The current thesis investigates data-driven simulation decision-making with field-quality consumer data. This is accomplished by outlining the benefits and uses of combining machine learning and simulation in the literature and by locating barriers to the use of machine learning (ML) in the simulation subsystems at a case study organization. Additionally, an implementation is carried out to demonstrate how Scania departments can use this technology to analyze their current data and produce results that support the exploration of the simulation space and the identification of potential design issues so that preventative measures can be taken during concept development. The thesis' findings provide an overview of the literature on the relatio...
Knowledge acquisition for an understanding of discrete event simulation systems is a difficult task....
Artificial intelligence, machine learning and artificial neural networks are introducing interesting...
Recent advances in computing power have seen machine learning becoming an area of significant intere...
The current thesis investigates data-driven simulation decision-making with field-quality consumer d...
This thesis offers a thorough investigation into the application of machine learning algorithms for ...
System simulation is a valuable tool to unveil inefficiencies and to test new strategies when implem...
<div>Learning about Systems Using Machine Learning:Towards More Data-Driven Feedback Loops<br></div>...
Simulations are used intensively in the developing process of new industrial products and have achie...
This master’s thesis describes the process of integrating data generated by machine learning models ...
Abstract:. In the paper different architectures with partly self-developed simulation packages are d...
Poster presented at Sixth European Business Intelligence & Big Data Summer School (eBISS 2016)Unive...
International audienceAlthough digital simulations are becoming increasingly important in the indust...
This thesis aims at investigating the capability and feasibility of Machine Learning algorithms for ...
Machine Learning (ML) is a branch of artificial intelligence that studies algorithms able to learn a...
Production Planning and Control (PPC) is defined as a predetermined process to incorporate human res...
Knowledge acquisition for an understanding of discrete event simulation systems is a difficult task....
Artificial intelligence, machine learning and artificial neural networks are introducing interesting...
Recent advances in computing power have seen machine learning becoming an area of significant intere...
The current thesis investigates data-driven simulation decision-making with field-quality consumer d...
This thesis offers a thorough investigation into the application of machine learning algorithms for ...
System simulation is a valuable tool to unveil inefficiencies and to test new strategies when implem...
<div>Learning about Systems Using Machine Learning:Towards More Data-Driven Feedback Loops<br></div>...
Simulations are used intensively in the developing process of new industrial products and have achie...
This master’s thesis describes the process of integrating data generated by machine learning models ...
Abstract:. In the paper different architectures with partly self-developed simulation packages are d...
Poster presented at Sixth European Business Intelligence & Big Data Summer School (eBISS 2016)Unive...
International audienceAlthough digital simulations are becoming increasingly important in the indust...
This thesis aims at investigating the capability and feasibility of Machine Learning algorithms for ...
Machine Learning (ML) is a branch of artificial intelligence that studies algorithms able to learn a...
Production Planning and Control (PPC) is defined as a predetermined process to incorporate human res...
Knowledge acquisition for an understanding of discrete event simulation systems is a difficult task....
Artificial intelligence, machine learning and artificial neural networks are introducing interesting...
Recent advances in computing power have seen machine learning becoming an area of significant intere...