4.2 Article

Iterative Learning Control of Stochastic Multi-Agent Systems with Variable Reference Trajectory and Topology

Journal

AUTOMATION AND REMOTE CONTROL
Volume 84, Issue 6, Pages 612-625

Publisher

MAIK NAUKA/INTERPERIODICA/SPRINGER
DOI: 10.1134/S0005117923060073

Keywords

iterative learning control; multi-agent system; variable topology; random disturbances; repetitive processes; stability; stabilization; vector Lyapunov function; linear matrix inequalities

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This paper proposes a distributed ILC design method based on vector Lyapunov functions and Kalman filtering for solving the efficiency decrease issue of ILC algorithms in networked smart manufacturing.
In modern smart manufacturing, robots are often connected via a network, and their task can change according to a predetermined program. Iterative learning control (ILC) is widely used for robots executing high-precision operations. Under network conditions, the efficiency of ILC algorithms may decrease if the program is restructured. In particular, the learning error may temporarily increase to an unacceptable value when changing the reference trajectory. This paper considers a networked system with the following features: the reference trajectory and parameters change between passes according to a known program, agents are subjected to random disturbances, and measurements are carried out with noise. In addition, the network topology changes due to the disconnection of some agents from the network and the connection of new agents to the network according to a given program. A distributed ILC design method is proposed based on vector Lyapunov functions for repetitive processes in combination with Kalman filtering. This method ensures the convergence of the learning error and reduces its increase caused by changes in the reference trajectory and network topology. The effectiveness of the proposed method is confirmed by an example.

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