An ant colony algorithm for solving budget constrained and unconstrained dynamic facility layout problems

The main characteristic of today's manufacturing environments is volatility. Under a volatile environment, demand is not stable. It changes from one production period to another. To operate efficiently under such environments, the facilities must be adaptive to changing production requirements....

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Veröffentlicht in:Omega (Oxford) 2006-08, Vol.34 (4), p.385-396
Hauptverfasser: Baykasoglu, Adil, Dereli, Turkay, Sabuncu, Ibrahim
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Dereli, Turkay
Sabuncu, Ibrahim
description The main characteristic of today's manufacturing environments is volatility. Under a volatile environment, demand is not stable. It changes from one production period to another. To operate efficiently under such environments, the facilities must be adaptive to changing production requirements. From a layout point of view, this situation requires the solution of the dynamic layout problem (DLP). DLP is a computationally complex combinatorial optimization problem for which optimal solutions can only be found for small size problems. It is known that classical optimization procedures are not adequate for this problem. Therefore, several heuristics including taboo search, simulated annealing and genetic algorithm are applied to this problem to find a good solution. This work makes use of the ant colony optimization (ACO) algorithm to solve the DLP by considering the budget constraints. The paper makes the first attempt to show how the ACO can be applied to DLP with the budget constraints. In the paper, example applications are presented and computational experiments are performed to present suitability of the ACO to solve the DLP problems. Promising results are obtained from the solution of several test problems.
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subjects Algorithms
Analysis
Ant colony optimization
Applied sciences
Business budgets
Dynamic facility layout
Dynamic facility layout Ant colony optimization Heuristics
Exact sciences and technology
Flows in networks. Combinatorial problems
Heuristic
Heuristics
Influence
Layouts
Manufacturing
Operational research and scientific management
Operational research. Management science
Optimization
Plant layout
Studies
Volatility
title An ant colony algorithm for solving budget constrained and unconstrained dynamic facility layout problems
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