Title of article :
A data mining-based solution method for ow shop scheduling problems
Author/Authors :
Ozcan, B Department of Industrial Engineering - Kocaeli University - Kocaeli, Turkey , Yavuz, M Department of Information Systems - Statistics and Management Science - University of Alabama, USA , Fglal, A Department of Industrial Engineering - Kocaeli University - Kocaeli, Turkey
Abstract :
Scheduling is the process of determining where and when to perform
manufacturing measures, which is required to conduct activities in a timely, ecient,
and cost-eective manner. In this paper, an algorithm is proposed as a solution to the
ow shop scheduling problem which holds an important place in the scheduling literature.
The path relinking algorithm and data mining are used to solve the
ow shop scheduling
problem studied here. While DM is used for globally searching the solution space, path
relinking is used for local search. Data mining is a method for extracting the embedded
information in a cluster that includes implicit information. Path relinking is an algorithm
that advances by making binary displacements in order to convert the initial solution to
the guiding solution and it is repeated by assigning the best obtained solution within this
process to the starting point. The eciency of the model for Taillard's
ow shop scheduling
problems was tested. Consequently, it is possible to solve the large-size problem without
considerable mathematical background. The obtained results showed that the proposed
method comparatively performed as good as other metaheuristic methods.
Keywords :
Optimization , Path relinking algorithm , Heuristic , Flow shop scheduling , Data mining
Journal title :
Scientia Iranica(Transactions E: Industrial Engineering)