Data-driven feedforward tuning using non-causal rational basis functions: With application to an industrial flatbed printer
Lennart Blanken, Sjirk Koekebakker, Tom Oomen
Abstract
Data-driven feedforward tuning enables high performance for control systems that perform varying tasks by using past measurement data. The aim of this paper is to develop an approach for data-driven feedforward tuning that achieves high accuracy and at the same time is computationally inexpensive. A linear parametrization is employed that enables parsimonious modeling of inverse systems for feedforward through the use of non-causal rational orthonormal basis functions in L2. The benefits of the proposed parametrization are experimentally demonstrated on an industrial printer, including pre-actuation and cyclic pole repetition.
Topics & Concepts
Feed forwardParametrization (atmospheric modeling)Orthonormal basisBasis (linear algebra)Control theory (sociology)Computer scienceBasis functionInverseControl engineeringControl (management)EngineeringArtificial intelligenceMathematicsQuantum mechanicsGeometryMathematical analysisRadiative transferPhysicsIterative Learning Control SystemsAdvanced Measurement and Metrology TechniquesControl Systems in Engineering