AN AGENT-BASED MODEL OF HUMAN DISPERSALS AT A GLOBAL SCALE

Authored by Unknown

Date Published: 2013-08

DOI: 10.1142/s0219525913500239

Sponsors: Swiss National Science Foundation (SNSF)

Platforms: C++

Model Documentation: Other Narrative

Model Code URLs: Model code not found

Abstract

In this paper, we report on the theoretical foundations, empirical context and technical implementation of an agent-based modeling (ABM) framework, that uses a high-performance computing (HPC) approach to investigate human population dynamics on a global scale, and on evolutionary time scales. The ABM-HPC framework provides an in silico testbed to explore how short-term/small-scale patterns of individual human behavior and long-term/large-scale patterns of environmental change act together to influence human dispersal, survival and extinction scenarios. These topics are currently at the center of the Neanderthal debate, i.e., the question why Neanderthals died out during the Late Pleistocene, while modern humans dispersed over the entire globe. To tackle this and similar questions, simulations typically adopt one of two opposing approaches, top-down (equation-based) and bottom-up (agent-based) models of population dynamics. We propose HPC technology as an essential computational tool to bridge the gap between these approaches. Using the numerical simulation of worldwide human dispersals as an example, we show that integrating different levels of model hierarchy into an ABM-HPC simulation framework provides new insights into emergent properties of the model, and into the potential and limitations of agent-based versus continuum models.
Tags
Agent-based models high-performance computing dispersals ecology palaeoanthropology spatiotemporal population dynamics