A.H. Al-Badi, K. Ellithy, and S. Al-Alawi
[1] Y. Li, F. Dawalibi, & J. Ma, Electromagnetic interference caused by a power system network and a neighboring pipeline, Proceedings of the 62nd Annual Meeting of the American Power Conference, Chicago, April 10–12, 2000, 311–316. [2] F. Dawalibi, R. Southey, J. Ma, & Y. Li, On the mechanisms of electromagnetic interference between electrical power systems and neighboring pipelines, NACE 2000, T10B Symposium on DC & AC Interference, Orlando, March 26–31, 2000. [3] Y. Baba & M. Ishii, Numerical electromagnetic field analysis on lighting surge response of tower with shield wire, IEEE Transactions on Power Delivery, 15(3), July 2000, 1010–1015.20 [4] R. Southey, W. Ruan, & F. Dawalibi, AC Mitigation Requirements: A Parametric Analysis, The Corrosion/2001 NACE International Conference, Texas, March 11–16, 2001. [5] K.J. Satsios, D.P. Labridis, & P.S. Dokopoulos, The influence of nonhomogeneous earth on inductive interference caused to telecommunication cables by nearby AC electric traction lines, IEEE Transactions on Power Delivery, 15(3), July 2000, 1016–1020. [6] R.F. Allen, Determining the effects on pipelines built in electric transmission ROW, Pipeline & Gas Journal, February 2001/www.undergroundinfo.com. [7] K. Ellithy, A.H. Al-Badi, & S. Al-Alawi, An artificial neural network model for predicting electromagnetic interference effects on gas pipelines built in power lines row, International Journal of Engineering Intelligent System, 12, December 2004, 229–235. [8] F. Dawalibi & R. Southy, Analysis of electrical interference from power lines to gas pipelines Part I: Computation Methods, IEEE Transactions on Power Delivery, 4(3), July 1999, 1840–1846. [9] Power Line-induced AC Potential on Natural Gas Pipelines for complex rights-of-way configuration, EPRI EL-3106, Project 742 –2 Final Report, 2, May 1983. [10] ANSI/IEEE Std. 80. IEEE Guide for Safety in AC StationGrounding, 1986. [11] NACE RP-0177. Mitigation of Alternating Current and Lighting Effects on Metallic Structures and Corrosion Control Systems, 1995. [12] CDEGS Software, Safe Engineering Services & Technologies Ltd., Canada. [13] R. Southey & F. Dawalibi, Advance in interference analysis and mitigation on pipelines, NACE International Canadian Region International Conference 95, Canada, October 31, 1995. [14] M. El-Sharkawi & D. Niebur, Applications of artificial neural networks to power systems, IEEE Intelligent Systems Applications of Power Systems, Working Group IEEE, Catalog No. 96 TP 112–0, 1996. [15] S.M. Al-Alawi & K.A. Ellithy, Tuning of SVC damping controllers over a wide range of load models using an artificial neural network, International Journal of Electric Power & Energy Systems, 22(6), 2000, 405–420. [16] S.M. Islam, S.M. Al-Alawi, & K. Ellithy, Forecasting monthly electrical load and energy for a fast growing utility using artificial neural network, Electric Power System Research Journal, 34(1), 1995, 1–9. [17] S. Al-Alawi, A.H. Al-Badi, & K. Ellithy, An artificial neural network model for predicting gas pipeline induced voltage caused by power lines under fault conditions, International Journal for Computation and Mathematics in Electrical and Electronic Engineering (COMPEL), 24(1), 2005, 69–80. [18] A.H. Al-Badi & H. Al-Rizzo, Simulation of electromagnetic coupling on pipelines close to overhead transmission lines: A parametric study, Journal of Communications Software and Systems (Journal of Communications Software and Systems(JCOMSS), 1(2), December 2005, 116–125. [19] J.C. Ruiz-Su´arez, O.A. Mayora-Ibarra, J. Torres-Jim´enez, & L.G. Ruiz-Su´arez, Short-term ozone forecasting by artificial neural networks, Advances Engineering Software, 23, 1995 143–149. [20] S. Heravi, D.R. Osborn, & C.R. Birchenhall, Linear versus neural network forecasts for European industrial production series, International Journal of Forecasting, 20, 2004, 435–446. [21] G.P. Zhang, E.B. Patuwo, & M.Y. Hu, Forecasting withartificial neural networks: The state of the art, International Journal Forecasting, 14, 1998, 35–62. [22] G.P. Zhang, Time series forecasting using a hybrid ARIMA and neural network model, Neurocomputing, 50, 2003, 159–175. [23] J.D. Olden & D.A. Jackson, Illuminating the “black box : A randomization approach for understanding variable contributions in artificial neural networks. Ecological Modelling, 154, 2002, 135–150. [24] M. Gevrey, I. Dimopoulos, & S. Lek, Review and comparison of methods to study the contribution of variables in artificial neural network models, Ecological Modelling 160, 2003, 249–264. [25] J. Stanley, Introduction to neural networks, Third edition(Sierra Madre, California: California Scientific Software, 1990). [26] P.K. Simpson, Artificial neural systems: Foundations,paradigms, applications, and implementations (Elmsford, NY:Pergamon Press, Inc., 1990). [27] D.E. Rumelhart & J.L. McClelland, Parallel distribution processing: Exploration in the microstructure of cognition, 1, Foundations, MIT Press, 1986. [28] C. Looney, Pattern recognition using neural networks, (NY: Oxford University Press, 1997). [29] R.D. Reed & R.J. Marks, Neural Smithing Cambridge: (MIT Press, 1999). [30] C.M. Bishop, Neural networks for pattern recognition Oxford:(Clarendon Press, 1995). [31] S. Lek, M. Delacoste, I. Dimopoulos, J. Lauga, & S. Aulagnier, Application of neural networks to modeling nonlinear relationships in ecology, Ecology Model., 90, 1996, 39–52. [32] J.D. Olden & D.A. Jackson, Fish-habitat relationships in lakes: Gaining predictive and explanatory insight by using artificial neural networks, Trans. Am. Fish. Soc., 130, 2001, 878–897. [33] NeuroShellTM, Neural Network Shell 2 Program, fourth edition,(Ward Systems Group, Inc., 245 W. Patrick St., Frederick, MD 21701). [34] G.D. Garson, Interpreting neural-network connection weights, AI Expert, 6(7), 1991, 47–51. [35] T.C. Goh, Back-propagation neural networks for modeling complex systems, Artificial Intelligence in Engineering, 9, 1995, 143–151. [36] M. Gevrey, I. Dimopoulos, & S. Lek, Review and comparison of methods to study the contribution of variables in artificial neural network models, Ecological Modelling, 160, 2003, 249–264. [37] J. Olden, M. Joy, & R. Death, An acuarte comparison ofmethods for quantifying variable importance in artificial neural networks using simulated data, Ecological Modelling, 178, 2004, 389–397. [38] J. Orden & D. Jackson, Illuminating the “black Box a ran-domization approach for understanding variable contribution in artificial neural networks, Ecological Modelling, 154, 2002,135–150.
Important Links:
Go Back