Neural Network-based Control for Multi-Agent Systems from Spatio-Temporal Specifications.

CDC(2021)

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摘要
We propose a framework for solving control synthesis problems for multi-agent networked systems required to satisfy spatio-temporal specifications. We use Spatio-Temporal Reach and Escape Logic (STREL) as a specification language. For this logic, we define smooth quantitative semantics, which captures the degree of satisfaction of a formula by a multi-agent team. We use the novel quantitative semantics to map control synthesis problems with STREL specifications to optimization problems and propose a combination of heuristic and gradient-based methods to solve such problems. As this method might not meet the requirements of a real-time implementation, we develop a machine learning technique that uses the results of the off-line optimizations to train a neural network that gives the control inputs at current states. We illustrate the effectiveness of the proposed framework by applying it to a model of a robotic team required to satisfy a spatial-temporal specification under communication constraints.
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关键词
neural network-based control,multiagent systems,spatio-temporal specifications,multiagent networked systems,Spatio-Temporal Reach,specification language,smooth quantitative semantics,multiagent team,novel quantitative semantics,map control synthesis problems,STREL specifications,optimization problems,control inputs,spatial-temporal specification
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