ASSESSMENT OF BIGEYE TUNA (THUNNUS OBESUS) IN THE EASTERN PACIFIC OCEAN January 1975 – December 2006.

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Presentation transcript:

ASSESSMENT OF BIGEYE TUNA (THUNNUS OBESUS) IN THE EASTERN PACIFIC OCEAN January 1975 – December 2006

Outline Stock assessment –Overview of assessment model –Fishery data –Assumptions –Results of base case model –Projections Sensitivity analyses Summary and conclusions Discussion

Overview of assessment Age-structured, statistical, catch-at-length model (Stock Synthesis II). Same type of model as A-SCALA or MULTIFAN-CL Differences between SS2 and A-SCALA

Bigeye fishery definitions Recent FLT (2-5) Discards (10-13) N Longline (8) S Longline (9) Early FLT (1) Early & Recent UNA (6, 7) 1, , 10 3, 11 5, 13 4, 12 FLT – Floating objects; UNA - Unassociated

Data - catch Early FLT N Offshore FLT Equatorial FLTCoastal FLTS Offshore FLT Early UNARecent UNAN LL S LL Disc - S FLT Disc – Eq FLT Disc – coastal FLT Disc -N FLT

Data - discards Southern FLT Equatorial FLT Northern FLT Inshore FLT

Data - effort Early FLT N Offshore FLT Equatorial FLT Coastal FLT S Offshore FLT Early UNA Recent UNA N LL S LL Disc - S FLT Disc – Eq FLT Disc – coastal FLT Disc -N FLT

Data - CPUE Early FLT N Offshore FLT Equatorial FLTCoastal FLTS Offshore FLT Early UNARecent UNAN LL S LL Disc - S FLT Disc – Eq FLT Disc – coastal FLT Disc -N FLT

Data - Length frequency data Quarter

Assumptions (base case) - movement Tagging records indicate little exchange of bigeye between E and W Pacific Results from conventional and archival tagging indicate regional fidelity for bigeye in EPO Different CPUE trends between EPO and WCP DATA Single stock of bigeye in EPO No net movement of fish between the eastern and western Pacific SA for EPO and Pacific wide are consistent ASSUMPTIONS

Assumptions (base case) - growth Von Bertalanffy – fixed parameters

Assumptions (base case) – M

Assumptions (base case) - cont. Age-specific maturity and fecundity indices No S-R relationship (steepness = 1)

Results (base case) Fit to the length frequency Fishing mortality Selectivity Recruitment Biomass

Fit to LF data – Pearson residuals

Fit to CPUE data – Floating object

Fit to CPUE data – Longline

Fishing mortality Ages 1-4 Ages 5-8 Ages Ages Ages 9-12 Ages Ages 25-28Ages Ages Ages 37-40

Age-specific fishing mortality

Size selectivity Early FLT N Offshore FLT Equatorial FLT Coastal FLT S Offshore FLT Early UNA Recent UNA N LL S LL

Recruitment

Biomass Biomass of fish years old

Spawning biomass Population fecundity

No-fishing plot

Average weight

Retrospective analysis - biomass

Retrospective analysis - recruitment

Comparisons with A-SCALA

Comparisons with A-SCALA assessments

Comparisons to reference points Spawning biomass depletion (SBR)

Spawning biomass ratio

SBR comparison with A-SCALA

Time varying indicators

AMSY-quantities

AMSY-quantities – by fishery

Forward simulations Biomass Spawning biomass depletion Surface fishery catch Longline catch

Spawning biomass ratio

Predicted catches – purse-seine

Predicted catches – longline

Sensitivity analyses 1.Spawner-recruitment relationship (steepness = 0.75) 2.Growth -Growth estimated -Linf fixed (171.5 and 201.5) 3.Fitting to the initial equilibrium catch 4.Use of iterative reweighting of data 5.Time blocking of selectivity and catchability for southern longline fishery 6.Inclusion of new Japanese longline data

Stock-recruitment relationship (h = 0.75)

Biomass

Recruitment

Spawning biomass ratio

Spawner-recruitment curve

Use of CPUE time series for southern longline fishery only

Spawning biomass ratio

Model fit to CPUE data

Assumed value for the asymptotic length parameter of the VB growth curve

Growth curves

SBR

Fit to initial equilibrium catch

Spawning biomass ratio

Use of iterative reweighting

Iterative reweighting

Spawning biomass ratio

Fit to CPUE data

Residual plot

Use two time blocks for selectivity and catchability of the southern longline fishery

Fit to LF data – base case

Spawning biomass ratio

Fit to CPUE data With iterative reweighting Without iterative reweighting

Residual plot

Inclusion of the new Japanese longline data

Biomass

Recruitment

SBR

Comparisons between models

Summary: Main results Both total and spawning biomass is estimated to have substantially declined since 2000 Current biomass level is low compared to average unexploited conditions The current effort levels are too high to maintain the population at level that will support AMSY Yileds could be increased if more of the catch was taken in the longline fisheries

What is robust Fishing mortality levels are greater than that necessary to achieve the maximum sustainable yield Two exceptions: Lmax fixed and time blocks

Plausible Sensitivities and Uncertainties Results are more pessimistic with the inclusion of a stock-recruitment relationship Biomass trends are sensitive to the weighting of different datasets Recent estimates are uncertain and subject to retrospective bias

Conclusions Current spawning biomass is unlikely to remain at or above the level required to produce AMSY. In the most recent years the fishing mortality is greater than that required to produce AMSY. Under average recruitment, the stock is predicted to be below the level that would support AMSY unless fishing mortality levels are reduced further than the current restrictions.

Comparisons between models