Abstract

Single species distribution models (SSDMs) are typically used to understand and predict the distribution and abundance of marine fish by fitting distribution models for each species independently to a combination of abiotic environmental variables. However, species abundances and distributions are influenced by abiotic environmental preferences as well as biotic dependencies such as interspecific competition and predation. When species interact, a joint species distribution model (JSDM) will allow for valid inference of environmental effects. We built a joint species distribution model of marine fish and invertebrates of the Northeast US Continental Shelf, providing evidence on species relationships with the environment as well as the likelihood of species to covary. Predictive performance is similar to SSDMs but the Bayesian joint modeling approach provides two main advantages over single species modeling: (1) the JSDM directly estimates the significance of environmental effects; and (2) predicted species richness accounts for species dependencies. An additional value of JSDMs is that the conditional prediction of species distributions can use not only the environmental associations of species, but also the presence and abundance of other species when forecasting future climatic associations.

Highlights

  • Modeling and predicting the distribution and abundance of marine fish species is essential for effective fisheries management

  • Temperature, and subregion have a strong influence on the community as a whole, and we identify environmental effects on rare species that we could not uncover with a single species model alone

  • This study is a critical first step at building a joint species distribution model of the NEUS LME that can be applied to ecosystem-based management, and predicting joint distributions under climate change based on environmental variables and species co-dependence

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Summary

Introduction

Modeling and predicting the distribution and abundance of marine fish species is essential for effective fisheries management. We use the NEUS LME to evaluate the joint distribution of a marine community in response to a warming environment This area contains some of the most productive fisheries as well as the most rapidly increasing ocean temperatures that have been linked to shifts in the distribution of some fish ­species[13] which has led to conflicts between regions over fisheries catch and management ­boundaries[14]. This study is a critical first step at building a joint species distribution model of the NEUS LME that can be applied to ecosystem-based management, and predicting joint distributions under climate change based on environmental variables and species co-dependence

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