A multivariate statistical approach to the implementation of a health monitoring system of mechanical power drives
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Abstract
The implementation in service of accelerometric health monitoring systems of mechanical power drives has shown that a considerable number of false failure alarms is generated. The paper presents a combined application of several multivariate statistical techniques and shows how a monitoring method which integrates these tools can be successfully exploited in order to improve the reliability of the diagnostic systems.
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helicopters, multivariate statistical analysis, mechanical power drives
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