Title :
Nonlinear approximation method in Lagrangian relaxation-based algorithms for hydrothermal scheduling
Author :
Guan, Xiaohong ; Luh, Peter B. ; Zhang, Lan
Author_Institution :
Pacific Gas & Electr. Co., San Francisco, CA, USA
fDate :
5/1/1995 12:00:00 AM
Abstract :
When the Lagrangian relaxation technique is used to solve hydrothermal scheduling problems, many subproblems have linear stage-wise cost functions. A well recognized difficulty is that the solutions to these subproblems may oscillate between maximum and minimum generations with slight changes of the multipliers. Furthermore, the subproblem solutions may become singular, i.e., they are undetermined when the linear coefficients become zero. This may result in large differences between subproblem solutions and the optimal primal schedule. In this paper, a nonlinear approximation method is presented which utilizes nonlinear functions, quadratic in this case, to approximate relevant linear cost functions. The analysis shows that the difficulty associated with solution oscillation is reduced, and singularity is avoided. Extensive testing based on Northeast Utilities data indicates that the method consistently generates better schedules than the standard Lagrangian relaxation method
Keywords :
hydroelectric power stations; hydrothermal power systems; quadratic programming; scheduling; thermal power stations; Lagrangian relaxation-based algorithms; Northeast Utilities data; hydrothermal scheduling; linear coefficients; linear stage-wise cost functions; maximum generation; minimum generation; nonlinear approximation; optimal primal schedule; Approximation algorithms; Approximation methods; Cost function; Lagrangian functions; Linear approximation; Power engineering and energy; Relaxation methods; Scheduling algorithm; Systems engineering and theory; Testing;
Journal_Title :
Power Systems, IEEE Transactions on