Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Caner Hamarat & Erik Pruyt Delft University of Technology Faculty of Technology, Policy.

Slides:



Advertisements
Similar presentations
Lisbon, Marie Curie Research Training Network, Contract No. MRTN-CT Principles of good participation Short presentation and world café
Advertisements

Prof. Dr. Olav Hohmeyer IPCC AR4 (2007) Results WG III Folie 1 A Short Overview of the IPCC Report on Climate Change Mitigation 2007 (WG III) Prof. Dr.
Enabling Customer Demand Management Kevin Evans President & CEO June 24, 2010.
Shared-Memory Model and Threads Intel Software College Introduction to Parallel Programming – Part 2.
MARKOV ANALYSIS Andrei Markov, a Russian Mathematician developed the technique to describe the movement of gas in a closed container in 1940 In 1950s,
Effective Change Detection Using Sampling Junghoo John Cho Alexandros Ntoulas UCLA.
1 of 17 Information Strategy The Features of an Information Strategy © FAO 2005 IMARK Investing in Information for Development Information Strategy The.
L3S Research Center University of Hanover Germany
Sustainable Sanitation in Central and Eastern Europe High-Level Policy Dialogue on EU Sanitation Policies and Practicies in the 2008 International Year.
Archetypal planning situations: A framework for selecting FTA tools for global challenges E. Anders Eriksson and Karl Henrik Dreborg FOI Defence Analysis,
FUTURE SCENARIOS TO INSPIRE INNOVATION Peter De Smedt & Kristian Borch SVR (BE) DTU (DK) Theme 3b: Creative futures The 4th International Seville Conference.
Electric cars: part of the problem or a solution for future grids? Frans Nieuwenhout, Energy research Centre of the Netherlands ECN Sustainable.
J. David Tàbara Institute of Environmental Science and Technology Autonomous University of Barcelona Integrated Climate Governance.
Real-Time Delphi as a Tool for Scenarios Building: a case report on an aeronautical firm Denis L. Balaguer José Eduardo de C. Bezerra Rodrigo C. da Silva.
Ed Dammers NRC FLIS BLOSSOM Workshop Copenhagen, 19 November Embedding futures studies in policymaking.
Ed Dammers FLIS Workshop Copenhagen, 29 April Using scenarios.
Consistent context scenarios: a new approach to ‘story and simulation’
Exploratory Modelling and Analysis Jan Kwakkel Erik Pruyt 1 an approach for model-based foresight under deep uncertainty.
August 31- September 1, 2011 Rio de Janeiro, Brazil
CDM METHODOLOGIES IMPROVEMENT 7 th CDM Joint Coordination Workshop th March 2011, Bonn, Germany Anne-Sophie Zirah - March 2011.
Designing statistical surveys and statistical systems – a complex decision process Bo Sundgren 2010
Engineering Sustainable Energy Systems The Green Islands case study Carlos A. Santos Silva MIT-Portugal Program / Sustainable Energy Systems Instituto.
What is an intelligent product? Vaggelis Giannikas Duncan McFarlane Mark Harrison.
MIMO Broadcast Scheduling with Limited Feedback Student: ( ) Director: 2008/10/2 1 Communication Signal Processing Lab.
Community Action Workshop Manual A Brief Tutorial Community Action Workshop Manual A Brief Tutorial Harmony Foundation of Canada.
Configuration management
Artificiel Bee Colony (ABC) Algorithme Isfahan University of Technology Fall Elham Seifossadat Faegheh Javadi.
1 Challenge the future Subtitless On Lightweight Design of Submarine Pressure Hulls.
Galit Haim, Ya'akov Gal, Sarit Kraus and Michele J. Gelfand A Cultural Sensitive Agent for Human-Computer Negotiation 1.
1. 2 August Recommendation 9.1 of the Strategic Information Technology Advisory Committee (SITAC) report initiated the effort to create an Administrative.
Data points are spread over the space according to two of their component values Using real data sets to simulate evolution within complex environments.
Integrated Resource Planning: An overview Mark Howells & Bruno Merven Energy Research Centre Energy Research Centre University of Cape Town.
TF-CPR Compendium Results 2009 TF-CPR Vilnius 30 May 2010.
SENSU Strategic Approaches to Environment and Sustainability research group Perceptions on SEA: Not all that glitters is gold Session:
1 Use or disclosure of data contained on this sheet is subject to the restriction on the title page of this proposal or quotation. An Introduction to Data.
California Roundup: Summary of DR Activity in California John Goodin Lead, Demand Response 2008 National Town Meeting on Demand Response June 3, 2008.
NREL is a national laboratory of the U.S. Department of Energy Office of Energy Efficiency and Renewable Energy operated by the Alliance for Sustainable.
CARMEN Policy Observatory and Dialogue Proposal Presentation to the CARMEN Directing Board Meeting San Juan, Puerto Rico 30 June 2003.
The 20th International Conference on Software Engineering and Knowledge Engineering (SEKE2008) Department of Electrical and Computer Engineering
Security metrics in SCADA system Master of Computer and Information Science Student: Nguyen Duc Nam Supervisor: Elena Sitnikova.
