2018
DOI: 10.3389/fmars.2018.00016
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Producing Distribution Maps for a Spatially-Explicit Ecosystem Model Using Large Monitoring and Environmental Databases and a Combination of Interpolation and Extrapolation

Abstract: To be able to simulate spatial patterns of predator-prey interactions, many spatially-explicit ecosystem modeling platforms, including Atlantis, need to be provided with distribution maps defining the annual or seasonal spatial distributions of functional groups and life stages. We developed a methodology combining extrapolation and interpolation of the predictions made by statistical habitat models to produce distribution maps for the fish and invertebrates represented in the Atlantis model of the Gulf of Mex… Show more

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Cited by 24 publications
(14 citation statements)
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“…Additionally, when more data become available, seasonal distribution maps for relevant functional groups will also be very informative. Notwithstanding, the relative biomass maps generated in this study represent a valuable achievement, and will enhance the accuracy of simulated predator− prey dynamics, which form the basis of most ecosystem models (Grüss et al 2018b). If total biomass estimates (e.g.…”
Section: Discussionmentioning
confidence: 93%
See 1 more Smart Citation
“…Additionally, when more data become available, seasonal distribution maps for relevant functional groups will also be very informative. Notwithstanding, the relative biomass maps generated in this study represent a valuable achievement, and will enhance the accuracy of simulated predator− prey dynamics, which form the basis of most ecosystem models (Grüss et al 2018b). If total biomass estimates (e.g.…”
Section: Discussionmentioning
confidence: 93%
“…From the survey data and literature, we determined the depth ranges of the functional groups. Then, from the 500 × 500 m spatial grid for the MHI, the environmental data used in this study and the estimated depth ranges of the functional groups, we created a prediction grid integrating environmental parameter values for each of the functional groups (Grüss et al 2018b).…”
Section: Data Analyses: Gams Fitted To Maxn Data and Relative Biomassmentioning
confidence: 99%
“…Thus, these aggregations could be considered as units within which to identify functional groups useful in the framework of spatial modelling of marine food webs and ecosystems (e.g. Ecospace or Atlantis, Plaganyi 2007, Grüss et al 2018. Furthermore, the use of aggregation species for the assessment of the marine food web state, which is required by Descriptor 4 of the EU Marine Strategy Framework Directive (MSFD) (Tam et al 2017), and the indicator of species importance (such as IndVal) could be a sound method for the recognition of the most important species groups in a community to be used as indicators.…”
Section: Usefulness Of Resultsmentioning
confidence: 99%
“…Regional diversity was then partitioned by species, sites, time and assemblages, allowing the identifica-tion of the main contributions relevant to characterize the biological community of the area. The analysis represents a basis for defining the aggregation criteria of species typical to the Mediterranean Sea to be considered, for example, for the definition of basic spatial aggregation units and functional groups in complex ecosystem models (Plaganyi 2007, Grüss et al 2018.…”
Section: Introductionmentioning
confidence: 99%
“…In this study, we use the information on transient FSAs (hereafter usually called “FSAs”) compiled within the RESTORE project, and a large monitoring database compiled in previous studies 14 16 , to fit species distribution models (SDMs) and then map the distribution of potential FSA areas in the U.S. GOM. First, we employ the information on lengths at sexual maturity and spawning months compiled within the RESTORE project to extract relevant data from the large monitoring database.…”
Section: Introductionmentioning
confidence: 99%