The performances of Super-Twisting Differentiators (STD) may worsen depending on the noise affecting their input signal. Indeed, STDs tend to amplify such noise, thus deteriorating the performances of feedback control systems. This work proposes an optimal tuning method for STDs, which minimizes possible negative effects caused by noise. A Nelder-Mead optimization algorithm is used to this purpose. A comparative analysis is proposed between the performances that can be achieved with STDs of different orders, so as to look for the best solution in terms of noise reduction. The approach has been tested in simulation and with an actual mechatronic system. The paper will show that, despite STDs are not based on the model of the controlled system, the derivatives they provide have almost the same characteristics of the ones returned by Kalman Filters, which are conversely model based estimators.

Optimal tuning of high-order Super-Twisting differentiators / Tonti, Giammarco; Shakourzadeh, Shabnam; GUARINO LO BIANCO, Corrado. - (2023). (Intervento presentato al convegno IEEE 19th Int. Conference on Automation Science and Engineering tenutosi a Auckland, New Zealand nel 26-30 August 2023).

Optimal tuning of high-order Super-Twisting differentiators

Giammarco Tonti;Shabnam Shakourzadeh;Corrado Guarino Lo Bianco
2023-01-01

Abstract

The performances of Super-Twisting Differentiators (STD) may worsen depending on the noise affecting their input signal. Indeed, STDs tend to amplify such noise, thus deteriorating the performances of feedback control systems. This work proposes an optimal tuning method for STDs, which minimizes possible negative effects caused by noise. A Nelder-Mead optimization algorithm is used to this purpose. A comparative analysis is proposed between the performances that can be achieved with STDs of different orders, so as to look for the best solution in terms of noise reduction. The approach has been tested in simulation and with an actual mechatronic system. The paper will show that, despite STDs are not based on the model of the controlled system, the derivatives they provide have almost the same characteristics of the ones returned by Kalman Filters, which are conversely model based estimators.
2023
Optimal tuning of high-order Super-Twisting differentiators / Tonti, Giammarco; Shakourzadeh, Shabnam; GUARINO LO BIANCO, Corrado. - (2023). (Intervento presentato al convegno IEEE 19th Int. Conference on Automation Science and Engineering tenutosi a Auckland, New Zealand nel 26-30 August 2023).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11381/2953023
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