Many industrial sectors have been collecting big sensor data. With recent technologies for processing big data, companies can exploit this for automatic failure detection and prevention. We propose the first completely automated method for failure analysis, machine-learning fault trees from raw observational data with continuous variables. Our method scales well and is tested on a real-world, five-year dataset of domestic heater operations in The Netherlands, with 31 million unique heater-day readings, each containing 27 sensor and 11 failure variables. Our method builds on two previous procedures: the C4.5 decision-tree learning algorithm, and the LIFT fault tree learning algorithm from Boolean data. C4.5 pre-processes each continuous vari...
We present a decision tree learning approach to diagnosing failures in large Internet sites. We reco...
The application of fault tree analysis (FTA) to system safety and reliability is presented within th...
International audienceThis paper investigates various types of faults in District Heating & Cooling ...
Industries with safety-critical systems increasingly collect data on events occurring at the level o...
Cyber-physical systems have increasingly intricate architectures and failure modes, which is due to ...
Data-driven techniques that extract insights from sensor data reduce the cost of improving system en...
Fault tree analysis is a probability-based technique for estimating the risk of an undesired top eve...
Wireless Sensor Network (WSN) being highly diversified cyber–physical system makes it vulnerable to ...
Data-driven techniques that extract insights from sensor data reduce the cost of improving system en...
Faults in wireless sensor networks are a common occurrence and their accumulation can have a signifi...
Sensors’ existence as a key component of Cyber-Physical Systems makes it susceptible to failures due...
It is almost certain that all systems contain faults, and Heating, Ventilation, and Air Conditioning...
Previously in her secondment at the University of Alberta, Nina created the continuous stirring tank...
Fault tree analysis is a well-known technique in reliability engineering and risk assessment, which ...
[Abstract ]:This paper proposes a methodology for dealing with an issue of crucial practical importa...
We present a decision tree learning approach to diagnosing failures in large Internet sites. We reco...
The application of fault tree analysis (FTA) to system safety and reliability is presented within th...
International audienceThis paper investigates various types of faults in District Heating & Cooling ...
Industries with safety-critical systems increasingly collect data on events occurring at the level o...
Cyber-physical systems have increasingly intricate architectures and failure modes, which is due to ...
Data-driven techniques that extract insights from sensor data reduce the cost of improving system en...
Fault tree analysis is a probability-based technique for estimating the risk of an undesired top eve...
Wireless Sensor Network (WSN) being highly diversified cyber–physical system makes it vulnerable to ...
Data-driven techniques that extract insights from sensor data reduce the cost of improving system en...
Faults in wireless sensor networks are a common occurrence and their accumulation can have a signifi...
Sensors’ existence as a key component of Cyber-Physical Systems makes it susceptible to failures due...
It is almost certain that all systems contain faults, and Heating, Ventilation, and Air Conditioning...
Previously in her secondment at the University of Alberta, Nina created the continuous stirring tank...
Fault tree analysis is a well-known technique in reliability engineering and risk assessment, which ...
[Abstract ]:This paper proposes a methodology for dealing with an issue of crucial practical importa...
We present a decision tree learning approach to diagnosing failures in large Internet sites. We reco...
The application of fault tree analysis (FTA) to system safety and reliability is presented within th...
International audienceThis paper investigates various types of faults in District Heating & Cooling ...