Title: Population Projections policy analysis
1Population Projections(policy analysis)
2Policy Evaluation-I
- It is often the objective for developing and
fitting a model is to address what if
questions. What is the impact of - removal limits (quotas individual / Olympic)
- time / area closures
- gear restrictions (number of pots, traps,
gillnets) - bag limits
- minimum / maximum sizes and
- vessel numbers / size of vessels.
3Policy Evaluation - II
- We are often not looking for optimal policies.
Rather, we want to identify polices that are
robust to - Estimation error.
- Uncertainty regarding the true model.
- Implementation uncertainty.
- Environmental variability and environmental
change. - Optimal policies can often be found if we know
the true model but these may perform poorly if
applied to the wrong model.
4Policy Evaluation-III(objectives and tactics)
- Policies are based on choosing tactics (quotas,
minimum sizes, closed areas) to achieve
management objectives / goals. - Corollary - if we dont know the management
objectives we cannot (sensibly) compare different
policies. - Problem often the decision makers have not
agreed on any objectives (or are unwilling to
state their actual objectives publicly).
5Policy Evaluation-IV(objectives and tactics)
- We distinguish between high-level objectives
(e.g. conserve the stock) and operational
(quantitative) objectives (the probability of
dropping below 0.1K should not be greater than
0.1 over a 20-year period). - Many decision makers confuse the tactics (what to
do next year) with the objectives (why are we
doing what we are doing next year).
6Objectives for Fisheries Management(typical
high-level objectives)
- High level objectives arise from
- National legislation (MMPA, Magnusson-Stevens
Act, ESA). - International Agreements (CCAMLR, IWC, UN Fish
Stocks Agreement). - Court decisions.
7Objectives for Fisheries Management(Objectives
for commercial whaling)
- Acceptable risk level that a stock not be
depleted (at a certain level of probability)
below some chosen level (e.g. some fraction of
its carrying capacity), so that the risk of
extinction of the stock is not seriously
increased by exploitation - Making possible the highest continuing yield from
the stock and - Stability of catch limits.
- The first objective was assigned highest priority
but was not fully quantified.
8Objectives for Fisheries Management(Australian
Fisheries Management Authority)
- Implementing efficient and cost-effective
fisheries management on behalf of the
Commonwealth - Ensuring that the exploitation of fisheries
resources and the carrying on of any related
activities are conducted in a manner consistent
with the principles of ecologically sustainable
development and the exercise of the precautionary
principle - Maximising economic efficiency in the
exploitation of fisheries resources - Ensuring accountability to the fishing industry
and to the Australian community and - Achieving government targets in relation to the
cost recovery.
9Operational and High-level objectives
- Operational objectives describe the high-level
objectives quantitatively. - Preserve biodiversity (have at least 80 of all
species protected in a system of reserves). - Protect endangered species (have an 80
probability that all currently endangered species
are no longer endangered within 50 years). - Protect ecosystem functioning (who knows what
exactly what this means??)
10Techniques for Policy Evaluation
- We can sometimes evaluate the implications of a
policy analytically (e.g. the impact of changes
in fishing intensity on yield-per-recruit). - More commonly, we have to evaluate policy
alternatives using Monte Carlo simulation
methods. - Specify the high-level management objectives.
- Specify the operational management objectives.
- Develop models of the system to be managed
(including their uncertainty). - Use simulation to determine the implications of
each policy. - Summarize the results.
11Projecting Forward - I
- Define the state of the system in the first year
of the projection. - Calculate the catch limit based on the current
state of the system. - Project ahead one year (there may be
implementation error at this stage) and update
the dynamics. - Repeat steps 2-3 for each future year.
- Repeat steps 1-4 many times.
12The Simplest Decision Rules
- Constant catch (b0).
- Constant harvest rate (a0).
- Constant escapement (alt0).
13The Simplest Decision Rules
(a10,b0)
(a0,b10)
(a-2.5,b12.5)
14Evaluating the Simplest Rule
- Model of the state of the system (Schaefer
model) - This a deterministic model so we only have to do
a single simulation as there is no uncertainty.
15Average Catch / Population Sizevs. slope and
Intercept
500
Intercept
0
500
Intercept
0
16Extending to a Stochastic Model
- Model of the state of the system (Schaefer
model) - This is now a stochastic model so we do 100
simulations (?p0.1).
17Catch and Population Size Trajectories
18Average Catch / Population Size / CVvs. slope
and Intercept
Between simulation CV of average catch
19Average catch vs. Population Size
20CV of catch vs. Average Catch
21Allowing for Errors in Stock Assessment
- We now allow for correlated errors when
conducting assessments (if this years assessment
is wrong, next years is also likely to be wrong)
- This approach to modeling assessment errors
ignores biases in assessment results also
assessment errors are unlikely to be log-normally
distributed.
22Allowing for Errors in Stock Assessment
Measuring the within-year variance in catches
No Stock Assessment Errors
With Stock Assessment Errors
23Going Beyond the Simple Case
- Rather than assume assessment errors are
log-normally distributed, simulate the process of
conducting annual assessments (this is highly
computationally intensive). - Examine strategies designed to achieve specific
management objectives (e.g. select catch limits
so that the probability of recovery equals a
desired level).
24Readings
- Burgman et al. (1993) Chapter 3.
- Hilborn and Walters (1992) Chapters 15-18.
- Quinn and Deriso (1999) Chapter 11.