Sensor data fusion and interpretation, sensor failure detection, isolation and identification are extremely important activities for the safety of a nuclear power plant. In particular, they become critical in cases of conflicts among the data. If the monitored system's description model is correct and its components work properly, then incompatibilities among data may only be attributed to temporary deterioration or permanent breakage of one or more sensors. This paper introduces and discusses the conception of a distributed monitoring system able to attach each sensor with a statistically-evaluated relative degree of reliability, which is especially useful for devices situated in dangerous zones or areas, difficult to reach inside huge and complex power plants.

A self-diagnosing distributed monitoring system for nuclear power plants

Giorgini, Paolo;
1998-01-01

Abstract

Sensor data fusion and interpretation, sensor failure detection, isolation and identification are extremely important activities for the safety of a nuclear power plant. In particular, they become critical in cases of conflicts among the data. If the monitored system's description model is correct and its components work properly, then incompatibilities among data may only be attributed to temporary deterioration or permanent breakage of one or more sensors. This paper introduces and discusses the conception of a distributed monitoring system able to attach each sensor with a statistically-evaluated relative degree of reliability, which is especially useful for devices situated in dangerous zones or areas, difficult to reach inside huge and complex power plants.
1998
Methodology and Tools in Knowledge-Based Systems: 11th International Conference on Industrial and Engineering Applications of Artificial Intelligence and Expert Systems
Germania
Springer
9783540645825
A., Dragoni; Giorgini, Paolo; M., Panti
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/94864
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