2018
DOI: 10.1080/00207543.2017.1420262
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Flexible job-shop scheduling problem with resource recovery constraints

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Cited by 23 publications
(4 citation statements)
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“…The IBM ILOG CPLEX Optimizer (referred to as CPLEX for short) is a powerful optimization solver to solve many different types of complex optimization problems such as nonlinear programming, integer programming, mixed‐integer programming, and so forth. It has been successfully applied to solve one of the most commonly studied manufacturing problems at the factory level, job‐shop scheduling, which can be formulated in mixed‐integer programming problems (for instance, Reference [38–41]). A featured component of the CPLEX software package is the CPLEX Optimizer for the Optimization Programming Language (OPL), which is a built‐in algebraic modeling language for optimization models and can make the coding easier and shorter than with general‐purpose programming languages.…”
Section: The Simulation‐based Integrated Virtual Testbedmentioning
confidence: 99%
“…The IBM ILOG CPLEX Optimizer (referred to as CPLEX for short) is a powerful optimization solver to solve many different types of complex optimization problems such as nonlinear programming, integer programming, mixed‐integer programming, and so forth. It has been successfully applied to solve one of the most commonly studied manufacturing problems at the factory level, job‐shop scheduling, which can be formulated in mixed‐integer programming problems (for instance, Reference [38–41]). A featured component of the CPLEX software package is the CPLEX Optimizer for the Optimization Programming Language (OPL), which is a built‐in algebraic modeling language for optimization models and can make the coding easier and shorter than with general‐purpose programming languages.…”
Section: The Simulation‐based Integrated Virtual Testbedmentioning
confidence: 99%
“…Another extension of the problem is resource recovery constraints (Vallikavungal Devassia, Salazar-Aguilar, and Boyer 2018) where resources are available in batches, and recovery times are required between each batch. These types of resources are available in limited quantities but are recovered to process all jobs in different batches.…”
Section: Outlinementioning
confidence: 99%
“…Each job is composed of a set of partially ordered operations, where each operation has a deterministic processing time and preassigned materials that need to be minimised subject to certain constraints . The constraints can relate to material quantity, job prioritisation and the capacity of the operational centres in addition to deadlines (Vallikavungal Devassia, Salazar-Aguilar, & Boyer, 2018).…”
Section: Introductionmentioning
confidence: 99%
“…A large number of algorithms have been developed in order to solve general scheduling problems, including the JSSP (Hasan, Sarker, Essam, & Cornforth, 2009;Martin et al, 2016). These include the genetic algorithm, particle swarm optimisation, simulated annealing, ant colony optimisation, artificial bee colony, and bee colony optimisation (Hasan et al, 2009;Martin et al, 2016;Vallikavungal Devassia et al, 2018).…”
Section: Introductionmentioning
confidence: 99%