This content is not included in
your SAE MOBILUS subscription, or you are not logged in.
Self-Organizing Maps with Unsupervised Learning for Condition Monitoring of Fluid Power Systems
Technical Paper
2006-01-3492
ISSN: 0148-7191, e-ISSN: 2688-3627
Annotation ability available
Sector:
Language:
English
Abstract
The goal of this paper is to study a proactive condition monitoring system for fluid power systems where the Self-Organizing Maps (SOM) with unsupervised learning is used to classify and interpret high-dimensional data measurements. If all the damages are not assumed to be known before diagnostics, an ordinary neural network with supervised learning for their detection can not be used. Operation of the proactive condition monitoring system is tested in a test system where two fault types are used. The test system is run in normal and two different fault situations. Measurement results are used for training and testing the SOM. In this paper these measurement results and also the quality of state recognition are shown.
Recommended Content
Authors
- T. Krogerus - Tampere University of Technology, Institute of Hydraulics and Automation
- J. Vilenius - Tampere University of Technology, Institute of Hydraulics and Automation
- J. Liimatainen - Tampere University of Technology, Institute of Hydraulics and Automation
- K.T. Koskinen - Tampere University of Technology, Institute of Hydraulics and Automation
Citation
Krogerus, T., Vilenius, J., Liimatainen, J., and Koskinen, K., "Self-Organizing Maps with Unsupervised Learning for Condition Monitoring of Fluid Power Systems," SAE Technical Paper 2006-01-3492, 2006, https://doi.org/10.4271/2006-01-3492.Also In
References
- Alhoniemi, E. Hollmén, J. Simula, O. Vesanto, J. 1999 Process Monitoring and Modeling Using the Self-Organizing Map Integrated Computer-Aided Engineering 6 1 3 14
- Crowther, W. Edge, K. Burrows, C. Atkinson, R. Woollons, D. 1998 Fault Diagnosis of a Hydraulic Actuator Circuit Using Neural Networks - A State Space Classification Approach Proc IMechE, Part I, Journal of Systems and Control Engineering 212
- Hagan, M. Demuth, H. Beale, M. 2002 Neural Network Design PWS Publishing Company Boston 1st
- Kohonen, T. 2001 Self-Organizing Maps Springer-Verlag Berlin Heidelberg New York 3rd
- Krogerus, T. Vilenius, J. Liimatainen, J. Hyvönen, M. Koskinen, K.T. 2005 Wireless Proactive Condition Monitoring of Pilot Operated Proportional Valve The Ninth Scandinavian Conference on Fluid Power, SICFP'05 Linköping, Sweden
- Krogerus, T. Vilenius, J. Liimatainen, J. Koskinen, K.T. 2006 Applying Self-Organizing Maps to Condition Monitoring of Fluid Power Systems 4 th FPNI-PhD Symposium Sarasota/Florida 2006 Florida, USA
- Kuravsky, L. Baranov, S. 2001 Application of Self-Organizing Feature Maps for Diagnostics of Vibroacoustic Systems International Conference on Condition Monitoring St. Catherine's College Oxford, UK
- Le, T. Watton, J. Pham, D. 1997 An artificial neural network based approach to fault diagnosis and classification of fluid power systems Proc IMechE, Part I, Journal of Systems and Control Engineering 206 215 214
- Liangchai, Z. Kuisheng, C. Guozheng, S. 2003 Characteristic Curves Based Faulty Model Identification for Electro-Hydraulic Servo Valve Neural Network Fourth International Symposium on Fluid Power Transmission and Control, ISFP'2003 Beijing, China
- Liimatainen, J. 2006 Dynamic User Interface for Proactive Condition Monitoring of Proportional Valve Tampere University of Technology Finland
- Mathworks Inc 2006 http://www.mathworks.com/
- Mundry, S. Stammen, C. 2002 Condition Monitoring für die Fluidtechnik Beitrag in O+P Ölhydraulik & Pneumatik 46 2
- Ramdén, T. 1998 Condition Monitoring and Fault Diagnosis of Fluid Power Systems - A Approaches with Neural Networks and Parameter Identification Linköping University Sweden
- SOM Toolbox 2006 http://www.cis.hut.fi/projects/somtoolbox/
- Sorsa, T. 1995 Neural Network Approach to Fault Diagnosis Tampere University of Technology Finland
- Vesanto, J. 2002 Data Exploration Process Based on the Self-Organizing Map Acta Polytechnica Scandinavica, Mathematics and Computing Series No. 115 Helsinki University of Technology Finland