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Boltzmann Distributed Replicator Dynamics: Population Games in a Microgrid Context

Author

Listed:
  • Gustavo Chica-Pedraza

    (School of Telecommunications Engineering, Universidad Santo Tomás, 110311 Bogotá D.C., Colombia)

  • Eduardo Mojica-Nava

    (Department of Electric and Electronic Engineering, Universidad Nacional de Colombia, 111321 Bogotá D.C., Colombia)

  • Ernesto Cadena-Muñoz

    (Department of Systems and Industrial Engineering, Universidad Nacional de Colombia, 111321 Bogotá D.C., Colombia)

Abstract

Multi-Agent Systems (MAS) have been used to solve several optimization problems in control systems. MAS allow understanding the interactions between agents and the complexity of the system, thus generating functional models that are closer to reality. However, these approaches assume that information between agents is always available, which means the employment of a full-information model. Some tendencies have been growing in importance to tackle scenarios where information constraints are relevant issues. In this sense, game theory approaches appear as a useful technique that use a strategy concept to analyze the interactions of the agents and achieve the maximization of agent outcomes. In this paper, we propose a distributed control method of learning that allows analyzing the effect of the exploration concept in MAS. The dynamics obtained use Q-learning from reinforcement learning as a way to include the concept of exploration into the classic exploration-less Replicator Dynamics equation. Then, the Boltzmann distribution is used to introduce the Boltzmann-Based Distributed Replicator Dynamics as a tool for controlling agents behaviors. This distributed approach can be used in several engineering applications, where communications constraints between agents are considered. The behavior of the proposed method is analyzed using a smart grid application for validation purposes. Results show that despite the lack of full information of the system, by controlling some parameters of the method, it has similar behavior to the traditional centralized approaches.

Suggested Citation

  • Gustavo Chica-Pedraza & Eduardo Mojica-Nava & Ernesto Cadena-Muñoz, 2021. "Boltzmann Distributed Replicator Dynamics: Population Games in a Microgrid Context," Games, MDPI, vol. 12(1), pages 1-18, January.
  • Handle: RePEc:gam:jgames:v:12:y:2021:i:1:p:8-:d:480801
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    References listed on IDEAS

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    Cited by:

    1. Ellina Grigorieva, 2021. "Optimal Control Theory: Introduction to the Special Issue," Games, MDPI, vol. 12(1), pages 1-4, March.
    2. Ernesto Cadena Muñoz & Gustavo Chica Pedraza & Rafael Cubillos-Sánchez & Alexander Aponte-Moreno & Mónica Espinosa Buitrago, 2023. "PUE Attack Detection by Using DNN and Entropy in Cooperative Mobile Cognitive Radio Networks," Future Internet, MDPI, vol. 15(6), pages 1-18, May.

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