The integration of simulation-based optimization and data mining is an emerging approach to support decision-making in the design and improvement of manufacturing systems. In such an approach, knowledge extracted from the optimal solutions generated by the simulation-based optimization process can provide important information to decision makers, such as the importance of the decision variables and their influence on the design objectives, which cannot easily be obtained by other means. However, can the extracted knowledge be directly used during the optimization process to further enhance the quality of the solutions? This paper proposes such an online knowledge extraction approach that is used together with a preference-guided multi-objec...
Simulation-based optimisation enables companies to take decisions based on data, and allows prescrip...
Real-life engineering optimization problems need Multiobjective Optimization (MOO) tools. These prob...
This paper conceptually introduces VF-KDO (Virtual Factories with Knowledge-Driven Optimization, a r...
The integration of simulation-based optimization and data mining is an emerging approach to support ...
The first part of this paper served as a comprehensive survey of data mining methods that have been ...
Real-world optimization problems typically involve multiple objectives to be optimized simultaneousl...
The process of multi-objective optimization involves finding optimal solutions to several objective ...
Current market requirements force manufacturing companies to face production changes more often than...
This paper describes a decision support system (DSS) built on knowledge extraction using simulation-...
This paper presents an innovative approach for the design and analysis of production systems using m...
In today’s uncertain and competitive market, where manufacturing enterprises are subjected to increa...
Simulation and optimization enables companies to take decision based on data, and allows prescriptiv...
Knowledge-based optimization is a recent direction in evolutionary optimization research which aims ...
The current study presents an effective framework for automated multi-objective optimization (MOO) o...
Simulation-based optimisation enables companies to take decisions based on data, and allows prescrip...
Real-life engineering optimization problems need Multiobjective Optimization (MOO) tools. These prob...
This paper conceptually introduces VF-KDO (Virtual Factories with Knowledge-Driven Optimization, a r...
The integration of simulation-based optimization and data mining is an emerging approach to support ...
The first part of this paper served as a comprehensive survey of data mining methods that have been ...
Real-world optimization problems typically involve multiple objectives to be optimized simultaneousl...
The process of multi-objective optimization involves finding optimal solutions to several objective ...
Current market requirements force manufacturing companies to face production changes more often than...
This paper describes a decision support system (DSS) built on knowledge extraction using simulation-...
This paper presents an innovative approach for the design and analysis of production systems using m...
In today’s uncertain and competitive market, where manufacturing enterprises are subjected to increa...
Simulation and optimization enables companies to take decision based on data, and allows prescriptiv...
Knowledge-based optimization is a recent direction in evolutionary optimization research which aims ...
The current study presents an effective framework for automated multi-objective optimization (MOO) o...
Simulation-based optimisation enables companies to take decisions based on data, and allows prescrip...
Real-life engineering optimization problems need Multiobjective Optimization (MOO) tools. These prob...
This paper conceptually introduces VF-KDO (Virtual Factories with Knowledge-Driven Optimization, a r...