Publication: Evaluating Optimal Lockdown and Testing Strategies for COVID-19 using Multi-Agent Social Simulation
Type:
Article
Date
2020-12-10
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
2020 2nd International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
COVID-19 pandemic has become a major
concern due to its rapid spread throughout the world. We can
observe some countries are successful in formulating effective
strategies for managing the pandemic, while some are
struggling. The research is based on the question of formulating
effective policies for COVID-19 to reduce community
transmission. While many countries are suffering from the
pandemic, it is a critical issue that the policymakers should be
concerned with formulating effective policies to address the
problem. We use computational methods to foresee the future
by creating a simulation model based on multi-agent and
simulation methodology because it is not always possible to
predict the future state of a complex adaptive system. The data
are collected through a survey and the literature to calibrate the
model parameters to build a constructive and realistic model.
Once the model is constructed, the simulation results are
compared with the real-world observations to validate the
model. The implementation of the model follows an iterative
process for improving the validity of the model. This paper
presents the conceptual model of the system being investigated
and its initial implementation, which needs to be calibrated
further with empirical data before using it as a decision support
tool.
Description
Keywords
policymaking, complex adaptive systems, multiagent, simulation
