Control of Renewable Energy Communities using AI and Real-World Data
Tiago Fonseca, Clarisse Sousa, Ricardo Ven\^ancio, Pedro Pires, Ricardo Severino, Paulo Rodrigues, Pedro Paiva, Luis Lino Ferreira

TL;DR
This paper presents a MADDPG-based framework for managing renewable energy communities, effectively handling real-world data challenges, and demonstrating practical benefits like reduced peak demand and energy costs.
Contribution
It introduces a novel framework that bridges the gap between simulation and real-world deployment of AI control strategies for RECs, addressing data and system integration challenges.
Findings
Achieved 9% reduction in daily peak demand.
Reduced energy costs by 5%.
Demonstrated practical feasibility in real-world REC.
Abstract
The electrification of transportation and the increased adoption of decentralized renewable energy generation have added complexity to managing Renewable Energy Communities (RECs). Integrating Electric Vehicle (EV) charging with building energy systems like heating, ventilation, air conditioning (HVAC), photovoltaic (PV) generation, and battery storage presents significant opportunities but also practical challenges. Reinforcement learning (RL), particularly MultiAgent Deep Deterministic Policy Gradient (MADDPG) algorithms, have shown promising results in simulation, outperforming heuristic control strategies. However, translating these successes into real-world deployments faces substantial challenges, including incomplete and noisy data, integration of heterogeneous subsystems, synchronization issues, unpredictable occupant behavior, and missing critical EV state-of-charge (SoC)…
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Taxonomy
MethodsElectric
