change and impacting factors in the lower reaches of the Yangtze River based on remote sensing. Quaternary International, 2013(304):13-21. 5.Chao Gao, Marco Germmer, Xiaofan Zeng, et al. Projected Streamflow in the Huaihe River Basin (2010-2100) using Artificial Neural Network (ANN),Stochastic Environmental Research & Risk Assessment 2010,24:685-697 Climate change and hydrological model application in the Huai River basin Shandong Province The Yellow River Henan Province Anhui Province The Yangtze River The study area is the Huai River basin. Jiangsu Province Bengbu Hydr.stat. Being the 6th largest river in China, the Huai River is an important river in central China. It flows from the west to the east. Its waterway is about 1,000 km long and catchment area is about 1.9×105km2. The Huai River valley is located at China’s transition between northern climate and southern climate. Bengbu hydrological gauging station is the important control station of upper and middle reaches of the Huai River Seasonal and annual variation of runoff is notable. Tempo-spatial characteristics of Precipitation and runoff Precipitation Runoff MK trend of precipitation and runoff in the east China in 1958-2007 •Precipitation had decrease trend,but no trend on runoff in the Huai R. Precipitation 1100 Runoff depth Precipitation 900 800 600 500 (mm/a) 1000 (c) 400 300 Runoff depth (mm/a) 1200 700 200 600 100 500 0 1960 1965 1970 1975 1980 1985 1990 1995 2000 2005 Year Annual precipitation and runoff depth in Huai R. Hydrological model ANN model DEM HBV model Landuse SWIM model Sub-basins Soil Meteorological threshold of flood disasters Steps: 1 ) Select typical years which have suffered severe flood 2) To determine the flood-causing meteorological thresholds 3) Flood disaster is divided into five grades Table 1 The Classified grade table of flood-causing meterological threshold Grade normal light flood flood heavy flood Threshold 1.00~1.19 1.20~1.79 1.80~2.49 2.50~3.00 extreme flood more than 3.00 The distribution map of flood-causing meteorological threshold in 1968, 1975, 1991 and 2007 in Huai River Basin Meteorological threshold of drought disasters Steps: 1 ) Select typical years which have suffered severe drought by SPI: the SPI value of 1966, 1978, 1988, 2001 are all larger than -1.5 ! 2 ) The drought-causing meteorological threshold is calculated based on the daily precipitation ! 3) Drought disasters are divided into five grades Table 1 The Classified grade table of drought-causing climate threshold Grade normal light drought drought heavy drought Threshold 1.00~1.19 0.85~0.99 0.70~0.84 0.60~0.69 extreme drought less than 0.60 The distribution map of drought-causing climate threshold in 1968,1975,1991,2007 in Huai River Basin The relationship between the disaster-causing threshold and damage area of crops The relational map between threshold of extreme flood disaster and damage area of crops over Huai River Basin The prediction model of drought area of crops The prediction model can reflect the relationship between actual damage area of crops and disaster-causing threshold very well. The relationship between drought-causing threshold and damage area of crops in Huai River Basin 26 Adaptation to Climate Change for Water Sustainability via Smart Land-Use Management Plans Policy and Strategy for Environmental Protection for the Yangtze River Economic Belt Dr. Run Wang! Hubei University WANG, Run School of Resources and Environmental Science, Hubei University EDUCATIONS and Working Experience: ! 1990, degree in economic geography, Northwestern University; 2001, PhD with the support of DAAD (German Academic Exchanges Services), University of Giessen; 2008-2013, German development aid expert at Institute of Urban Environment (IUE), Chinese Academy of Sciences in Xiamen, China; ! since 2014, distinguished professor, Hubei University; ! 