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MID-CAREER TRAINING (MCT) FOR IFS OFFICERS (PHASE-IV) - SECOND CYCLE. Modelling the Impact of Climate Change on Forest Ecosystems . Dr. Rajiv Kumar Chaturvedi National Environmental Sciences Fellow Indian Institute of Science Bangalore. CLIMATE CHANGE (CC): AN INTRODUCTION.
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MID-CAREER TRAINING (MCT) FOR IFS OFFICERS (PHASE-IV) - SECOND CYCLE Modelling the Impact of Climate Change on Forest Ecosystems Dr. Rajiv Kumar Chaturvedi National Environmental Sciences FellowIndian Institute of Science Bangalore
CLIMATE CHANGE (CC): AN INTRODUCTION IPCC, 2007 CDIAC, 2011
CLIMATE CHANGE AND FOREST SECTOR Forests are a critical sector for climate change science and policy Forests store carbon - The world’s forests store about 1640 GtC, of which 1104 GtC is stored in soils while 536 GtC is stored in biomass A sink/ source to GHG - Accounted for 12% of global GHG emissions in 2008 - Globally LULUCF sector is estimated to have a mitigation potential of 13.8 GtCO2e/yr (4.06 GtC/yr)) by 2030 at carbon prices ≤ 100 US$/tCO2e 3. Vulnerable to the impacts of Climate Change - Forests being a climate-dependent living community are highly vulnerable to the impacts of climate change
HOW MUCH CARBON DO INDIAN FORESTS HOLD? Source: 1880- Richard and Flint. 1994; 1980 - Richard and Flint. 1994; 1986 - Ravindranath et al. 1997; 1986 - Chhabra et al. 2004; 1994 - Haripriya 2003; 1995 - Kishwan et al. 2009, 2005 - FAO 2005, 2005 - Kishwan et al. 2009; Chaturvedi et al 2011 Uncertainty of Carbon stock estimates Chaturvedi et al., 2008 in Intl. Journ. For. Rev.
MITIGATION POTENTIAL UNDER DIFFERENT POLICY SCENARIOS Indian forests can sequester an additional of 1.8 to 3.2 GtCO2e over 2010-2030 period (=0.5-0.9 GtC) Chaturvedi et al. 2010 in Carbon Mgmt.
ANNUAL GHG EMISSION PROJECTIONS FOR INDIA AND HOW MUCH OF IT FOREST SECTOR CAN MITIGATE Rapid afforestation could mitigate up to 9% of India’s average national emissions over the 2010-2030 period Chaturvedi et al. 2010 in Carbon Mgmt.
VULNERABILITY OF FORESTS TO CLIMATE CHANGE • Forests are exposed to the climatic factors such as heat and water stress • CC could affect the forest range, forest type distribution, NPP, SOC, biodiversity and the forest based ecosystem services. • Observations across the World suggest that climate change is causing many species to shift their geographical ranges, distributions, and phenologies at faster rates than previously thought (Michelle et al 2012, Chen et al., 2011).
OBSERVED IMPACTS • Zhu et al (2012) analyzed the long term inventory data of 92 species collected from more than 43000 forest plots in 31 US states and demonstrated that in this part of the World climate change is occurring more rapidly than the trees can adapt, with 59% of tree species showing signs that their geographic ranges are contracting from both North and South. • This suggests that trees are finding it difficult to adapt even to the current rate of climate change, increased rates of climate change in future will further stress the plant communities World-wide. • Observations also suggest that plants are moving their ranges not only in response to temperature changes but also to changes in rainfall patterns. Ex- in California vascular plants have exhibited a significant downward shift in altitude in response to changes in water balance (Crimmins et al., 2011)
OBSERVED IMPACTS IN INDIA • A study by Telwala et al (2013) based on extensive field sampling and historical data estimated the vegetation shift patterns in 124 endemic species in the Eastern Himalayan state of Sikkim, over the period 1849-1850 to 2007-2010. • They estimated that 87% of these species show geographical range shifts in response to observed warming experiencing a mean upward displacement rate of 27.53±22.04 meters per decade. • They conclude that the "present-day plant assemblages and community structure in the Himalaya is substantially different from the last century and is, therefore, in a state of flux under the impact of warming".
