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Integration of task scheduling, action planning, and control in robotic manufacturing systems

Miao Song, T.J. Tarn, Ning Xi

Year
2000
Citations
62

Abstract

This paper presents a novel approach for solving a challenging problem in the intelligent control of robotic manufacturing systems, i.e., the integration of low-level system sensing and control with high-level system behavior and perception. First, a newly developed event-based planning and control method will be introduced. It will then be extended to a robotic manufacturing system via a hybrid system approach. The tasks of a robotic manufacturing system usually consist of multiple segments of robotic actions, which involve both continuous and discrete types of actions. The max-plus algebra model has been proposed to model such a system. Combined with the event-based planning and control methods, both discrete and continuous actions can be planned and controlled based on the max-plus algebra model. More important, the interactions between discrete and continuous actions can be formulated analytically. A typical parts-sorting task in a robotic manufacturing system is used to illustrate the proposed approach. The experimental results clearly demonstrate the advantages of this method.

Keywords

Computer scienceTask (project management)Flexible manufacturing systemScheduling (production processes)SortingControl (management)Control engineeringControl systemEvent (particle physics)Artificial intelligence

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