Title: Experience curves i the wind energy sector
1The Power of Learning Book preview
Kenniskracht, 30.1.2009, Amsterdam
Martin Junginger, Wilfried van Sark, Andrea
Ramirez Copernicus Institute, Utrecht
University With contributions reflections from
Andre Wakker (ECN-BS) and Erik ten Elshof
(Ministry of Economic Affairs)
2Presentation Overview
- Introduction and aims of the book The Power of
learning - Overview of methodological issues
- How can experience curves be used for
energy-intensive bulk-chemical productions (and
what can policy makers learn of that) the case
of Ammonia (Andrea Ramirez) - General policy implications and recommendations
(Martin Junginger) - Reflections from Andre Wakker Erik ten Elshof
on policy relevance - -gt Discussion
3Main basis for book
- PhD-Work performed in NWO-Novem sponsored
programmes (a.o. Andrea Ramirez, Martin
Junginger) - Learning energy efficiency (sponsored by the
Ministry of Economic Affairs) - Technological learning in the energy sector
(TLITES) (sponsored by the framework of the
Netherlands Research Programme on Scientific
Assessment and Policy Analysis for Climate Change
(WAB))
4Main aims of the book
- To provide a comprehensive and up-to-date
overview of experience curves studies for a host
of energy supply- and demand-side technologies - To discuss the applications and limits of
experience curve approach - To summarize and synthesis implications and
recommendations for 1) policy makers, 2)
scientists and 3) industry
5Structure of the book part 1
- Experience curve methodology and application
including - 1) General Introduction
- 2) General aspects and caveats of experience
curve analysis - 3) Putting experience curves in context links
between technological development, market
diffusion, learning mechanisms and systems
innovation theory - 4) The use of experience curves in energy models
6Structure of the book part 2
- Over 20 technology case studies, including
- Renewable energy supply, including onshore wind,
offshore wind, PV, Concentrating solar thermal
electricity technology biomass for electricity,
heat biofuels - Fossil energy supply, including gas combined
cycle plants, pulverised coal-fired power plant
(with without CCS) and nuclear power - Energy demand technologies, including household
appliances, lighting, space heating and cooling,
and learning in the refinery sector, the
production of bulk chemicals fertilizers
7Structure of the book part 3
- Synthesis and recommendations, including
- 1) Expected developments for selected
technologies in terms of investment costs,
production costs and avoided GHG emission costs - 2) Methodological lessons and recommendations for
scientists and modellers - 3) Possibilities and limitations of experience
curves for policy support on accelerating
technological progress - lessons for policy
makers and industry
8Author team and time planning
- (Co-) authors
- International panel of leading experts in the
field of experience curves, e.g. Clas-Otto Wene,
Lena Neij, Dolf Gielen, Ed Rubin, Martin Jakob
and many (gt15) more. - Time planning
- Contributions to book chapters during spring
2009 - Finalization of the book by the end of 2009
- Publication by A-list publisher (almost) secured
9Methodology What is an experience curve?
Emperically observed many times With every
doubling of cumulative production
Source Harmon, IIASA, 2000
10Typical values of PRs
Source Dutton and Thomas, 1984
11Why is this relevant for policy makers? Learning
investments the cost of learning
Source IEA, 2000
12Energy supply technologies - overview
13Required CO2 price
2020
2010
2010
2020
and a CoE of 4 ct/kWh from fossil sources
14(No Transcript)
15Comparison of electricity generation generation
costs CCS options vs. onshore and offshore and
wind
16Biofuels for transportationBrazilian sugarcane
ethanol
17Experience curves for demand-side technologies
The case of ammonia production Over to Andrea...
18Overview findings Refinery Sector, Bulk
Chemicals, and Fertilizers
PE, PVC, Ammonia
Viscose rayon, Polyester, Cellophane
- 17 estimates based on 7 studies
- Average PR (77 10)
19Overview Energy Demand Technologies
Freezers (NL), Condensing (gas) boilers (NL,
Germany)
Magnetic FL ballasts, Magnetic CFLs, Freezers
(USA)
- 51 estimates based on 12 studies
- Average PR (85 9)
20Washing machines Energy efficiency
Data NL/World
1965
2007
Source Weiss et al. (2008)
- The share of A-label washing machine sales
increased from 19 to 95 between 1998 and 2002
in the Netherlands
21A Dutch technology the high efficiency
Condensing gas boilers
Boiler data NL/Europe
Based on Weiss et al. (2008)
22Summary of main findings
- The experience curve seems applicable for
(almost) all energy technologies also efficient
energy demand technologies (though they face
several additional dilemmas compared to supply
technologies) - No structural trend was identified that PRs
change over time or with increasing market
diffusion - Experience curve extrapolation holds clear
advantages above only bottom up studies, but
error/uncertainty margins have to be included
23Limits of experience curves
- Experience curve theory appears not to include
the effects of increasing raw material costs, at
least not on the short term - Experience curve theory does also not include
limitations due to geographical potential
constraints - Experience curves allow for projections for the
development of production costs they do not
forecast the development of market prices.
24Insights for Energy Policy
- The optimal distribution between RD and market
support measures remains difficult to determine - Policy seems not able to bend- down the
experience curve
25Insights for Energy Policy
- Over-stimulation of markets may increase demand
drastically, which may result in stabilizing or
increasing prices which are not captured by
experience curve analysis - Experience curves in combination with bottom-up
cost estimates and market analysis can be a
tool to assess the cost reduction potential over
e.g. a period of 10-20 years, and support
designing policy accordingly
26Experience curves for energy efficiency?
- Energy efficiency improvement trends can be
largely explained through cost optimization
drivers (energy costs major factor for ammonia
ethanol production) - But also for end-consumer products, autonomous
improvements are found - In this case, energy policy seems to be able to
bend down the curve / enforce rapid
learning/energy efficiency improvements - More case studies needed though to confirm
hypothesis
27Final summary / Stellingen
- Policy seems not able to bend- down the
experience curve for production costs but it
can accelerate the ride down the curve - In the case of energy efficiency improvements,
energy policy is able to bend down the curve /
enforce rapid learning/energy efficiency
improvements - Policy makers have to realize that all
technologies investigated have international
learning systems a national policy focus seems
only advisable for technologies in a niche-market
phase and a high Dutch market potential / share
28Thank you for your attention!
Over to Andre and Erik..