DocumentCode :
2680401
Title :
Stochastic load flow analysis using artificial neural networks
Author :
Jain, Amit ; Tripathy, S.C. ; Balasubramanian, R. ; Kawazoe, Yoshiyuki
Author_Institution :
IMR, Tohoku Univ., Sendai
fYear :
0
fDate :
0-0 0
Abstract :
Stochastic load flow is a method for calculation of the effects of inaccuracies in input data on all output quantities through the load flow calculations. This gives a range of values (confidence limit) for each output quantity, which represent the operative condition of the system, to a high degree of probability or confidence. This paper presents a new method for stochastic load flow analysis using artificial neural networks. It is desirable to know the state of the power system in a range with certain confidence, with consideration of input data uncertainties and inaccuracies, on instant-to-instant basis in the fastest possible way. Present method using artificial neural networks to stochastic load flow problem is an effort in that direction and will be a very useful technique in effectively dealing with demand side uncertainties for power system planning and operation. The proposed artificial neural network model has been tested on a sample power system using two different training algorithms and simulation results are presented
Keywords :
load flow; neural nets; power engineering computing; stochastic processes; artificial neural networks; demand side uncertainties; input data uncertainties; load flow calculations; power system operation; power system planning; stochastic load flow analysis; Artificial neural networks; Load flow; Load flow analysis; Power system analysis computing; Power system modeling; Power system planning; Power system simulation; Stochastic processes; Stochastic systems; Uncertainty; Artificial neural networks; backpropagation; confidence limit; power systems; quickprop; stochastic load flow;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Power Engineering Society General Meeting, 2006. IEEE
Conference_Location :
Montreal, Que.
Print_ISBN :
1-4244-0493-2
Type :
conf
DOI :
10.1109/PES.2006.1709368
Filename :
1709368
Link To Document :
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