Application of artificial intelligent systems for real power transfer allocation

Shareef Hussain , Abd. Khalid Saifulnizam , Sulaiman Herwan Mohd , Mustafa Wazir Mohd

Journal of Central South University ›› 2014, Vol. 21 ›› Issue (7) : 2719 -2730.

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Journal of Central South University ›› 2014, Vol. 21 ›› Issue (7) : 2719 -2730. DOI: 10.1007/s11771-014-2234-7
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Application of artificial intelligent systems for real power transfer allocation

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Abstract

The application of various artificial intelligent (AI) techniques, namely artificial neural network (ANN), adaptive neuro fuzzy interface system (ANFIS), genetic algorithm optimized least square support vector machine (GA-LSSVM) and multivariable regression (MVR) models was presented to identify the real power transfer between generators and loads. These AI techniques adopt supervised learning, which first uses modified nodal equation (MNE) method to determine real power contribution from each generator to loads. Then the results of MNE method and load flow information are utilized to estimate the power transfer using AI techniques. The 25-bus equivalent system of south Malaysia is utilized as a test system to illustrate the effectiveness of various AI methods compared to that of the MNE method.

Keywords

artificial intelligence / power tracing / support vector machine / power system deregulation

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Shareef Hussain, Abd. Khalid Saifulnizam, Sulaiman Herwan Mohd, Mustafa Wazir Mohd. Application of artificial intelligent systems for real power transfer allocation. Journal of Central South University, 2014, 21(7): 2719-2730 DOI:10.1007/s11771-014-2234-7

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