28 Wasserverknappung, Wassernutzungskonflikte und Wassermanagement in Trockengebieten Zentralasiens (Usbekistan, Kasachstan, Kirgisistan, Xinjiang/VR China) 2001-‐2006 Snow Cover Changes in the Bosten-Lake Valley in the past 10 Years 29 WANG, Run ! REPRESENTATIVE PUBLICATIONS During the working in IUE, Xiamen: ! ! Jian Liu, Run Wang*, Yanwei Sun et al.: A barrier Analysis for the Development of Distributed Energy in China: A Case Study in Fujian Province. Energy Policy, Volume 60, September 2013, 262-271(SCI/ SSCI) ! Yanwei Sun, Run Wang*, Jian Liu et al.: GIS-based approach for potential analysis of solar PV generation at the regional scale- A case study of Fujian Province. Energy Policy, Volume 58, July 2013, Pages 248-259 (SCI/SSCI) ! Yanwei Sun, Run Wang*, Jian Liu et al. Spatial planning framework for biomass resources for power production at regional level: a case study for Fujian Province, China. Applied Energy, Volume 106, June 2013, Pages 391–406 (SCI) ! Lishan Xiao, Xinhu Li, Run Wang*. Integrating climate change adaptation and mitigation into sustainable development planning for Lijiang City. International Journal of Sustainable Development and World Ecology.2011,18(6), 515-522. (SCI) ! Run Wang*, Wenjuan Liu, Lishan Xiao, Jian Liu and William Kao (2011): Path towards achieving of China's 2020 carbon emission reduction target-A discussion of low-carbon energy policies at province level. Energy Policy, Volume 39, Issue 5, May 2011, Pages 2740-2747 (SCI/SSCI) 30 Water Sustainability the Province Hubei • Water shortage • Uneven natural water distribution • Grand investment in dams and reservoirs • Water pollution 32 Watershed Management Water Resources Management Adaptation to Climate Change: Water-Food-Energy Nexus Topic1: Climate Model and GIS: Basic data, future trend of climate change, Landuse changes Topic 2: Watershed Management and Planning: water-food-energy nexus, environmental protection policy, watershed planning Climate model (REGCM4) in response to hydrological cycle in the watershed 34 Databank on hand ! Period ! ! ! Resolution RCP Data(days) ! ! ! CCLM 01.02.2006- 31.12.2050 0. 5° ×0. 5° RCP2.6, RCP4.5, RCP8.5 Ave. Temp.# Max. Temp.# Min. Temp.# Precipitation ! ! ! RegCM.4 01.02.2006- 31.12.2050 0. 5° ×0. 5° RCP4.5 RCP8.5 Max. Temp.# Min. Temp.# Precipitation ! ! ! CN05.1 01.01.1961- 31.12.2014 0. 5° ×0. 5° Ave. Temp.# Max. Temp.# Min. Temp.# Precipitation Water-Food-Energy Nexus The first inland Nuclear Power Station Electricity from TGP and its distribution Water and agriculture Water and urbanisation Water in regions (innov. mechanism) Why there are problem on water-energy nexus? Or the speciality of them in Hubei? 1. Yangtze River Economic Belt - high investment and active economic activity 2. There is little sources for energy in Hubei. 3. Selection and structure of future energy very important (for economy, environment and social society) 4. How about the effect on water regime is the key question! 36 water shortage/uneven distribution - value (eco), water resources management grand investment - infrastructure (green and grey) pollution - innovation mechanism, coordination what we learnt from the Rhine often was its past (from polluted to clean) what we should learn from the Rhein is its present, more important is its future (new problem, innovative solution, in EU frame) How does Germany evaluate the ecological functions of water bodies? how does Germany plan to build the infrastructure for water supply and water treatment? What is the evaluation system for a healthy watershed in Germany? How does Germany manage the natural hazards related to water? How does Germany face to waste water (Multi-sources of water supply)? How does Germany plan for adaptation to water problem in its high exposure areas? 