AIFeb 13, 2013

A Probabilistic Model For Sensor Validation

arXiv:1302.3585v131 citations
Originality Incremental advance
AI Analysis

This addresses sensor validation for industrial plant operation, but it is incremental as it builds on existing knowledge-based techniques.

The paper tackles the problem of distinguishing real from apparent sensor faults in industrial plants by developing a probabilistic model and constraint management algorithm, applied to a power plant model.

The validation of data from sensors has become an important issue in the operation and control of modern industrial plants. One approach is to use knowledge based techniques to detect inconsistencies in measured data. This article presents a probabilistic model for the detection of such inconsistencies. Based on probability propagation, this method is able to find the existence of a possible fault among the set of sensors. That is, if an error exists, many sensors present an apparent fault due to the propagation from the sensor(s) with a real fault. So the fault detection mechanism can only tell if a sensor has a potential fault, but it can not tell if the fault is real or apparent. So the central problem is to develop a theory, and then an algorithm, for distinguishing real and apparent faults, given that one or more sensors can fail at the same time. This article then, presents an approach based on two levels: (i) probabilistic reasoning, to detect a potential fault, and (ii) constraint management, to distinguish the real fault from the apparent ones. The proposed approach is exemplified by applying it to a power plant model.

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