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Dive into the research topics where Caroline Gagné is active.

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Featured researches published by Caroline Gagné.


Journal of the Operational Research Society | 2002

Comparing an ACO algorithm with other heuristics for the single machine scheduling problem with sequence-dependent setup times

Caroline Gagné; Wilson L. Price; Marc Gravel

We compare several heuristics for solving a single machine scheduling problem. In the operating situation modelled, setup times are sequence-dependent and the objective is to minimize total tardiness. We describe an Ant Colony Optimization (ACO) algorithm having a new feature using look-ahead information in the transition rule. This feature shows an improvement in performance. A comparison with a genetic algorithm, a simulated annealing approach, a local search method and a branch-and-bound algorithm indicates that the ACO that we describe is competitive and has a certain advantage for larger problems.


European Journal of Operational Research | 2002

Scheduling continuous casting of aluminum using a multiple objective ant colony optimization metaheuristic

Marc Gravel; Wilson L. Price; Caroline Gagné

Abstract This paper presents an ant colony optimization metaheuristic for the solution of an industrial scheduling problem in an aluminum casting center. We present an efficient representation of a continuous horizontal casting process which takes account of a number of objectives that are important to the scheduler. We have incorporated the methods proposed in software that has been implemented in the plant.


European Journal of Operational Research | 2006

Solving real car sequencing problems with ant colony optimization

Caroline Gagné; Marc Gravel; Wilson L. Price

An automobile assembly line is usually configured as three successive shops in which the body is constructed, painted, and then assembled together with all component parts into a finished vehicle. However, many published production sequencing models ignore the first two shops and base their results only on the requirements and constraints of the assembly shop. In this article, we propose to more closely follow the actual industrial structure. We therefore first propose a single objective mathematical model for scheduling the paint and assembly shops. We then propose an ACO metaheuristic for solving a multiple-objective formulation. Data provided by Groupe Renault show that the proposed approach offers better solutions than those of current practice.


Journal of the Operational Research Society | 2005

Review and comparison of three methods for the solution of the car sequencing problem

Marc Gravel; Caroline Gagné; Wilson L. Price

The car sequencing problem is the ordering of the production of a list of vehicles which are of the same type, but which may have options or variations that require higher work content and longer operation times for at least one assembly workstation. A feasible production sequence is one that does not schedule vehicles with options in such a way that one or more workstations are overloaded. In variations of the problem, other constraints may apply. We describe and compare three approaches to the modeling and solution of this problem. The first uses integer programming to model and solve the problem. The second approaches the question as a constraint satisfaction problem (CSP). The third method proposes an adaptation of the Ant Colony Optimization for the car sequencing problem. Test-problems are drawn from CSPLib, a publicly available set of problems available through the Internet. We quote results drawn both from our own work and from other research. The literature review is not intended to be exhaustive but we have sought to include representative examples and the more recent work. Our conclusions bear on likely research avenues for the solution of problems of practical size and complexity. A new set of larger benchmark problems was generated and solved. These problems are available to other researchers who may wish to solve them using their own methods.


International Journal of Production Research | 2000

Scheduling jobs in an Alcan aluminium foundry using a genetic algorithm

Marc Gravel; Wilson L. Price; Caroline Gagné

We present a genetic algorithm for the solution of an industrial scheduling problem in an Alcan aluminium foundry situated in Québec. We seek the best processing sequence for n orders on a m parallel machines. The set-up times are sequence dependent and we must deal with multiple criteria. There are also a number of structural constraints that distinguish this situation from the classical model. The performance of the solution approach is compared with the results of the scheduling process used by the firm according to three criteria: meeting due dates, number and duration of required set-ups and metal flow.


Journal of the Operational Research Society | 2005

Using metaheuristic compromise programming for the solution of multiple-objective scheduling problems

Caroline Gagné; Marc Gravel; Wilson L. Price

In this paper, we propose a generic approach to find compromise solutions for multiple-objective scheduling problems using metaheuristics. As an illustration, we present a new hybrid tabu search/variable neighbourhood search application of this approach for the solution of a bi-objective scheduling problem. Through numerical experiments we demonstrate its efficiency and effectiveness. We have confirmed that compromise programming with the tabu-VNS metaheuristic generates solutions that approach those of the known reference sets.


