In this paper, we propose a novel artificial bee colony algorithm for solving the multi-objective flexible job shop scheduling problem. In this algorithm, the whole population is divided into multiple subpopulations at each generation, and the size of each subpopulation is adaptively adjusted based on the information derived from its search results. Furthermore, the two mutation strategies implemented in the differential evolution algorithm are embedded in the proposed algorithm to facilitate the exchange of information in each subpopulation and between different subpopulations, respectively. Experimental results on the well-known benchmark multi-objective problems show that the improvements of the strategies are positive and that the propo...
Combinatorial optimization, Flexible job shop scheduling, Genetic algorithm, Ant colony optimization...
AbstractJob shop scheduling is predominantly an Non deterministic polynomial (NP)- complete challeng...
Population-based evolutionary algorithms usually manage a large number of individuals to maintain th...
In this paper, we propose a novel artificial bee colony algorithm for solving the multi-objective fl...
<p>Overlapping in operations is an effective technology for productivity improvement in modern manuf...
AbstractThis paper presents a hybrid artificial bee colony algorithm for solving the flexible job-sh...
AbstractScheduling is the proper allocation of resources over a period for performing a set of tasks...
Abstract- Swarm intelligence systems are typically made up of a population of simple agents or boids...
This article proposes a novel differential evolution algorithm based on dynamic multi-population (DE...
This work introduces a scheduling technique using the Artificial Bee Colony (ABC) algorithm for stat...
In this paper, we propose a hybrid Pareto-based artificial bee colony (HABC) algorithm for solving t...
This project aims to explore and develop new biologically inspired algorithms for optimizing job sho...
Traditionally, process planning and scheduling were performed sequentially, where scheduling depende...
This paper describes a population-based approach that uses a honey bees foraging model to solve job ...
In this paper, we present a genetic algorithm for the Flexible Job-shop Scheduling Problem (FJSP). T...
Combinatorial optimization, Flexible job shop scheduling, Genetic algorithm, Ant colony optimization...
AbstractJob shop scheduling is predominantly an Non deterministic polynomial (NP)- complete challeng...
Population-based evolutionary algorithms usually manage a large number of individuals to maintain th...
In this paper, we propose a novel artificial bee colony algorithm for solving the multi-objective fl...
<p>Overlapping in operations is an effective technology for productivity improvement in modern manuf...
AbstractThis paper presents a hybrid artificial bee colony algorithm for solving the flexible job-sh...
AbstractScheduling is the proper allocation of resources over a period for performing a set of tasks...
Abstract- Swarm intelligence systems are typically made up of a population of simple agents or boids...
This article proposes a novel differential evolution algorithm based on dynamic multi-population (DE...
This work introduces a scheduling technique using the Artificial Bee Colony (ABC) algorithm for stat...
In this paper, we propose a hybrid Pareto-based artificial bee colony (HABC) algorithm for solving t...
This project aims to explore and develop new biologically inspired algorithms for optimizing job sho...
Traditionally, process planning and scheduling were performed sequentially, where scheduling depende...
This paper describes a population-based approach that uses a honey bees foraging model to solve job ...
In this paper, we present a genetic algorithm for the Flexible Job-shop Scheduling Problem (FJSP). T...
Combinatorial optimization, Flexible job shop scheduling, Genetic algorithm, Ant colony optimization...
AbstractJob shop scheduling is predominantly an Non deterministic polynomial (NP)- complete challeng...
Population-based evolutionary algorithms usually manage a large number of individuals to maintain th...