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Machine learning control

  • Recently, the term explainable AI came into discussion as an approach to produce models from artificial intelligence which allow interpretation. For a long time, symbolic regression has been used to produce explainable and mathematically tractable models. In this contribution, we extend previous work on symbolic regression methods to infer the optimal control of a dynamical system given one or several optimization criteria, or cost functions. In earlier publications, network control was achieved by automated machine learning control using genetic programming. Here, we focus on the subsequent path continuation analysis of the mathematical expressions which result from the machine learning model. In particular, we use AUTO to analyze the solution properties of the controlled oscillator system which served as our model. As a result, we show that there is a considerable advantage of explainable symbolic regression models over less accessible neural networks. In particular, the roadmap of future works may be to integrate such analyses intoRecently, the term explainable AI came into discussion as an approach to produce models from artificial intelligence which allow interpretation. For a long time, symbolic regression has been used to produce explainable and mathematically tractable models. In this contribution, we extend previous work on symbolic regression methods to infer the optimal control of a dynamical system given one or several optimization criteria, or cost functions. In earlier publications, network control was achieved by automated machine learning control using genetic programming. Here, we focus on the subsequent path continuation analysis of the mathematical expressions which result from the machine learning model. In particular, we use AUTO to analyze the solution properties of the controlled oscillator system which served as our model. As a result, we show that there is a considerable advantage of explainable symbolic regression models over less accessible neural networks. In particular, the roadmap of future works may be to integrate such analyses into the optimization loop itself to filter out robust solutions by construction.zeige mehrzeige weniger

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Metadaten
Verfasserangaben:Markus QuadeORCiDGND, Thomas IseleORCiDGND, Markus AbelORCiDGND
DOI:https://doi.org/10.1016/j.physd.2020.132582
ISSN:0167-2789
ISSN:1872-8022
Titel des übergeordneten Werks (Englisch):Physica : D, Nonlinear phenomena
Untertitel (Englisch):explainable and analyzable methods
Verlag:Elsevier
Verlagsort:Amsterdam
Publikationstyp:Wissenschaftlicher Artikel
Sprache:Englisch
Datum der Erstveröffentlichung:24.06.2020
Erscheinungsjahr:2020
Datum der Freischaltung:27.03.2023
Freies Schlagwort / Tag:Dynamical systems; Explainable AI; Genetic programming; Machine learning control; Synchronization control
Band:412
Aufsatznummer:132582
Seitenanzahl:11
Fördernde Institution:Ambrosys GmbH, Germany
Organisationseinheiten:Mathematisch-Naturwissenschaftliche Fakultät / Institut für Physik und Astronomie
DDC-Klassifikation:5 Naturwissenschaften und Mathematik / 53 Physik / 530 Physik
Peer Review:Referiert
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