Pheromone Approach to the Adaptive Discovery of Sensor-Network Topology

H. Tamaki, Ken-ichi Fukui, M. Numao, S. Kurihara
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引用次数: 3

Abstract

Sensor-network technology is indispensable for constructing ubiquitous network infrastructures. Although information about adjacent relations between sensors is also very important for sensor networks, obtaining this information automatically without manual assistance is extremely difficult. Consequently, we propose a new methodology for constructing adjacent relations in sensor networks using an ant-colony optimization algorithm. This methodology can be used to automatically extract adjacent relations without using prepared sensor-location information or RFIDs to identify individual humans. We implemented a prototype system, and verified its basic effectiveness through simulations and an experiment using real data.
传感器网络拓扑自适应发现的信息素方法
传感器网络技术是构建无处不在的网络基础设施必不可少的技术。虽然传感器之间相邻关系的信息对传感器网络也非常重要,但在没有人工辅助的情况下自动获取这些信息是非常困难的。因此,我们提出了一种利用蚁群优化算法构建传感器网络中相邻关系的新方法。该方法可用于自动提取相邻关系,而无需使用准备好的传感器位置信息或rfid来识别个人。我们实现了一个原型系统,并通过仿真和真实数据实验验证了系统的基本有效性。
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