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Robust Engine Torque Control by Iterative Learning Control
Takashi Nagata, Masayoshi Tomizuka

Citation
Takashi Nagata, Masayoshi Tomizuka. "Robust Engine Torque Control by Iterative Learning Control". Proceedings of the 2009 American Control Conference ACC09, St. Louis, Missouri, 2064-2069, 11, June, 2009.

Abstract
Fast-response engine torque control is robustly realized under repetitive air throttle input. An application of iterative learning control (ILC) to robustify the performance of disturbance observer (DOB) is proposed and numerically evaluated. The proposed scheme detects dynamical model discrepancy between an actual engine and its nominal model, and compensate for it to realize nominal plant dynamics. With the applied ILC realizing improved detection of model discrepancy, the scheme is significantly more effective than a conventional DOB under practical test-bench conditions such as measurement delays, noise, and insufficient data measurements.

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Citation formats  
  • HTML
    Takashi Nagata, Masayoshi Tomizuka. <a
    href="http://chess.eecs.berkeley.edu/pubs/613.html"
    >Robust Engine Torque Control by Iterative Learning
    Control</a>, Proceedings of the 2009 American Control
    Conference ACC09, St. Louis, Missouri, 2064-2069, 11, June,
    2009.
  • Plain text
    Takashi Nagata, Masayoshi Tomizuka. "Robust Engine
    Torque Control by Iterative Learning Control".
    Proceedings of the 2009 American Control Conference ACC09,
    St. Louis, Missouri, 2064-2069, 11, June, 2009.
  • BibTeX
    @inproceedings{NagataTomizuka09_RobustEngineTorqueControlByIterativeLearningControl,
        author = {Takashi Nagata and Masayoshi Tomizuka},
        title = {Robust Engine Torque Control by Iterative Learning
                  Control},
        booktitle = {Proceedings of the 2009 American Control
                  Conference ACC09, St. Louis, Missouri},
        pages = {2064-2069},
        day = {11},
        month = {June},
        year = {2009},
        abstract = {Fast-response engine torque control is robustly
                  realized under repetitive air throttle input. An
                  application of iterative learning control (ILC) to
                  robustify the performance of disturbance observer
                  (DOB) is proposed and numerically evaluated. The
                  proposed scheme detects dynamical model
                  discrepancy between an actual engine and its
                  nominal model, and compensate for it to realize
                  nominal plant dynamics. With the applied ILC
                  realizing improved detection of model discrepancy,
                  the scheme is significantly more effective than a
                  conventional DOB under practical test-bench
                  conditions such as measurement delays, noise, and
                  insufficient data measurements.},
        URL = {http://chess.eecs.berkeley.edu/pubs/613.html}
    }
    

Posted by Christopher Brooks on 21 Aug 2009.
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