Title: Cohort models
1Cohort models
- VPA
- Gullands method
- Popes method
- Catch-at-age
- Multispecies, ecosystem models
2Cohort models
- relies on tracing the declining abundance of a
cohort as it ages and passes through the fishery - In simplest form, estimates abundance of an age
group over a series of years and calculates
survival from mortality - If we assume that mortality is constant across
ages and through time the age structure from one
year can be used across years
3Cohort models
- Now used to estimate F, abundance and recruitment
- Originated with Derzhavin (1922) with this work
on sturgeon - Cohort size when entry to fishery can be
approximated by summing catches of that cohort
the years it is in fishery - The sum of the catches is the population that
must have been alive to generate those catches
(virtual population)
4Virtual Population Analysis
- Uses the numbers of fish caught during fishing
operations to estimate historic F and stock
numbers in a cohort - Called cohort analysis because each cohort is
analyzed separately - Simple relationship
5Virtual Population Analysis
- No recruitment since a single cohort
- If we knew initial cohort size and M, we could
calculate N each year - But we dont, so VPA tells us
6Virtual Population Analysis
- Fry (1949) applied Derzhavins model and called
the minimum population estimate the virtual
population, but - assumed no M
- Ricker, Beverton Holt, and Paloheimo
incorporated M, and estimated F as a function of
effort (fe) and catchability (q) -
- Fqfe
7Virtual Population Analysis
- Gulland (1965) started with an F for oldest age
group and worked backwards to link successive age
classes - there are essentially no fish older than the
oldest ever caught - use this (knowing M) to iteratively calculate the
number alive each year starting from the oldest
8Virtual Population Analysis
9Virtual Population Analysis
- Starting value of F is called terminal F
- Subsequent tests showed backwards technique was
superior
10Virtual Population Analysis
- Survivors in year t-1 M catch survivors in
previous year
7.9
11Virtual Population Analysis
9.25
12Virtual Population Analysismethodology
- Start with exponential decay equation
(7.7)
13Virtual Population Analysismethodology
- Start with exponential decay equation
- and the catch equation (derived in Box 7.2)
(7.7)
(7.8)
14Virtual Population Analysismethodology
- Step 1 calculate the terminal abundance by
re-arranging 7.8 to give Nt
(7.9)
15Virtual Population Analysismethodology
- Step 1 calculate the terminal abundance by
re-arranging 7.8 to give Nt - Step 2 substitute 7.7 into 7.8 to obtain Ft-1
(7.9)
(7.11)
16Virtual Population Analysismethodology
- Step 3 calculate Nt-1 by inserting Ft-1 from
step 2 into equation 7.7
(7.12)
17Virtual Population Analysismethodology
- Step 3 calculate Nt-1 by inserting Ft-1 from
step 2 into equation 7.7 - Repeat steps 2 and 3 to work backwards through
time
(7.12)
18Virtual Population Analysisexample
- Age 3, C3 80, Fterminal 0.6
- Step 1, calculate N3
(7.9)
19Virtual Population Analysisexample
- Age 2, C2 90, N3194
- Step 2, calculate F2
(7.11)
20Virtual Population Analysisexample
- Age 2, N3 194, F20.349
- Step 3, calculate N2
(7.12)
21Virtual Population Analysis Popes method
- Non-linear cohort analysis is cumbersome
- Pope (1972) proposed a step function that
approximates the non-linear form - Principal assumption is all fish caught exactly
half-way through time period - Catch occurs instantaneously
- Using this method, first calculate N, then F
22Virtual Population Analysis Popes method
- Number of fish alive just before fishing number
alive a start -reduction due to half M
7.13
23Virtual Population Analysis Popes method
- Number of fish alive just before fishing number
alive a start -reduction due to half M - Start fishing instantaneously
7.13
7.14
24Virtual Population Analysis Popes method
- Remaining fish suffer M leaving number of fish
alive at the end of year
7.15
25Virtual Population Analysis Popes method
- Remaining fish suffer M leaving number of fish
alive at the end of year - Re-arrange to solve for Nt
7.15
7.16
26Virtual Population Analysis Popes
methodexample (Box 7.4)
- Step 1 identical to VPA. Find N3 from catch
equation (7.9)
27Virtual Population Analysis Popes
methodexample (Box 7.4)
- Step 1 identical to VPA. Find N3 from catch
equation (7.9) - Step 2 substitute N3 into 7.16 as Nt1
28Virtual Population Analysis Popes
methodexample
- Step 3 solve for F2 from re-arranged exponential
decay equation (7.7)
29Virtual Population Analysis Popes
methodexample
- Popes method gives identical result to VPA
- Method gets around iterative calculation for F
- Can also be length-based when species cannot be
aged - Animals are separated into length classes rather
than age-classes - See section 7.5.2 and Box 7.5
30Virtual Population Analysis Popes
methodexample
31Virtual Population Analysisassumptions
- No fish alive at some age
- Cohorts must have all passed thru fishery
- M is known, constant, and not very large
- Oldest cohorts?
