Reinforcement Learning for Planning Working Processes

Anwendung von Reinforcement Learning Methoden zur Planung von Arbeitsaufgaben im industriellen Bereich

JournalIndustrie Management
Issue Volume 31, 2015, Edition 1, Pages 9-12
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Abstract

One of the main purposes of the „Smart Virtual Worker“-project is the application of a digital human model for the simulation of industrial work tasks. This contribution focuses on the implementation of an autonomic action selection, such that a virtual agent is able to solve tasks under certain optimization criteria. To realize the autonomic action selection, we use the Q-Learning algorithm with different extensions. In this article, we describe these different learning algorithms and we briefly describe the performance of their implementation with regard to the industrial field.

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