Collaborative System Identification via Parameter Consensus
Ivan Papusha, Eugene Lavretsky, Richard Murray

Citation
Ivan Papusha, Eugene Lavretsky, Richard Murray. "Collaborative System Identification via Parameter Consensus". Talk or presentation, 5, November, 2013; Poster presented at the 2013 TerraSwarm Annual Meeting.

Abstract
Standard schemes in system identification and adaptive control rely on persistence of excitation to guarantee parameter convergence. Inspired by networked systems, we extend parameter adaptation to the multi-agent setting by combining a gradient law with consensus dynamics. The gradient law introduces a learning signal, while consensus dynamics preferentially push each agent's parameter estimates toward those of its neighbors. We show that the resulting online, decentralized parameter estimator combines local and neighboring information to identify the true parameters even if no single agent employs a persistently exciting input. We also elaborate upon collective persistence of excitation in networked adaptive algorithms.

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  • HTML
    Ivan Papusha, Eugene Lavretsky, Richard Murray. <a
    href="http://www.terraswarm.org/pubs/172.html"><i>Collaborative
    System Identification via Parameter
    Consensus</i></a>, Talk or presentation,  5,
    November, 2013; Poster presented at the <a
    href="http://www.terraswarm.org/conferences/13/annual"
    >2013 TerraSwarm Annual Meeting</a>.
  • Plain text
    Ivan Papusha, Eugene Lavretsky, Richard Murray.
    "Collaborative System Identification via Parameter
    Consensus". Talk or presentation,  5, November, 2013;
    Poster presented at the <a
    href="http://www.terraswarm.org/conferences/13/annual"
    >2013 TerraSwarm Annual Meeting</a>.
  • BibTeX
    @presentation{PapushaLavretskyMurray13_CollaborativeSystemIdentificationViaParameterConsensus,
        author = {Ivan Papusha and Eugene Lavretsky and Richard
                  Murray},
        title = {Collaborative System Identification via Parameter
                  Consensus},
        day = {5},
        month = {November},
        year = {2013},
        note = {Poster presented at the <a
                  href="http://www.terraswarm.org/conferences/13/annual"
                  >2013 TerraSwarm Annual Meeting</a>.},
        abstract = {Standard schemes in system identification and
                  adaptive control rely on persistence of excitation
                  to guarantee parameter convergence. Inspired by
                  networked systems, we extend parameter adaptation
                  to the multi-agent setting by combining a gradient
                  law with consensus dynamics. The gradient law
                  introduces a learning signal, while consensus
                  dynamics preferentially push each agent's
                  parameter estimates toward those of its neighbors.
                  We show that the resulting online, decentralized
                  parameter estimator combines local and neighboring
                  information to identify the true parameters even
                  if no single agent employs a persistently exciting
                  input. We also elaborate upon collective
                  persistence of excitation in networked adaptive
                  algorithms.},
        URL = {http://terraswarm.org/pubs/172.html}
    }
    

Posted by Ivan Papusha on 4 Nov 2013.

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