37 An Overview of India’s Energy and Climate Policy under the Background of "Make in India” ! ! Run Wang1,2, AiLing Cai1, BingJie Sun1,Tong Jiang3, Run Liu1 1 College of Resources and Environment, Hubei University, 430062 Wuhan, China; 2 Hubei Key Laboratory of Regional Development and Environmental Response, Wuhan 430062 China; 3 National Climate Center, China Meteorological Administration, Beijing 100081, China Abstract:India's energy and climate policy will have a significant impact both on the situation of the global greenhouse gas emission and the success of the global climate cooperation afterwards Paris Climate Conference in the future. To have a clear understanding about the dynamics and the targets of the energy and climate policy of India, this paper firstly introduces the current situation of the energy system and identifies challenges towards achieving the country’s energy objectives as well as the economic and social development targets. The second part deals with India’s energy policy context under the “New Policy Scenario”, its UDAY plan for a healthy financial system in the energy distribution, and the climate policy before and after the Paris Climate Conference. Finally, it explores the two policies briefly, which are helpful for making relevant policies in our country, forming further strategy for “One Belt and One Road” plan and multilateral cooperation strategy between China and India. 38 Team Leader and Project Designer from Chinese Side JIANG Tong National Centre on Climate Change (NCCC) China Meteorological Administration (CMA) Prof. Dr. Jiang Tong ! Associate editor for Atmospheric Research (AR) Associate editor for Climate Services (CLISER) Associate editor for Hydrological Sciences Journal (HSJ) Guest Editor for Special Issues on Asian larger Rivers in Quaternary International (QI) Vol. 1 Interactions with estuaries and coasts, Vol. 186, 2008 Vol. 2 Climate change, river flow and sediment, Vol. 208, 2009 Vol. 3 Climate change, river flow and watershed management, Vol.226, 2010 Vol. 4 Climate, hydrology and ecosystems, Vol. 244, 2011 Vol. 5 Climate, water discharge, water and sediment quality, Vol. 282, 2012 Vol. 6 Changes in hydro-climate and water environments, Vol. 304, 2013 Vol.7 Shorter/longer hydro-climate changes in humid and arid environments, Vol.336, 2014 Vol. 8 Impacts from human activities and climate change, Vol.380-381, 2015 40 Projected changes in climate, runoff and flood/drought over Indus River Basin Data sets Data CRU (Climatic Research Unit) Observation Simulation and Projection APHRODITE (Asian PrecipitationHighlyResolved Observational Data Integration Towards Evaluation) Data integrated by CMIP 5 models Monthly average temperature Time: 1901-2012 Resolution: 0.5°*0.5° provided by University of East Anglia Daily precipitation Time: 1951-2007 Resolution: 0.5°*0.5° Monthly average temperature, Time: 1901-2100 Monthly total precipitation Simulation period:1901-2005 Projection period:2006-2100 Scenarios: RCP2.6、RCP4.5、RCP8.5 Resolution: 1°*1° Daily average temperature, Daily precipitation CCLM Details Time: 1901-2100 Simulation period:1901-2005 Projection period:2006-2100 Scenarios: RCP2.6、RCP4.5、RCP8.5 Resolution: 0.46°*0.46° Methods Improvement of climate model: to get accurately climate variables Bias correction EDCDF (Equidistant Cumulative Distribution Functions) adjusts the CDF of the datasets for projection period on the bias between the model and observation cumulative distribution functions (CDFs) Methods (1) GCM multi-model ensemble (resolution: 1°*1°) Bias correction and statistical downscaling Downscaled GCM (resolution: 0.5°*0.5°) 1 bias correction 2 calculate the climate state (30 years), resolution: 0.5°*0.5° 3 interpolate the climate state to GCM grid resolution (1°×1°), x denotes the results 4 calculate the weight coefficient r (temperature: GCM – x, precipitation: GCM/x) 5 interpolate