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Main Authors: Cuadrado, Nicolas Mauricio, Gutierrez, Roberto Alejandro, Takáč, Martin
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.18444
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author Cuadrado, Nicolas Mauricio
Gutierrez, Roberto Alejandro
Takáč, Martin
author_facet Cuadrado, Nicolas Mauricio
Gutierrez, Roberto Alejandro
Takáč, Martin
contents The rise in renewable energy is creating new dynamics in the energy grid that promise to create a cleaner and more participative energy grid, where technology plays a crucial part in making the required flexibility to achieve the vision of the next-generation grid. This work presents FRESCO, a framework that aims to ease the implementation of energy markets using a hierarchical control architecture of reinforcement learning agents trained using federated learning. The core concept we are proving is that having greedy agents subject to changing conditions from a higher level agent creates a cooperative setup that will allow for fulfilling all the individual objectives. This paper presents a general overview of the framework, the current progress, and some insights we obtained from the recent results.
format Preprint
id arxiv_https___arxiv_org_abs_2403_18444
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle FRESCO: Federated Reinforcement Energy System for Cooperative Optimization
Cuadrado, Nicolas Mauricio
Gutierrez, Roberto Alejandro
Takáč, Martin
Machine Learning
The rise in renewable energy is creating new dynamics in the energy grid that promise to create a cleaner and more participative energy grid, where technology plays a crucial part in making the required flexibility to achieve the vision of the next-generation grid. This work presents FRESCO, a framework that aims to ease the implementation of energy markets using a hierarchical control architecture of reinforcement learning agents trained using federated learning. The core concept we are proving is that having greedy agents subject to changing conditions from a higher level agent creates a cooperative setup that will allow for fulfilling all the individual objectives. This paper presents a general overview of the framework, the current progress, and some insights we obtained from the recent results.
title FRESCO: Federated Reinforcement Energy System for Cooperative Optimization
topic Machine Learning
url https://arxiv.org/abs/2403.18444