Abstract
Fast-dynamics models are essential for control design, specifically to address intersample behavior. Traditionally, the inputs and outputs of a system are sampled equidistantly at a reduced rate, and consequently identified at the reduced rate. This poster presents non-parametric time and frequency domain approaches to identify the system beyond the Nyquist frequency of the output, if the input is controlled at a higher rate than the output. Examples of such systems include vision-in-the-loop and chemical systems. The methods utilize respectively kernel regularization and local models, resulting in accurate single experiment identification. Both methods demonstrate their effectiveness on an experimental setup.
Original language | English |
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Publication status | Published - 2024 |
Event | 32nd Workshop of the European Research Network on System Identification - Don Orione Artigianelli, Venice, Italy Duration: 29 Sept 2024 → 2 Oct 2024 Conference number: 32 https://automatica.dei.unipd.it/32nd-ernsi-main-page/ |
Workshop
Workshop | 32nd Workshop of the European Research Network on System Identification |
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Abbreviated title | ERNSI |
Country/Territory | Italy |
City | Venice |
Period | 29/09/24 → 2/10/24 |
Internet address |