Autor:

Patan, Krzysztof ; Patan, Maciej (1975- )

Tytuł:

Echo-state-network-based iterative learning control of distributed systems

Temat i słowa kluczowe:

adaptive systems ; control system design ; distributed-parameter system ; iterative learning control ; modeling ; neural networks ; training

Abstract:

The paper proposes an effective modeling and control procedure for the distributed-parameter systems using the echo-state network. The main idea is to reconstruct the spatio-temporal dynamics defined in a given multi-dimensional domain. In the investigated problem positions of both sensors and actuators are fixed allowing to delegate the complex system dynamics to echo-state network. Imposing a proper partitioning of the spatial domain, a specific topology of a neural network is used to form a reservoir capable to follow not only temporal but also spatial dynamics of the system. ; Based on available historical data, neural network model is initially trained and then used to derive the control law in the framework of iterative learning control. The echo-state network can be retrained after a particular control iterate in order to reduce model uncertainty and to fit it to the current operating conditions as much as possible. The performance of the proposed approach is tested and evaluated on the example of the squared clamped plate control.

Opis:

artykuł zamieszczony w: "IFAC PapersOnLine", vol. 56, iss. 2

Data wydania:

2023

Typ zasobu:

artykuł

Format:

application/pdf

DOI:

10.1016/j.ifacol.2023.10.1704

Strony:

1057-1062

Jezyk:

eng

Licencja CC BY 4.0:

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Prawa do dysponowania publikacją:

Biblioteka Uniwersytetu Zielonogórskiego

Źródła finansowania:

This research was funded in whole or in part by National Science Centre in Poland, grant No. 2020/39/B/ST7/01487.