NANADec 15, 2017

Data-driven model order reduction of linear switched systems

arXiv:1712.0574042 citationsh-index: 40
AI Analysis

This provides a data-driven model reduction method for linear switched systems, which is a specific class of dynamical systems.

The Loewner framework for model reduction is extended to linear switched systems, enabling state-space models derived directly from frequency-domain input-output data without requiring original system matrices, with a trade-off between accuracy and complexity.

The Loewner framework for model reduction is extended to the class of linear switched systems. One advantage of this framework is that it introduces a trade-off between accuracy and complexity. Moreover, through this procedure, one can derive state-space models directly from data which is related to the input-output behavior of the original system. Hence, another advantage of the framework is that it does not require the initial system matrices. More exactly, the data used in this framework consists in frequency domain samples of input-output mappings of the original system. The definition of generalized transfer functions for linear switched systems resembles the one for bilinear systems. A key role is played by the coupling matrices, which ensure the transition from one active mode to another.

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