Title: Schaefer model through the FishBanks role playing game
1Schaefer modelthroughthe FishBanks role playing
game
2FishBanks
- Fish Banks
- is a computer-assisted interactive, role-playing
simulation in which groups manage a fishing
company - Participants try to maximize their assets in a
world with renewable natural resources and
economic competition. - the game has been created in 1986 by Dennis
Meadows - A diversity of strategies
- Management of incomes or resources ?
- Free Access gt negociations
- Discussion about the type of measurements
- gt need of an agreement about the diagnostic
- Discussion ltgt institution
- Rules - Control - Sanctions
3FishBanks
A message
Privatization of the profits, socialization of
losses Social cost extern to the market
A standard model
Schaefer
4FishBanks Typical evolution of three key
indicators
Boats
Captures
Fishes
12
10
8
6
4
2
0
Time
1
2
3
4
5
6
5The Schaeffer model Carrying capacity K and
equilibrium
- Based on Verhulst model (Logistic equation)
dx/dt rx (1 - x/K)
K
K/2
x
6Renewable resource with harvest h(t)
- Constant harvest h(t)
- dx/dt rx (1 - x/K) - h(t)
- MSH Maximum sustainable harvest, XK/2
hRMS
h
-
K
x
X2 stable equilibrium
X1 unstable equilibrium
7Harvest h(t) with effort E and capturability q
- Harvest h(t) q.E.x
- Fishing effort E (number of boats), q
capturability - dx/dt rx (1 - x/K) - h(t)
K
x
8Renewable resource Harvest h(t) with effort E and
capturability q
- dx/dt rx (1 - x/K) - h(t)
- h(t) q.E.x
At the biological equilibrium, one harvests what
is produced
q.E.x
x
9Yield as a function of effort in situations of
equilibrium
MSY Maximum Sustainable Yield
Y Yield-effort curve
Production-population curve
MSY
rK/4
q.E.x
E
xK/2
r/q
r/2q
10Renewable resource Estimation of the parameters
- hY q.E.x q.E.K.(1 - q.E/r)
- Y/E -(q2.K/r).E qK
Catches per ship
Y/E
Capture per effort effort curve The Schaefer
line
qK
-q2.K/r
Y/EMSYqK/2
r/q
E
EMSYr/2q
Number of ships
11Schaeffer Regression line FishBanks game
30
S4
S1
S2
25
S3
20
15
Catches per ship
10
5
S5
0
0
10
20
30
40
50
60
70
Number of ships
12The Schaeffer model Basic assumptions
- Isolated Resource
- Constant environment
- Dynamics at the equilibrium
- Free access
- Rational and optimal behaviour
- Fixed natural mortality
- Fixed Prices
- Homogenous efforts.
Schaefer, M.B., 1957. Some considerations of
population dynamics and economics in relation to
the management of the marine fisheries. Jal. of
the Fisheries Research Board of Canada, 14 (5)
669-681.
13DiscreteSystems Dynamics
14Definitions
- The state of the system at time t
Xt (at, bt, ) - The state at time t1 only depends on the state
at time t Xt1 F(Xt) - X0 and the function F are sufficient to define
all possible values
No need to run simulation to solve the system
15Discrete dynamics
- Arithmetic growth, xt1 r xt gt xt
x0r.t - Geometric growth, xt1 r.xt gt xt x0.rt
- Logistic equation,
16Linear equation
17Example
Phases space
Temporal equation
18Example
Phases space
Temporal equation
19Example
Phases space
Temporal equation
- Converge whatever the initial value of Xo X8
10/0.616,66666
20Example
Phases space
Temporal equation
21Limits of linear equation
22Attractors
- An attractor is a point or a set of points
- Fixed point xt1xt
- Cyclic point xtnxt
23Logistic equation
- Populations dynamics
- bilge mathematician Pierre-François Verhulst.
1838 - Non-linear dynamic model
24Populations dynamics Growth factor R
- R b m
- b natality rate
- m mortality rate
- Whose solution is
- gt Exponential growth
- Malthus model
25Populations dynamics Reproduction factor r
- Growth is limited.
- R decreasing function of x. R(x)
- Example logistic equation (Verhulst. 1838)
26Solution
27Logistic equation Dynamics and carrying capacity
K
dx/dt r.x.(1 - x/K)
28carrying capacity and equilibrium
x
29From continuous to discret model Deterministic
chaos
and by using the
approximation
gt
Feigenbaum (1970), the discret model is richer
than the continuous one.
30Evolution and attractors of logistic equation
0 lt a lt 1
31Evolution and attractors of logistic equation
1 lt a lt 3
32Evolution and attractors of logistic equation
3 lt a lt 4
33Initial conditions sensibility
Dynamics of Xt for a 4 and X00.01 or
X00.01001 ? 1
34a4 Xo0.2 and Xo0.2002
35Attractors of logistic equation
36Bifurcation diagram Feigenbaum diagram
37Bifurcation diagram Feigenbaum diagram (zoom)
38Strange attractors and fractal dimensions
39dimension 2
40Henon attractor
Attractor shape You cant predict x,y at t The
system is organized fractal properties
41Lorenz attractor
42References
- Discrete system dynamics Pavé, Tu,
- Deterministic chaos Casti, Cvitanovic
- Discrete control Clark