Title :
Stochastic dynamic programming applied to planning of robot grinding tasks
Author :
Brown, Matthew L. ; Whitney, Daniel E.
Author_Institution :
Digital Equipment Corp., Shrewsbury, MA, USA
fDate :
10/1/1994 12:00:00 AM
Abstract :
This paper proposes an intelligent manufacturing system that can make decisions about the process in light of the uncertain outcome of these decisions and attempts to minimize the expected economic penalty resulting from those decisions. It uses robot weld bead grinding as an example of a process with significant process variation. A three tier hierarchical control system is proposed to plan an optimal sequence of grinding passes, dynamically simulate each pass, execute the planned sequence of controlled grinding passes, and modify the pass sequence as grinding continues. The top tier, described in this paper, plans the grinding sequence for each weld bead, and is implemented using stochastic dynamic programming, selecting the volumetric removal and feedspeed for each pass in order to optimize the satisfaction of the task requirements by the entire grinding sequence within the equipment, task, and process constraints. The resulting optimal policies have quite complex structures, showing foresight, anxiety, indifference, and aggressiveness, depending upon the situation
Keywords :
dynamic programming; factory automation; grinding; industrial robots; intelligent control; robots; stochastic programming; grinding sequence; intelligent manufacturing system; pass sequence; robot grinding; stochastic dynamic programming; task planning; three tier hierarchical control system; weld bead grinding; Control system synthesis; Dynamic programming; Force control; Intelligent robots; Manufacturing automation; Optimal control; Process planning; Stochastic processes; Stochastic systems; Welding;
Journal_Title :
Robotics and Automation, IEEE Transactions on