an individual-based population dynamic model of seas scallop, with application to georges bank

29
An individual-based population dynamic model of seas scallop, with application to Georges Bank Rucheng Tian Department of Fisheries Oceanography SMAST, UMASSD Supervisors: Drs. C.S. Chen, K. Stokesbury, B. Rothschild Participants: the FVCOM group, Q.C. Xu, S. Hu, G. Cowles, B. Harris and M. Marino Outline: - Model structure - Parameterization - Model set up for application - Results - Findings

Upload: chika

Post on 14-Jan-2016

34 views

Category:

Documents


0 download

DESCRIPTION

An individual-based population dynamic model of seas scallop, with application to Georges Bank. Rucheng Tian Department of Fisheries Oceanography SMAST, UMASSD. Supervisors: Drs. C.S. Chen, K. Stokesbury, B. Rothschild. Participants: the FVCOM group, Q.C. Xu, S. Hu, G. Cowles, - PowerPoint PPT Presentation

TRANSCRIPT

Page 1: An individual-based population dynamic model of seas scallop, with application to Georges Bank

An individual-based population dynamic model of seas scallop, with application to Georges Bank

Rucheng TianDepartment of Fisheries Oceanography

SMAST, UMASSD

Supervisors: Drs. C.S. Chen, K. Stokesbury, B. Rothschild

Participants: the FVCOM group, Q.C. Xu, S. Hu, G. Cowles, B. Harris and M. Marino

Outline: - Model structure - Parameterization - Model set up for application - Results - Findings

Page 2: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Scallop life cycle

(Stewart, P.L. and S.H. Arnold. 1994. Can. Tech. Rep. Fish. Aquat. Sci. 2005: 1-36).

Page 3: An individual-based population dynamic model of seas scallop, with application to Georges Bank

1 2 3 4 5

f1

f2

G1 G2 G3 G4

P1 P2 P3 P4 P5

(EPA RI). Stage-based population model f1, f2: Reproduction; G1-4: recruitments; P1-5: survivorship (Hinchey, Chintal, & Gleason 2004 ).

A stage-based population model for bay scallop

Page 4: An individual-based population dynamic model of seas scallop, with application to Georges Bank

r

n1 n1 n1 n1

n2 n2 n2

n3 n3 n3

n4 n4

nn

nk nk

t t+1 t+2 t+n

e e e e

Time

m m m

mmm

m m m

m m

m m

m

Weigh

t

r rMinimum harvest weight

G

n: number of mussels; e: spawning; m: mortality; r: harvesting; G: growth (Gangnery et al., 2001)

Population dynamics model of mussels

Page 5: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Egg

Z

Pediveliger

P

N

Veliger

D

Adult

Sed

imen

t

Biodeposits Young adultJuvenile

F

F

R G

ST S S

H

Eulerian Lagrangian

Wat

er

TrochophoreSV

SV

D: Detritus; N: Nitrogen; P: Phytoplankton; Z: ZooplanktonF: Feeding; G: Growth; H: Hatching; R: Recruitment; S: Spawning; ST: Settlement; SV: Survivorship;

A Lagrangian individual-based population dynamic model of scallop, coupled with an Eulerian concentration-based ecosystem model

Page 6: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Parameterization

Ross and Nisbet, 1990.

Starvation mortality:

RGwhen

RGwhenGR

MS

SSS

S

0

)( R : Respiration.G : GrowthS: Constant. S : Constant.

Page 7: An individual-based population dynamic model of seas scallop, with application to Georges Bank

)release after theMortality ( ;),(

)release thebefore Spawning(;2

1

),(

1

2

12

tMi

t

t

tt

eggscallop

i

etnP

eSN

tnP

m

ttagePtageP ii ),(),(

)1)(,(),( lii gtthPthP

)1)(,(),( wii gttwPtwP

Biological attributes of Lagrangian ensemble particles

Number of

larvae:

Age:

Height:

Pi(n,t): Number of eggs at t in an ensemble particle;Nscallop: Total scallop in a simulation cell; Segg: Total eggs spawned by each individual adult scallop in one season;M: Mortality (0.25 d-1; McGarvey et al., 1993)

Biomass:

Page 8: An individual-based population dynamic model of seas scallop, with application to Georges Bank

),()()(),( tPWKRARtutxP imxxxi

2/11 ('2'))( ttKKrtKKR xxxx

)(35);(7.1

)(355);(1.0

)(52);(3.0

)(2;0

),(

1

1

1

dayagewhensmm

dayagewhensmm

dayagewhensmm

dayagewhen

agePW im

Lagrangian trajectory

Trajectory:

Random walking:

