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Learning control for polynomial systems using sum of squares relaxations

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arxiv 2004.00850 v2 pith:EQW7ZGO2 submitted 2020-04-02 eess.SY cs.SY

Learning control for polynomial systems using sum of squares relaxations

classification eess.SY cs.SY
keywords controlpolynomialsystemsdatadirectlylawslearningnonlinear
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This paper considers the problem of learning control laws for nonlinear polynomial systems directly from the data, which are input-output measurements collected in an experiment over a finite time period. Without explicitly identifying the system dynamics, stabilizing laws are directly designed for nonlinear polynomial systems using experimental data alone. By using data-based sum of square programming, the stabilizing state-dependent control gains can be constructed.

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