- Best when M lt F and F/Z0.5-1
- Terminal F
- source of bias and model sensitivity, tuning
- No error in catch/age data
- Oldest cohorts? bycatch, discards
- No net immigration or emigration
32Virtual Population Analysisconsequences of
assumptions
- Using discrete approximation of survival model
(Pope) - If F is evenly distributed thru year, N will be
overestimated - M is known, constant, and not very large
- If M used is lower, N will be underestimated
- If M used is higher, overestimation
- M is likely to vary by age and year
- Terminal F is known
- If F is underestimated, N will be overestimated
- If F is overestimated, N will be underestimated
33Virtual Population Analysisconsequences of
assumptions
- No error in catch/age data
- If harvest are under-reported, N will be
underestimated - Aging errors will introduce further errors in the
size of the cohorts (especially in oldest
cohorts) - No net immigration or emigration
- If immigrants are harvested cohort size will be
inflated - Handling mortality and bycatch will lead to
underestimation
34Virtual Population Analysisconclusions
- Uses commercial catch data to calculate stock
sizes and mortality rate of age-based or
length-based cohorts - VPA does not by itself indicate how many
individuals can be caught to meet a given
objective, - nor does it predict the future
- It explains the past, and if we know the
historical age structure of a population we can
see the consequences of changes in mortality
rates using YPR methods
35Virtual Population Analysis alternativesCatch-a
t-age
- Also known as stock synthesis or integrated
analysis - Another type of age-structured stock assessment
method - Develop a basic pop dyn model then relate
predictions to observed data - Statistical methodology used to find best set of
model parameters that will fit observations
36Virtual Population Analysis alternativesCatch-a
t-age
- Catch-at-age data are analyzed one cohort at a
time, i.e. - parameter estimates for one cohort are
independent of estimates for others - Age-specific and year-specific F (separable)
- Complex computationally (non-linear regression)
- Extremely flexible approach
- Overcomes problem with VPAs that require tuning
to calculate precise abund estimates
37Multispecies assessment(Chapter 8)
- Individual species do not live in a vacuum
- Biological interactions
- Predator-prey
- competition
- Technical interactions
- Fishing mortality on more than one stock by a
single fishery - However most management approaches are
single-species based
38Multispecies assessment
- Surplus production
- Generally consider only technical interactions
- Thus ignoring biological interactions
398.1
40Multispecies assessment
- Surplus production
- Temporal multispecies production model
- Similar to single-species SP model
- Used most often in tropical fisheries many
species
41- Based on data from 13 deep-water spp
- Actual yield 96t
- Assumes fish pop at equil
- But total biomass of unfished pop may not be
higher than fished due to pred-prey
MSY106 t, 901fd
8.2
42Multispecies assessment
- Surplus production
- Spatial multispecies production model
- Use many sites rather than time series
- Treats replicate sites as replicate fisheries
43- Based on data from 10 sites
- Snappers, groupers, grunts
- Assumes fish pop at equil
- Heterogeneity in gear used and species caught
- f has incr with time in Jamaica
- Really only comparing 2 sites
weakly exploited Belizian sites
Heavily exploited Jamaican sites
MSY1t/km2, 3600h/km2/y
8.3
44Multispecies assessment
- MS YPR
- Similar to single-spp YPR,
- Except yields are summed among spp
- F is calculated for each spp in fishery
- Effects of varying F are then modeled to estimate
catchability of each species if gear is changed - To forecast equilibrium yields species-specific
recruitment must be calculated - No biological interactions
45- 4 species provide 85 of yields on Georges Bank
- Cod, haddock, y-tail flounder, w flounder
- Spp rarely eat each other, low competition
overfished
underfished
46Multispecies assessment
- MSVPA
- Extension of single-spp VPA
- M is split into 2 components
- M2 predation
- M1 other sources
478.5
48Multispecies assessment
- MSVPA
- Extension of single-spp VPA
- M is split into 2 components
- Detailed infor on food habits
- e.g. functional responses
498.6
50Multispecies assessment
- MSVPA
- Prey switching at low prey densities in type III
FR may lead to overestimation of predation on
rate spp - Assumes total intake is constant from year to
year - Summed M2 and M1 across all predators used for
backward calculation
51- In North Sea MSVPA 10 main spp used
- Total biomass of each spp calculated
8.7
528.8
53Age lt1
Age gt1
8.9
54Summary of MSVPA for Atlantic cod in N Sea,
1974-95
8.10
8.9
55 Summary of MSVPA for Atlantic cod in N Sea,
1974-95
Summary of MSVPA for Atlantic cod in N Sea,
1974-95
8.9
56 Summary of MSVPA for Atlantic cod in N Sea,
1974-95
Summary of MSVPA for Atlantic cod in N Sea,
1974-95
1/2 of human consumption
1/2 of predator consumption
8.9
57How general are N Sea results?
8.11
58Multispecies VPA
- MSVPA future?
- Use continues to grow
- Very data hungry
- Only considers impacts on prey (no pred growth)
- No multispp SR relationships
- Can improve estimates of M
59Multispecies VPA
8.12
60Predator-prey dynamics and exploitation
8.13
61Competition and exploitation
8.14
62Management implications
Mesh size
8.15
63Ecosystem models
- Using ecosystem biology to understand links
between exploitation and ecosystem components - Ecopath
- Describes ecosystems by balancing flows between
trophic groups
648.19
65Ecosystem models
- Using ecosystem biology to understand links
between exploitation and ecosystem components - Ecopath
- Describes ecosystems by balancing flows between
trophic groups - Ecosim
- Dynamic simulation model which uses Ecopath
results to predict ecosystem effects of fisheries
668.20
67Ecosystem models
- Using ecosystem biology to understand links
between exploitation and ecosystem components - Ecopath
- Describes ecosystems by balancing flows between
trophic groups - Ecosim
- Dynamic simulation model which uses Ecopath
results to predict ecosystem effects of fisheries - Ecospace
- Incorporates spatial dynamics
68What needs to be done to improve implementation
of ecosystem considerations into fisheries
management?
- Clearly define fishery goals in an ecosystem
context - Ecosystem metrics and indicators must be
developed - More appropriate theory, models and methods need
to be developed and applied - Monitoring should be maintained and expanded
- Formalize plans for fisheries in the context of
ecosystems