Title :
An interior point nonlinear programming for optimal power flow problems with a novel data structure
Author :
Wei, Hua ; Sasaki, H. ; Kubokawa, J. ; Yokoyama, R.
Author_Institution :
Dept. of Electr. Eng., Hiroshima Univ., Japan
fDate :
8/1/1998 12:00:00 AM
Abstract :
This paper presents a new interior point nonlinear programming algorithm for optimal power flow problems (OPF) based on the perturbed KKT conditions of the primal problem. Through the concept of the centering direction, the authors extend this algorithm to classical power flow (PF) and approximate OPF problems. For the latter, CPU time can be reduced substantially. To efficiently handle functional inequality constraints, a reduced correction equation is derived, the size of which depends on that of equality constraints. A novel data structure is proposed which has been realized by rearranging the correction equation. Compared with the conventional data structure of Newton OPF, the number of fill-ins of the proposed scheme is roughly halved and CPU time is reduced by about 15% for large scale systems. The proposed algorithm includes four kinds of objective functions and two different data structures. Extensive numerical simulations on test systems that range in size from 14 to 1047 buses, have shown that the proposed method is very promising for large scale application due to its robustness and fast execution time
Keywords :
control system analysis computing; data structures; large-scale systems; load flow; nonlinear programming; numerical analysis; optimal control; power system analysis computing; power system control; robust control; CPU time; centering direction; computer simulation; control simulation; execution time; functional inequality constraints; novel data structure; numerical simulation; objective functions; optimal power flow; perturbed KKT conditions; power systems; primal problem; reduced correction equation; Data structures; Equations; Large-scale systems; Load flow; Numerical simulation; Optimization methods; Power systems; Quadratic programming; Robustness; System testing;
Journal_Title :
Power Systems, IEEE Transactions on