Spatially-explicit sensitivity analysis of an agent-based model of land use change

Authored by Arika Ligmann-Zielinska

Date Published: 2013-09-01

DOI: 10.1080/13658816.2013.782613

Sponsors: No sponsors listed

Platforms: Python

Model Documentation: Other Narrative Flow charts Mathematical description

Model Code URLs: https://www.comses.net/codebases/4298/releases/1.0.0/

Abstract

The complexity of land use and land cover (LULC) change models is often attributed to spatial heterogeneity of the phenomena they try to emulate. The associated outcome uncertainty stems from a combination of model unknowns. Contrarily to the widely shared consensus on the importance of evaluating outcome uncertainty, little attention has been given to the role a well-structured spatially explicit sensitivity analysis (SSA) of LULC models can play in corroborating model results. In this article, I propose a methodology for SSA that employs sensitivity indices (SIs), which decompose outcome uncertainty and allocate it to various combinations of inputs. Using an agent-based model of residential development, I explore the utility of the methodology in explaining the uncertainty of simulated land use change. Model sensitivity is analyzed using two approaches. The first is spatially inexplicit in that it applies SI to scalar outputs, where outcome land use maps are lumped into spatial statistics. The second approach, which is spatially explicit, employs the maps directly in SI calculations. It generates sensitivity maps that allow for identifying regions of factor influence, that is, areas where a particular input contributes most to the clusters of residential development uncertainty. I demonstrate that these two approaches are complementary, but at the same time can lead to different decisions regarding input factor prioritization.
Tags
Sensitivity Analysis land use and land cover change agent-based modeling < keywords relating to theory uncertainty < keywords relating to theory