Evolutionary Learning Based Simulation Optimization for Stochastic Job Shop Scheduling Problems
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- @Article{GHASEMI:2021:ASC,
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author = "Amir Ghasemi and Amir Ashoori and Cathal Heavey",
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title = "Evolutionary Learning Based Simulation Optimization
for Stochastic Job Shop Scheduling Problems",
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journal = "Applied Soft Computing",
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volume = "106",
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pages = "107309",
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year = "2021",
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ISSN = "1568-4946",
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DOI = "doi:10.1016/j.asoc.2021.107309",
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URL = "https://www.sciencedirect.com/science/article/pii/S1568494621002325",
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keywords = "genetic algorithms, genetic programming, Stochastic
Job Shop Scheduling Problem, Simulation Optimization,
Ordinal Optimization, Genetic Programming (GP),
Simulation based metaheuristics, Learning based
simulation optimization",
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abstract = "Simulation Optimization (SO) techniques refer to a set
of methods that have been applied to stochastic
optimization problems, structured so that the
optimizer(s) are integrated with simulation
experiments. Although SO techniques provide promising
solutions for large and complex stochastic problems,
the simulation model execution is potentially expensive
in terms of computation time. Thus, the overall purpose
of this research is to advance the evolutionary SO
methods literature by researching the use of
metamodeling within these techniques. Accordingly, we
present a new Evolutionary Learning Based Simulation
Optimization (ELBSO) method embedded within Ordinal
Optimization. In ELBSO a Machine Learning (ML) based
simulation metamodel is created using Genetic
Programming (GP) to replace simulation experiments
aimed at reducing computation. ELBSO is evaluated on a
Stochastic Job Shop Scheduling Problem (SJSSP), which
is a well known complex production planning problem in
most industries such as semiconductor manufacturing. To
build the metamodel from SJSSP instances that replace
simulation replications, we employ a novel training
vector to train GP. This then is integrated into an
evolutionary two-phased Ordinal Optimization approach
to optimize an SJSSP which forms the ELBSO method.
Using a variety of experimental SJSSP instances, ELBSO
is compared with evolutionary optimization methods from
the literature and typical dispatching rules. Our
findings include the superiority of ELBSO over all
other algorithms in terms of the quality of solutions
and computation time. Furthermore, the integrated
procedures and results provided within this article
establish a basis for future SO applications to large
and complex stochastic problems",
- }
Genetic Programming entries for
Amir Ghasemi
Amir Ashoori
Cathal Heavey
Citations