Knowledge Based Wear Particle Analysis
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 32799
Knowledge Based Wear Particle Analysis

Authors: Mohammad S. Laghari, Qurban A. Memon, Gulzar A. Khuwaja

Abstract:

The paper describes a knowledge based system for analysis of microscopic wear particles. Wear particles contained in lubricating oil carry important information concerning machine condition, in particular the state of wear. Experts (Tribologists) in the field extract this information to monitor the operation of the machine and ensure safety, efficiency, quality, productivity, and economy of operation. This procedure is not always objective and it can also be expensive. The aim is to classify these particles according to their morphological attributes of size, shape, edge detail, thickness ratio, color, and texture, and by using this classification thereby predict wear failure modes in engines and other machinery. The attribute knowledge links human expertise to the devised Knowledge Based Wear Particle Analysis System (KBWPAS). The system provides an automated and systematic approach to wear particle identification which is linked directly to wear processes and modes that occur in machinery. This brings consistency in wear judgment prediction which leads to standardization and also less dependence on Tribologists.

Keywords: Computer vision, knowledge based systems, morphology, wear particles.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1084732

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 1698

References:


[1] H. P. Jost, "Tribology - Origin and Future," in Wear, vol. 139, 1990, pp. 1-17.
[2] B. J. Roylance and T. M. Hunt, Wear Debris Analysis, Coxmoor Publishing, Oxford, 1999.
[3] W. W. Seifert and V. C. Westcott, "A method for the study of wear particles in lubricated oil," in Wear, vol. 21, 1972, pp. 27-42.
[4] T. M. Hunt, Handbook of Wear Debris Analysis and Particle Detection in Fluids, Elsevier Science, London, New York, 1993.
[5] A. C. Cumming, "Condition monitoring today and tomorrow - an airline perspective," presented at the 1989 Int. Conf. COMADEN 89, Birmingham, U.K.
[6] T. P. Sperring and B. J. Roylance, "Some recent development in the use of quantitative procedures for performing wear debris analysis," JOAP International Condition Monitoring Conference, Mobile, Al., 2000, pp. 205-210.
[7] G. A. Khuwaja and M. S. Laghari, "Computer vision techniques for wear debris analysis," in Int. J. Computer Applications in Technology, vol. 15, no. 1/2/3, 2002, pp. 70-78.
[8] M. S. Laghari and A. Boujarwah, "Wear particle identification using image processing techniques," in ISCA 5th Int. Conf. on Intelligent Systems, Reno, Nevada, 1996, pp. 26-30.
[9] Leica Cambridge Ltd., Leica Q500MC Qwin User Manual, Leica Cambridge Ltd., U.K., 1994.
[10] H. Xu, A. R. Luxmoore and F. Deravi, "Comparison of shape features for the classification of wear particles," in Engineering Applications of Artificial Intelligence, vol. 10, no. 5, 1997, pp. 485-493.
[11] S. Raadnui, Wear Particle Characterisation Utilising Computer Image Analysis, Ph.D. Thesis, Dept. Mech. Eng., University of Wales, Swansea, 1996.
[12] B. J. Roylance, "Wear debris analysis for condition monitoring," in INSIGHT 36, vol. 8, 1994, pp. 606-610.
[13] M. S. Laghari, "Shape and edge detail analysis for wear debris identification," in Int. J. of Computers and their Applications, vol. 10, no. 4, 2003, pp. 271-279.
[14] A. K. Muhamad and F. Deravi, "Neural networks for texture classification," in IEE 4th Int. Conf. on Image Processing and its Applications - IPA'92, Maastricht, The Netherlands, 1992, pp. 201-204.
[15] J. Garcia-Consuegra and G. Cisneros, "Integration of gabor functions with coocurrence matrices: Application to woody crop location in remote sensing," in IEEE Int. Conf. on Image Processing, vol. II, Kobe, 1999, pp. 330-333.
[16] M. S. Laghari, "Recognition of texture types of wear particles," in Int. J. of Neural Comp. & Applications, vol. 12, 2003, pp. 18-25.