Pub. online:4 Jan 2022Type:Research ArticleOpen Access
Journal:Informatica
Volume 33, Issue 3 (2022), pp. 499–522
Abstract
This paper models and solves the scheduling problem of cable manufacturing industries that minimizes the total production cost, including processing, setup, and storing costs. Two hybrid meta-heuristics, which combine simulated annealing and variable neighbourhood search algorithms with tabu search algorithm, are proposed. Applying some case-based theorems and rules, a special initial solution with optimal setup cost is obtained for the algorithms. The computational experiments, including parameter tuning and final experiments over the benchmarks obtained from a real cable manufacturing factory, show superiority of the combination of tabu search and simulated annealing comparing to the other proposed hybrid and classical meta-heuristics.
Journal:Informatica
Volume 5, Issues 3-4 (1994), pp. 439–451
Abstract
In this paper optimization aspects relatively to circuit component placement problem for gate array VLSI are discussed. Practical and theoretical aspects of the methods of component placement are concerned as well. Effective heuristic algorithms for the initial placement and iterative placement improvement are described. An original strategy of global placement optimization is investigated. Some experimental results based on an automatic placement subsystem for gate arrays – AUTOPLACE developed at Department of Practical Informatics of Kaunas University of Technology are presented.
Journal:Informatica
Volume 4, Issues 1-2 (1993), pp. 172–187
Abstract
It is well known that, in general, exact algorithms for the Quadratic Assignment Problem (QAP) cannot solve problems of size N>15. Therefore, it is necessary to use heuristic approaches for solving large-scale QAPs. In this paper, we consider a class of heuristic approaches based on local search criteria. In particular, we selected four algorithms; CRAFT, Simulated Annealing, TABU search and the Graph Partitioning (GP) approach and studied their relative performance in terms of the quality of solutions and CPU times. All of these algorithms performed roughly the same, based on the results of two sets of test problems executed on an IBM ES/3090-600S computer.