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Copernicus Institute COP 15 side event “Adaptive management – merging top down and bottom up” Holland Climate House, Bella Center, Copenhagen, 10 December 2009 Coping with uncertainty in climate change adaptation merging top down and bottom up approaches Dr. Jeroen P. van der Sluijs Copernicus Institute for Sustainable Development and Innovation Utrecht University Universiteit Utrecht Copernicus Institute Statistical uncertainty PROBLEM: Policy makers seem to expect that scientists can calculate such frequencies for 2050, 2100, etc. Universiteit Utrecht Copernicus Institute (Giorgi 2005) Universiteit Utrecht Copernicus Institute Universiteit Utrecht Copernicus Institute 3 framings of uncertainty (Van der Sluijs, 2006) 'deficit view' • Uncertainty is provisional • Reduce uncertainty, make ever more complex models • Tools: quantification, Monte Carlo, Bayesian belief networks 'evidence evaluation view' • Comparative evaluations of research results • Tools: Scientific consensus building; multi disciplinary expert panels • focus on robust findings 'complex systems view' • • • • • Uncertainty is intrinsic to complex systems: permanent Uncertainty can be result of new ways of knowledge production Acknowledge that not all uncertainties can be quantified Openly deal with deeper dimensions of uncertainty Tools: Knowledge Quality Assessment “speaking truth to power” vs “working deliberatively within imperfections” Universiteit Utrecht Copernicus Institute Former chairman IPCC on objective to reduce climate uncertainties: • "We cannot be certain that this can be achieved easily and we do know it will take time. Since a fundamentally chaotic climate system is predictable only to a certain degree, our research achievements will always remain uncertain. Exploring the significance and characteristics of this uncertainty is a fundamental challenge to the scientific community." (Bolin, 1994) Universiteit Utrecht Copernicus Institute KNMI 2006 Universiteit Utrecht Bron: Stern Review NL Later: Sealevel rise till 2100 Worst case: 1,5 m/eeuw Deltacommissie 65-130 cm 35-85 cm in 2100 Scenarios can be wrong Statististical uncertainty precipitation According to climateprediction.net versus range KNMI scenarios Winter Summer 0.08 CP.net G G+ W W+ 0.12 Probability 0.1 0.08 0.06 G+ 0.05 W 0.04 W+ 0.03 0.02 0.02 0.01 0 -25 G 0.06 0.04 -50 CP.net 0.07 Probability 0.14 0 0 25 50 Precipitation change (%) (Dessai & Van der Sluijs, 2007) 75 100 -100 -75 -50 -25 0 Precipitation change (% ) 25 50 Copernicus Institute Variability in a changing climate: Small shift in mean = big change in frequency of extremes Universiteit Utrecht Copernicus Institute Adaptation under what uncertainty? Planned adaptation • to single scenario of anticipated climate impacts no uncertainty • to single scenario of anticipated climate impacts + to variability statistical uncertainty (without epistemic unc.) • to range of scenario’s of anticipated climate impacts (KNMI 2006 scenario’s) scenario uncertainty • to range of scenario’s of anticipated climate impacts + imaginable climate surprises (MNP Nederland Later) scenario uncertainty + recognized ignorance Universiteit Utrecht Copernicus Institute Decision-making frameworks • Top down approaches – Prevention Principle – IPCC approach – Risk approaches • Bottom up approaches – – – – – – Precautionary Principle Engineering safety margin Anticipating design Resilience Adaptive management Human development approaches • Mixed approaches – Adaptation Policy Framework – Robust decision making (figure: Dessai and Hulme 2004, list: Dessai and Van der Sluijs, 2007) Universiteit Utrecht Copernicus Institute Risk approach (UK-CIP) Eight stages decision framework: 1. Identify problem and objectives 2. Establish decision-making criteria 3. Assess risk 4. Identify options 5. Appraise options 6. Make decision 7. Implement decision 8. Monitor, evaluate and review. “The risk assessment endpoints should help the decision-maker define levels of risk (probabilities and consequences or impacts) that are acceptable, tolerable