Title: R
1RD as Greenhouse Insurance
- Erin Baker
- University of Massachusetts, Amherst
- June 2003
- Leon Clarke PNNL
- John Weyant Stanford University
2Climate Change
- Uncertainty about how emissions today will cause
damages tomorrow. - But, we are learning more and more.
- Uncertainty and Learning impact current decisions
- Conclusion Uncertainty Learning less control
of emissions. - Kolstad
- Ulph Ulph
- Manne Richels
- Baker
3What about RD?
- RD planning is further complicated by different
programs - Solar PVs versus efficiency of coal-fired
electricity - We consider optimal RD
- uncertainty and learning about climate damages
- choice of RD program
4RD Policy
- Socially Optimal RD
- induced private RD
- The Gap
- The Gap is the rationale for RD policy.
- How is The Gap impacted by uncertain climate
change damages / uncertain price of carbon?
5Todays Talk
- Present a unifying framework for thinking about
RD assumptions - Discuss impact of assumptions in a sequential
decision making problem - Social planner point of view
- Theoretical
- Numerical
- Firm point of view
- Initial
6The Production Function
t standard inputs e emissions
7From production function to abatement cost curve
Production Function
Abatement Cost Curve
Cost
a
m
0
e emissions
m emission reductions
8RD as leftward shiftsequestration?
Production Function
9Multiplicative ShiftCost Reduction
tmax
Production Function
Cost
a
a
1-a
1-a
tmin
e
m
e
0
0
1
The abatement cost curve pivots downward
10Emissions Reduction
Production Function
Cost
a
1- a
a
1- a
a
1- a
m
e
The abatement cost curve pivots to the right
11RD impacts convexity of cost curve / production
function
Flatter ? RD increases in risk
More convex ? RD decreases in risk
12Integrated Assessment Model
- William Nordhauss DICE
- Optimal Growth Climate Model
- Added uncertainty, using stochastic programming
- Added RD as a decision variable
- One time decision in 1st period before learning
- Cost reduction implemented in 50 years, after
learning.
132 Types of increasing risk
Increasing Probability certain low medium high
Probability of high damage 0 .018
.05 .08333 Value of high damage -
.042 .042 .042 Value of low
damage .0035 .002794 .001473 0
Increasing Damage certain low
high Probability of high damage 0 .018
.002374 Value of high damage
- .042 .3 Value of low
damage .0035 .002794 .002794
14Results Increasing Probability
0.4
16
14
0.3
12
10
Optimal RD
0.2
Billions of US
8
6
0.1
4
2
0
0
1
2
3
4
1
2
3
4
Risk
Risk
Emissions
Sequestration
Cost Reduction
15Results Increasing Damages
5
0.12
4
0.08
3
Optimal RD
Billions of US dollars
2
0.04
1
0
0
1
2
3
1
2
3
Risk
Risk
Emissions
Sequestration
Cost Reduction
16Induced RD
- Consider a firms response to an uncertain carbon
tax. - Firm pays carbon tax (e.g. electric generator)
- Firm produces RD
17Induced RD initial results
- Investment in sequestration is independent of
risk (only depends on expected value of carbon
tax). - The Gap Shrinks
- Emissions Reduction decreases in risk
- Cost Reduction of no-carbon alternatives
- The Gap Grows
18Conclusions
- RD can be a hedge against uncertainty,
- But, it depends on what kind.
- Private response to uncertainty may diverge from
social optimal even without risk aversion. - May be a rationale for government involvement in
RD into alternative energy sources.
19Future Research
- Empirical
- The shape of production function, impact of RD
- Returns to RD
- Methodological
- incorporate uncertain returns to RD
- endogenous technical change
- Policy
- Private RD response to uncertainty
- Compare private response, under a variety of
instruments to optimal RD.
20Research Plan
- Carefully consider the impact of RD.
- Many papers make assumptions about RD
- What do these assumptions really mean?
- How do different assumptions impact results?
- Look at how optimal RD responds to uncertainty
and learning. - What kinds of RD are a hedge against uncertainty?
21How can we buy insurance?
- RD, particularly into low or no-carbon
technologies - If we learn that climate damages will be severe,
we can more quickly and easily reduce emissions. - Endogenous Technical Change
- Goulder et al.
- Nordhaus
- Buonanno et al. 2003
22Stochastic, economy-environment model with RD
23Uncertainty with learning
- Stochastic Programming approach
- Uncertainty for 5 periods (50 years) then perfect
learning - E(q2).0035
24RD
- Alter the cost function
- Leftward shift
- Multiplicative
- Or the emissions output ratio s
- ratio shift
-
25Cost of RD
- k 18 for leftward and ratio
- k 1 for multiplicative
26Sequential Decision Making Under Uncertainty
27Sequential Decision Making Under Uncertainty
Work Backwards
28Sequential Decision Making Under Uncertainty
Work Backwards
29Sequential Decision Making Under Uncertainty
Work Backwards
30Sequential Decision Making Under Uncertainty
- Rothschild-Stiglitz show that a will increase
with uncertainty iff Va is concave in z.
31Sequential Decision Making Under Uncertainty
- Generally inconclusive.
- But,
RD is more likely to decrease in risk RD is
more likely to increase in risk
32RD as leftward shiftsequestration?
t
a
a
e
e
e
33Multiplicative Shift Cost Reduction
tmax
a
1-a
tmin
e
e
34Emissions reduction
a
1- a
a
1- a
e