Emergence and Simulation of Bionic Swarm Intelligence Type X Party Material Flow
نویسندگان
چکیده
Through the simulation of biological Swarm Intelligence generation, a new kind of material flow structure that can be adapted to complex environments, X Party Material Flow (X-PMF), can be established. According to results from the simulation experiments, the PMF, if in the chaord state during the process of autonomy and adaptation, can realize the emergence of Xparty Swarm Intelligence.
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