2 research outputs found
Copernicus Marine Service Ocean State Report, Issue 5
Demersal species play a
fundamental role in fisheries, thus understanding their
distribution and abundance through bottom trawl surveys
is crucial for stock and fisheries management.
Oceanographic (e.g. biogeochemical, physical) and
fishing covariates might be considered, in addition to
spatio-temporal variables (latitute, longitude, depth,
year and month), to better explain trawl survey data.
Here, we analyse biomass indices (kg/km2) for European
hake, common sole, mantis shrimp, red mullet and common
cuttlefish from scientific trawl surveys carried out in
the Adriatic Sea and the Western Ionian Sea. We used
three different Generalised Additive Model (GAM)
approaches (Gaussian, Tweedie and Delta) to fit and predict
species biomass distribution. In order to evaluate
trade-offs in using different covariates, we compared
the results obtained from GAM approaches based only
on spatiotemporal variables and GAMs including also
oceanographic and fishing effort covariates.
The Delta-GAM approach performed better for European
hake, mantis shrimp and common cuttlefish, while
GAMs based on Gaussian and Tweedie were performing
better for the red mullet and common sole, respectively.
The results highlighted that adding specific oceanographic
and effort covariates to spatiotemporal variables
improved the performances of spatial distribution
models especially for European hake, mantis shrimp
and red mullet. Significant additional explanatory variables
were bottom temperature, bottom dissolved oxygen,
salinity, particulate organic carbon, and fishing
effort for European hake; the same variables and pH
for mantis shrimp; chlorophyll-a, pH, sea surface temperature,
bottom dissolved oxygen, nitrate and effort for
the red mullet; phosphate and salinity for common
sole; bottom temperature, bottom dissolved oxygen,
and phosphate for the common cuttlefish.
The findings highlight that more accurate estimates
of spatial distribution of demersal species biomass
from trawl survey data can generally be obtained by
integrating oceanographic variables and effort in
GAMs approaches with potential impacts on stock
assessment and essential fish habitats identification