A neural network approach for a robot task sequencing problem

This paper presents a neural network approach with successful implementation for the robot task-sequencing problem. The problem addresses the sequencing of tasks comprising loading and unloading of parts into and from the machines by a material-handling robot. The performance criterion is to minimiz...

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Vydáno v:Artificial intelligence in engineering Ročník 14; číslo 2; s. 175 - 189
Hlavní autoři: Maimon, O., Braha, D., Seth, V.
Médium: Journal Article
Jazyk:angličtina
Vydáno: Elsevier Ltd 01.04.2000
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ISSN:0954-1810
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Shrnutí:This paper presents a neural network approach with successful implementation for the robot task-sequencing problem. The problem addresses the sequencing of tasks comprising loading and unloading of parts into and from the machines by a material-handling robot. The performance criterion is to minimize a weighted objective of the total robot travel time for a set of tasks and the tardiness of the tasks being sequenced. A three-phased parallel implementation of the neural network algorithm on Thinking Machine's CM-5 parallel computer is also presented which resulted in a dramatic increase in the speed of finding solutions. To evaluate the performance of the neural network approach, a branch-and-bound method and a heuristic procedure have been developed for the problem. The neural network method is shown to give good results and is especially useful for solving large problems on a parallel-computing platform.
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ISSN:0954-1810
DOI:10.1016/S0954-1810(00)00008-X