Improved Binary Particle Swarm Optimization Based TNEP Considering Network Losses, Voltage Level, and Uncertainty in Demand

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Abstract:

Transmission network expansion planning (TNEP) is an important component of power system planning. Itdetermines the characteristics and performance of the future electric power network and influences the powersystem operation directly. Different methods have been proposed for the solution of the static transmissionnetwork expansion planning (STNEP) problem till now. But in all of them, STNEP problem considering thenetwork losses, voltage level and uncertainty in demand has not been solved by improved binary particle swarmoptimization (IBPSO) algorithm. Binary particle swarm optimization (BPSO) is a new population-basedintelligence algorithm and exhibits good performance on the solution of the large-scale and nonlinearoptimization problems. However, it has been observed that standard BPSO algorithm has prematureconvergence when solving a complex optimization problem like STNEP. To resolve this problem, in this study,an IBPSO approach is proposed for the solution of the STNEP problem considering network losses, voltagelevel, and uncertainty in demand. The proposed algorithm has been tested on a real transmission network of theAzerbaijan regional electric company and compared with BPSO. The simulation results show that consideringthe losses even for transmission expansion planning of a network with low load growth is caused thatoperational costs decreases considerably and the network satisfies the requirement of delivering electric powermore reliable to load centers. In addition, regarding the convergence curves of the two methods, it can be seenthat precision of the proposed algorithm for the solution of the STNEP problem is more than BPSO.

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Journal title

volume 1  issue 2

pages  29- 42

publication date 2012-09-01

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