This paper aims to propose a novel epigenetic learning (EpiLearn) algorithm, which is designed specifically for a decentralised multi-agent system such as swarm robotics.

    Design/methodology/approach

    First, this paper begins with overview of swarm robotics and the challenges in designing swarm behaviour automatically. This should indicate the direction of improvements required to enhance an automatic swarm design. Second, the evolutionary learning (EpiLearn) algorithm for a swarm system using an epigenetic layer is formulated and discussed. The algorithm is then tested through various test functions to investigate its performance. Finally, the results are discussed along with possible future research directions.

    Findings

    Through various test functions, the algorithm can solve non-local and many local minima problems. This article also shows that by using a reward system, the algorithm can handle the deceptive problem which often occurs in dynamic problems. Moreover, utilization of rewards from the environment in the form of a methylation process on the epigenetic layer improves the performance of traditional evolutionary algorithms applied to automatic swarm design. Finally, this article shows that a regeneration process that embeds an epigenetic layer in the inheritance process performs better than a traditional crossover operator in a swarm system.

    Originality/value

    This paper proposes a novel method for automatic swarm design by taking into account the importance of multi-agent settings and environmental characteristics surrounding the swarm. The novel evolutionary learning (EpiLearn) algorithm using an epigenetic layer gives the swarm the ability to perform co-evolution and co-learning.


    Access

    Check access

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    Reward-based epigenetic learning algorithm for a decentralised multi-agent system


    Additional title:

    Epigenetic learning algorithm


    Contributors:


    Publication date :

    2020-04-24


    Size :

    24 pages




    Type of media :

    Article (Journal)


    Type of material :

    Electronic Resource


    Language :

    English




    Multi-Agent System to Support the Management of Decentralised Production

    Kuhlmann, T. / Lamping, R. / Massow, C. et al. | British Library Conference Proceedings | 1997


    Decentralised Multi-Agent Reinforcement Learning Approach for the Same-Day Delivery Problem

    Ngu, Elvin / Parada, Leandro / Escribano Macias, Jose Javier et al. | Transportation Research Record | 2022

    Free access

    Decentralised Organisation of Rail Transport by Multi Agent Systems

    Konig, S. / Braun, I. / Schnieder, E. et al. | British Library Conference Proceedings | 2003



    Reward Function Design in Multi-Agent Reinforcement Learning for Traffic Signal Control

    Koohy, Behrad / Stein, Sebastian / Gerding, Enrico et al. | TIBKAT | 2022

    Free access