the weight coefficient to a high spatial resolution (0.5°×0.5°) 6 add r to observed grid temperature data or multiply r by observed grid precipitation data (2) CCLM (Regional Climate Model, resolution: 0.46°*0.46°) Bias corrected CCLM Bias correction Result 1: Future changes in climate Near term: 2016-2035 Downscaled GCM CCLM RCP 2.6 RCP 4.5 RCP 8.5 Changes of annual mean temperature (a~f) and precipitation (g~i) during 2016-2035 under 2.6, 4.5, 8.5 scenarios relative to 1986-2005 in the Indus River Basin(Bold line denotes 0 isoline) Mid-21st century: 2046-2065 Downscaled GCM CCLM RCP 2.6 RCP 4.5 RCP 8.5 Changes of annual mean temperature (a~f) and precipitation (g~i) during 2046-2065 under 2.6, 4.5, 8.5 scenarios relative to 1986-2005 in the Indus River Basin(Bold line denotes 0 isoline) Late-21st century: 2081-2100 Downscaled GCM CCLM RCP 2.6 RCP 4.5 RCP 8.5 Changes of annual mean temperature (a~f) and precipitation (g~i) during 2081-2100 under 2.6, 4.5, 8.5 scenarios relative to 1986-2005 in the Indus River Basin(Bold line denotes 0 isoline) Result 2: Future changes in runoff Near term: 2016-2035 % Downscaled GCM CCLM RCP 2.6 RCP 4.5 RCP 8.5 Spatial distribution of depth of runoff during 2016-2035 scenarios relative to 1986-2005 under 2.6, 4.5 and 8.5 scenario (Bold line denotes 0 isoline) Mid-21st century: 2046-2065 % Downscaled GCM CCLM RCP 2.6 RCP 4.5 RCP 8.5 Spatial distribution of depth of runoff during 2046-2065 scenarios relative to 1986-2005 under 2.6, 4.5 and 8.5 scenario (Bold line denotes 0 isoline) Late-21st century: 2081-2100 % Downscaled GCM CCLM RCP 2.6 RCP 4.5 RCP 8.5 Spatial distribution of depth of runoff during 2081-2100 scenarios relative to 1986-2005 under 2.6, 4.5 and 8.5 scenario (Bold line denotes 0 isoline) Result 3: Future changes in flood/drought Near term: 2016-2035 Downscaled GCM CCLM RCP 2.6 RCP 4.5 RCP 8.5 Mean SPI12 distribution over Indus River Basin for the period of 2016-2035 compared with 1986 to 2005 mean under 2.6, 4.5 and 8.5 scenario Mid-21st century: 2046-2065 Downscaled GCM CCLM RCP 2.6 RCP 4.5 RCP 8.5 Mean SPI12 distribution over Indus River Basin for the period of 2046-2065 compared with 1986 to 2005 mean under 2.6, 4.5 and 8.5 scenario Late-21st century: 2081-2100 Downscaled GCM CCLM RCP 2.6 RCP 4.5 RCP 8.5 Mean SPI12 distribution over Indus River Basin for the period of 2081-2100 compared with 1986 to 2005 mean under 2.6, 4.5 and 8.5 scenario Indus River Basin Climate change impacts on glaciers and streamflow in headwater catchments of the Tarim River Sari Djaz Kakshaal Glacier melt Streamflow Sari Djaz Kakshaal South Asia Water Initiative: Glacier Monitoring Study Tour -‐ Quite, Ecuador, January 26-‐31,2014 Asian Larger Rivers and Cryosphere (Glacier, Snow Cover and Permafrost ) response to Climate Change - China , Chinese Tibet and Asian Highlands - Ni Guangheng Qinghua University, China Jiang Tong, Zhai Jianqing National Climate Center China Meteorological Administration Challenging Climate change and Cryosphere in Asian Highlands and providing water resources for Asian Rivers Outlines ➢ Overview for Asian Larger Rivers (NGH) ➢ The outputs from IPCC AR5 WGI and WGII (JT) ➢ Climate Change in China (JT): Observation and Projection ➢ Climate Change in Tibet and Asian High lands (ZJQ) Observation and Projection ➢ Solutions for monitoring climate change (ZJQ) ➢ Case study in Glacier River Basin in China (NGH) Challenging Climate change and Cryosphere in Asian Highlands and Rivers It provides 70% to 95% of downstream freshwater in semi-arid and arid areas It provides 30% to 60% of downstream freshwater in humid areas Outlines ➢ Overview for Asian Larger Rivers (NGH) ➢ The outputs from IPCC AR5 WGI and WGII (JT) ➢ Climate Change in China (JT): Observation and Projection ➢ Climate Change in Tibet and Asian High lands (ZJQ) Observation and Projection ➢ Solutions for monitoring climate change (ZJQ) ➢ Case study in Glacier River Basin in China (NGH) National Climate Center: Climate Services for Asia and the World Soil Moisture Monitoring by FY3 satellite National Climate Center: Climate Services for Asia and the World Vegetation water Monitoring by FY-‐3 satellite Publications: Asian Larger Rivers ➢ Quaternary International (IF:1.7) on larger Asian rivers Volume 1 Interactions with estuaries and coasts, vol. 186, 2008 Volume 2 Climate change, river flow and sediment, vol. 208, 2009. Volume 3 Climate change, river flow and watershed management, vol.226, 2010. Volume 4: Climate, Hydrology and Ecology, vol. 244, 2011 Volume 5: Climate, Water discharge, water and sediment quality, vol. 282. 2012 Volume 6: Larger Asian rivers: Changes in hydro-‐climate and water environments. 2013,304:1-‐4 The outputs of IPCC AR5 WGI and WGII Climate change 2013: the Physical Science Basis Climate change 2014: impact, adaptation and vulnerability Observation: Global Mean Temperature Changes (relative to 1961–1990) From 1880 to 2012, Global Mean Temperature increased 0.85℃。Comparing 1850−1900 with 2003−2012, Global mean temperature increased 0.78℃ Observation: decadal change Each of the last three decades has been successively warmer at the Earth’s surface than any preceding decade since 1850. In the Northern Hemisphere, 1983–2012 was likely the warmest 30-‐ year period of the last 1400 years (medium confidence). Climate Change in China Observation and Projection Data Meteorological parameters instructions Observed Data monthly mean temperature monthly precipitation Period: 1961-2012 Meteorological stations:635 Data Resources:NCC Simulation and projection monthly mean temperature Daily precipitation Period:1961-2050 baseline Period:1986-2005 Projection Period:2014-2050 Resolution Data Resources:NCC ! (GCMs) Global Climate Models 模式名称 模式中心 分辨率 BCC-CSM1-1 BNU-ESM CanESM2 BCC, CMA, China GCESS, BNU, China Canadian Centre for Climate Modeling and Analysis, Canada 128×64 128×64 128 × 64 CCSM4 CNRM-CM5 National Center for Atmospheric Research, USA CNRM/Centre Europeen de Recherche et Formation Avancees en Calcul Scientifique, France 288 × 192 256 × 128 CSIRO-Mk3-6-0 CSIRO in collaboration with Queensland Climate Change Centre of Excellence, Australia 192 × 96 FGOALS-g2 State Key Laboratory of Numerical Modeling for Atmospheric Sciences and Geophysical Fluid 128 × 60 Dynamics, Institute of Atmospheric Physics, Chinese Academy of Sciences, and Tsinghua University, China FIO-ESM GFDL-CM3 FIO, SOA, Qingdao, China GFDL, National Oceanic and Atmospheric Administration, USA 128 × 64 114 × 90 GFDL-ESM2G GFDL, National Oceanic and Atmospheric Administration, USA 114 × 90 GFDL-ESM2M GFDL, National Oceanic and Atmospheric Administration, USA 114 × 90 GISS-E2-H GISS, National Aeronautics and Space Administration, USA 114 × 90 GISS-E2-R GISS, National Aeronautics and Space Administration, USA 114 × 90 HadGEM2-AO Jointly with Met Office Hadley Centre and NIMR, Korea Meteorological 192 × 145 IPSL-CM5A-LR MIROC5 MIROC-ESM MIROC-ESM-CHEM MPI-ESM-LR MRI-CGCM3 NorESM1-M IPSL, France AORI, NIES, JAMSTEC, Japan JAMSTEC, AORI and NIES, Japan JAMSTEC, AORI and NIES, Japan MPI for Meteorology, Germany MRI, Japan Norwegian Climate Centre, Norway 96 × 96 256 × 128 128 × 64 128 × 64 192 × 96 320 × 160 144 × 96 Climate Change in Tibet and Asian Highland Observation and Projection Water Sources for Asian Large Rivers Location: the Southwest of China Area: above 1.2 million KM2 Population: above 3.0 million (2010) GDP: above 20 billion RMB (2010) Observed and GCM Data 40 Observed Weather Stations 112 GCMs grids (1°×1°) Observation: Temperature change Annual Temperature since 1960 Have increased significantly Upward trends of Temperature since 1960 are mainly happened in the southern part Case study