Title :
Voltage Optimization Using Augmented Lagrangian Functions and Quasi-Newton Techniques
Author :
Rehn, Carl J. ; Bubenko, Janis A. ; Sjelvgren, Denis
Author_Institution :
Department of Electric Power Systems The Royal Institute of Technology S-100 44 Stockholm, Sweden
Abstract :
This paper shows how the application of augmented Lagrangian functions and quasi-Newton techniques can be utilized for power system voltage optimization. The developed algorithm is attractive for three reasons: 1) it can accommodate power system constraints in a straightforward manner, 2) it is capable of reaching a solution even from infeasible starting-points and 3) it converges in a few iterations. The proposed algorithm offers substantial improvements in the computational efficiency due to: 1) a reduction in the dimensionality of the formulation by exploiting variable reduction and active-reactive decoupling in the AC-network, 2) sparse matrix techniques to selectively generate the required sensitivities and 3) an active set strategy that relaxes all inactive constraints. Computer runs have been performed and the results proves the efficiency of the algorithm.
Keywords :
Computational efficiency; Laboratories; Lagrangian functions; Load forecasting; Paper technology; Power systems; Process planning; Sparse matrices; Voltage; Weather forecasting;
Journal_Title :
Power Engineering Review, IEEE
DOI :
10.1109/MPER.1989.4310382