Published August 30, 2019 | Version v1
Conference paper Open

Distributed Constrained Optimization Towards Effective Agent-Based Microgrid Energy Resource Management

  • 1. GECAD-ISEP, Polytechnic of PortoPortoPortugal
  • 2. Department of Computer Science INAOE, Puebla, Mexico
  • 3. Computer Science DepartmentUniversity of Verona, Verona, Italy
  • 4. GECAD-ISEP, Polytechnic of Porto, Porto, Portugal
  • 5. Polytechnic of Porto, Porto, Portugal

Description

The current energy scenario requires actions towards the reduction of energy consumption and the use of renewable resources. In this context, a microgrid is a self-sustained network that can operate connected to the smart grid or in isolation. The long-term scheduling of on/off cycles of devices is a critical problem that has been commonly addressed by centralized approaches. In this work, we propose a novel agent-based method to solve the long-term scheduling problem as a distributed constraint optimization problem (DCOP) by modelling future system configurations rather than reacting to changes. Moreover, with respect to approaches based on decentralised reinforcement learning, we can directly encode system-wide hard constraints (such as for example the Kirchhoff law) which are not easy to represent in a factored representation of the problem. We compare different multi-agent DCOP algorithms showing that the proposed method can find optimal/near-optimal solutions for a specific case study.

Notes

This work has been developed under the MAS-SOCIETY project - PTDC/EEI-EEE/28954/2017 and has received funding from UID/EEA/00760/2019, funded by FEDER Funds through COMPETE and by National Funds through FCT. This work has been also partially supported by the project "GHOTEM" Global HOuse Thermal & Electrical energy Management for Efficiency, Lower emission and Renewables, founded by the Veneto Region through the POR FESR 2014–2020 founding scheme (Action 1.1.4), DGR n. 1139 19 July 2017.

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