The rapidly growing field of data mining has the potential of improving performance of existing scheduling systems. Such systems generate large amounts of data, which is often not utilized to its potential. The problem is whether it is possible to discover the implicit knowledge behind scheduling practice and then, with this knowledge, we could improve current scheduling practice. In this dissertation, we propose a novel methodology for generating scheduling rules using a data-driven approach. We show how to use data mining to discover previously unknown dispatching rules by applying the learning algorithms directly to production data. We also consider how by using this new approach unexpected knowledge and insights can be obtained, in a ma...
In this thesis, various data mining methods are integrated to construct the on-line rescheduling sys...
In proposing a machine learning approach for a flow shop scheduling problem with alternative resourc...
Une approche hybride basée sur la fouille de données pour découvrir de nouvelles règles de priorité ...
The rapidly growing field of data mining has the potential of improving performance of existing sche...
Data mining is a fast growing field and many industrial engineering applications generate large amou...
A new scheduling system for selecting dispatching rules in real time is developed by combining the t...
A promising approach for an effective shop scheduling that synergizes the benefits of the combinator...
Scheduling is a master key to succeed in the manufacturing companies in global competition. Better p...
A common way of scheduling jobs dynamically in a manufacturing system is by means of dispatching rul...
In this paper, a genetic programming based data mining approach is proposed to select dispatching ru...
Priority dispatching rules are heuristic methods for scheduling problems that have been studied for ...
Abstract In recent years, the rapid development of artificial intelligence and data science has give...
A data mining based approach to discover previously unknown priority dispatching rules for job shop ...
Abstract- A common way of dynamically scheduling jobs in a manufacturing system is by means of dispa...
In modern manufacturing industry, the methods supporting real-time decision-making are the urgent re...
In this thesis, various data mining methods are integrated to construct the on-line rescheduling sys...
In proposing a machine learning approach for a flow shop scheduling problem with alternative resourc...
Une approche hybride basée sur la fouille de données pour découvrir de nouvelles règles de priorité ...
The rapidly growing field of data mining has the potential of improving performance of existing sche...
Data mining is a fast growing field and many industrial engineering applications generate large amou...
A new scheduling system for selecting dispatching rules in real time is developed by combining the t...
A promising approach for an effective shop scheduling that synergizes the benefits of the combinator...
Scheduling is a master key to succeed in the manufacturing companies in global competition. Better p...
A common way of scheduling jobs dynamically in a manufacturing system is by means of dispatching rul...
In this paper, a genetic programming based data mining approach is proposed to select dispatching ru...
Priority dispatching rules are heuristic methods for scheduling problems that have been studied for ...
Abstract In recent years, the rapid development of artificial intelligence and data science has give...
A data mining based approach to discover previously unknown priority dispatching rules for job shop ...
Abstract- A common way of dynamically scheduling jobs in a manufacturing system is by means of dispa...
In modern manufacturing industry, the methods supporting real-time decision-making are the urgent re...
In this thesis, various data mining methods are integrated to construct the on-line rescheduling sys...
In proposing a machine learning approach for a flow shop scheduling problem with alternative resourc...
Une approche hybride basée sur la fouille de données pour découvrir de nouvelles règles de priorité ...