Diagnosing deviations and predicting faults is an important task, especially given recent advances related to Internet of Things. However, the majority of the efforts for diagnostics are still carried out by human experts in a time-consuming and expensive manner. One promising approach towards self-monitoring systems is based on the "wisdom of the crowd" idea, where malfunctioning equipments are detected by understanding the similarities and differences in the operation of several alike systems. A fully autonomous fault detection, however, is not possible, since not all deviations or anomalies correspond to faulty behaviors; many can be explained by atypical usage or varying external conditions. In this work, we propose a method which gradu...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
ISBN 978-0-7695-4843-2/12International audienceAmbient intelligence (AmI) systems are smart interact...
This research was partially supported by the Scottish Informatics and Computer Science Alliance (SIC...
Monitoring and maintaining the equipment to ensure its reliability and availability is vital to indu...
The ability to diagnose deviations and predict faults effectively is an important task in various in...
A fleet of commercial heavy-duty vehicles is a very interesting application arena for fault detectio...
This paper reports on a human-centered approach to monitoring complex systems which offers the fidel...
Funding for this research was provided by the Scottish Informatics and Computer Science Alliance.Aut...
Industrial collaborative robots (cobots) are known for their ability to operate in dynamic environme...
Creating fault detection software for complex mechatronic systems (e.g. modern vehicles) is costly b...
Self-monitoring solutions first appeared to avoid catastrophic breakdowns in safety-critical mechani...
st-andrews.ac.uk Autonomously detecting and recovering from faults is one approach for reducing the ...
Many applications based on Internet of Things (IoT) technology have recently founded in industry mon...
Abstract—Cognitive fault diagnosis systems differentiate from more traditional solutions by providin...
With the growing complexity of dynamic control systems, the effective diagnosis of all possible fail...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
ISBN 978-0-7695-4843-2/12International audienceAmbient intelligence (AmI) systems are smart interact...
This research was partially supported by the Scottish Informatics and Computer Science Alliance (SIC...
Monitoring and maintaining the equipment to ensure its reliability and availability is vital to indu...
The ability to diagnose deviations and predict faults effectively is an important task in various in...
A fleet of commercial heavy-duty vehicles is a very interesting application arena for fault detectio...
This paper reports on a human-centered approach to monitoring complex systems which offers the fidel...
Funding for this research was provided by the Scottish Informatics and Computer Science Alliance.Aut...
Industrial collaborative robots (cobots) are known for their ability to operate in dynamic environme...
Creating fault detection software for complex mechatronic systems (e.g. modern vehicles) is costly b...
Self-monitoring solutions first appeared to avoid catastrophic breakdowns in safety-critical mechani...
st-andrews.ac.uk Autonomously detecting and recovering from faults is one approach for reducing the ...
Many applications based on Internet of Things (IoT) technology have recently founded in industry mon...
Abstract—Cognitive fault diagnosis systems differentiate from more traditional solutions by providin...
With the growing complexity of dynamic control systems, the effective diagnosis of all possible fail...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
ISBN 978-0-7695-4843-2/12International audienceAmbient intelligence (AmI) systems are smart interact...
This research was partially supported by the Scottish Informatics and Computer Science Alliance (SIC...