Formal models of design 1/28 Radford, A D and Gero J S (1988). Design by Optimization in Architecture, Building, and Construction, Van Nostrand Reinhold,
Land use for bioenergy production – assessing the production potentials and the assumptions of EU bioenergy policy Trends and Future of Sustainable Development.
© UKCIP 2011 Learning and Informing Practice: The role of knowledge exchange Roger B Street Technical Director Friday, 25 th November 2011 Crew Project.
Chapter 12 Analyzing Semistructured Decision Support Systems Systems Analysis and Design Kendall and Kendall Fifth Edition.
Chapter fifteen Media Planning and Buying McGraw-Hill/Irwin Essentials of Contemporary Advertising Copyright © 2007 The McGraw-Hill Companies, Inc. All.
1 Fuel poverty in policy and practice - a postgraduate symposium Friday 16th November 2012 Interdisciplinary Centre of the Social Sciences, University.
People Counting and Human Detection in a Challenging Situation Ya-Li Hou and Grantham K. H. Pang IEEE TRANSACTIONS ON SYSTEMS, MAN, AND CYBERNETICS—PART.
22 nd User Modeling, Adaptation and Personalization (UMAP 2014) Time-Sensitive User Profile for Optimizing Search Personalization Ameni Kacem, Mohand Boughanem,
New Opportunities for Load Balancing in Network-Wide Intrusion Detection Systems Victor Heorhiadi, Michael K. Reiter, Vyas Sekar UNC Chapel Hill UNC Chapel.
Decision Making: An Introduction 1. 2 Decision Making Decision Making is a process of choosing among two or more alternative courses of action for the.
A DAPTIVE MANAGEMENT: S TRATEGIES FOR COPING WITH CHANGE AND UNCERTAINTY J. BRIAN NYBERG FRST 532 COMPLEX ADAPTIVE SYSTEM, GLOBAL CHANGE SCIENCE AND ECOLOGICAL.
1 Enviromatics Decision support systems Decision support systems Вонр. проф. д-р Александар Маркоски Технички факултет – Битола 2008 год.
MODELLING UNCERTAINTY OF HOUSEHOLD DECISION- MAKING IN SMART GRID APPLIANCES ADOPTION INCLUDING HOUSEHOLD BEHAVIOURAL UNCERTAINTY IN THE IDENTIFICATION.
Ekrem Kocaguneli 11/29/2010. Introduction CLISSPE and its background Application to be Modeled Steps of the Model Assessment of Performance Interpretation.
Robustness in assessment of strategic transport projects The 21st International Conference on Multiple Criteria Decision Making Jyväskylä June
Strategic planning B.V.L.NARAYANA SPTM. Defining Strategy Strategy is the determinator of the basic long- term goals of an enterprise, and the adoption.
Modeling Technology Transitions under Increasing Returns, Uncertainty, and Heterogeneous Agents Tieju Ma Transition to New Technology (TNT) International.
Scenarios. Scenarios can be defined as plausible descriptions of how the future may unfold based on 'if-then' propositions (EEA, 2005) Scenarios: definition.
Portfolio selection for energy projects under the Clean Development Mechanism (CDM) Olena Pechak, PhD candidate George Mavrotas, Asst. Professor School.
Designing the alternatives NRMLec16 Andrea Castelletti Politecnico di Milano Gange Delta.
A System Dynamics Model for Scenario Planning and Evaluation of Princing Strategies in Bulk LPG Market 2004 International Conference of the System Dynamics.
STRATEGIC ENVIRONMENTAL ASSESSMENT METHODOLOGY AND TECHNIQUES.
MODELING AND ANALYSIS Pertemuan-4
Exploratory Modeling and Analysis Dr.ir Jan Kwakkel.
Development of a community-based participatory network for integrated solid waste management By: Y.P. Cai, G.H. Huang, Q. Tan & G.C. Li EVSE, Faculty of.
LEADFORMANCE & BRIDGE Software publisher Objectives Strategy: expert Commercial success Advanced Store locator Connection on – offline Integrated in a.
Analysis of climate change mitigation tools in Ukraine
Essential Skills of Namibian Engineers
Energy Demand Allocation
Third International Seville Conference on Future-Oriented Technology Analysis (FTA): Impacts and implications for policy and decision-making 16th- 17th.
Presentation transcript:

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Caner Hamarat & Erik Pruyt Delft University of Technology Faculty of Technology, Policy & Management Policy Analysis Section The 4th International Seville Conference on Future-Oriented Technology Analysis (FTA) 12 & 13 May

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Introduction Decision making under deep uncertainty Adaptive policy making Exploratory Modeling and Analysis (EMA) Case Study: Energy Transitions EMA Methodology Conclusions Selected References

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Decision making under deep uncertainty Deep Uncertainty –Uncertainty about models, probability distributions, evaluation of outcomes. (Lempert et al, 2003) –Enumeration of alternatives without being able to rank order the alternatives in terms of how likely or plausible they are (Kwakkel, 2010) Models: Formal representations of real-world Different modelling paradigms –Spread-sheet modelling, Agent-Based, Econometrics, System Dynamics Under deep uncertainty, prediction can be misleading.

