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Article Dans Une Revue Mechanical Systems and Signal Processing Année : 2015

Robust signal reconstruction for condition monitoring of industrial components via a modified Auto Associative Kernel Regression method

Piero Baraldi
Francesco Di Maio
Pietro Turati

Résumé

In this work, we propose a modification of the traditional Auto Associative Kernel Regression (AAKR) method which enhances the signal reconstruction robustness, i.e., the capability of reconstructing abnormal signals to the values expected in normal conditions. The modification is based on the definition of a new procedure for the computation of the similarity between the present measurements and the historical patterns used to perform the signal reconstructions. The underlying conjecture for this is that malfunctions causing variations of a small number of signals are more frequent than those causing variations of a large number of signals. The proposed method has been applied to real normal condition data collected in an industrial plant for energy production. Its performance has been verified considering synthetic and real malfunctioning. The obtained results show an improvement in the early detection of abnormal conditions and the correct identification of the signals responsible of triggering the detection.
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hal-01265655 , version 1 (01-02-2016)

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Piero Baraldi, Francesco Di Maio, Pietro Turati, Enrico Zio. Robust signal reconstruction for condition monitoring of industrial components via a modified Auto Associative Kernel Regression method. Mechanical Systems and Signal Processing, 2015, 60-61, pp.29-44. ⟨10.1016/j.ymssp.2014.09.013⟩. ⟨hal-01265655⟩
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