An agent-based modeling optimization approach for understanding behavior of engineered complex adaptive systems
Authored by Moeed Haghnevis, Ronald G Askin, Dieter Armbruster
Date Published: 2016
DOI: 10.1016/j.seps.2016.04.003
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Abstract
The objective of this study is to present a formal agent-based modeling
(ABM) platform that enables managers to predict and partially control
patterns of behaviors in certain engineered complex adaptive systems
(ECASs). The approach integrates social networks, social science, complex systems, and diffusion theory into a consumer-based optimization
and agent-based modeling (ABM) platform. Demonstrated on the U.S.
electricity markets, ABM is integrated with normative and subjective
decision behavior recommended by the U.S. Department of Energy (DOE) and
Federal Energy Regulatory Commission (FERC). Furthermore, the modeling
and solution methodology address shortcomings in previous ABM and
Transactive Energy (TE) approaches and advances our ability to model and
understand ECAS behaviors through computational intelligence. The
mathematical approach is a non-convex consumer based optimization model
that is integrated with an ABM in a game environment. (C) 2016 Elsevier
Ltd. All rights reserved.
Tags
Simulation
Dynamics
Heterogeneity
electricity markets
diffusion
Power
Spread
England
Large social network
Wales