International audienceThe development of safety critical systems often requires design decisions which influence not only dependability, but also other properties which are often even antagonistic to dependability, e.g., cost. Finding good compromises considering different goals while at the same time guaranteeing sufficiently high safety of a system is a very difficult task. We propose an integrated approach for modeling, analysis and optimization of safety critical systems. It is fully automated with an implementation based on the Eclipse platform. The approach is tool-independent, different analysis tools can be used and there exists an API for the integration of different optimization and estimation algorithms. For safety critical syste...
Modern engineering systems give paramount importance to safety in order to avoid or mitigate hazardo...
This thesis is centred on modelling and multi-objective optimization of Safety Instrumented Systems ...
Artificial Intelligence (AI) and data-driven decisions based on Machine Learning (ML) are making an ...
International audienceThe development of safety critical systems often requires design decisions whi...
Model-based safety analysis approaches aim at finding critical failure combinations by analysis of m...
We present a new form of quantitative safety analysis - safety optimization. This method is a combin...
Programmable Electronic Systems are used in the process industry to perform very complex and sophist...
Safety is considered as one of the most important areas in future research and development within th...
The increasing importance of safety-critical fault-tolerant systems causes the need of quantitativel...
International audienceIt is computationally expensive to evaluate the overall system level reliabili...
This paper investigates the efficiency of a design optimization scheme which is appropriate for syst...
Classical software verification focuses on answering the question if the implementation of a piece o...
International audienceNuclear criticality safety assessment often requires groupwise Monte Carlo sim...
Achieving high reliability, particularly in safety critical systems, is an important and often manda...
Graduation date: 2017In order to more effectively design large, complex systems, risk must be accoun...
Modern engineering systems give paramount importance to safety in order to avoid or mitigate hazardo...
This thesis is centred on modelling and multi-objective optimization of Safety Instrumented Systems ...
Artificial Intelligence (AI) and data-driven decisions based on Machine Learning (ML) are making an ...
International audienceThe development of safety critical systems often requires design decisions whi...
Model-based safety analysis approaches aim at finding critical failure combinations by analysis of m...
We present a new form of quantitative safety analysis - safety optimization. This method is a combin...
Programmable Electronic Systems are used in the process industry to perform very complex and sophist...
Safety is considered as one of the most important areas in future research and development within th...
The increasing importance of safety-critical fault-tolerant systems causes the need of quantitativel...
International audienceIt is computationally expensive to evaluate the overall system level reliabili...
This paper investigates the efficiency of a design optimization scheme which is appropriate for syst...
Classical software verification focuses on answering the question if the implementation of a piece o...
International audienceNuclear criticality safety assessment often requires groupwise Monte Carlo sim...
Achieving high reliability, particularly in safety critical systems, is an important and often manda...
Graduation date: 2017In order to more effectively design large, complex systems, risk must be accoun...
Modern engineering systems give paramount importance to safety in order to avoid or mitigate hazardo...
This thesis is centred on modelling and multi-objective optimization of Safety Instrumented Systems ...
Artificial Intelligence (AI) and data-driven decisions based on Machine Learning (ML) are making an ...