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    Estimating Model Uncertainty using Confidence Interval Networks: Applications to Robust Control

    Source: Journal of Dynamic Systems, Measurement, and Control:;2006:;volume( 128 ):;issue: 003::page 626
    Author:
    Gregory D. Buckner
    ,
    Heeju Choi
    ,
    Nathan S. Gibson
    DOI: 10.1115/1.2199855
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: Robust control techniques require a dynamic model of the plant and bounds on model uncertainty to formulate control laws with guaranteed stability. Although techniques for modeling dynamic systems and estimating model parameters are well established, very few procedures exist for estimating uncertainty bounds. In the case of H∞ control synthesis, a conservative weighting function for model uncertainty is usually chosen to ensure closed-loop stability over the entire operating space. The primary drawback of this conservative, “hard computing” approach is reduced performance. This paper demonstrates a novel “soft computing” approach to estimate bounds of model uncertainty resulting from parameter variations, unmodeled dynamics, and nondeterministic processes in dynamic plants. This approach uses confidence interval networks (CINs), radial basis function networks trained using asymmetric bilinear error cost functions, to estimate confidence intervals associated with nominal models for robust control synthesis. This research couples the “hard computing” features of H∞ control with the “soft computing” characteristics of intelligent system identification, and realizes the combined advantages of both. Simulations and experimental demonstrations conducted on an active magnetic bearing test rig confirm these capabilities.
    keyword(s): Control equipment , Modeling , Robust control , Errors , Industrial plants , Networks , Uncertainty , Stability , Radial basis function networks , Dynamics (Mechanics) , Functions AND Magnetic bearings ,
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      Estimating Model Uncertainty using Confidence Interval Networks: Applications to Robust Control

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    http://yetl.yabesh.ir/yetl1/handle/yetl/133424
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    contributor authorGregory D. Buckner
    contributor authorHeeju Choi
    contributor authorNathan S. Gibson
    date accessioned2017-05-09T00:19:23Z
    date available2017-05-09T00:19:23Z
    date copyrightSeptember, 2006
    date issued2006
    identifier issn0022-0434
    identifier otherJDSMAA-26358#626_1.pdf
    identifier urihttp://yetl.yabesh.ir/yetl/handle/yetl/133424
    description abstractRobust control techniques require a dynamic model of the plant and bounds on model uncertainty to formulate control laws with guaranteed stability. Although techniques for modeling dynamic systems and estimating model parameters are well established, very few procedures exist for estimating uncertainty bounds. In the case of H∞ control synthesis, a conservative weighting function for model uncertainty is usually chosen to ensure closed-loop stability over the entire operating space. The primary drawback of this conservative, “hard computing” approach is reduced performance. This paper demonstrates a novel “soft computing” approach to estimate bounds of model uncertainty resulting from parameter variations, unmodeled dynamics, and nondeterministic processes in dynamic plants. This approach uses confidence interval networks (CINs), radial basis function networks trained using asymmetric bilinear error cost functions, to estimate confidence intervals associated with nominal models for robust control synthesis. This research couples the “hard computing” features of H∞ control with the “soft computing” characteristics of intelligent system identification, and realizes the combined advantages of both. Simulations and experimental demonstrations conducted on an active magnetic bearing test rig confirm these capabilities.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleEstimating Model Uncertainty using Confidence Interval Networks: Applications to Robust Control
    typeJournal Paper
    journal volume128
    journal issue3
    journal titleJournal of Dynamic Systems, Measurement, and Control
    identifier doi10.1115/1.2199855
    journal fristpage626
    journal lastpage635
    identifier eissn1528-9028
    keywordsControl equipment
    keywordsModeling
    keywordsRobust control
    keywordsErrors
    keywordsIndustrial plants
    keywordsNetworks
    keywordsUncertainty
    keywordsStability
    keywordsRadial basis function networks
    keywordsDynamics (Mechanics)
    keywordsFunctions AND Magnetic bearings
    treeJournal of Dynamic Systems, Measurement, and Control:;2006:;volume( 128 ):;issue: 003
    contenttypeFulltext
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    DSpace software copyright © 2002-2015  DuraSpace
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