Litcius/Paper detail

Data-Driven Learning Control Algorithms for Unachievable Tracking Problems

Zeyi Zhang, Hao Jiang, Dong Shen, Samer S. Saab

2023IEEE/CAA Journal of Automatica Sinica13 citationsDOI

Abstract

For unachievable tracking problems, where the system output cannot precisely track a given reference, achieving the best possible approximation for the reference trajectory becomes the objective. This study aims to investigate solutions using the P-type learning control scheme. Initially, we demonstrate the necessity of gradient information for achieving the best approximation. Subsequently, we propose an input-output-driven learning gain design to handle the imprecise gradients of a class of uncertain systems. However, it is discovered that the desired performance may not be attainable when faced with incomplete information. To address this issue, an extended iterative learning control scheme is introduced. In this scheme, the tracking errors are modified through output data sampling, which incorporates low-memory footprints and offers flexibility in learning gain design. The input sequence is shown to converge towards the desired input, resulting in an output that is closest to the given reference in the least square sense. Numerical simulations are provided to validate the theoretical findings.

Topics & Concepts

Iterative learning controlComputer scienceFlexibility (engineering)TrajectoryTracking (education)Scheme (mathematics)Sequence (biology)Control (management)AlgorithmControl theory (sociology)Sampling (signal processing)Tracking errorArtificial intelligenceMathematicsComputer visionFilter (signal processing)PsychologyPhysicsMathematical analysisPedagogyStatisticsAstronomyGeneticsBiologyIterative Learning Control SystemsAdvanced Control Systems OptimizationAdvanced machining processes and optimization