Abstract — Current spacecraft health monitoring and fault diagnosis practices involve around-the-clock limit-checking and trend analysis on large amount of telemetry data. They do not scale well for future multi-platform space missions due the size of the telemetry data and an increasing need to make the long-duration missions cost-effective by limiting the operations team personnel. The need for efficient utilization of telemetry data achieved by employing machine learning and reasoning algorithms has been pointed out in the literature for enhancing diagnostic performance and assisting the less-experienced personnel in performing monitoring and diagnosis tasks. In this paper, we develop a systematic and transparent fault diagnosis methodol...
A new cooperative fault accommodation algorithm based on a multi-level hierarchical architecture is ...
In this paper, we investigate the use of Bayesian networks to construct large-scale diagnostic syste...
Spacecraft systems collect health-related data continuously, which can give an indication of the sys...
Current spacecraft health monitoring and fault-diagnosis practices involve around-the-clock limit-ch...
Health monitoring and fault diagnosis in traditional single spacecraft missions are mostly accomplis...
Abstract—Despite their size, small spacecraft have highly com-plex architectures with many sensors a...
In current aircraft maintenance, diagnostic and troubleshooting procedures may sometimes consume gre...
Many satellite anomalies manifest themselves slowly over time and go undetected until they reach cri...
This paper describes how to exploit the modeling features and inference capabilities of dynamic Baye...
The increasing numbers and complexity of spacecraft is driving a growing need for automated fault de...
With increasing complexity of aircraft systems and various operational environments, fault modes and...
Modern aircraft, both piloted fly-by-wire commercial aircraft as well as UAVs, more and more depend ...
Software Health Management (SWHM) is an emerging field which addresses the critical need to detect, ...
Abstract. The correct detection of a fault can save worthy resources or even prevent the destruction...
Results of preliminary research on the design of a knowledge based fault diagnosis system for use wi...
A new cooperative fault accommodation algorithm based on a multi-level hierarchical architecture is ...
In this paper, we investigate the use of Bayesian networks to construct large-scale diagnostic syste...
Spacecraft systems collect health-related data continuously, which can give an indication of the sys...
Current spacecraft health monitoring and fault-diagnosis practices involve around-the-clock limit-ch...
Health monitoring and fault diagnosis in traditional single spacecraft missions are mostly accomplis...
Abstract—Despite their size, small spacecraft have highly com-plex architectures with many sensors a...
In current aircraft maintenance, diagnostic and troubleshooting procedures may sometimes consume gre...
Many satellite anomalies manifest themselves slowly over time and go undetected until they reach cri...
This paper describes how to exploit the modeling features and inference capabilities of dynamic Baye...
The increasing numbers and complexity of spacecraft is driving a growing need for automated fault de...
With increasing complexity of aircraft systems and various operational environments, fault modes and...
Modern aircraft, both piloted fly-by-wire commercial aircraft as well as UAVs, more and more depend ...
Software Health Management (SWHM) is an emerging field which addresses the critical need to detect, ...
Abstract. The correct detection of a fault can save worthy resources or even prevent the destruction...
Results of preliminary research on the design of a knowledge based fault diagnosis system for use wi...
A new cooperative fault accommodation algorithm based on a multi-level hierarchical architecture is ...
In this paper, we investigate the use of Bayesian networks to construct large-scale diagnostic syste...
Spacecraft systems collect health-related data continuously, which can give an indication of the sys...