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Power Systems Computation Conference 2026

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Learning A Non-Linear Surrogate Model For Multistage Stochastic Transmission Planning

Transmission expansion planning (TEP) plays a critical role in ensuring power system reliability and facilitating the integration of renewable energy resources. However, this process requires planners to constantly deal with significant uncertainty. While multistage stochastic TEP models provide a robust framework for identifying investment plans under uncertainty, the rapid growth in problem size hinders their computational tractability. To address this challenge, this paper develops a hybrid machine learning-optimisation framework for stochastic TEP. The proposed approach uses investment decisions and uncertainty scenarios as input features to train surrogate neural networks, which are then reformulated as mixed-integer linear constraints and embedded within an optimisation model. The surrogate model approximates expected operational costs to inform TEP decisions, reducing the burden arising from large operational problems. Case study applications on IEEE test systems demonstrate that, after training, the proposed approach achieves near-optimal investment costs while reducing total computational time by up to a factor of around 13 compared to a single full-optimisation stochastic formulation. This enables performing extensive multi-scenario analysis and stress testing that would otherwise be computationally prohibitive at scale.

Victor Schmitt
Technical Univesrity of Denmark
France

Farzaneh Pourahmadi
Technical Univesrity of Denmark
Denmark

Angela Flores-Quiroz
University of Chile
Chile

Pablo Apablaza
University of Melbourne
Australia

Pierluigi Mancarella
University of Melbourne
Australia

 


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