Knowledge acquisition for an understanding of discrete event simulation systems is a difficult task. Machine Learning has been investigated to help in the knowledge acquisition process. Our approach involves consultation with a domain expert, and the use of discrete event simulation models and machine learning as tools for the intelligent analysis of simulated systems. Current methods for the analysis and interpretation of such systems are restricted to statistical techniques that say much about the reliability of an output, but little about the output inter connectivity. The objective of our work is to improve the ability to interpret the model to the level of explanation that might loosely be described as "How the simulated system wo...
Machine learning techniques can be of great value for automating certain aspects of knowledge acquis...
Poster presented at Sixth European Business Intelligence & Big Data Summer School (eBISS 2016)Unive...
Computer simulations are an often applied and promising form of CAL. A main characteristic of comput...
<div>Presented at ACM 2018 Conference on Principles of Advanced Discrete Simulation (PADS)<br></div>...
This research has shown that a knowledge-based system is an effective tool to help novice simulation...
<div>Learning about Systems Using Machine Learning:Towards More Data-Driven Feedback Loops<br></div>...
Recent advances in computing power have seen machine learning becoming an area of significant intere...
textabstractModeling a simulation system requires a great deal of customization. At first sight no s...
The current thesis investigates data-driven simulation decision-making with field-quality consumer d...
Discrete event simulation modelling has been established as an important tool for management plannin...
The paper describes some of the elementary principles of the discrete event simulation and goes on t...
New discrete event simulation software available to industry has significantly reduced the modelling...
Hierarchical, modular specification of discrete-event models offers a basis for reusable model bases...
The ability to identify and represent the knowledge that a human expert has about a particular domai...
This research establishes the feasibility and potential utility of a software mechanism which employ...
Machine learning techniques can be of great value for automating certain aspects of knowledge acquis...
Poster presented at Sixth European Business Intelligence & Big Data Summer School (eBISS 2016)Unive...
Computer simulations are an often applied and promising form of CAL. A main characteristic of comput...
<div>Presented at ACM 2018 Conference on Principles of Advanced Discrete Simulation (PADS)<br></div>...
This research has shown that a knowledge-based system is an effective tool to help novice simulation...
<div>Learning about Systems Using Machine Learning:Towards More Data-Driven Feedback Loops<br></div>...
Recent advances in computing power have seen machine learning becoming an area of significant intere...
textabstractModeling a simulation system requires a great deal of customization. At first sight no s...
The current thesis investigates data-driven simulation decision-making with field-quality consumer d...
Discrete event simulation modelling has been established as an important tool for management plannin...
The paper describes some of the elementary principles of the discrete event simulation and goes on t...
New discrete event simulation software available to industry has significantly reduced the modelling...
Hierarchical, modular specification of discrete-event models offers a basis for reusable model bases...
The ability to identify and represent the knowledge that a human expert has about a particular domai...
This research establishes the feasibility and potential utility of a software mechanism which employ...
Machine learning techniques can be of great value for automating certain aspects of knowledge acquis...
Poster presented at Sixth European Business Intelligence & Big Data Summer School (eBISS 2016)Unive...
Computer simulations are an often applied and promising form of CAL. A main characteristic of comput...