A general model for job shop scheduling is described which applies to static, dynamic and non-deterministic production environments. Next, a Genetic Algorithm is presented which solves the job shop scheduling problem. This algorithm is tested in a dynamic environment under different workload situations. Thereby, a highly efficient decoding procedure is proposed which strongly improves the quality of schedules. Finally, this technique is tested for scheduling and rescheduling in a non-deterministic environment. It is shown by experiment that conventional methods of production control are clearly outperformed at reasonable runtime costs
This paper presents an effective genetic algorithm (GA) for job shop sequencing and scheduling. A si...
Job Shop Scheduling Problem (JSSP) is a non-deterministic, polynomial-time (NP) hard combinatorial o...
A flexible job-shop-scheduling problem is an extension of classical job-shop problems that permit an...
The general job-shop scheduling problem is known to be extremely hard. We describe a GA approach whi...
Scheduling plays a vital role in ensuring the effectiveness of the production control of a flexible ...
This paper develops a genetic algorithm for solving job shop scheduling problems. It discusses the d...
The Job Shop scheduling problem is widely used in industry and has been the subject of study by seve...
Job shop scheduling problem is one of the most difficult NP-hard combinatorial optimization problems...
We describe applications of Genetic Algorithms (GAs) to the Job Shop Scheduling (JSS) problem. More ...
Since the first factories were created, man has always tried to maximize its production and, consequ...
This work proposes the impact assessment of the workers in the optimal time of operations in a Flexi...
Based on promising results of genetic algorithm (GA) research, a modelling language for manufacturin...
The dynamic job shop scheduling with uncertain arriving time is studied, and the objective is to min...
Abstract — Although production scheduling has attracted the research interest of production economic...
Genetic algorithms were intensively investigated in various modifications and in combinations with o...
This paper presents an effective genetic algorithm (GA) for job shop sequencing and scheduling. A si...
Job Shop Scheduling Problem (JSSP) is a non-deterministic, polynomial-time (NP) hard combinatorial o...
A flexible job-shop-scheduling problem is an extension of classical job-shop problems that permit an...
The general job-shop scheduling problem is known to be extremely hard. We describe a GA approach whi...
Scheduling plays a vital role in ensuring the effectiveness of the production control of a flexible ...
This paper develops a genetic algorithm for solving job shop scheduling problems. It discusses the d...
The Job Shop scheduling problem is widely used in industry and has been the subject of study by seve...
Job shop scheduling problem is one of the most difficult NP-hard combinatorial optimization problems...
We describe applications of Genetic Algorithms (GAs) to the Job Shop Scheduling (JSS) problem. More ...
Since the first factories were created, man has always tried to maximize its production and, consequ...
This work proposes the impact assessment of the workers in the optimal time of operations in a Flexi...
Based on promising results of genetic algorithm (GA) research, a modelling language for manufacturin...
The dynamic job shop scheduling with uncertain arriving time is studied, and the objective is to min...
Abstract — Although production scheduling has attracted the research interest of production economic...
Genetic algorithms were intensively investigated in various modifications and in combinations with o...
This paper presents an effective genetic algorithm (GA) for job shop sequencing and scheduling. A si...
Job Shop Scheduling Problem (JSSP) is a non-deterministic, polynomial-time (NP) hard combinatorial o...
A flexible job-shop-scheduling problem is an extension of classical job-shop problems that permit an...