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Real Options, Optimisation Methods and Flood Risk Management Michelle Woodward - HR Wallingford and Exeter University Ben Gouldby – HR Wallingford Zoran Kapelan – Exeter University Soon-Thiam Khu – Exeter University Objective of PhD Title: Real options based optimum selection of flood risk mitigation options Objective: To investigate optimum flood risk intervention strategies taking into account the possible effects of climate change Page 2 Presentation outline • Overview of Risk Analysis tool • Calculating Benefits of interventions • Optimisation Techniques • Evolutionary Algorithms • Dynamic Programming • Real Options • Valuing flexibility for climate change adaptation strategies • Outline of computational framework Page 3 Background to RASP Risk Assessment for System Planning Research Project funded by the UK Environment Agency (2001-2004) Page 4 RASP is a framework for flood risk analysis National Level National justification, regional prioritisation, long term outlook Common database (NFCDD) Catchment / Coastal Cell Level Strategic planning Development regulation Common input/output Site / System Level Scheme appraisal Page 5 Conceptual model Utilises a structured definition of the flood system Page 6 The system model Determining depth versus probability • Recognises that levees behave as “defenceflood systems” Pathway Receptor The system model: Source • A flood depth versus probability distribution is established by considering multiple combinations of storm loading and possible levee failure Page 7 Pathway Receptor All inundation scenarios Source A new super fast inundation model (HR RSFM) enables 10000s of inundation scenarios to be realised Runtime: <0.1 sec Model has been compared to hydrodynamic models like Infoworks-RS2D Page 8 The system model Estimating flood damages 1. Depth damage curves are used to assess the damage Three steps are used to calculate risk associated with each possible flood scenario 2. By combining the scenario damage with the probability of the scenario occurring a scenario risk is estimated 3. By integrating across all scenarios the expected annual damages (risk) is determined Depth Metres Depth Dam age Curve High Susceptibility Band 3. 00 2. 75 2. 50 2. 25 2. 00 1. 75 1. 50 1. 25 1. 00 0. 75 0. 50 0. 25 0. 00 -0. 25 -0. 50 -0. 75 -1. 00 Low Susceptibility Band Indicative Susceptibility 0 250 500 750 1000 1250 1500 Dam age £/m 2 Source: Flood Hazard Research Centre, 2003 Page 9 Investigating intervention strategies Risk profile through time for HLO 1, 2 and the P3 Policy 60 50 Risk(EAD £m) 40 30 20 P3 10 HLO1 0 2000 2020 2040 2060 Time (year) Page 10 2080 2100 2120 Optimisation Techniques -Dynamic Programming Enumerative Scheme -Evolutionary Algorithms Inspired by Darwin’s theory of evolution Survival of the fittest Genetic operators Reproduction (crossover) Mutation Selection Page 11 Structure of a Simple Genetic Algorithm START Generate initial population Evaluate objective function Application Model Are optimisation criteria met? Best individual Generate new population RESULT Mutation Page 12 Crossover Selection Genetic Algorithm Operators 5 2 4 6 7 1 8 6 9 3 1 4 2 0 Two Parent Chromosomes 5 2 4 6 4 2 0 6 9 3 1 7 1 8 Crossover 5 2 4 6 4 2 0 Mutation 6 Page 13 9 9 1 7 1 8 Two new Offspring Multi-objective optimisation • Multi objective optimisation methods seek solutions that are “optimum” with respect to all objectives. • Invariably a set of optimal solutions is discovered (known as a Pareto set) Page 14 Objective 2 (to be minimised) The Pareto Front Objective 1 (to be minimised) Page 15 Objective 2 (to be minimised) The Pareto Front Objective 1 (to be minimised) Page 16 Objective 2 (to be minimised) The Pareto Front Objective 1 (to be minimised) Page 17 Optimisation Problem Objectives: Maximise Benefit: EADwithout interventions – EADwith interventions n Minimise total cost: ∑Ci Ci = costs per intervention i=1 Subject to: Realistic and available intervention options Page 18 Multi-objective optimisation Identification of transition, where significantly more investment yields little benefit (incremental benefit cost) Identification of costs associated with specified benefit level The Pareto Front Benefit (£’s) Identification of most appropriate option/s given fixed budget Cost (£’s) Page 19 Real options overview “A Real Option is a choice that becomes available through an investment opportunity or action” Page 20 Real Option Overview Maximum height increase for widened defence Plausible range of future extreme water levels Maximum height increase for current defence Present Day extreme water level Current Defence Page 21 Widening of Base Framework for Optioneering Features include • Analysis of Real Options • Automated option searching techniques using evolutionary optimization processes (multi-objective optimization) • Automated option cost generation • Economic discounting of benefits and costs • Temporally evolving risk analysis (a fastRASP) – risk is a function of future climate change scenario, future socioeconomic scenarios • Range of decision making methods Page 22 Overview of framework Calculate NPV cost (Cost functions) No Calculate option fitness for: Multiple objectives Multiple futures (Single decision method) Generate a (Real) option (Optimisation method) optimum solutions found Yes Calculate NPV Benefits Multiple futures (fastRASP) Decision variables include: Standard of maintenance Raise crest level (Each defence) Widen defence (each defence) Non structural measures (flood proofing) Page 23 Output Pareto Set of optimum solutions Thank you for listening [email protected] [email protected] Page 24