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Learning to collaborate in distributed environments by means of an awareness-based artificial neural network

机译:通过基于认知的人工神经网络学习在分布式环境中进行协作

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摘要

This paper is an extension of a previous work presented in International Work Conference on Artificial Neural Network 2009 (IWANN 2009). The paper contains more details and results of the strategy known as Collaborative Distributed Environment by means of an Awareness & Artificial Neural Network strategy (CAwANN). CAwANN is part of the structure of Awareness-based learning Model for distriButed collAborative enviRonment (AMBAR) which is an awareness-based learning model, developed for distributed environments, that allows nodes to accomplish an effective collaboration by means of a multi-agent architecture in which agents are aware of its surroundings by means of a parametrical and flexible use of this information. CAwANN is an ANN-based strategy used to include learning abilities into AMBAR aiming to improve the effectiveness and efficiency of collaboration process by learning three different processes: (1) to collaborate based on levels of awareness; (2) to select a potential candidate to negotiate on saturated conditions; and (3) to decide whether or not a node must change the information that describes its current conditions related with collaboration. Based on the definitions of efficiency and effectiveness presented in this paper and the results obtained from simulated conditions CAwANN has an average efficiency of 100% and an average effectiveness of 86%.
机译:本文是在2009年人工神经网络国际工作会议(IWANN 2009)上发表的先前工作的扩展。本文通过意识和人工神经网络策略(CAwANN)包含了称为“协作分布式环境”策略的更多细节和结果。 CAwANN是分布式协作环境基于意识的学习模型(AMBAR)结构的一部分,该模型是针对分布式环境而开发的基于意识的学习模型,该模型允许节点通过多代理架构实现有效的协作。哪些代理通过参数化和灵活地使用此信息来了解其周围环境。 CAwANN是一种基于ANN的策略,用于将学习能力纳入AMBAR中,旨在通过学习三种不同过程来提高协作过程的有效性和效率:(1)基于意识水平进行协作; (2)选择一个可能的候选人在饱和条件下进行谈判; (3)决定节点是否必须更改描述其与协作有关的当前状况的信息。根据本文提出的效率和有效性定义,以及从模拟条件下获得的结果,CAwANN的平均效率为100%,平均效率为86%。

著录项

  • 来源
    《Neurocomputing》 |2011年第16期|p.2603-2613|共11页
  • 作者单位

    Centra de Investigation en Informatica y Tecnologia de la Computation (CITEC), Universidad National Experimental de Cuayana (UNEC), Av. Atlantico,Ciudad Guayana 8050, Venezuela;

    rnFacultad de Informatica, Universidad Politecnica de Madrid, Campus de Montegancedo S/N, 28.660 Boadilla del Monte, Madrid, Spain;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    awareness; collaboration; distributed environment; learning strategy; artificial neural network;

    机译:意识;合作;分布式环境;学习策略;人工神经网络;
  • 入库时间 2022-08-18 02:08:15

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