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Chesapeake Bay Fishery-Independent Multispecies Survey (CHESFIMS)

Chesapeake Bay Fishery-Independent Multispecies Survey (CHESFIMS). T. J. Miller 1 , M. C. Christman 3 , E. D. Houde 1 , A. F. Sharov 2 , J. H. Volstad 4 , K. Curti 1 , D. Loewensteiner 1 , B. Muffley 2 , and D. Sam 3.

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Chesapeake Bay Fishery-Independent Multispecies Survey (CHESFIMS)

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  1. Chesapeake Bay Fishery-Independent Multispecies Survey(CHESFIMS) T. J. Miller1, M. C. Christman3, E. D. Houde1, A. F. Sharov2, J. H. Volstad4,K. Curti1, D. Loewensteiner1, B. Muffley2, and D. Sam3

  2. Extended 9-year fishery-independent time series of bentho-pelagic fish, with a particular focus on forage fish CHESFIMS accomplishments • Quantified trophic interactions of key species in the fishery ecosystem • Developed statistical estimators for complemented survey designs • Developed model-based estimates of abundance, distribution and diversity

  3. Toward multispecies management • “There is no substitute for good monitoring programs of fished species and of key interacting species. Modeling evolves from and depends on monitoring results, and management depends upon an understanding of the status and trends of stocks. Fishery-independent surveys to monitor resources and obtain biological data, if instituted and coordinated throughout the bay, would help improve management.” Executive summary of Multispecies Management workshop report. Houde et al. 1998

  4. Characterizing a fishery ecosystem • In the CB fishery ecosystem • Pelagic and pre-recruit stages of fish are important • Individual species change “trophic roles” and habitat preferences during ontogeny • Multispecies efforts must assess the importance of spatial and temporal variability • Multispecies efforts should be sufficiently flexible to address questions at a range of scales of resolution

  5. CHESFIMS Objectives • Conduct a baywide survey of the bentho-pelagic fish community, focusing on young (juveniles, and yearling) fishes in the mainstem of Chesapeake Bay. • Design and implement a complementary survey of the bentho-pelagic fish community in the extensive shoal habitats (< 5 m depth) in the mainstem of Chesapeake Bay. • Conduct pilot surveys of the pelagic fish community in key tributaries and in the mainstem to generate sampling statistics that will of use in subsequent design improvements. • Determine trophic interactions among key components of the pelagic fish community, and examine the implication of the relationships uncovered in empirical studies using bioenergetic modeling. • Conduct statistical analyses of existing and new data to optimize the complemented pelagic survey with respect to consistency and accuracy of key parameters.

  6. CHESFIMS • 3 components • Baywide, broadscale midwater trawl survey. • Complex design involving fixed transects and random stations within three strata (upper, mid and lower Bay) • Samples depths > 5m, using an 18 m2-midwater trawl (6 mm cod end) fished in 10 equal depth bins from surface to bottom. • Builds on existing 1995 – 2000 NSF-sponsored survey (TIES). • Regional, shoal survey. • Stratified random sample currently involving 9 strata. • Samples depths < 5m, using a 16’ otter trawl towed for 6 min. • Complements and extends existing MDNR and VIMS surveys. • Statistical evaluation. • Analysis of alternative survey designs to optimize final survey design. • Application of spatial statistical models to develop Baywide abundances.

  7. Broadscale catch summaries • Spring survey catches were higher than our spring 2001 catch, but lower than 2002 catches. • Summer and autumn survey catches were lower than in either of the two previous years. • Notable, is that at some stations we recorded null catches for the first time. Summer time survey catches were particularly low in 2003 owing to the widespread hypoxic conditions encountered in mid-Bay tows.

  8. Inter-annual comparisons 2001 2002 2003

  9. Recruitment of alosids 2002 2003 2001

  10. Bay anchovy Biomass time series Croaker White perch Spr Sum Aut

  11. Shoal survey • Survey conducted three times during 2003, involving 9 strata • Sampling conducted with a 16’ otter trawl deployed < 5 m depth • 22,909 fish sampled • Almost 3 fold 2002 catch

  12. Shoal catch summaries

  13. Biomass distributions Spring Summer Autumn

  14. Shoal catches

  15. Characterizing the diets By species By size By season Spatial variation evident Feeding incidence Prey types Prey importance Trophic interactions

  16. Croaker diet

  17. Seasonal variation in diet Spring Summer Autumn

  18. Size-dependencies in diet

  19. Evaluation of Survey Efficiency • Use the ’design effect’ and ’effective sample size’ to measure the efficiency of a specific survey design; • Estimates under simple random sampling are used as benchmarks for comparison; • Applied to mean CPUE as an example

  20. Broad scale survey has stratified random and transect-based components Transect component surveys were not efficient Effective sample size was ~ number of transects The effective sizes of clustered samples depends on the number of elements, but the number of clusters may be more important Effective sample size

  21. Estimates across surveys can be efficiently combined using a composite estimator. Estimates of means and variances from complex surveys that ignores Deff can be biased because populations are not randomly distributed Composite estimators

  22. Model-based estimators are empirical approaches to estimating parameters of interest, e.g., abundance, diversity The scale of inference is not constrained by the design Post-hoc analyses are supported Geostatistical approaches have been used to analyze in coastal fisheries Spatial modeling

  23. Compared design-based, and four alternative spatial models Spatial models varied according to removal of trend Predictions of CPE were compared Comparison of alternative spatial models

  24. To explore the performance of the different models with respect to uncertainty in the variogram, simulation studies were conducted The technique is robust to some extent to misspecification of the model Simulation of model performance

  25. Which method is best? • The design-based approach is best if one wishes minimal assumptions to be made and wishes the procedure to be data independent (i.e. methodology is NOT data-driven). • If spatial autocorrelation is present, and it is correctly modeled,then kriging-based estimates will be better • Spatial modeling provides additional insights including inferences regarding distribution patterns of species not available in design-based methods.

  26. Conclusions • Baywide, broadscale midwater trawl and regional shoal surveys • Provide a basis for estimating time series of abundances (mean  SE) of individual species, of species guilds and of the overall fish community • Provide data on the biological characteristics of the survey catch • Provide inferences regarding the distribution of individual species, guilds and of the fish community • Dietary analyses quantify trophic relationships within the fish community • Revealing spatially and temporally variable patterns • Statistical evaluation. • Compares alternative survey designs to optimize final survey design. • Single survey design will not be optimal for all species • Applies spatially-explicit statistical models to estimate baywide abundances and distributions for species for which the design is not optimal

  27. Full field season (broadscale and shoal survey) Continued effort on dietary analyses (broadscale and shoal) Statistical analysis of Multispecies patterns Abundance Distribution Biological characteristics Efficiency and adequacy of alternative sampling designs Integration of multiple surveys Correlations with commercial landings 2004 CHESFIMS on the web at hjort.cbl.umces.edu/chesfims.html

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