Information Technology Reference
In-Depth Information
Mallat, S. G. (1989). A theory for multiresolution signal decomposition: The wavelet represen-
tation. IEEE Transactions on Pattern Analysis and Machine Intelligence, 11(7), 674 - 693.
Misra, M., Yue, H., Qin, S., & Ling, C. (2002). Multivariate process monitoring and fault
diagnosis by multi-scale PCA. Computers and Chemical Engineering, 26(9), 1281 - 1293.
Mugdadi, A., & Ahmad, I. A. (2004). A bandwidth selection for kernel density estimation of
functions of random variables. Computational Statistics and Data Analysis, 47(1), 49
62.
Odiowei, P.-E., & Cao, Y. (2010). Nonlinear dynamic process monitoring using canonical variate
analysis and kernel density estimations. IEEE Transactions on Industrial Informatics, 6(1),
36
-
45.
Parzen, E. (1962). On estimation of a probability density function and mode. The Annals of
Mathematical Statistics, 33(3), 1065
-
1076.
Patton, R., Uppal, F., & Lopez-Toribio, C. (2000). Soft computing approaches to fault diagnosis
for dynamic systems: a survey. In 4th IFAC Symposium on Fault Detection supervision and
Safety for Technical Processes (pp. 298
-
311). Budapest, Hungary.
Pedra, J., Candela, I., & Barrera, A. (2009). Saturation model for squirrel-cage induction motors.
Electric Power Systems Research, 79(7), 1054 - 1061.
Ran, L., & Penman, J. (2008). Condition monitoring of rotating electrical machines (Vol. 56).
London, United Kingdom: Institution of Engineering and Technology.
Rao, C. R. (1948). The utilization of multiple measurements in problems of biological
classi cation. Journal of the Royal Statistical Society Series B, 10(2), 159 - 203.
Rodriguez, P., Belahcen, A., & Arkkio, A. (2006). Signatures of electrical faults in the force
distribution and vibration pattern of induction motors. Electric Power Applications, IEE
Proceedings, 153(4), 523
-
529.
Samsi, R., Ray, A., & Mayer, J. (2009). Early detection of stator voltage imbalance in three-phase
induction motors. Electric Power Systems Research, 79(1), 239
-
245.
Sawalhi, N., & Randall, R. (2008a). Simulating gear and bearing interactions in the presence of
faults: Part I. the combined gear bearing dynamic model and the simulation of localised bearing
faults. Mechanical Systems and Signal Processing, 22(8), 1924
-
1951.
Sawalhi, N., & Randall, R. (2008b). Simulating gear and bearing interactions in the presence of
faults: Part II. simulation of the vibrations produced by extended bearing faults. Mechanical
Systems and Signal Processing, 22(8), 1952
-
1966.
Sheather, S. J. (2004). Density estimation. Statistical science (pp. 588
-
597).
Shuting, W., Heming, L., & Yonggang, L. (2002). Adaptive radial basis function network and its
application in turbine-generator vibration fault diagnosis. In Power system technology, 2002.
Proceedings of PowerCon 2002. International Conference on (Vol. 3 pp. 1607 - 1610).
Singh, G., & Ahmed, S. A. K. S. (2004). Vibration signal analysis using wavelet transform for
isolation and identi cation of electrical faults in induction machine. Electric Power Systems
Research, 68(2), 119 - 136.
Stuart, M., Mullins, E., & Drew, E. (1995). Statistical quality control and improvement. European
Journal of Operational Research, 88(2), 203
-
214.
Taniguchi, S., Akhmetov, D., & Dote, Y. (1999). Fault detection of rotating machine parts using
novel
-
fuzzy neural network.
In Systems, Man, and Cybernetics, 1999.
IEEE SMC
'
99
Conference Proceedings. 1999 IEEE International Conference on, (Vol. 1, pp. 365
-
369).
Tokyo.
Tavner, P. (2008). Review of condition monitoring of rotating electrical machines. IET Electric
Power Applications, 2(4), 215
247.
Thomson, W., & Fenger, M. (2001). Current signature analysis to detect induction motor faults.
Industry Applications Magazine, IEEE, 7(4), 26
-
34.
Tran, V. T., Yang, B.-S., Oh, M.-S., & Tan, A. C. C. (2009). Fault diagnosis of induction motor
based on decision trees and adaptive neuro-fuzzy inference. Expert Systems with Applications,
36(2, Part 1), 1840 - 1849.
Venkatasubramanian, V., Rengaswamy, R., Yin, K., & Kavuri, S. N. (2000a). A review of process
fault detection and diagnosis part I: Quantitative model-based methods. Computers and
Chemical Engineering, 27(3), 293 - 311.
-
Search WWH ::




Custom Search