You are in:Home/Publications/M.M. SALAMA, E.M. SAIED, M.M. ABO ELSAAD, E.F. GERIANY, "Estimating the voltage collapse proximity indicator using artificial neural networks", Journal of Engineering and Applied Science, Faculty of Eng., Cairo University, Vol. 47, No. 1, Feb., pp. 147-163. It has been accepted for publication, also, in Energy Conversion & Management.

Prof. Mohamed Moenes Mohamed Salama :: Publications:

Title:
M.M. SALAMA, E.M. SAIED, M.M. ABO ELSAAD, E.F. GERIANY, "Estimating the voltage collapse proximity indicator using artificial neural networks", Journal of Engineering and Applied Science, Faculty of Eng., Cairo University, Vol. 47, No. 1, Feb., pp. 147-163. It has been accepted for publication, also, in Energy Conversion & Management.
Authors: M.M. SALAMA, E.M. SAIED, M.M. ABO ELSAAD, E.F. GERIANY
Year: 2000
Keywords: Not Available
Journal: Journal of Engineering and Applied Science, Faculty of Eng., Cairo University. It has been accepted for publication, also, in Energy Conversion & Management.
Volume: Vol. 47
Issue: No. 1
Pages: pp. 147-163
Publisher: Not Available
Local/International: Local
Paper Link: Not Available
Full paper Mohamed Moenes Mohamed Salama _PAPER_03 ESTIMATING THE VOLTAGE COLLAPSE PROXIMITY INDICATOR.doc
Supplementary materials Not Available
Abstract:

Modern power systems are currently operating under heavily loaded conditions due to various economic, environmental, and regulatory changes. Consequently, maintaining voltage stability has become a growing concern for electric power utilities. With the increased loading and exploitation of the power transmission system, the problem of voltage stability and voltage collapse attracts more and more attention. A voltage collapse can take place in systems and subsystems, and can appear quite abruptly. There are different methods used to study the voltage collapse phenomenon, such as the Jacobian method, the voltage instability proximity index (VIPI) and the voltage collapse proximity indicator method. This paper is concerned with the problem of voltage stability, and investigates a proposed voltage collapse proximity indicator applicable to the load points of a power system. Voltage instability is early predicted using artificial neural networks on the basis of a voltage collapse proximity indicator. Different system loading strategies are studied and evaluated. Test results on a sample and large power system demonstrate the merits of the proposed approach. The objective of this paper is to present the application of ANN in estimating the voltage collapse proximity indicator of a power system.

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