Eastern Bering Sea snow crab

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Presentation transcript:

Eastern Bering Sea snow crab Cody Szuwalski April 29, 2019

Road map Model output is unstable Addressing issues in the current model has been challenging More questions than answers Back to basics—build up complexity Work on simple model and GMACS (a couple of bonus runs not in the documents) What to use in September? What are the ‘burdens of proof’ for changing parameter assumptions, etc.?

A condensed list of requests from the SSC and CPT: Think about: Natural mortality and priors Catchability in the survey and northern Bering Sea Growth, instability in the kinked model, and alternative models Shell condition and Skip molting Recruitment and deviations among sexes Data weighting Fishing mortality equations Parameter correlations Maturity estimates and chela height

A condensed list of requests from the SSC and CPT: Think about: Natural mortality and priors Catchability in the survey and northern Bering Sea Growth, instability in the kinked model, and alternative models Shell condition and Skip molting Recruitment and deviations among sexes Data weighting Fishing mortality equations Parameter correlations Maturity estimates and chela height

Response Runs Requests for information A simple model

Model % converge % at minium New Data 27 5 Fix fem M 36 4 Loose prior M 37 Looser prior M 43 3 Sep devs Sep devs + loose prior M 34 Sep devs + looser prior M 23 6 Sep devs + loose + growth 50

CPT requests Examine the possibility and implications of skip molting. Consider moving to the “GMACS catch equation” as is now the case for the assessment of EBS Tanner crab. Explore parameter correlation matrices to better understand possible reasons for model instability. In addition, examine how the values for each likelihood component change among jittered solutions with similar objective function values. Consider a model in which growth differs for animals that are about to mature. The level of recruitment is likely correlated with immature M. This should be explored in future analyses. Further explore the basis for the existing priors for M; for example, from the estimated ages post terminal molt. Consider including the chela height data in the same manner as for EBS Tanner crab. Explore alternative options for weighting the growth data to achieve a more expected fit to the data (i.e., linear).

CPT requests Examine the possibility and implications of skip molting. Consider moving to the “GMACS catch equation” as is now the case for the assessment of EBS Tanner crab. Explore parameter correlation matrices to better understand possible reasons for model instability. In addition, examine how the values for each likelihood component change among jittered solutions with similar objective function values. Consider a model in which growth differs for animals that are about to mature. The level of recruitment is likely correlated with immature M. This should be explored in future analyses. Further explore the basis for the existing priors for M; for example, from the estimated ages post terminal molt. Consider including the chela height data in the same manner as for EBS Tanner crab. Explore alternative options for weighting the growth data to achieve a more expected fit to the data (i.e., linear).

Models presented in appendix 1 18.1: 2018 Accepted model (separate recruitment deviations for males and females) 19.1: 18.1 + a prior on the sex ratio for recruitment 19.2: 19.1 + fixing growth to a linear model 19.3: 19.2 + weighting growth twice as heavily 19.4: 19.1 + fitting to VAST survey estimates and CVs

Sneak peak 18.1: Converged 19.1: Converged (but little rationale for specification of the prior) 19.2: Did not converge 19.3: Did not converge 19.4: Did not converge

Model overview Survey Directed fishery Mating Molting Growth July 15 Survey Logistic selectivity in 2 ‘eras’ Linked to BSFRF data Size composition and biomass index 7.5/12 M Directed fishery Non-directed fishery Mating 4.5/12 M Molting Growth Recruitment

Model overview Survey Directed fishery Mating Molting Growth Mature males, immature for both sexes, mature females Estimated with a prior 7.5/12 M Directed fishery Non-directed fishery Mating 4.5/12 M Molting Growth Recruitment

Model overview Survey Directed fishery Mating Molting Growth Logistic selectivity Retention selectivity Discard mortality equal to 30% Data in: Retained catch in t and #s Discard numbers Retained catch length comps Non-directed fishery Mating 4.5/12 M Molting Growth Recruitment

Model overview Survey Directed fishery Mating Molting Growth Logistic selectivity Retention selectivity Discard mortality equal to 30% Fit to: Retained length comps Total length comps Retained biomass Male and female discard biomass Non-directed fishery Mating 4.5/12 M Molting Growth Recruitment

Model overview Survey Directed fishery Mating Molting Growth Non-directed fishery Logistic selectivity Discard mortality equal to 80% Mating 4.5/12 M Molting Growth Recruitment

Model overview Survey Directed fishery Mating Molting Growth Non-directed fishery Freely estimated maturity curves Smoothing penalties February 15 Mating 4.5/12 M Molting Growth Recruitment

Model overview Survey Directed fishery Mating Molting Growth Non-directed fishery Mating 4.5/12 M Molting All immature crab assumed to molt Terminal molt to maturity Growth Recruitment

Model overview Survey Directed fishery Mating Molting Growth Non-directed fishery Mating 4.5/12 M Molting Two piece linear growth models estimated for both sexes (except 1 model) Growth Recruitment

Sex ratio prior

VAST VAST provided similar point estimates, smaller CVs Model did not converge with VAST estimates General issues with VAST Modifies ‘data’ from a station in a given year Considers only correlation between stations in adjusting values, not fishing, temperature, predation, etc.

A condensed list of requests from the SSC and CPT: Think about: Natural mortality and priors Catchability in the survey and northern Bering Sea Growth, instability in the kinked model, and alternative models Shell condition and Skip molting Recruitment and deviations among sexes Data weighting Fishing mortality equations Parameter correlations Maturity estimates and chela height

Natural mortality A mean of 0.23 and a prior of 0.054. Based on maximum age of 20 years Crab mature at 7-9; additional 7-8 beyond terminal molt observed under fishery 14-17 years ‘observed’; added a few years based on a small sample size Negative exponential depletion to 1% of initial population size Last year’s estimates: Immature crab: 0.27 Mature females: 0.36 Mature males: 0.26 Models with looser priors on M fit the data better (and estimated higher M than above), but the CPT was uncomfortable with them given apparent lack of justification.

