An effective hybrid honey bee mating optimization algorithm for integrated process planning and scheduling problems

Process planning and scheduling are two of the most important functions of a manufacturing system. Traditionally, these two functions are executed separately. Since they are interrelated, conducting process planning and scheduling simultaneously will provide more advantages. In this paper, according...

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Veröffentlicht in:International journal of advanced manufacturing technology 2015-09, Vol.80 (5-8), p.1253-1264
Hauptverfasser: Jin, Liangliang, Zhang, Chaoyong, Shao, Xinyu
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Zhang, Chaoyong
Shao, Xinyu
description Process planning and scheduling are two of the most important functions of a manufacturing system. Traditionally, these two functions are executed separately. Since they are interrelated, conducting process planning and scheduling simultaneously will provide more advantages. In this paper, according to the characteristics of the integrated process planning and scheduling (IPPS) problem, a hybrid honey bee mating optimization (HBMO) algorithm, which combines the HBMO algorithm and variable neighborhood search (VNS), is proposed to settle the problem with makespan criterion. Different with conventional HBMO, we utilize VNS with two effective and efficient neighborhood structures in the algorithm to simulate the workers’ brood caring action to avoid premature convergence and to find more excellent broods. In addition, a novel individual initialization method is developed in the algorithm. The proposed algorithm is tested on typical benchmark instances taken from related literature, and the computational results are compared with those of other algorithms. Experimental results show the effectiveness and efficiency of the hybrid HBMO algorithm. New upper bounds have been captured for 16 instances, and most instances have been improved within reasonable CPU times.
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subjects Algorithms
CAE) and Design
Computer simulation
Computer-Aided Engineering (CAD
Engineering
Industrial and Production Engineering
Mechanical Engineering
Media Management
Optimization
Original Article
Process planning
Production scheduling
Scheduling
Upper bounds
title An effective hybrid honey bee mating optimization algorithm for integrated process planning and scheduling problems
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