MANAGING INDIAN FORESTS IN THE FACE OF CC VULNERABILITY • Observations alone can not guide forest management and policy due to inertia of the climate system and lagged system (Forests) response to climate stresses • Hence, projection of climate impacts on forest ecosystems are required to assist forest management and policy
Tools for projecting the impacts of climate change on forests Statistical Models Deterministic Models Biogeochemistry Models Bio-geography Model Equilibrium/ Static Models Dynamic Model Most Advanced tool for impact assessment (Fishling et al., 2007)
TYPICAL DATA REQUIREMENTS AND TYPICAL OUTPUTS Climate data
EVOLUTION OF RCP SCENARIOS AND THE CMIP5 MODELS: SEQUENTIAL VS PARALLEL PROCESS • Climate Model Scenarios • Temperature • Precipitation • Humidity • Soil Moisture • Extremes • ………… • Socio-Economic Scenario • Population • GDP • Energy • Industry • ……… • Radiative forcing scenario • Atmos. Concns. • Carbon Cycle • Atmos. Chemistry • IVA studies • Coastal zones • Water Res. • Food Security • Forests • Infrastructure • …………….. • Emissions Scenario • GHG • Aerosols • LUC SRES: Sequential approach CMIP3 Experiment/ AR4 Models 1997 2007?? 2000 Radiative forcing • General Characteristics • Broad range of forcing 2100 • Shape of radiative forcing over time • Integration of climate and Socio-Economic scenarios • Integrated scenarios • Pattern scaling • Downscaling of climate and socio-economic scenarios • …………. • New Socio-Economic Scenario (Vuln. Storylines*) • Adaptation • Mitigation • Stabilization • Overshoots • ………….. • IVA Studies • IVA studies • Climate change feedbacks • Model development RCPs: Parallel approach CMIP5 Experiment • Defining RCPs • GHGs • Aerosols • LUC • Climate Scenario • Near-term (2035) • Long-term (2100+) Moss et al., 2010 2010 2009 2008 2012 2011 2013
VALIDATION OF CMIP5 CLIMATE PROJECTIONS FOR INDIA: A TAYLOR DIAGRAM APPROACH Chaturvedi et al., 2012
CMIP5 MODEL ENSEMBLE REASONALBLY PROJECTS THE SPATIAL DISTRIBUTION OF INDIA’S OBSERVED CLIMATE Chaturvedi et al., 2012
CLIMATE CHANGE PROJECTIONS FOR INDIA USING CMIP5 MODELS AND THE NEW RCP SCENARIOS Baseline = 1961-1990 Chaturvedi et al., 2012
Precipitation projections for India and their reliability Baseline = 1961-1990 Chaturvedi et al., 2012
PROJECTED CHANGE IN THE FREQUENCY OF EXTREME RAINFALL DAYS FOR FUTURE DECADES BASED ON MIROC-ESM-CHEM MODEL FOR RCP SCENARIO 4.5 Chaturvedi et al., 2012
MODEL VALIDATION – VEG TYPE CHANGE 1: tropical evergreen forest / woodland, 2: tropical deciduous forest / woodland, 3. temperate evergreen broadleaf forest / woodland, 4: temperate evergreen conifer forest / woodland, 5: temperate deciduous forest / woodland, 6: boreal evergreen forest / woodland, 7: boreal deciduous forest / woodland, 8: mixed forest / woodland, 9: savanna, 10: grassland / steppe, 11: dense shrubland, 12: open shrubland, 13: tundra, 14: desert, 15. polar desert / rock / ice 1.Tropical wet evergreen forests,2.Tropical semi evergreen forests, 3.Tropical moist decidious forest, 4.Tropical dry decidious forest, 5.Tropical thorny/scrub forests, 6.Tropical dry evergreen forest,7.Littoral and swampy forest, 8.Subtropical broad -leaved hill forests, 9.Subtropical pine forests, 10.Sub-tropical dry evergreen forests, 11.Montane wet temperate forests, 12.Himalayan wet/ moist temperate forests, 13.Himalayan dry temperate forests, 14.Sub-alpine forests, 15.Moist alpine, 16.Dry alpine Chaturvedi et al. 2011 in Miti. Adap. Strat. Glob. Change
Current vegetation as simulated by IBIS and observed using LISS III satellite data of 2006
