BioMASS, a Spatial Model for Situated Multiagent Systems That Optimizes Neighborhood Search

We present BioMASS, a new model to implement a spatially explicit environment that supports constant-time sensory (neighborhood search) and locomotion functions for situated multiagent systems (MAS). In contrast, the spatial models currently provided by agent-based modeling and computer simulation (...

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Main Authors: Candelaria Elizabeth Sansores-Perez, Joel Antonio Trejo-Sanchez
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9127431/
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spelling doaj-0388327262f94c3cb6090aa57bbc13062021-03-30T02:46:22ZengIEEEIEEE Access2169-35362020-01-01812028212029410.1109/ACCESS.2020.30053599127431BioMASS, a Spatial Model for Situated Multiagent Systems That Optimizes Neighborhood SearchCandelaria Elizabeth Sansores-Perez0https://orcid.org/0000-0001-7236-0222Joel Antonio Trejo-Sanchez1https://orcid.org/0000-0001-9326-7713Complex Systems Simulation Laboratory, Universidad del Caribe, Cancún, MexicoCONACyT—Centro de Investigación en Matemáticas, Mérida, MexicoWe present BioMASS, a new model to implement a spatially explicit environment that supports constant-time sensory (neighborhood search) and locomotion functions for situated multiagent systems (MAS). In contrast, the spatial models currently provided by agent-based modeling and computer simulation (ABMS) platforms have computational costs that grow quadratically with perception range and linearly with the number of agents. To conserve computation, existing ABMS models of complex systems are oversimplified, by limiting the environment size, perception ranges, or the number of agents. BioMASS achieves constant time search and locomotion for the majority of function calls by implementing a linked list, nearest-neighbor data structure. This model makes the functions largely independent of the environment size, perception range, and the number of agents. We conduct a theoretical and experimental study of BioMASS compared to other spatial models. Experiments performed using a prey-predator swarm model show that BioMASS significantly outperforms the continuous and hybrid models in terms of execution time, allowing for higher-resolution modeling and simulation of complex systems.https://ieeexplore.ieee.org/document/9127431/Complexity analysismultiagent systemsimulation
collection DOAJ
language English
format Article
sources DOAJ
author Candelaria Elizabeth Sansores-Perez
Joel Antonio Trejo-Sanchez
spellingShingle Candelaria Elizabeth Sansores-Perez
Joel Antonio Trejo-Sanchez
BioMASS, a Spatial Model for Situated Multiagent Systems That Optimizes Neighborhood Search
IEEE Access
Complexity analysis
multiagent system
simulation
author_facet Candelaria Elizabeth Sansores-Perez
Joel Antonio Trejo-Sanchez
author_sort Candelaria Elizabeth Sansores-Perez
title BioMASS, a Spatial Model for Situated Multiagent Systems That Optimizes Neighborhood Search
title_short BioMASS, a Spatial Model for Situated Multiagent Systems That Optimizes Neighborhood Search
title_full BioMASS, a Spatial Model for Situated Multiagent Systems That Optimizes Neighborhood Search
title_fullStr BioMASS, a Spatial Model for Situated Multiagent Systems That Optimizes Neighborhood Search
title_full_unstemmed BioMASS, a Spatial Model for Situated Multiagent Systems That Optimizes Neighborhood Search
title_sort biomass, a spatial model for situated multiagent systems that optimizes neighborhood search
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description We present BioMASS, a new model to implement a spatially explicit environment that supports constant-time sensory (neighborhood search) and locomotion functions for situated multiagent systems (MAS). In contrast, the spatial models currently provided by agent-based modeling and computer simulation (ABMS) platforms have computational costs that grow quadratically with perception range and linearly with the number of agents. To conserve computation, existing ABMS models of complex systems are oversimplified, by limiting the environment size, perception ranges, or the number of agents. BioMASS achieves constant time search and locomotion for the majority of function calls by implementing a linked list, nearest-neighbor data structure. This model makes the functions largely independent of the environment size, perception range, and the number of agents. We conduct a theoretical and experimental study of BioMASS compared to other spatial models. Experiments performed using a prey-predator swarm model show that BioMASS significantly outperforms the continuous and hybrid models in terms of execution time, allowing for higher-resolution modeling and simulation of complex systems.
topic Complexity analysis
multiagent system
simulation
url https://ieeexplore.ieee.org/document/9127431/
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