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Bibliographic Details
Main Authors: Hurley, Aoife K., Carden, Ruth F., Cook, Sally, Commission, Irish Deer, Marnell, Ferdia, Brama, Pieter A. J., Buckley, Daniel J., Sweeney, James
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2310.19993
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author Hurley, Aoife K.
Carden, Ruth F.
Cook, Sally
Commission, Irish Deer
Marnell, Ferdia
Brama, Pieter A. J.
Buckley, Daniel J.
Sweeney, James
author_facet Hurley, Aoife K.
Carden, Ruth F.
Cook, Sally
Commission, Irish Deer
Marnell, Ferdia
Brama, Pieter A. J.
Buckley, Daniel J.
Sweeney, James
contents Accurate predictions of the populations and spatial distributions of wild animal species is critical from a species management and conservation perspective. Culling is a measure taken for various reasons, including when overpopulation of a species is observed or suspected. Thus accurate estimates of population numbers are essential for specifying, monitoring, and evaluating the impact of such programmes. Population data for wild animals is generally collated from various sources and at differing spatial resolutions. Citizen science projects typically provide point referenced data, whereas site surveys, hunter reports, and official government data may be aggregated and released at a small area or regional level. Jointly modelling these data resources involves overcoming challenges of spatial misalignment. In this article, we develop an N mixture modelling methodology for joint modelling of species populations in the presence of spatially misaligned data, motivated by the three main species of wild deer in the Republic of Ireland; fallow, red and sika. Previous studies of deer populations investigated the distribution and abundance on a species by species basis, failing to account for possible correlation between individual species and the impact of ecological covariates on their distributions.
format Preprint
id arxiv_https___arxiv_org_abs_2310_19993
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Spatial Joint Species N-Mixture Models for Multi-Source Observational Data with Application to Wild Deer Population Abundance
Hurley, Aoife K.
Carden, Ruth F.
Cook, Sally
Commission, Irish Deer
Marnell, Ferdia
Brama, Pieter A. J.
Buckley, Daniel J.
Sweeney, James
Applications
Accurate predictions of the populations and spatial distributions of wild animal species is critical from a species management and conservation perspective. Culling is a measure taken for various reasons, including when overpopulation of a species is observed or suspected. Thus accurate estimates of population numbers are essential for specifying, monitoring, and evaluating the impact of such programmes. Population data for wild animals is generally collated from various sources and at differing spatial resolutions. Citizen science projects typically provide point referenced data, whereas site surveys, hunter reports, and official government data may be aggregated and released at a small area or regional level. Jointly modelling these data resources involves overcoming challenges of spatial misalignment. In this article, we develop an N mixture modelling methodology for joint modelling of species populations in the presence of spatially misaligned data, motivated by the three main species of wild deer in the Republic of Ireland; fallow, red and sika. Previous studies of deer populations investigated the distribution and abundance on a species by species basis, failing to account for possible correlation between individual species and the impact of ecological covariates on their distributions.
title Spatial Joint Species N-Mixture Models for Multi-Source Observational Data with Application to Wild Deer Population Abundance
topic Applications
url https://arxiv.org/abs/2310.19993