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Iterative learning control for intermittently sampled data: Monotonic convergence, design, and applications

Nard Strijbosch, Tom Oomen

2022Automatica22 citationsDOIOpen Access PDF

Abstract

The standard assumption that a measurement signal is available at each sample in iterative learning control (ILC) is not always justified, e.g., when exploiting time-stamped data from incremental encoders or in systems with data dropouts. The aim of this paper is to develop a computationally tractable ILC framework that is capable of exploiting intermittent data while maintaining favourable properties, including monotonic convergence. A controllability and observability analysis of the intermittent ILC framework leads to appropriate monotonic convergence conditions which allow for missing data. These conditions lead to a new explicit ILC controller design independent of the sampling instances, which is reminiscent of gradient-descent ILC. The approach is demonstrated on both an intuitive example and a practically relevant example which exploits time-varying timestamped data from an incremental encoder.

Topics & Concepts

Iterative learning controlObservabilityControllabilityConvergence (economics)Monotonic functionControl theory (sociology)Computer scienceSampling (signal processing)Controller (irrigation)Gradient descentEncoderMathematical optimizationFilter (signal processing)Control (management)MathematicsArtificial intelligenceApplied mathematicsArtificial neural networkAgronomyComputer visionOperating systemEconomicsEconomic growthMathematical analysisBiologyIterative Learning Control SystemsAdvanced Measurement and Metrology TechniquesPiezoelectric Actuators and Control
Iterative learning control for intermittently sampled data: Monotonic convergence, design, and applications | Litcius