A : Horizontal diffusivity. K : Vertical diffusivity; Pi : Particle i at x and t; Wm: Vertical migration; r : Random process; σ : Std of r; t : Time; u : Current; x : Spatial position. (Visser, 1997)

Behavior:

(eggs, at 1 m above the bottom)

(trochphores)

(veligers)

(pediveligers)

Page 9: An individual-based population dynamic model of seas scallop, with application to Georges Bank

41.4

66.0067.00 66.8 66.6 66.4 66.2

41.7

41.8

42.1

41.5

41.6

41.9

42.0

CAI

0.00

1.00

2.00

3.00

4.00

5.00

6.00

7.00

8.00

9.00

10.00

Provided by K. Stokesbury

Thouzou et al., 1991

)1(87.144)1()( )5566.0(2813.0)(max

0 tttk eeHtH

H(3) = 72.03 (mm)

F(>age 3) = 76% (average on GB)

Estimation of the spawning stock

von Bertalanffy growth function:

Page 10: An individual-based population dynamic model of seas scallop, with application to Georges Bank

22

168

600

2

1

1

72

1

1 1682

1100.5

2

1),(

t

t

tscallop

ttt

teggscallopi eNeSNtnPm

The simulation starts on Aug 15;

tm (maximum spawning day) is assumed to be on Sep. 10;

(deviation) is assumed to be 1 week;

One adult spawns in average 50 million eggs (Langton, 1987; McGarvey et al., 1992, 1993)

Abundance of scallop > age 3 (N m-2 )

Spawning

21

2

1

2

1)(

2

2

1 xerfetF

tt

The normal distribution was integrated using the error function:

Page 11: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Substrate distribution and larvae-settlement probability

Settlement probability

Settlement probability: Gravel: 0.2; Sand: 0.05; Fine sand: 0.01.

Page 12: An individual-based population dynamic model of seas scallop, with application to Georges Bank

The scallop simulation was conducted with the framework of FVCOM

- Surface forcing from MM5.

- Tide.

- Monthly boundary conditions.

- Daily SST data assimilation.

- River discharges.

Page 13: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Larvae settlement

Movie of simulated larval trajectory for 1995

Hor

izon

tal t

raje

ctor

y Vertical trajectory

Page 14: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Movie of simulated larval trajectories for 1995 and 1998

Page 15: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Drifter trajectories

(Lozer & Gawarkiewicz, 2001, JPO. 31: 2498-2510)

Page 16: An individual-based population dynamic model of seas scallop, with application to Georges Bank

0

2

4

6

8

1995 1996 1997 1998 1999 2000 2001 2002 2003 2004 2005Year

Lar

vae

(1012

)

GB GSC MAB

0

2

4

6

8

1995 1996 1997 1998 1999 2000 2001 2002 2003 2004 2005Year

Lar

vae

(1012

)

GB GSC MAB

Total larvae settled on Georges Bank (GB), in the Great Southern Channel (GSC) and to the Middle Atlantic Bight (MAB)

Page 17: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Late spawning is unfavorable for larvae retention on Georges Bank

1995 1996 1997 1998 1999 2000 2001 2002 2003 2004 2005

Temp. run 79% 37% 47% 23% 26% 32% 36% 48% 74% 25% 16%

Page 18: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Larvae exchange between scallop subpopulations

Page 19: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Closed area selection and rotation

Page 20: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Closed area selection and rotation

Page 21: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Closed area selection and rotation

Page 22: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Closed area selection and rotation

Page 23: An individual-based population dynamic model of seas scallop, with application to Georges Bank
Page 24: An individual-based population dynamic model of seas scallop, with application to Georges Bank

Schematic of the scallop benthic module

Phytoplankton

Suspended sedimentsDetritus

Sediment Biodeposits SedimentScallop

Watercolumn

Boundary layer

Detritus

Phytoplankton

Suspended sediments

Mixing Mixing

Sedimentation SuspensionSedimentation Suspension Feeding Feeding

Forcing TemperatureCurrent/turbulence Predator

Natural & fishing MortalityPredation ResuspensionStarvation Temperature stress

Sinking Sinking

Page 25: An individual-based population dynamic model of seas scallop, with application to Georges Bank

SUMMARY

- Construct your model based on your question.

- Better using prognostic parameterizations than diagnostic one.

- Model set up can be specific to each ecosystems.

- Long-distance larval transport from GB to the MAB.

- Interannual variability due to physical forcing.

- Larval exchanges between scallop beds.

- Closed-area selection and rotation.

Page 26: An individual-based population dynamic model of seas scallop, with application to Georges Bank

END

Page 27: An individual-based population dynamic model of seas scallop, with application to Georges Bank
Page 28: An individual-based population dynamic model of seas scallop, with application to Georges Bank
Page 29: An individual-based population dynamic model of seas scallop, with application to Georges Bank