A spatial simulation model to explore the long-term dynamics of podocarp-tawa forest fragments, northern New Zealand

Morales, Narkis S.; Perry, George L. W.

Abstract

Understanding the interactive effects of fragmentation and invasive species on forest dynamics requires a long-term perspective because they are difficult to assess in the medium- to long-term using observational or experimental data alone. In such settings ecological models have an important role to play. Here we describe the implementation of a spatially explicit individual-based model (SEIBM) representing the dynamics of small forest fragments in northern New Zealand based on empirical data collected in the region. In addition, we performed a baseline analysis to determine how well the model captured podocarp-tawa forest dynamics, and compared its performance with stand structure data obtained from. an unfragmented forest in northern New Zealand. We used sensitivity analysis to determine how sensitive the model was to changes in the input parameters. In addition, we simulated different scenarios under diverse management conditions to explore the model's potential as a management tool. The model captures the stand structural characteristics of the fragments reasonably well but under-predicts stand basal area, suggesting that it does not represent the long-term suppression of some canopy tree species adequately. Although some refinement is needed to improve its performance, we believe that the model presented here is a useful tool for management purposes and for the assessment of the long term viability of forest fragments. The model can help inform managers and decision-makers regarding the long-term persistence of podocarp-tawa forest patches. (C) 2017 Elsevier B.V. All rights reserved.

Más información

Título según WOS: ID WOS:000404315100004 Not found in local WOS DB
Título de la Revista: ECOLOGICAL MODELLING
Volumen: 357
Editorial: Elsevier
Fecha de publicación: 2017
Página de inicio: 35
Página final: 46
DOI:

10.1016/j.ecolmodel.2017.04.007

Notas: ISI