OpenMAS
Decentralized system simulator
A tool for simulating complex decentralized intelligent systems with arbitrary behaviors and dynamics.
OpenMAS is an open source multi-agent simulator based in Matlab for the simulation of decentralized intelligent systems defined by arbitrary behaviours and dynamics.
133 stars
9 watching
49 forks
Language: MATLAB
last commit: 10 months ago
Linked from 1 awesome list
control-systemsdroneintelligent-systemsmodelingmulti-agent-modelingmulti-agent-systemsroboticsrobotics-simulationsimulation-environment
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