International audienceAlthough digital simulations are becoming increasingly important in the industrial world owing to the transition toward Industry 4.0, as well as the development of digital twin technologies, they have become increasingly computationally intensive. Many authors have proposed the use of Machine Learning (ML) metamodels to alleviate this cost and take advantage of the enormous amount of data that are currently available in industry. In an industrial context, it is necessary to continuously train predictive models integrated into decision support systems to ensure the consistency of their prediction quality over time. This led the authors to investigate Active Learning (AL) concepts in the particular context of the sawmill...
This article took the case of the adoption of a Machine Learning (ML) solution in a steel manufactur...
In this study, the use of DoE for training metamodels in simulation-based optimisation of manufactur...
ABSTRACT In this study, the use of DoE for training metamodels in simulation-based optimisation of m...
The current thesis investigates data-driven simulation decision-making with field-quality consumer d...
This thesis is part of the ANR project Lorraine-Artificial Intelligence, a multi-disciplinary projec...
Inferring behavioral models (e.g., state machines) of software systems is an important element of re...
<div>Presented at ACM 2018 Conference on Principles of Advanced Discrete Simulation (PADS)<br></div>...
Ces travaux de thèses s'inscrivent dans le projet ANR Lorraine-Intelligence Artificielle qui se veut...
Artificial intelligence, machine learning and artificial neural networks are introducing interesting...
Thesis: M. Fin., Massachusetts Institute of Technology, Sloan School of Management, Master of Financ...
Recent advances in computing power have seen machine learning becoming an area of significant intere...
Monitoring the operational performance of the sawmilling industry has become important for many appl...
The advent of Industry 4.0 has boosted the usage of innovative technologies to promote the digital t...
In the last years, organizations and companies in general have found the true potential value of col...
The forest-products supply chain gives rise to a variety of interconnected problems. Addressing thes...
This article took the case of the adoption of a Machine Learning (ML) solution in a steel manufactur...
In this study, the use of DoE for training metamodels in simulation-based optimisation of manufactur...
ABSTRACT In this study, the use of DoE for training metamodels in simulation-based optimisation of m...
The current thesis investigates data-driven simulation decision-making with field-quality consumer d...
This thesis is part of the ANR project Lorraine-Artificial Intelligence, a multi-disciplinary projec...
Inferring behavioral models (e.g., state machines) of software systems is an important element of re...
<div>Presented at ACM 2018 Conference on Principles of Advanced Discrete Simulation (PADS)<br></div>...
Ces travaux de thèses s'inscrivent dans le projet ANR Lorraine-Intelligence Artificielle qui se veut...
Artificial intelligence, machine learning and artificial neural networks are introducing interesting...
Thesis: M. Fin., Massachusetts Institute of Technology, Sloan School of Management, Master of Financ...
Recent advances in computing power have seen machine learning becoming an area of significant intere...
Monitoring the operational performance of the sawmilling industry has become important for many appl...
The advent of Industry 4.0 has boosted the usage of innovative technologies to promote the digital t...
In the last years, organizations and companies in general have found the true potential value of col...
The forest-products supply chain gives rise to a variety of interconnected problems. Addressing thes...
This article took the case of the adoption of a Machine Learning (ML) solution in a steel manufactur...
In this study, the use of DoE for training metamodels in simulation-based optimisation of manufactur...
ABSTRACT In this study, the use of DoE for training metamodels in simulation-based optimisation of m...