Differential Equation Based Framework for Deep Reinforcement Learning.

Lieferzeit: Lieferbar innerhalb 14 Tagen

65,00 

ISBN: 3839616824
ISBN 13: 9783839616826
Autor: Gottschalk, Simon
Herausgeber: Fraunhofer ITWM Kaiserslautern
Verlag: Fraunhofer Verlag
Umfang: 132 S., num., mostly col. illus. and tab.
Erscheinungsdatum: 22.02.2021
Auflage: 1/2021
Produktform: Kartoniert
Einband: Kartoniert

In this thesis, we contribute to new directions within Reinforcement Learning, which are important for many practical applications such as the control of biomechanical models. We deepen its mathematical foundations by deriving theoretical results inspired by classical optimal control theory and the connection between neural networks and differential equations. The resulting approach is applied to control complex motions.

Artikelnummer: 937439 Kategorie:

Beschreibung

In this thesis, we contribute to new directions within Reinforcement Learning, which are important for many practical applications such as the control of biomechanical models. We deepen the mathematical foundations of Reinforcement Learning by deriving theoretical results inspired by classical optimal control theory. In our derivations, Deep Reinforcement Learning serves as our starting point. Based on its working principle, we derive a new type of Reinforcement Learning framework by replacing the neural network by a suitable ordinary differential equation. Coming up with profound mathematical results within this differential equation based framework turns out to be a challenging research task, which we address in this thesis. Especially the derivation of optimality conditions takes a central role in our investigation. We establish new optimality conditions tailored to our specific situation and analyze a resulting gradient based approach. Finally, we illustrate the power, working principle and versatility of this approach by performing control tasks in the context of a navigation in the two dimensional plane, robot motions, and actuations of a human arm model.

Herstellerkennzeichnung:


Fraunhofer Verlag
Annika Fesch
Nobelstraße 12
70569 Stuttgart
DE

E-Mail: annika.fesch@zv.fraunhofer.de

Internet: www.verlag.fraunhofer.de

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