Shell condition Radiometric dating could be useful for better determination of maximum ages.

Natural mortality Methods for empirical estimation of natural mortality from maximum age Estimated from fits to observed values for fish (not crab) species Then et al. (2015) “Evaluating the predictive performance of estimators of natural mortality…” Maximum age does the best M = 4.899(max_age)^-0.916 Hamel (2015) and Dick et al. (2018) “A method for calculating a meta-analytical prior for natural mortality…” & “The combined status of Blue and Deacon Rockfishes in U.S. waters…” Recalculated Then and force through the intercept M = 5.4/(age_max) Hoenig (1983): ln(Z) = 1.44 – 0.982(max_age) 4.374/(max_age) (Hamel reparameterization)

Natural mortality

BONUS RUNS M prior mean Hessian Gradient 0.19 No 92 0.21 NAN 0.23 (base) Yes 0.003 0.27 0.002 0.32 0.37

The prior on M appears to be determining q, not the BSFRF data.

Estimation of time varying natural mortality Murphy et al. 2018 Mean female M = 0.49 Mean male M = 0.36 (0.03 to 0.91) Potential problems –variation in catchability and recruitment soaked up in estimated M

Old shell mature males Mature males

Abundance Year

Options for moving forward Ln(max_age) Changing M can have large impacts on management quantities (Thorson et al., Szuwalski et al.) What is maximum age? Uncertainty in maximum age Uncertainty in prediction from maximum age If this uncertainty is put in the prior, M is estimated higher Confounding with other processes Incorporating chela height data and revisiting catchability might stabilize estimates of M Ln(nat Mort)

Catchability Estimated parameter (q) Scales the survey Determines how large of an impact the fishery has on the population If q is 1, the survey is a perfect representation of the population; fishery appears to impact the dynamics strongly. If q < 1, the population is larger than the survey estimates; fishery appears to impact less strongly.

What is the average catchability for the survey What is the average catchability for the survey? Does catchability vary over time in the survey? If so, what drives variation in catchability?

92 side by side tows with NMFS gear and nephrops trawls Conclusions: Selectivity isn’t logistic Catchability is much lower than 1

Catchability Input data () Total NMFS is in millions of crab BSFRF calculated more crab in the study area than the total NMFS

Estimated vs. empirical availability

Time variation in q Length composition data suggests there are years in which survey biomass varies, but not as a result of M or recruitment (e.g. 2014) Several hypotheses: Sediment and depth influence catchability (Somerton et al., 2013) Food availability and bottom temperature influence body position on the bottom (Goodman) Crab move in and out of the surveyed area from the north (Foy)

1. Develop an index of time-variation based on the spatial survey data and Somerton et al.’s results. 2. Insert into assessment, see if fits improve.

Northern Bering Sea High densities in 2018 VAST? Cod and Pollock Index of the densities at the border? Need to know possible movement better

Two more bonus runs… Build on natural mortality prior = 0.32 (lowest likelihood) Fix catchability to 0.4 in the survey (approximately what is suggested by the BSFRF data) Fix the probability of maturing to that estimated in the ‘accepted’ model from 2018

Moving forward Use new BSFRF data to calculate observed selectivity conversation about the observed selectivity and the use of the BSFRF data in the model Proposal to look at range of hypotheses behind time varying catchability Use the observed differences in sediment and depth with the spatial survey data to develop an index of time-variation in catchability Insert into the assessment to determine if it improves fits VAST and northern Bering Sea data

Growth Growth is currently modeled with a piece wise linear models with estimated changepoints Changes in molt increment associated with maturity. Instability in growth resulted in bimodal management quantities

Growth New data suggest that growth (for females at least, which is the problem process) is very linear More data coming soon to fill in the holes (thanks to Madi and co.!) Going to see if maturity height data are available for existing growth data

Growth A single change point is not consistent with the idea that the molt to maturity is ‘different’ because the molt to maturity occurs over a range of sizes.

Maturity Estimates of natural mortality and growth are related to the division between ‘mature’ and ‘immature’ crab, which is input data

Summary Natural mortality might be higher than assumed The prior on M appears to influence estimates of catchability Catchability is estimated higher than the BSFRF data suggest Estimated probability of maturing often adjusts to accommodate changes in M and q Confounding and interactions are hard to characterize in the current model given instability

Given Prior on M appears to be influencing catchability BSFRF data suggest catchability is much lower than estimated Kinked growth curves are a source of instability, but removing them produced inviable models Probability of maturing shifts to accommodate the other processes in the model

What data inform what processes What data inform what processes? Are the data informing the processes we think they are?

Simple model Removes females Condenses data file over shell condition Problems with growth and instability Problems with recruitment and retrospective patterns Play little role in current management Condenses data file over shell condition Linear growth curve Data look linear Removes BSFRF data Begin simple, add complexity

Take aways from simple modeling Stable models can be fit to (at least some) of the snow crab data Linear growth models can be used Response to adding the BSFRF data was interesting The model is not ready for use in management, but to be used to understand data contributions and stability.

Decisions for September/things I need help thinking about More questions than answers BSFRF data: history, worries, alternative methods Treatment of natural mortality Changes in management advice Thoughts on only including males to get around problems with growth and recruitment