Self-Organizing Control Mechanism Based on Collective Decision-Making for Information Uncertainty

Naomi Kuze, D. Kominami, K. Kashima, T. Hashimoto, M. Murata
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引用次数: 2

Abstract

Because of the rapid growth in the scale and complexity of information networks, self-organizing systems are increasingly being used to realize novel network control systems that are highly scalable, adaptable, and robust. However, the uncertainty of information (with regard to incompleteness, vagueness, and dynamics) in self-organizing systems makes it difficult for them to work appropriately in accordance with the network state. In this study, we apply a model of the collective decision-making of animal groups to enable self-organizing control mechanisms to adapt to information uncertainty. Specifically, we apply a mathematical model of collective decision-making that is known as the effective leadership model (ELM). In the ELM, informed individuals (those who are experienced or well-informed) take the role of leading the others. In contrast, uninformed individuals (those who perceive only local information) follow neighboring individuals. As a result of the collective behavior of informed/uninformed individuals, the animal group achieves consensus. We consider a self-organizing control mechanism using potential-based routing with an optimal control, and propose a mechanism for determining a data-packet forwarding scheme based on the ELM. Through evaluation by simulation, we show that, in a situation in which the perceived information is incomplete and dynamic, nodes can forward data packets in accordance with the network state by applying the ELM.
基于信息不确定性集体决策的自组织控制机制
由于信息网络规模和复杂性的快速增长,自组织系统越来越多地被用于实现具有高度可扩展性、适应性和鲁棒性的新型网络控制系统。然而,自组织系统中信息的不确定性(不完备性、模糊性和动态性)使其难以根据网络状态适当地工作。在本研究中,我们应用动物群体的集体决策模型来实现自组织控制机制以适应信息不确定性。具体来说,我们应用了一个被称为有效领导模型(ELM)的集体决策数学模型。在ELM中,消息灵通的个人(那些经验丰富或消息灵通的人)扮演领导其他人的角色。相反,不知情的个体(那些只感知本地信息的个体)会跟随邻近的个体。由于知情/不知情个体的集体行为,动物群体达成了共识。我们考虑了一种基于最优控制的基于电位路由的自组织控制机制,并提出了一种基于ELM的数据包转发方案确定机制。通过仿真评估,我们发现在感知信息不完整和动态的情况下,节点可以应用ELM根据网络状态转发数据包。
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