Litcius/Paper detail

Filtered-error RLS for self-tuning disturbance feedforward control with application to a multi-axis vibration isolator

Wouter Hakvoort, Michiel A. Beijen

2022Mechatronics11 citationsDOIOpen Access PDF

Abstract

High performance vibration isolation can be realized by disturbance feedforward control with a self-tuning generalized FIR filter and residual noise shaping. For this application, filtered-error recursive least squares (FeRLS) self-tuning is proposed in a multi-input multi-output context. In comparison to filtered-error least mean squares (FeLMS), FeRLS achieves faster and more uniform parameter convergence without the need of pre-whitening. Efficient implementation is realized by exploiting sparsity in the involved matrices. Feasibility of implementation is demonstrated on a multi-axis hard-mount vibration isolation setup. Experimental results show the better parameter convergence and the ability to track changes in the floor vibration spectrum. A reduction of the transmissibility of floor vibrations up to 40 dB in the frequency range of interest is obtained, reducing vibration power by 90–94% in the 1–300 Hz frequency band in multiple directions.

Topics & Concepts

Control theory (sociology)Vibration isolationFeed forwardVibrationTransmissibility (structural dynamics)ResidualRecursive least squares filterContext (archaeology)Noise (video)Filter (signal processing)Convergence (economics)Vibration controlComputer scienceEngineeringAdaptive filterAlgorithmAcousticsControl engineeringPhysicsImage (mathematics)PaleontologyComputer visionArtificial intelligenceEconomic growthEconomicsControl (management)BiologyVibration Control and Rheological FluidsStructural Health Monitoring TechniquesAdvanced Adaptive Filtering Techniques