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Hybrid Multi-Agent Reinforcement Learning for Low-Carbon Dispatch in Renewable Energy Valleys

Velvis, Lucas (2025) Hybrid Multi-Agent Reinforcement Learning for Low-Carbon Dispatch in Renewable Energy Valleys. Master's Thesis / Essay, Artificial Intelligence.

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Abstract

The European Union must cut 55% of 1990-level emissions by 2030. However, intermittent renewables complicate electricity-flow optimization in the recently emerging Renewable Energy Valleys. We present MARLOES, a simulation benchmark for energy hubs, and propose a hybrid multi-agent Dyna-SAC controller which combines model-free robustness with model-based sample efficiency. Over ≈ 35 day simulations, using 20% synthetic rollouts, the algorithm cuts CO₂-equivalent emissions by 32.7% versus a heuristic baseline and 23.4% relative to pure SAC. Under additional sensor and forecast noise the hybrid advantage vanishes, confirming that world-model benefits depend on model reliability. These results show that carefully calibrated model-based augmentation can advance low-carbon dispatch in distributed energy systems aligned with EU decarbonization goals, and that MARLOES provides a flexible platform for future approaches.

Item Type: Thesis (Master's Thesis / Essay)
Supervisor name: Grossi, D.
Degree programme: Artificial Intelligence
Thesis type: Master's Thesis / Essay
Language: English
Date Deposited: 25 Jul 2025 06:43
Last Modified: 25 Jul 2025 06:43
URI: https://fse.studenttheses.ub.rug.nl/id/eprint/36525

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