Abstract
The problem of detecting sensor faults in the presence of modelling errors is addressed. In order to avoid false alarms, a statistical test is proposed in which the effects of undermodelling are properly taken into account using a stochastic embedding technique. The test concentrates on checking whether a weighted sum of prediction errors exceeds a particular threshold. The effectiveness of the test is demonstrated on a laboratory test rig.
Published Version
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