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

Flexible Differentiable Optimization via Model Transformations

Informs Journal on Computing, 2023

Flexible Differentiable Optimization via Model Transformations

We introduce DiffOpt.jl, a Julia library to differentiate through the solution of optimization problems with respect to arbitrary parameters present in the objective and/or constraints. The library builds upon MathOptInterface, thus leveraging the rich ecosystem of solvers and composing well with modeling languages like JuMP. DiffOpt offers both forward and reverse differentiation modes, enabling multiple use cases from hyperparameter optimization to backpropagation and sensitivity analysis, bridging constrained optimization with end-to-end differentiable programming. DiffOpt is built on two known rules for differentiating quadratic programming and conic programming standard forms. However, thanks to its ability to differentiate through model transformations, the user is not limited to these forms and can differentiate with respect to the parameters of any model that can be reformulated into these standard forms. This notably includes programs mixing affine conic constraints and convex quadratic constraints or objective function.

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