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Contribution to the Control of a MAS's Global Behaviour: Reinforcement Learning Tools

机译:对控制MAS全球行为的贡献:加固学习工具

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Reactive multi-agent systems present global behaviours uneasily linked to their local dynamics. When it comes to controlling such a system, usual analytical tools are difficult to use so specific techniques have to be engineered. We propose an experimental dynamical approach to enhance the control of the global behaviour of a reactive multi-agent system. We use reinforcement learning tools to link global information of the system to control actions. We propose to use the behaviour of the system as this global information. The behaviour of the whole system is controlled thanks to actions at different levels instead of building the behaviours of the agents, so that the complexity of the approach does not directly depend on the number of agents. The controllability is evaluated in terms of rate of convergence towards a target behaviour. We compare the results obtained on a toy example with the usual approach of parameter setting.
机译:反应性多代理系统存在与其当地动态有关的全局行为。当涉及到控制这样的系统时,通常难以使​​用通常的分析工具所以必须设计特定的技术。我们提出了一种实验性动态方法来增强对反应多助剂系统的全局行为的控制。我们使用强化学习工具将系统的全局信息链接到控制操作。我们建议使用系统的行为作为本全球信息。由于不同级别的动作而不是构建代理的行为,因此控制整个系统的行为,从而使方法的复杂性直接取决于代理的数量。根据朝向目标行为的收敛速率评估可控性。我们将在玩具示例上获得的结果进行比较,使用通常的参数设置方法。

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