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Dynamic and static transmission network expansion planning via harmony search and branch & bound on a hybrid algorithm

L.E. De Oliveira, F.D. Freitas, I.C. Da Silva Jr, P. Vilaça

18th Conference on Artificial Intelligence - EPIA 2017, Oporto (Portugal). 05-08 septiembre 2017


Resumen:

This work presents a method based on metaheuristics to solve the problem of Static (STNEP) and Dynamic (DTNEP) Transmission Network Expansion Planning in electrical power systems. The result of this formulation is mixed-integer nonlinear programming (MINLP), where the difficulties are intensified in the DTNEP by the temporal coupling. Therefore, a methodology was developed to reach the solution in three different stages: The first one is responsible for obtaining an efficient set of best candidate routes for the expansion; the metaheuristic optimization process, Harmony Search (HS), is used to find STNEP’s optimal solution and its neighborhood that provides a DTNEP candidate zone; lastly, a hybrid algorithm that mixes the HS and Branch & Bound (B&B) concepts is adapted to provide the optimal DTNEP. In this study, the lossless linearized modeling for load flow is used as a representation of the transmission network. Tests with the Garver and southern Brazilian systems were carried out to verify the performance method. The computational time saving for the STNEP and DTNEP prove the efficacy of the proposed method.


Palabras clave: Dynamic Transmission Expansion Planning; Constructive Heuristic Algorithms; Harmony Search; Branch & Bound


DOI: DOI icon https://doi.org/10.1007/978-3-319-65340-2_23

Publicado en Progress in Artificial Intelligence, pp: 271-282, ISBN: 978-3-319-65339-6

Fecha de publicación: 2017-09-05.



Cita:
L.E. De Oliveira, F.D. Freitas, I.C. Da Silva Jr, P. Vilaça, Dynamic and static transmission network expansion planning via harmony search and branch & bound on a hybrid algorithm, 18th Conference on Artificial Intelligence - EPIA 2017, Oporto (Portugal). 05-08 septiembre 2017. En: Progress in Artificial Intelligence: Proceedings of the 18th EPIA Conference on Artificial Intelligence, EPIA 2017, ISBN: 978-3-319-65339-6

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