Article ID Journal Published Year Pages File Type
385970 Expert Systems with Applications 2011 11 Pages PDF
Abstract

In this paper a complex scheduling problem in flexible manufacturing system (FMS) has been addressed with a novel approach called knowledge based genetic algorithm (KBGA). The literature review indicates that meta-heuristics may be used for combinatorial decision-making problem in FMS and simple genetic algorithm (SGA) is one of the meta-heuristics that has attracted many researchers. This novel approach combines KB (which uses the power of tacit and implicit expert knowledge) and inherent quality of SGA for searching the optima simultaneously. In this novel approach, the knowledge has been used on four different stages of SGA: initialization, selection, crossover, and mutation. Two objective functions known as throughput and mean flow time, have been taken to measure the performance of the FMS. The usefulness of the algorithm has been measured on the basis of number of generations used for achieving better results than SGA. To show the efficacy of the proposed algorithm, a numerical example of scheduling data set has been tested. The KBGA was also tested on 10 different moderate size of data set to show its robustness for large sized problems involving flexibility (that offers multiple options) in FMS.

Research highlights► The Knowledge Based Genetic Algorithm (KBGA) for FMS scheduling has been developed. ► The developed KBGA has adopted a novel approach which employed both the tacit and explicit knowledge for the improvement of the system performance. ► The developed KBGA performs better than SGA in FMS scheduling. ► The developed KBGA demonstrated its robustness for large sized problems involving flexibility in FMS.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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