Computers & Operations Research | 2012

A hybrid genetic algorithm for the single machine scheduling problem with sequence-dependent setup times

Aymen Sioud; Marc Gravel; Caroline Gagné

This paper presents a hybrid approach based on the integration between a genetic algorithm (GA) and concepts from constraint programming, multi-objective evolutionary algorithms and ant colony optimization for solving a scheduling problem. The main contributions are the integration of these concepts in a GA crossover operator. The proposed methodology is applied to a single machine scheduling problem with sequence-dependent setup times for the objective of minimizing the total tardiness. A sensitivity analysis of the hybrid approach is carried out to compare the performance of the GA and the hybrid genetic algorithm (HGA) approaches on different benchmarks from the literature. The numerical experiments demonstrate the HGA efficiency and effectiveness which generates solutions that approach those of the known reference sets and improves several lower bounds.


European Journal of Operational Research | 2009

Ant colony optimization with a specialized pheromone trail for the car-sequencing problem

Sara Morin; Caroline Gagné; Marc Gravel

This paper studies the learning process in an ant colony optimization algorithm designed to solve the problem of ordering cars on an assembly line (car-sequencing problem). This problem has been shown to be NP-hard and evokes a great deal of interest among practitioners. Learning in an ant algorithm is achieved by using an artificial pheromone trail, which is a central element of this metaheuristic. Many versions of the algorithm are found in literature, the main distinction among them being the management of the pheromone trail. Nevertheless, few of them seek to perfect learning by modifying the internal structure of the trail. In this paper, a new pheromone trail structure is proposed that is specifically adapted to the type of constraints in the car-sequencing problem. The quality of the results obtained when solving three sets of benchmark problems is superior to that of the best solutions found in literature and shows the efficiency of the specialized trail.


International Journal of Production Research | 2000

An interactive tool for designing manufacturing cells for an assembly job-shop

Marc Gravel; Wilson L. Price; Caroline Gagné

Cellular manufacturing is often implemented to reduce work in progress, materials handling, set-ups and storage space, as well as to improve quality and worker satisfaction. Wemmerlov and Johnson (1997) have pointed out that cellular configurations do not automatically deliver these advantages. An interactive tool is presented to design manufacturing cells for an assembly shop. The method is based on an analysis of operation sequences and durations and it allows the design of hybrid layouts. We show that a cellular configuration is not always desirable and discuss the conditions where this is so.


HM'05 Proceedings of the Second international conference on Hybrid Metaheuristics | 2005

Comparing parallelization of an ACO: message passing vs. shared memory

Pierre Delisle; Marc Gravel; Michaël Krajecki; Caroline Gagné; Wilson L. Price

We present a shared memory approach to the parallelization of the Ant Colony Optimization (ACO) metaheuristic and a performance comparison with an existing message passing implementation. Our aim is to show that the shared memory approach is a competitive strategy for the parallelization of ACO algorithms. The sequential ACO algorithm on which are based both parallelization schemes is first described, followed by the parallelization strategies themselves. Through experiments, we compare speedup and efficiency measures on four TSP problems varying from 318 to 657 cities. We then discuss factors that explain the difference in performance of the two approaches. Further experiments are presented to show the performance of the shared memory implementation when varying numbers of ants are distributed among the available processors. In this last set of experiments, the solution quality obtained is taken into account when analyzing speedup and efficiency measures.

Collaboration


Dive into the Caroline Gagné's collaboration.

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Marc Gravel

Université du Québec à Chicoutimi

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Arnaud Zinflou

Université du Québec à Chicoutimi

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Aymen Sioud

Université du Québec à Chicoutimi

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Michaël Krajecki

University of Reims Champagne-Ardenne

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Pierre Delisle

University of Reims Champagne-Ardenne

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Djamal Rebaine

Université du Québec à Chicoutimi

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Imène Benkalai

Université du Québec à Chicoutimi

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Pierre Baptiste

École Polytechnique de Montréal

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Sara Morin

Université du Québec à Chicoutimi

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