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Removing non-repetitive disturbances in iterative learning control by wavelet filtering
2006
2006 American Control Conference
The tracking performance of systems that perform repetitive tasks can be significantly improved using iterative learning control (ILC). During successive iterations, ILC learns a high performance feedforward signal from the measured tracking error. In practice, the tracking error consists of both a repetitive part which is equal every iteration and a nonrepetitive part which varies every iteration. ILC can only compensate for the repetitive part, the non-repetitive part limits the achievable
doi:10.1109/acc.2006.1655359
fatcat:jhdo4dkdvbca5pzorzratmigvm