Title: Bild 1
1AES-dagarna Katrineholm, 6-7 May 2009
Leo Schrattenholzer In Memoriam
Technology Learning for Energy Technology
Policy Clas-Otto Wene
2First compilation for energy technologies Renewabl
es, fossil, nuclear, energy efficiency Industry
level
5
3Technology Learning measured by Experience
CurveThree decades, four orders of magnitude
and a deployment roller-coaster
Price const (Cum. Ship)-E Learning Rate 1
2-E
Learning Rate 20
4Technology Learning Measurement and Energy
Policy
- Technology Learning deploying technologies in
competitive markets increases skills and
stimulates private RD, leading to cost
reductions and improved technical performance.
5How to design Deployment Programmes
stimulatingindustry internal processes at low
cost to tax payers?
A
Cost
Niche Markets for the Challenger
B
Cumulative Sales
- Special efforts to create niche markets
(labelling, feed-in tariffs)? - Is the niche market curve flat enough?
- Contributions from industry in A to have the
benefits in B?
6Using Niche Markets to stimulate Learning
Investmentsfrom private sources (Example Japan
Residential PV Systems, IEA (2000))
7Examples of regulation stimulating Technology
Learning and measured by Experience
Curves (Wene, 2008a)
Germany 1992-2000 Coated Glass for Selective
Windows (Data from Blessing 2002)
8The Technology Learning System and the Energy
Systemare coupled to each other
Energy System
Technology Learning System (manufacturing ind.)
Structural coupling interlocked history of
structural transformation, selecting each
others trajectories (Varela, 1979)
9Modelling experiment showing effective but
alternative paths (Results from Genie model 1997)
The structural coupling between ETLSs and energy
system expressed in Experience Curves have
created two very different Least-Cost solutions
from identical starting points and assumptions
10Critical assessment of Experience/Learning
Curves High-level Reports positive but important
caveats
- IEA Energy Technology Perspectives ? Key
phenomenon for determining future cost of
renewable ? State-of-the-art does not permit
reliable extrapolations - UK Stern Report ? Can be used to justify
deployment support ? Very different learning
rates from causes uncertain
11Theory Logic of the argument
? Operational closure The technology learning
system is an operationally closed system.
? Fundamental Cybernetic Theorem All
operationally closed systems develop
Eigenbehaviour (von Förster, Varela)
? Operators Define operators working on the
internal state function and compatible with
the ECLC equation
? Eigenvalues Use the operators to calculate
eigenvalues for the system
? Experience Parameter Interpret the eigenvalues
in terms of the experience parameter in the
ECLC equation
12A formal view of the present theory
k
CSRL
0
Lim
0
C
n 0, 1, 2,
13Result from the Theory
- Value of E and Learning Rates Eigenvalue
analysis provides E(n) 1/(2n1)p
for n 0, 1, 2, 3, LR(n) 20, 7, 4,
for n 0, 1, 2
Theory reformulates the research question From
Why is the learning rate X? toWhy are not
all learning rates 20?
14Frequency distribution of Learning Rates 108
cases from individual firms and by cost
15Comparison theoretical and measured
distribution 108 measurements in individual
firms and by cost
Emean (DT) 0.3110Etheory (0) 0.3183
16Comparison theoretical and measured
distribution 42 Energy technologies on industry
level and by price
17Developing the cybernetic approach withinthe AES
project
- Closure and Eigenvalue - Matrix
formulation to include double closure -
Phenomena of radical innovation, technology
drift, grafted technologies, compound
systems, dispersion - Modelling the Technology Learning System -
Feasibility of using Beers Viable System Model - Applications - Cooperation to apply the
theoretic approach to a few key
technologies (renewables and energy
efficiency)
18Thank you!
19Effect of Radical InnovationResetting the
cumulative sales (resetting feedback)