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A Floyd-Dijkstra hybrid application for mobile robot path planning in life science automation

Hui Liu, Norbert Stoll, Steffen Junginger, Kerstin Thurow

Year
2012
Citations
18

Abstract

A new application for path planning is presented for mobile robot transportation in life science laboratories. In this application: (a) to decide the shortest paths for mobile tasks, a hybrid path planning strategy using two algorithms from the map theory is proposed. The Floyd algorithm is adopted to do an off-line path planning, and the Dijkstra algorithm is executed to decide an on-line alternative path when the Floyd based route is not available. Different to intelligence based planning methods (such as Artificial Neural Networks), the map theory based methods can definitely guarantee a global shortest path based on the prepared waypoints. This is important for a big life science environment; (b) besides the path planning issue, other main contents for mobile transportation are elaborated, including task dispatching, robot localization, communication architecture, XML-based command protocol, etc. Two experiments show that the proposed application and its developed software are effective for mobile robot transportation in life science laboratories.

Keywords

Mobile robotMotion planningShortest path problemComputer scienceDijkstra's algorithmRobotArtificial intelligenceDistributed computingPath (computing)Real-time computing

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