in Glacier River Basis Hydrological model calibration in an alpine area based on dominant runoff generation mechanisms Study Area (I) p The Tailan alpine watershed is located in Xinjiang Autonomous Region, Northwest China. ! p It has a drainage area of about 1324 km2. Elevation ranges from 1600m a.s.l. to 7100m a.s.l. Glacier coverage occupies about 33% to the total basin area according to China Glacier Inventory (CGI) . Study Area (II) p The Tailan basin hydrology is characterized as[Shen Y.P. et al.]: p 1. Climate condition, especially for temperature and precipitation, show significant spatial variability. p 2. Melting water and rainfall are the main sources for local streamflow. Subsurface flow is relatively small in wet period, and dominates the streamsflow in winter (January, February and December. p 3. Rive system in Tailan basin is a simple fan system. Given the large topography drop and small drainage area, river confluence time is as short as about 1day. Melt water and rainfall can quickly flow into the main channel and arrive at the basin outlet. Data (I) p Two automatic weather stations(AWS) were set up in upstream mountain area gauging precipitation (P) and temperature(T). Spatial distribution of P, T were estimated by lapse rates: ! p where Co is the variable value at low altitude, and Cp is the lapse rate, H and h is the high and low elevation respectively. 10 7 6 6,5 5,25 0 3 12 -6 obs.tem sim.tem -12 2015/8/2 2015/8/17 10 7,5 5 2,5 0 -2,5 -5 -7,5 -10 2015/9/1 obs.tem sim.tem 3,5 1,75 -0,5 -4 2015/7/2 2015/5/17 2015/7/17 0 obs.tem sim.tem -1,75 2015/8/1-3,5 02015/6/2 8 4 0 -4 -8 -12 -16 2015/6/17 -5 -10 obs.tem sim.tem 2015/4/2 2015/5/2 obs.tem sim.tem 2015/4/17 -15 obs.tem sim.tem -20 2015/3/2 2015/6/1 Validation of estimated temperature lapse rate 2015/3/17 2015/4/1 Data (II) p Glacier cover area was determined according to China Glacier Inventory (CGI) data. And snow cover extent was obtained from MODIS snow cover area (SCA) products deducting the glacier coverage. p Three successive steps were taken to filter the MODIS products to remove cloud coverage error: p Step 1: Combined the snow cover products of two satellites, Terra (MOD10A2) and Aqua (MYD10A2). As long as the value of a pixel is marked as snow in either satellite, the pixel value is then marked as snow. p Step 2: Spatial combine: Checking the values of the nearest four pixels around one pixel, if at least three of the four surrounding pixels were marked as snow, then the center pixel is snow also. 53 Climate change impacts on glaciers and streamflow in headwater catchments of the Tarim River Duethmann et al. Environ. Res. Lett. 11 (2016) 054024 Study area ➢ Aksu River is the most important tributary to the Tarim ! ➢ Water from the mountain areas is highly relevant due to the very arid climate in the lowlands Duethmann et al. Environ. Res. Lett. 11 (2016) 054024 Ensemble of climate change projections ▪ 3 different emission scenarios (RCP2.5, RCP4.5, RCP 8.5) ! ▪ 9 Global climate models from the latest IPCC report and 2 regional climate models ! ▪ Different hydrological model parameters ! => Range of projections gives an idea of the order of magnitude of the uncertainties Foto: D. Düthmann Duethmann et al. Environ. Res. Lett. 11 (2016) 054024 The hydrological model WASA ▪ Includes simulation of glacier geometry changes ! ▪ Comprehensively calibrated to daily discharge, long term discharge trends, geodetic glacier mass balance, glacier mass balance time series ! ▪ Previous applications in catchments in Central Asia: Duethmann et al. (2015): WRR, 51(6) Duethmann et al. (2014) WRR, 50(3) Duethmann et al. (2013), HESS, 17(7) Foto: D. Düthmann Duethmann et al. Environ. Res. Lett. 11 (2016) 054024 Projected changes in temperature and precipitation Sari Djaz Kakshaal Duethmann et al. Environ. Res. Lett. 11 (2016) 054024