or unacceptable” Flexible characteristics: cricular Feedback and iteration Stages 3, 4 and 5 are tiered. (identify, screen, prioritise and evaluate before more detailed risk assessments and options appraisals are required.) Universiteit Utrecht Copernicus Institute No regrets • Favour adaptation strategies which will yield benefits (for other, less uncertain, policy concerns) regardless of whether or not climate impacts will occur. Universiteit Utrecht Copernicus Institute “Flexible design” Anticipating imaginable surprises Universiteit Utrecht Copernicus Institute Universiteit Utrecht Robustness exploration (Dessai, 2005) Copernicus Institute Problem: Dimensioning of water supply system Additional water required (Ml/d) to maintain levels of service in 2030 under different demand scenarios as a function of regional climate response uncertainty AWS -50 -25 0 Climate impacts uncertainty (%) 25 25 20 15 10 5 0 -5 -10 -15 -20 -25 -30 25-50 50-75 -35 -40 -45 50 -50 Summer precipitation change (%) -75--50 -50--25 -25-0 0-25 75-100 Universiteit Utrecht Copernicus Institute Resilience • If uncertainties about climate change are large, one can still know how the resilience of social-ecological systems can be enhanced • Resilience is the capacity of a system to tolerate disturbance without collapsing into a qualitatively different, usually undesired, state Principles: •Homeostasis •Omnivory •High flux •Flatness •Buffering •Redundancy www.resalliance.org Wardekker e.a. 2010 doi:10.1016/j.techfore.2009.11.005 Universiteit Utrecht Copernicus Institute Wild Cards / Surprise scenarios • not sufficientely known risks / opportunities • undermine current trends • create new futures • influence our thinking about past & future • give rise to new concepts / new perceptions www.steinmuller.de/media/pdf/WC_GFF.pdf Examples for climate adaptation: - Thermo Haline Circulation shut down - Extreme low river run-off - Long heatwaves and droughts - Extreme storms - Invasive species Universiteit Utrecht Copernicus Institute three types of wild cards (1) extreme forms of expected trends, (2) opposites of expected trends (3) completely new issues (prepared for the wrong impact) Most options remain beneficial under type-1 wildcards. Under type-2 wildcards, options that enhance flexibility and responsiveness remain beneficial Few options protect against type-3 wildcards Universiteit Utrecht Copernicus Institute Synthesis Statistical uncertainty decision making under uncertainty frameworks Scenario Recognized uncertainty ignorance & surprises IPCC approach + ++ -- Risk approaches ++ + -- Engineering safety margin ++ - Anticipating design ++ + + Resilience + ++ Adaptive management ++ - -- Prevention Principle ++ -- Precautionary Principle + ++ ++ Human development approaches + + Adaptation Policy Framework + + + Robust decision making + ++ + Universiteit Utrecht Copernicus Institute Synthesis Uncertainty assessment methods Statistical uncertainty Scenario uncertainty Recognized ignorance & surprises Scenario analysis ("surprise-free") ++ - Expert elicitation + + + Sensitivity analysis + Monte Carlo ++ - - Probabilistic multi model ensemble ++ + Bayesian methods ++ - NUSAP / Pedigree analysis + + ++ Fuzzy sets / imprecise probabilities + + Stakeholder involvement + + Quality Assurance / Quality Checklists + + ++ Extended peer review (review by stakeholders) + ++ Wild cards / surprise scenarios - + ++ Universiteit Utrecht Copernicus Institute Synthesis Universiteit Utrecht Copernicus Institute Concluding remarks • No ‘silver bullet’ for adaptation under uncertainty • Very context dependent • Assess relative importance of: – Statistical uncertainty: predict-then-act – Scenario uncertainty: robustness – Ignorance: resilience & flexibility • Synthesis matrix provides preliminary guidance for analysts Universiteit Utrecht Download 2007 rapport: www.nusap.net/adaptation Case studies 2008-2009: - Delta committee (water safety) - Nature / Waddensea - Health impacts Team - Arjan Wardekker MSc - Arie de Jong MSc - Petra Westerlaan - Dr Pita Verweij - Dr. Jeroen van der Sluijs