将Q-Learning转化为JADE代理学习

IF 0.1 Q4 ENGINEERING, MULTIDISCIPLINARY Revista Digital Lampsakos Pub Date : 2015-10-23 DOI:10.21501/21454086.1517
N. Pérez, Mailyn Moreno Espino
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引用次数: 0

摘要

计算机系统之间越来越多的交互改变了传统的分析和开发方法。对于解决联合任务,系统组件之间的交互需求变得越来越重要,单个的联合任务将非常昂贵,甚至不可能一次开发。多智能体系统提供了一种有趣且完整的分布式体系结构来协同执行任务。创建多代理系统或代理需要付出很大的努力,因此采用了一些方法作为部署模式。该模式创建了主动的Obsever_JADE代理,并在每个代理中包含了可以使用机器学习技术进化的智能行为。强化学习是一种机器学习技术,它允许代理在动态环境中通过试错交互进行学习。多智能体系统中的强化学习为学习的分布带来了新的挑战,如智能体之间需要协调或知识的分布,这些都需要进行分析和处理。
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Transformación del Q-Learning para el Aprendizaje en Agentes JADE
Increased interaction between computer systems has modified the traditional way to analyze and develop them. The need for interaction between the system components is increasingly important to solve joint tasks, which individually would be very expensive or even impossible to develop once. Multi-agent systems offer an interesting and complete distributed architecture to execute tasks cooperate. The creation of a multi-agent system or an agent requires great effort so methods have been adopted as the deployment patterns. The pattern creates Proactive Obsever_JADE agents and include in each endowed with intelligence behaviors can evolve using machine learning techniques. The reinforcement learning is a machine learning technique that allows agents to learn through trial and error interactions in a dynamic environment. Reinforcement learning in multi-agent systems offers new challenges arising from the distribution of learning, such as the need for coordination between agents or distribution of knowledge, which should be analyzed and treated.
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Revista Digital Lampsakos
Revista Digital Lampsakos ENGINEERING, MULTIDISCIPLINARY-
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