Muhammad T. Khan, Muhammad U. Qadir, Anam Abid, Fazal Nasir, and Clarence W. de Silva
[1] W. Wang, W. Dong, Y. Su, D. Wu, and Z. Du, Develop-ment of search-and-rescue robots for underground coal mineapplications, Journal of Field Robotics, 31(3), 2014, 386–407. [2] A. Kron, G. Schmidt, B. Petzold, M.I. Zah, P. Hinterseer, and E. Steinbach, Disposal of explosive ordnances by use of a bimanual haptic telepresence system, Proc. ICRA’04 IEEE International Conf. on Robotics and Automation, New Orleans, LA, 2004, 1968–1973. [3] G. de Cubber, H. Balta, and C. Lietart, Teodor: A semi-autonomous search and rescue and demining robot, Proc.Applied Mechanics and Materials, 658, 2014, 599–605. [4] C. Chen, B. Zhang, G. Vachtsevanos, and M. Orchard, Ma-chine condition prediction based on adaptive neuro-fuzzy and high-order particle filtering, IEEE Transactions on Industrial Electronics, 58(9), 2011, 4353–4364. [5] J. Yu, A nonlinear kernel Gaussian mixture model based inferential monitoring approach for fault detection and diagnosis of chemical processes, Chemical Engineering Science, 68(1), 2012, 506–519. [6] N. Meskin, E. Naderi, and K. Khorasani, A multiple model-based approach for fault diagnosis of jet engines, IEEE Transactions on Control Systems Technology, 21(1), 2013, 254–262. [7] I.A. Raptis and G. Vachtsevanos, An adaptive particle filtering-based framework for real-time fault diagnosis and failure prognosis of environmental control systems, Proceedings of the Prognostics and Health Management, 2011, 201. [8] A. Elfes, Occupancy grids: A stochastic spatial representation for active robot perception, arXiv preprint arXiv, 1304.1098, 2013. [9] Z. Chilengue, J.A. Dente, and P.J. Branco, An artificialimmune system approach for fault detection in the stator and rotor circuits of induction machines, Electric Power Systems Research, 81(1), 2011, 158–169. [10] E. Plett and S. Das, A new algorithm based on negativeselection and idiotypic networks for generating parsimonious detector sets for industrial fault detection applications, in Artificial immune systems (Berlin Heidelberg: Springer, 2009), 288–300. [11] Z. Gan, M.B. Zhao, and T.W. Chow, Induction machine fault detection using clone selection programming, Expert Systems with Applications, 36(4), 2009, 8000–8012. [12] C.A. Laurentys, G. Ronacher, R.M. Palhares, and W.M.Caminhas, Design of an artificial immune system for faultdetection: A negative selection approach, Expert Systems with Applications, 37(7), 2010, 5507–5513. [13] W. Zhao and C.E. Davis, A modified artificial immune system based pattern recognition approach – An application to clinical diagnostics, Artificial Intelligence in Medicine, 52(1), 2011, 1–9. [14] T.D. Do, S.C. Hui, A.C.M. Fong, and B. Fong, Associative classification with artificial immune system, IEEE Transactions on Evolutionary Computation, 13(2), 2009, 217–228. [15] C.A. Laurentys, R.M. Palhares, and W.M. Caminhas, A novel artificial immune system for fault behavior detection, Expert Systems with Applications, 38(6), 2011, 6957–6966. [16] E. Guillen and R. Paez, Artificial immune systems – AISas security network solution, in Bio-inspired models of network, information, and computing systems (Berlin Heidelberg: Springer, 2012), 680–681. [17] X. Huang, Z. Shao, J. Pan, X. Ji, and Y. Lin, Mining algorithm of ship arrival pattern based on AIS data, Bridges, 10, 2014, 9780784413159-400. [18] M. Soika, Grid based fault detection and calibration of sensors on mobile robots, Proc. 1997 IEEE International Conf. on Robotics and Automation, Albuquerque, NM, 1997, 2589–2594. [19] P. Goel, G. Dedeoglu, S.I. Roumeliotis, and G. Sukhatme, Fault detection and identification in a mobile robot using multiple model estimation and