Geospatial Tessellation in the Agent-In-Cell Model: A Framework for Agent-Based Modeling of Pandemic

Agent-based simulation is a versatile and potent computational modeling technique employed to analyze intricate systems and phenomena spanning diverse fields. However, due to their computational intensity, agent-based models become more resource-demanding when geographic considerations are introduced. This study delves into diverse strategies for crafting a series of Agent-Based Models, named "agent-in-the-cell," which emulate a city. These models, incorporating geographical attributes of the city and employing real-world open-source mobility data from Safegraph's publicly available dataset, simulate the dynamics of COVID spread under varying scenarios. The "agent-in-the-cell" concept designates that our representative agents, called meta-agents, are linked to specific home cells in the city's tessellation. We scrutinize tessellations of the mobility map with varying complexities and experiment with the agent density, ranging from matching the actual population to reducing the number of (meta-) agents for computational efficiency. Our findings demonstrate that tessellations constructed according to the Voronoi Diagram of specific location types on the street network better preserve dynamics compared to Census Block Group tessellations and better than Euclidean-based tessellations. Furthermore, the Voronoi Diagram tessellation and also a hybrid – Voronoi Diagram - and Census Block Group - based – tessellation require fewer meta-agents to adequately approximate full-scale dynamics. Our analysis spans a range of city sizes in the United States, encompassing small (Santa Fe, NM), medium (Seattle, WA), and large (Chicago, IL) urban areas. This examination also provides valuable insights into the effects of agent count reduction, varying sensitivity metrics, and the influence of city-specific factors.

READ FULL TEXT

page 5

page 6

page 10

page 12

page 17

research
04/06/2023

Agent-Based Modeling and its Tradeoffs: An Introduction Examples

Agent-based modeling is a computational dynamic modeling technique that ...
research
05/28/2022

Deep Learning-based Spatially Explicit Emulation of an Agent-Based Simulator for Pandemic in a City

Agent-Based Models are very useful for simulation of physical or social ...
research
12/14/2018

Space Matters: extending sensitivity analysis to initial spatial conditions in geosimulation models

Although simulation models of geographical systems in general and agent-...
research
07/26/2020

CoV-ABM: A stochastic discrete-event agent-based framework to simulate spatiotemporal dynamics of COVID-19

The paper develops a stochastic Agent-Based Model (ABM) mimicking the sp...
research
02/03/2020

Agent-Based Proof Design via Lemma Flow Diagram

We discuss an agent-based approach to proof design and implementation, w...
research
04/30/2021

GPU Acceleration of 3D Agent-Based Biological Simulations

Researchers in biology are faced with the tough challenge of developing ...
research
01/12/2023

Blind Judgement: Agent-Based Supreme Court Modelling With GPT

We present a novel Transformer-based multi-agent system for simulating t...

Please sign up or login with your details

Forgot password? Click here to reset