The Cycle Time Stochastic Distributions in Simulation of Manufacturing Systems

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The paper presents a theme of research through the analysis of flows' modelling and simulation in a flexible manufacturing system. It is studied the simulation with discrete events of a real manufacturing line with the software Delmia Quest. The objectives of this paper are to modelling and simulate the manufacturing system and to choose the properly probability distributions of a cycle time of each machine from this layout. A comparison of three distributions is presented and SCL implemented program will automatically display the values resulting from the manufacturing system simulation.

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1426-1431

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November 2015

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© 2015 Trans Tech Publications Ltd. All Rights Reserved

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