neural network, Proc. IEEE International Conf. on Robotics and Automation, ICRA’00, Los Angeles, CA, 2000, 2302–2309. [20] Z. Cai, Z. Duan, J. Cai, X. Zou, and J. Yu, A multiple particle filters method for fault diagnosis of mobile robot dead-reckoning system, IEEE/RSJ International Conf. on Intelligent Robots and Systems IROS 2005, Hunan, China, 2005, 481–486. [21] Z. Duan, Z. Cai, and J. Yu, Adaptive particle filter for unknown fault detection of wheeled mobile robots, IEEE/RSJ International Conf. on Intelligent Robots and Systems, Beijing, China, 2006, 1312–1315. [22] R.A. Carrasco, F. N´u˜nez, and A. Cipriano, Fault detection and isolation in cooperative mobile robots using multilayer architecture and dynamic observers, Robotica, 29(4), 2011, 555–562. [23] T. Knight and J. Timmis, A multi-layered immune inspired approach to data mining, Proc. 4th International Conf. on Recent Advances in Soft Computing, Nottingham, UK, 2003, 195–201. [24] D.L. Chao and S. Forrest, Information immune systems,Genetic Programming and Evolvable Machines, 4(4), 2003,311–331. [25] F. Gonz´alez, D. Dasgupta, and J. G´omez, The effect of binary matching rules in negative selection, Genetic and Evolutionary Computation—GECCO 2003, Chicago, IL, 2003, 195–206. [26] J. Timmis and M. Neal, A resource limited artificial immune system for data analysis, Knowledge-Based Systems, 14(3), 2001, 121–130. [27] J. Timmis, M. Neal, and J. Hunt, An artificial immune system for data analysi, Biosystems, 55(1), 2000, 143–150. [28] E. K. Burke and G. Kendall, Search Methodologies (Springer Science+ Business Media, Incorporated, 2005). [29] I. Lundkvist, A. Coutinho, F. Varela, and D. Holmberg,Evidence for a functional idiotypic network among naturalantibodies in normal mice, Proceedings of the National Academy of Sciences, 86(13), 1989, 5074–5078. [30] N.K Jerne, Towards a network theory of the immune system, Proc. of Annales d’immunologie, 1974, 373–389. [31] M. Cohn, N.A. Mitchison, W.E. Paul, A.M. Silverstein, D.W. Talmage, and M. Weigert, Reflections on the clonal-selection theory, Nature Reviews Immunology, 7(10), 2007, 823–830. [32] S. Forrest, A. Perelson, L. Allen, and R. Cherukuri, Self-non-self discrimination in a computer, Proc. IEEE Symposium on Security and Privacy, Oakland, CA, 1994, 202–202. [33] Z. Ji and D. Dasgupta, Revisiting negative selection algorithms, Evolutionary Computation, 15(2), 2007, 223–251. [34] D. Shane and Y. Xiao-Hua, Bioinformatics data mining using artificial immune systems and neural networks, Proc. IEEE International Conf. on Information and Automation (ICIA), Harbin, China, 2010, 440–445. [35] F. Gonzalez and D. Dasgupta, A study of artificial immune systems applied to anomaly detection (Memphis, TN: University of Memphis, 2003). [36] J. Kim and P. Bentley, Immune memory and gene libraryevolution in the dynamic clonal selection algorithm, Genetic Programming and Evolvable Machines, 5(4), 2004, 361–391. [37] J. Kim and P.J. Bentley, Towards an artificial immune system for network intrusion detection: An investigation of dynamic clonal selection, Proc. of the 2002 Congress on Evolutionary Computation, Honolulu, HI, 2002, 1015–1020. [38] Z. Ji, Negative selection algorithms: From the thymus to V-detector, Doctoral Dissertation, The University of Memphis, Memphis, TN, 2006. [39] C. Wang, X. Yuan, H. Ning, and X. Lian, Similarity evaluation of XML documents based on weighted element tree model, in Advanced data mining and applications (Berlin Heidelberg: Springer, 2009). [40] L.N. De Castro and F.J. Von Zuben, Artificial immunesystems – Part I: Basic theory and applications, Tech. Rep,1999. 210, Universidade Estadual de Campinas, Dezembro de.
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