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Spatial Linear Dynamic Relationship of Strongly Connected Multiagent Systems and Adaptive Learning Control for Different Formations

Ronghu Chi, Hui Yu, Biao Huang, Zhongsheng Hou, Xuhui Bu

2020IEEE Transactions on Cybernetics35 citationsDOI

Abstract

This article addresses an important problem of how to improve the learnability of an intelligent agent in a strongly connected multiagent network. A novel spatial-dimensional linear dynamic relationship (SLDR) is developed to formulate the spatial dynamic relationship of an agent with respect to all the related agents. The obtained SLDR virtually exists in the computer to describe the input-output (I/O) relationship in the spatial domain and an iterative adaptation mechanism is developed to update the SLDR using I/O information to show real-time dynamical behavior of multiagent systems with nonrepetitive initial states. Subsequently, an SLDR-based adaptive iterative learning control (SLDR-AILC) is presented with rigorous analysis for iteration-variant formation control targets. Not only the 3-D dynamic behavior of the multiagent network but also the control protocols of the communicated agents are incorporated in the learning mechanism and thus strong learnability of the proposed SLDR-AILC is achieved to improve control performance. The proposed SLDR-AILC is a data-driven scheme where no explicit model structure is needed. Simulations with strongly connected topologies verify the theoretical results.

Topics & Concepts

LearnabilityComputer scienceIterative learning controlMulti-agent systemAdaptation (eye)Network topologyArtificial intelligenceControl (management)Topology (electrical circuits)MathematicsOpticsOperating systemCombinatoricsPhysicsIterative Learning Control SystemsAdvanced Control Systems OptimizationAdaptive Control of Nonlinear Systems
Spatial Linear Dynamic Relationship of Strongly Connected Multiagent Systems and Adaptive Learning Control for Different Formations | Litcius