Modeling human migration driven by changing mindset, agglomeration, social ties, and the environment

Abstract

Migration is an adaptation strategy to unfavorable conditions and is governed by a complex set of socio-economic and environmental drivers. Here we identified important drivers relatively underrepresented in many migration models—CHanging mindset, Agglomeration, Social ties, and the Environment (CHASE)—and asked: How does the interplay between these drivers influence transient dynamics and long-term outcomes of migration? We addressed this question by developing and analyzing a parsimonious Markov chain model. Our findings suggest that these drivers interact in nonlinear and complex ways. The system exhibits legacy effects, highlighting the importance of including migrants’ changing priorities. The increased characteristic population size of the system counter-intuitively leads to fewer surviving cities, and this effect is mediated by how fast migrants change their mindsets and how strong the social ties are. Strong social ties result in less diverse populations across cities, but this effect is influenced by how many cities remain. To our knowledge, this is the first time that these drivers are incorporated in one coherent, mechanistic, parsimonious model and the effects of their interplay on migration systematically studied. The complex interplay underscores the need to incorporate these drivers into mechanistic migration models and implement such models for real-world cases.

Document Details

Document Type
Pub Defense Publication
Publication Date
Feb 28, 2022
Source ID
10.1371/journal.pone.0264223

Entities

People

  • Gonzalo Suárez
  • Rachata Muneepeerakul

Organizations

  • United States Army Research Laboratory

Tags

Readers

  • Computational Modeling and Simulation
  • Marine Ecological Systems Migration
  • Systems Analysis and Design