An agent-based model to evaluate recovery times and monitoring strategies to increase accuracy of sea turtle population assessments

Authored by Susan E Piacenza, Paul M Richards, Selina S Heppell

Date Published: 2017

DOI: 10.1016/j.ecolmodel.2017.05.013

Sponsors: United States National Oceanic and Atmospheric Administration (NOAA)

Platforms: NetLogo

Model Documentation: ODD Flow charts Mathematical description

Model Code URLs: https://ars-els-cdn-com.ezproxy1.lib.asu.edu/content/image/1-s2.0-S0304380016307396-mmc1.docx

Abstract

Green sea turtles are threatened globally, and some populations continue to decline while others are recovering. Assessing recovery status largely depends on monitoring efforts that encounter sea turtles on nesting beaches and sample nesters, nests, or both. Monitoring nesting beaches provides an imperfect index of true population level changes in abundance due to demographic time lags and inter-annual variability in nesting. But, it is still unclear how much and in which direction nesting beach indices diverge from true population status. To address this concern, we used demographic parameters estimated from the Hawaiian green turtle population to develop and implement the green sea turtle agent-based model (GSTABM) to simulate stable and transient population dynamics, monitoring and population assessment. We subjected the virtual populations to sub-adult, adult, and nest disturbances and simulated the monitoring process of observing nesters and nests with error. The GSTABM simulates population-level processes of nester abundance and corresponds with observed data from Hawaii. In simulating 100 years of recovery, populations began to increase but did not fully return to pre-disturbance levels in adult and nester abundance, population growth or nester recruitment. The accuracy of estimated adult abundance was influenced by population trajectory and impacts, and was not sensitive to increasing detection probability. The accuracy of estimated recruitment improved with increasing detection levels, but depended on the impact legacy. The GSTABM is an important tool to determine relationships with monitoring, population assessment, and the underlying biological processes that drive changes in the population. The ultimate purpose of the GSTABM is to be an operating model with which to evaluate optimal monitoring strategies for nesting beach surveys that will enhance accuracy of population assessments, allowing agencies to invest in the most cost-effective monitoring efforts. (C) 2017 Elsevier B.V. All rights reserved.
Tags
Individual-based model Simulation Demography Ecological models Great-barrier-reef Recovery Marine turtles Chelonia-mydas Somatic growth Guianan leatherback turtles Temporal variability Hawaii Fisheries impacts Hawaiian green turtles Dependent nest destruction