Industries with safety-critical systems increasingly collect data on events occurring at the level of system components, thus capturing instances of system failure or malfunction. With data availability, it becomes possible to automatically learn a model describing the failure modes of the system, i.e., how the states of individual components combine to cause a system failure. We present LIFT, a machine learning method for static fault trees directly out of observational datasets. The fault trees model probabilistic causal chains of events ending in a global system failure. Our method makes use of the Mantel-Haenszel statistical test to narrow down possible causal relationships between events. We evaluate LIFT with synthetic case studies, s...
One of the key issues in maintenance is to allocate focus and resources to those components and subs...
The application of fault tree analysis (FTA) to system safety and reliability is presented within th...
In this thesis, we have proposed a novel approach which strengthens existing efficient fault-detecti...
Many industrial sectors have been collecting big sensor data. With recent technologies for processin...
Cyber-physical systems have increasingly intricate architectures and failure modes, which is due to ...
Probabilistic Model Checking is an established technique used in the dependability analysis of safet...
Fault tree analysis is a well-known technique in reliability engineering and risk assessment, which ...
Abstract — Understanding the causes for failure is one of the bottlenecks in the educational process...
Fault tree analysis is a probability-based technique for estimating the risk of an undesired top eve...
In recent years, several approaches to generate probabilistic counterexamples have been proposed. Th...
Safety engineering for complex systems is a very challenging task and the industry has a firm basis...
This work presents a systematic, incremental approach to identifying causes of potential failures in...
The problem of modeling knowledge about the fault behavior of a system and utilizing this model for ...
© 2014 IEEE. As the sizes of supercomputers and data centers grow towards exascale, failures become ...
This paper presents a fully Bayesian approach that simultaneously combines non-overlapping (in time)...
One of the key issues in maintenance is to allocate focus and resources to those components and subs...
The application of fault tree analysis (FTA) to system safety and reliability is presented within th...
In this thesis, we have proposed a novel approach which strengthens existing efficient fault-detecti...
Many industrial sectors have been collecting big sensor data. With recent technologies for processin...
Cyber-physical systems have increasingly intricate architectures and failure modes, which is due to ...
Probabilistic Model Checking is an established technique used in the dependability analysis of safet...
Fault tree analysis is a well-known technique in reliability engineering and risk assessment, which ...
Abstract — Understanding the causes for failure is one of the bottlenecks in the educational process...
Fault tree analysis is a probability-based technique for estimating the risk of an undesired top eve...
In recent years, several approaches to generate probabilistic counterexamples have been proposed. Th...
Safety engineering for complex systems is a very challenging task and the industry has a firm basis...
This work presents a systematic, incremental approach to identifying causes of potential failures in...
The problem of modeling knowledge about the fault behavior of a system and utilizing this model for ...
© 2014 IEEE. As the sizes of supercomputers and data centers grow towards exascale, failures become ...
This paper presents a fully Bayesian approach that simultaneously combines non-overlapping (in time)...
One of the key issues in maintenance is to allocate focus and resources to those components and subs...
The application of fault tree analysis (FTA) to system safety and reliability is presented within th...
In this thesis, we have proposed a novel approach which strengthens existing efficient fault-detecti...