Abstract

AbstractAimCetaceans are inherently difficult to study due to their elusive, pelagic and often highly migratory nature. New Zealand waters are home to 50% of the world's cetacean species, but their spatial distributions are poorly known. Here, we model distributions of 30 cetacean taxa using an extensive at‐sea sightings dataset (n > 14,000) and high‐resolution (1 km2) environmental data layers.LocationNew Zealand's Exclusive Economic Zone (EEZ).MethodsTwo models were used to predict probability of species occurrence based on available sightings records. For taxa with <50 sightings (n = 15), Relative Environmental Suitability (RES), and for taxa with ≥50 sightings (n = 15), Boosted Regression Tree (BRT) models were used. Independently collected presence/absence data were used for further model evaluation for a subset of taxa.ResultsRES models for rarely sighted species showed reasonable fits to available sightings and stranding data based on literature and expert knowledge on the species' autecology. BRT models showed high predictive power for commonly sighted species (AUC: 0.79–0.99). Important variables for predicting the occurrence of cetacean taxa were temperature residuals, bathymetry, distance to the 500 m isobath, mixed layer depth and water turbidity. Cetacean distribution patterns varied from highly localised, nearshore (e.g., Hector's dolphin), to more ubiquitous (e.g., common dolphin) to primarily offshore species (e.g., blue whale). Cetacean richness based on stacked species occurrence layers illustrated patterns of fewer inshore taxa with localised richness hotspots, and higher offshore richness especially in locales of the Macquarie Ridge, Bounty Trough and Chatham Rise.Main conclusionsPredicted spatial distributions fill a major knowledge gap towards informing future assessments and conservation planning for cetaceans in New Zealand's extensive EEZ. While sightings datasets were not spatially comprehensive for any taxa, these two best available approaches allow for predictive modelling of both more common, and of rarely sighted, cetacean species with limited available information.

Highlights

  • Cetaceans are distributed throughout the world's oceans, coasts and some river systems predominantly feeding on zooplankton, fishes and squids

  • Despite the fact that 50% of the world's cetacean species are known to occur in New Zealand waters, large-scale regular shipor aerial-based cetacean distribution and abundance surveys of the Exclusive Economic Zone (EEZ) are logistically and financially prohibitive

  • For a small subset of species, the usefulness of the Boosted Regression Tree (BRT) models was further validated using an independent set of true presence/absence data

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Summary

| INTRODUCTION

Cetaceans are distributed throughout the world's oceans, coasts and some river systems predominantly feeding on zooplankton, fishes and squids. Species distribution models have become a reliable and recognised method of predicting species' probability of occurrence and are an integral part of resource management and conservation biology (Elith et al, 2006; Guisan & Thuiller, 2005) Spatial information, such as from opportunistically collected cetacean sightings (Derville, Torres, Iovan, & Garrigue, 2018), can be used to model a species’ ecological niche based on the assumption that the distribution of known encounters reflects the species’ environmental preferences (Guisan & Zimmermann, 2000; Hirzel, Lay, Helfer, Randin, & Guisan, 2006). Our study combines functionally relevant, high-resolution environmental data (1 km grid resolution) across New Zealand's EEZ and a large database of opportunistically collected at-sea cetacean sighting records (n = 14,513), to predict probability of occurrences for 30 cetacean taxa and for a subset of these taxa spatially explicit estimates of uncertainty; this information is crucial for conservation and marine spatial planning

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