Purpose: The manuscript presents an investigation into a constraint programming-based genetic algorithm for capacity output optimization in a back-end semiconductor manufacturing company. Design/methodology/approach: In the first stage, constraint programming defining the relationships between variables was formulated into the objective function. A genetic algorithm model was created in the second stage to optimize capacity output. Three demand scenarios were applied to test the robustness of the proposed algorithm. Findings: CPGA improved both the machine utilization and capacity output once the minimum requirements of a demand scenario were fulfilled. Capacity outputs of the three scenarios were improved by 157%, 7%, and 69%, res...
Abstract : In this paper a meta-heuristic approach has been presented to solve lot-size determinatio...
This paper exemplifies a framework for development of multi-objective genetic algorithm based job se...
International audienceA finite capacity planning heuristic is developed for semiconductor manufactur...
Purpose: The manuscript presents an investigation into a constraint programming-based genetic algori...
Purpose: The manuscript presents an investigation into a constraint programming-based genetic algor...
Having an accurate capacity planning is always an ultimate goal for semiconductor manufacturing. How...
Manufacturing industries are facing a rapidly changing market environment characterized by product c...
This paper presents a genetic approach to determining the optimal number of machines required in a m...
This paper addresses the problem of resource portfolio planning of firms in high-tech, capital-inten...
Production planning and control (PP\u26C) are among the most critical activities in manufacturing. P...
This paper presents a genetic algorithm based loading methodology for a capacity constrained job-sho...
Industry 4.0, which may eventually represent a fourth industrial revolution, is a complex technologi...
The mode of production in the modern manufacturing enterprise mainly prefers to MTO (Make-to-Order);...
Production planners usually aim to satisfy multiple objectives. This paper describes the development...
For a long time, manufacturing industries have been concentrating on increasing productivity by incr...
Abstract : In this paper a meta-heuristic approach has been presented to solve lot-size determinatio...
This paper exemplifies a framework for development of multi-objective genetic algorithm based job se...
International audienceA finite capacity planning heuristic is developed for semiconductor manufactur...
Purpose: The manuscript presents an investigation into a constraint programming-based genetic algori...
Purpose: The manuscript presents an investigation into a constraint programming-based genetic algor...
Having an accurate capacity planning is always an ultimate goal for semiconductor manufacturing. How...
Manufacturing industries are facing a rapidly changing market environment characterized by product c...
This paper presents a genetic approach to determining the optimal number of machines required in a m...
This paper addresses the problem of resource portfolio planning of firms in high-tech, capital-inten...
Production planning and control (PP\u26C) are among the most critical activities in manufacturing. P...
This paper presents a genetic algorithm based loading methodology for a capacity constrained job-sho...
Industry 4.0, which may eventually represent a fourth industrial revolution, is a complex technologi...
The mode of production in the modern manufacturing enterprise mainly prefers to MTO (Make-to-Order);...
Production planners usually aim to satisfy multiple objectives. This paper describes the development...
For a long time, manufacturing industries have been concentrating on increasing productivity by incr...
Abstract : In this paper a meta-heuristic approach has been presented to solve lot-size determinatio...
This paper exemplifies a framework for development of multi-objective genetic algorithm based job se...
International audienceA finite capacity planning heuristic is developed for semiconductor manufactur...