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Performance of an ant colony optimisation algorithm in dynamic job shop scheduling problems
Authors:R Zhou  AYC Nee
Affiliation:Department of Mechanical Engineering , National University of Singapore , 9 Engineering Drive 1, Singapore 117576
Abstract:The goal of the current study is to identify appropriate application domains of Ant Colony Optimisation (ACO) in the area of dynamic job shop scheduling problem. The algorithm is tested in a shop floor scenario with three levels of machine utilisations, three different processing time distributions, and three different performance measures for intermediate scheduling problems. The steady-state performances of ACO in terms of mean flow time, mean tardiness, total throughput on different experimental environments are compared with those from dispatching rules including first-in-first-out, shortest processing time, and minimum slack time. Two series of experiments are carried out to identify the best ACO strategy and the best performing dispatching rule. Those two approaches are thereafter compared with different variations of processing times. The experimental results show that ACO outperforms other approaches when the machine utilisation or the variation of processing times is not high.
Keywords:dynamic job shop scheduling  ant colony optimisation  dispatching rules
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