Intelligent Fault Diagnosis for Industrial Big Data (original) (raw)
References
Wu, X., Zhu, X., GQ, W., et al. (2014). Data mining with big data. IEEE Transactions on Knowledge and Data Engineering, 26(1), 97–107. Article Google Scholar
Blat, J., et al. (2016). Big data analysis for media production. Proceedings of the IEEE, 104(11), 2085–2113. Article Google Scholar
Zhou, P., et al. (2016). Differentially private online learning for cloud-based video recommendation with multimedia big data in social networks. IEEE Transactions on Multimedia, 18(6), 1217–1229. Article Google Scholar
Gai, K., Qiu, M., Zhao, H., et al. (2016). Dynamic energy-aware cloudlet-based mobile cloud computing model for green computing. Journal of Network and Computer Applications, 59(C), 46–54. Article Google Scholar
Gai, K., Qiu, M., & Zhao, H. (2017). Energy-aware task assignment for mobile cyber-enabled applications in heterogeneous cloud computing. Journal of Parallel & Distributed Computing, 111:126–135.
Gai, K., Qiu, M., Tao, L., et al. (2016). Intrusion detection techniques for mobile cloud computing in heterogeneous 5G. Security and Communication Networks, 9(16), 3049–3058. Article Google Scholar
Gai, K., Qiu, M., Ming, Z., et al. (2017). Spoofing-jamming attack strategy using optimal power distributions in wireless smart grid networks. IEEE Transactions on Smart Grid, 8(5), 2431–2439. Article Google Scholar
Gai, K., Qiu, L., Chen, M., et al. (2017). SA-EAST: security-aware efficient data transmission for ITS in mobile heterogeneous cloud computing. ACM Transactions on Embedded Computing Systems, 16(2), 1–22. Article Google Scholar
Qiu M, Chen Z, Ming Z, et al. (2014) Energy-aware data allocation with hybrid memory for mobile cloud systems. IEEE Systems Journal, (99), 1–10.
Qiu, M., Zhong, M., Li, J., et al. (2015). Phase-change memory optimization for green cloud with genetic algorithm. IEEE Transactions on Computers, 64(12), 3528–3540. ArticleMathSciNetMATH Google Scholar
Li, Y., Dai, W., Ming, Z., et al. (2016). Privacy protection for preventing data over-collection in Smart City. IEEE Transactions on Computers, 65(5), 1339–1350. ArticleMathSciNet Google Scholar
Zhu, X., Qin, X., & Qiu, M. (2011). QoS-aware fault-tolerant scheduling for real-time tasks on heterogeneous clusters. IEEE Transactions on Computers, 60(6), 800–812. ArticleMathSciNetMATH Google Scholar
Nandi, S., Toliyat, H. A., & Li, X. (2005). Condition monitoring and fault diagnosis of electrical motors—A review. IEEE Transactions on Energy Conversion, 20(4), 719–729. Article Google Scholar
Vas, P. (1993). Parameter estimation, condition monitoring, and diagnosis of electrical machines. Oxford: Clarendon. Google Scholar
Kim, K., Parlos, A. G., & Mohan Bharadwaj, R. (2003). Sensorless fault diagnosis of induction motors. IEEE Transactions on Industrial Electronics, 50(5), 1038–1051. Article Google Scholar
Kim, K., & Parlos, A. G. (2002). Induction motor fault diagnosis based on neuropredictors and wavelet signal processing. IEEE/ASME Transactions on Mechatronics, 7(2), 201–219. Article Google Scholar
Su, H., & Chong, K. T. (2007). Induction machine condition monitoring using neural network modeling. IEEE Transactions on Industrial Electronics, 54(1), 241–249. Article Google Scholar
Chen, Z., & Li, W. (2017). Multisensor feature fusion for bearing fault diagnosis using sparse autoencoder and deep belief network. IEEE Transactions on Instrumentation and Measurement, 66(7), 1693–1702. Article Google Scholar
Lei, Y., et al. (2016). An intelligent fault diagnosis method using unsupervised feature learning towards mechanical big data. IEEE Transactions on Industrial Electronics, 63(5), 3137–3147. Article Google Scholar
Seshadrinath, J., Singh, B., & Panigrahi, B. K. (2014). Vibration analysis based Interturn fault diagnosis in induction machines. IEEE Transactions on Industrial Informatics, 10(1), 340–350. Article Google Scholar
Liu, R., Meng, G., Yang, B., et al. (2017). Dislocated time series convolutional neural architecture: An intelligent fault diagnosis approach for electric machine. IEEE Transactions on Industrial Informatics, 13(3), 1310–1320. Article Google Scholar
Prieto, M. D., et al. (2013). Bearing fault detection by a novel condition-monitoring scheme based on statistical-time features and neural networks. IEEE Transactions on Industrial Electronics, 60(8), 3398–3407. Article Google Scholar
Shatnawi, Y., & Alkhassaweneh, M. (2014). Fault diagnosis in internal combustion engines using extension neural network. IEEE Transactions on Industrial Electronics, 61(3), 1434–1443. Article Google Scholar
Malik, H. K., & Mishra, S. (2016). Artificial neural network and empirical mode decomposition based imbalance fault diagnosis of wind turbine using TurbSim, FAST and Simulink. IET Renewable Power Generation, 11(6), 889–902. Article Google Scholar
Yang, Y., Yu, D., & Cheng, J. (2007). A fault diagnosis approach for roller bearing based on IMF envelope spectrum and SVM. Measurement, 40(9), 943–950. Article Google Scholar
Soualhi, A., Medjaher, K., & Zerhouni, N. (2014). Bearing health monitoring based on Hilbert–Huang transform, support vector machine, and regression. IEEE Transactions on Instrumentation and Measurement, 64(1), 52–62. Article Google Scholar
Ren, L., et al. (2016). Fault diagnosis using a joint model based on sparse representation and SVM. IEEE Transactions on Instrumentation and Measurement, 65(10), 2313–2320. Article Google Scholar
Kang, M., Kim, J., & Kim, J. (2015). An FPGA-based multicore system for real-time bearing fault diagnosis using ultrasampling rate AE signals. IEEE Transactions on Industrial Electronics, 62(4), 2319–2329. Article Google Scholar
Zhao, Z., Xin, H., Ren, Y., et al. (2010). Application and comparison of BP neural network algorithm in MATLAB, in Measuring Technology And Mechatronics Automation (ICMTMA), International Conference on. IEEE, pp. 590–593.
Chang, C. C., & Lin, C. J. (2011). LIBSVM: a library for support vector machines. ACM Transactions on Intelligent Systems and Technology (TIST), 2(3), 27. Google Scholar
Scholkopf, B., & Smola, A. J. Learning with kernels: support vector machines, regularization, optimization, and beyond (pp. 405–426). Cambridge: MIT press.
Zhang, J., & Zhang, W. (2013). Intelligent fault diagnosis and prognosis for equipment (pp. 162–178). China: National Defense Industry. Google Scholar