Modelagem de sistemas de energia

Planejamento da Operação de Sistemas

Planejamento Integrado de Recursos

Cronograma de Operação de Curto Prazo

Modelagem de recursos renováveis

Modelagem Avançada de Energias Renováveis

Potencial Hidrelétrico e Avaliações Ambientais

Ferramentas de suporte financeiro

Gestão de Portfólios de Energia

Ferramentas integradas e ambientes computacionais

Ambiente de Computação de Alto Desempenho

Exploiting low-rank structure in semidefinite programming by approximate operator splitting

Exploiting low-rank structure in semidefinite programming by approximate operator splitting

OPTIMIZATION, 2022

In contrast to many other convex optimization classes, state-of-the-art semidefinite programming solvers are still unable to efficiently solve large-scale instances. This work aims to reduce this scalability gap by proposing a novel proximal algorithm for solving general semidefinite programming problems. The key characteristic of the proposed algorithm is to be able to exploit the low-rank property inherent to several semidefinite programming problems. Exploiting the low-rank structure provides a substantial speedup and allows the operator splitting method to efficiently scale to larger instances. As opposed to other low-rank based methods, the proposed algorithm has convergence guarantees for general semidefinite programming problems. Additionally, an open-source semidefinite programming solver called ProxSDP is made available and its implementation details are discussed. Case studies are presented in order to evaluate the performance of the proposed methodology.

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