Assessing the performance of common landscape connectivity metrics using a virtual ecologist approach
Authored by George L W Perry, Craig E Simpkins, Todd E Dennis, Thomas R Etherington
Date Published: 2018
DOI: 10.1016/j.ecolmodel.2017.11.001
Sponsors:
No sponsors listed
Platforms:
NetLogo
Model Documentation:
ODD
Model Code URLs:
https://figshare.com/articles/Assessing_the_reliability_of_landscape_connectivity_metrics_utilising_a_virtual_ecology_approach_-_model_zip/2008254
Abstract
Due to increasing habitat fragmentation and concern about its ecological
effects, there has been an upsurge in the use of landscape connectivity
estimates in conservation planning. Measuring connectivity is
challenging, resulting in a limited understanding of the efficacy of
connectivity estimation techniques and the conditions under which they
perform best. We evaluated the performance of four commonly used
connectivity metrics - Euclidean distance; least-cost paths (LCP) length
and cost; and circuit theory's resistance distance - over a variety of
simulated landscapes. We developed an agent-based model simulating the
dispersal of individuals with different behavioural traits across
landscapes varying in their spatial structure. The outcomes of multiple
dispersal attempts were used to obtain `true' connectivity. These `true'
connectivity measures were then compared to estimates generated using
the connectivity metrics, employing the simulated landscapes as
cost-surfaces. The four metrics differed in the strength of their
correlation with true connectivity; resistance distance showed the
strongest correlation, closely followed by LCP cost, with Euclidean
distance having the weakest. Landscape structure and species behavioural
attributes only weakly predicted the performance of resistance distance,
LCP cost and length estimates, with none predicting Euclidean distance's
efficacy. Our results indicate that resistance distance and LCP cost
produce the most accurate connectivity estimates, although their
absolute performance under different conditions is difficult to predict.
We emphasise the importance of testing connectivity estimates against
patterns derived from independent data, such as those acquired from
tracking studies. Our findings should help to inform a more refined
implementation of connectivity metrics in conservation management. (C)
2017 Elsevier B.V. All rights reserved.
Tags
Agent-based model
individual-based models
Conservation
Animal movement
pattern
Dispersal
Resistance
Circuit-theory
Spatial ecology
Circuit theory
Euclidean distance
Least-cost
modelling
Simulated landscape
Crossing decisions
Regression
trees