Title :
Condition monitoring of a complex hydraulic system using multivariate statistics
Author :
Helwig, Nikolai ; Pignanelli, Eliseo ; Schutze, Andreas
Author_Institution :
Centre for Mechatron. & Autom. Technol., Saarbrucken, Germany
Abstract :
In this paper, a systematic approach for the automated training of condition monitoring systems for complex hydraulic systems is developed and evaluated. We analyzed different fault scenarios using a test rig that allows simulating a reversible degradation of component´s conditions. By analyzing the correlation of features extracted from raw sensor data and the known fault characteristics of experimental obtained data, the most significant features specific to a fault case can be identified. These feature values are transferred to a lower-dimensional discriminant space using linear discriminant analysis (LDA) which allows the classification of fault condition and grade of severity. We successfully implemented and tested the system for a fixed working cycle of the hydraulic system. Furthermore, the classification rate for random load cycles was enhanced by a distribution analysis of feature trends.
Keywords :
condition monitoring; feature extraction; hydraulic systems; LDA; complex hydraulic system; complex hydraulic systems; component reversible degradation; condition monitoring systems; distribution analysis; feature extraction; linear discriminant analysis; multivariate statistics; random load cycles; raw sensor data; systematic approach; Condition monitoring; Cooling; Correlation; Correlation coefficient; Feature extraction; Valves; condition monitoring; hydraulic system; linear discriminant analysis; multivariate statistics;
Conference_Titel :
Instrumentation and Measurement Technology Conference (I2MTC), 2015 IEEE International
Conference_Location :
Pisa
DOI :
10.1109/I2MTC.2015.7151267