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Adaptive Policy Making Dynamic Complexity & Deep Uncertainty The trouble of static policies Instead of optimal, robust & adaptive In the presence of deep uncertainties, flexibility and adaptability should be aimed by the policy makers (Kwakkel et al, 2010).

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Exploratory Modeling & Analysis EMA can be used to –explore the influence of uncertainties –test effectiveness/robustness of policies given these uncertainties EMA is not a modelling technique! A methodology for using models in an explorative way. Procedure: –Development of (relatively) simple model(s) of system of interest –Design of Experiments –Specification of one or more policy options and calculate performance of options for experiments using the ensemble of fast and simple models –Analysis of performance of policy options across experiments –Iteration through previous steps until a satisfying policy emerges

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Case: Energy Transitions Energy Transitions: –deeply uncertain & dynamically complex Competition of existing and new sustainable technologies 4 different technologies –Technology 1 represents the existing dominant one. –Technology 2, 3 & 4 are new sustainable ones. A System Dynamics model about Energy Transitions competition

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Methodology Technical background –A shell written in Python language integrated with Vensim DSS software runs using Latin Hypercube Sampling Time horizon:

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Uncertainties to be explored

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty -Total fraction of new technologies (2,3 and 4) -Installed capacity of Technology 1 -Installed capacity of Technology 2 -Installed capacity of Technology 3 -Installed capacity of Technology 4 -Total capacity installed Results without policy

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty A simple static policy –Forcing an upper limit of Euros for the cost of new capacities for new technologies 2, 3 and 4. -Total fraction of new technologies (2,3 and 4) -Installed capacity of Technology 1 -Installed capacity of Technology 2 -Installed capacity of Technology 3 -Installed capacity of Technology 4 -Total capacity installed Results with static policy

-Total fraction of new technologies (2,3 and 4) -Installed capacity of Technology 1 -Installed capacity of Technology 2 -Installed capacity of Technology 3 -Installed capacity of Technology 4 -Total capacity installed Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Results with adaptive policy Adaptive policy: –Preferences about CO2 emissions and expected cost per MW produced adjusted according to the level of installed capacities. Lookup table for preferences

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Comparison of results Number of runs over certain levels of new technologies fraction over 1000 runs > 20%> 30%> 40%> 50% No Policy Static Policy Adaptive Policy

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Conclusions Main purpose: –Presenting the use of EMA for adaptive policy making. Adaptive & robust policy making is crucial! EMA has a big potential for: –Dealing with deep uncertainty & dynamic complexity –Testing & comparing the performance policies –Being a successful tool for Technology Foresight & Future-oriented studies

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Future work The need for data mining/pattern analysis techniques! Better visualization techniques. Dealing with model uncertainty.

Energy Transitions: Adaptive Policy Making Under Deep Uncertainty Selected References AGUSDINATA, D. Exploratory Modelling and Analysis. A Promising Method to Deal with Deep Uncertainty, PhD dissertation, Delft University of Technology, Delft, BANKES, S. Exploratory Modelling for Policy Analysis, Operations Research, Vol. 41 No. 3: , KWAKKEL, J.H., WALKER, W.E. and MARCHAU, V.A.W.J.; Classifying and communicating uncertainties in model-based policy analysis, Int. J. Technology, Policy and Management, Vol. 10, No. 4, pp.299–315, PRUYT, E.; "System Dynamics Models of Electrical Wind Power," in The 22th International Conference of the System Dynamics Society, Oxford, England, PRUYT, E.; Dealing with uncertainty? Combining system dynamics with multi-criteria decision analysis or with exploratory modelling, Proceedings of the 25th International Conference of the System Dynamics Society, Boston, PRUYT, E. and C. HAMARAT; The concerted run on the DSB Bank: An Exploratory System Dynamics Approach, In Proceedings of the 28th International Conference of the System Dynamics Society, Seoul, Korea, System Dynamics Society, PRUYT, E. and C. HAMARAT; The Influenza A(H1N1)v Pandemic: An Exploratory System Dynamics Approach, In Proceedings of the 28th International Conference of the System Dynamics Society, Seoul, Korea, 2010a. Thanks for your attention. Any questions/suggestions are welcomed.