DS-Dense Shrubland DE-Desert GR-Grassland OS-Open Shrubland RI-Rock / Ice TE- Temperate Evergreen Conifer Forest TD-Tropical Deciduous Forest TU-Tundra Kappa 0.7981
MODEL VALIDATION - NPP R2= 0.63 Model generated current NPP (kgC/m2) compared with the remote-sensing-derived mean NPP data from 1982 to 2006 Chaturvedi et al. 2011 in Miti. Adap. Strat. Glob. Change
MODEL VALIDATION - SOC We find that mean from both the sources is approximately 5 kg/m2 over all of India (mean of IBIS = 4.98 Kg/m2 & mean of IGBP = 4.7 Kg/m2). However, interestingly enough we find IBIS simulated outputs to be more divergent (standard deviation = 4.27; Max = 20.83; Min = 0.13) than IGBP estimates (Standard deviation = 1.33; Max = 11; Min = 1.8). Chaturvedi et al. 2011 in Miti. Adap. Strat. Glob. Change
MODEL VALIDATION - SOC Forested sites were found to have higher soil organic carbon with an average of 97 tonnes /ha compared (with a standard deviation of 19.8 tC/ha) to Non-forested patches with an average of 64 tonnes/ ha (with a standard deviation of 27.2 tC/ha). The average Soil Organic Carbon in the region was found to be 78.15 tonnes C/ha (S.D =29.2) as compared to 89.13 tonnes C/ha as predicted IBIS for that particular grid. Chaturvedi et al. 2011 in Miti. Adap. Strat. Glob. Change
39% of the forest grids likely change under A2 scenario by 2085 causing loss of C stock and biodiversity 1 = stable grids 2=forest grids undergoing change Chaturvedi et al. 2011 in Miti. Adap. Strat. Glob. Change
IMPACT OF CLIMATE CHANGE ON NPP Chaturvedi et al. 2011 in Miti. Adap. Strat. Glob. Change The effect of climate change on the NPP of forested grids, by 2085 under A2 scenario. The values shown are the percentage change of NPP, compared to the baseline year.
IMPACT OF CC ON SOIL ORGANIC CARBON Chaturvedi et al. 2011 in Miti. Adap. Strat. Glob. Change The effect of climate change on the SOC of forested grids, by 2085 under A2 scenario. The values shown are the percentage change of SOC, compared to the baseline year
LIMITATIONS OF THE IMPACT ASSESSMENT MODELS A Hypothetical depiction Mean of the 4 RCPs Known Unknowns Unknown Unknowns Extreme events Tipping elements
CONCEPT OF VULNERABILITY Exposure Sensitivity Potential Impact Adaptive Capacity Actual impact
Adaptive Capacity VULNERABILITY TRADE-OFFS sensitivity Exposure sensitivity Exposure Adaptive capacity
SOME EXAMPLES OF THE ‘WIN-WIN’ ADAPTATION PRACTICES • Anticipatory planting of species • along latitude and altitude • promote assisted natural regeneration • Promote mixed species forestry • species adapted to different temperature tolerance regimes • Develop and implement fire protection and management practices • Adopt suitable thinning, sanitation and other silvicultural practices • Promote in situ and ex situ conservation of genetic diversity • Develop drought and pest resistance in commercial tree species • Develop and adopt sustainable forest management practices • Expand Protected Areas and link them wherever possible to promote migration • Conserve forests and reduce forest fragmentation to enable species migration • Adoption of energy efficient fuelwood cooking devices to reduce pressure on forests
LIMITS TO ADAPTATION • Ecosystems including forests as well as humanity can adapt to small to moderate climate fluctuations (i.e <2 deg C warming) • Beyond 2 deg C adaptation will be difficult, dangerous and uncertain
Gt C/Yr RECORD RISE IN FOSSIL FUEL EMISSIONS Fossil Fuel based emissions Fossil Fuel based emissions
Gt C/Yr TEMPERATURE PROJECTIONS FOR INDIA Chaturvedi et al 2012
Humanity is on a dangerous path – immediate mitigation is essential for successful adaptation
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