This paper proposes an efficient decision support tool for the optimal production scheduling of a variety of paper grades in a paper machine. The tool is based on a continuous-time scheduling model and generalized disjunctive programming. As the full-space scheduling model corresponds to a large-scale mixed integer linear programming model, we apply data analytics techniques to reduce the size of the decision space, which has a profound impact on the computational efficiency of the model and enables us to support the solution of large-scale problems. The data-driven model is based on an automated method of identifying the forbidden and recommended paper grade sequences, as well as the changeover durations between two paper grades. The resul...
Abstract In recent years, the rapid development of artificial intelligence and data science has give...
The current cumulative PhD thesis consists of six papers published in/submitted to scientific journa...
Author name used in this publication: T. C. E. Cheng2006-2007 > Academic research: refereed > Public...
This paper proposes an efficient decision support tool for the optimal production scheduling of a va...
In this paper, we discuss a new decision-support system for scheduling paper manufacturing and distr...
Papermaking is considered as an energy-intensive industry partly due to the fact that the machinery ...
Papermaking is considered as an energy-intensive industry partly due to the fact that the machinery ...
The production processes are becoming increasingly complex and the responsibilities of the operators...
This paper examines the short term production planning problem encountered in the fine-paper industr...
In this article we present a complete algorithm using mathematical optimization tools for solving a ...
Manufacturing industry is growing exponentially. The need of using algorithms and computational tech...
This thesis presents engineered algorithms for a class of scheduling and process control problems. T...
Data science has become an important research topic across scientific disciplines. In Process System...
Scheduling is a master key to succeed in the manufacturing companies in global competition. Better p...
To face the challenges of industrial globalization and sustain in the competitive market, the manufa...
Abstract In recent years, the rapid development of artificial intelligence and data science has give...
The current cumulative PhD thesis consists of six papers published in/submitted to scientific journa...
Author name used in this publication: T. C. E. Cheng2006-2007 > Academic research: refereed > Public...
This paper proposes an efficient decision support tool for the optimal production scheduling of a va...
In this paper, we discuss a new decision-support system for scheduling paper manufacturing and distr...
Papermaking is considered as an energy-intensive industry partly due to the fact that the machinery ...
Papermaking is considered as an energy-intensive industry partly due to the fact that the machinery ...
The production processes are becoming increasingly complex and the responsibilities of the operators...
This paper examines the short term production planning problem encountered in the fine-paper industr...
In this article we present a complete algorithm using mathematical optimization tools for solving a ...
Manufacturing industry is growing exponentially. The need of using algorithms and computational tech...
This thesis presents engineered algorithms for a class of scheduling and process control problems. T...
Data science has become an important research topic across scientific disciplines. In Process System...
Scheduling is a master key to succeed in the manufacturing companies in global competition. Better p...
To face the challenges of industrial globalization and sustain in the competitive market, the manufa...
Abstract In recent years, the rapid development of artificial intelligence and data science has give...
The current cumulative PhD thesis consists of six papers published in/submitted to scientific journa...
Author name used in this publication: T. C. E. Cheng2006-2007 > Academic research: refereed > Public...