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Data-based stabilization of unknown bilinear systems with guaranteed basin of attraction

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arxiv 2004.11630 v1 pith:HNRUVKWG submitted 2020-04-24 eess.SY cs.SYmath.DS

Data-based stabilization of unknown bilinear systems with guaranteed basin of attraction

classification eess.SY cs.SYmath.DS
keywords attractionbasinbilineardata-baseddesignguaranteedparametersystems
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Motivated by the goal of having a building block in the direct design of data-driven controllers for nonlinear systems, we show how, for an unknown discrete-time bilinear system, the data collected in an offline open-loop experiment enable us to design a feedback controller and provide a guaranteed under-approximation of its basin of attraction. Both can be obtained by solving a linear matrix inequality for a fixed scalar parameter, and possibly iterating on different values of that parameter. The results of this data-based approach are compared with the ideal case when the model is known perfectly.

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