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首页> 外文期刊>International Journal of Distributed Sensor Networks >Adaptive Sensor Activity Scheduling in Distributed Sensor Networks: A Statistical Mechanics Approach
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Adaptive Sensor Activity Scheduling in Distributed Sensor Networks: A Statistical Mechanics Approach

机译:分布式传感器网络中的自适应传感器活动调度:一种统计力学方法

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This article presents an algorithm for adaptive sensor activity scheduling (A-SAS) in distributed sensor networks to enable detection and dynamic footprint tracking of spatial-temporal events. The sensor network is modeled as a Markov random field on a graph, where concepts of Statistical Mechanics are employed to stochastically activate the sensor nodes. Using an Ising-like formulation, the sleep and wake modes of a sensor node are modeled as spins with ferromagnetic neighborhood interactions; and clique potentials are defined to characterize the node behavior. Individual sensor nodes are designed to make local probabilistic decisions based on the most recently sensed parameters and the expected behavior of their neighbors. These local decisions evolve to globally meaningful ensemble behaviors of the sensor network to adaptively organize for event detection and tracking. The proposed algorithm naturally leads to a distributed implementation without the need for a centralized control. TheA-SASalgorithm has been validated for resource-aware target tracking on a simulated sensor field of 600 nodes.
机译:本文提出了一种用于分布式传感器网络中的自适应传感器活动调度(A-SAS)的算法,以实现对时空事件的检测和动态足迹跟踪。传感器网络被建模为图形上的马尔可夫随机场,其中采用统计力学的概念随机激活传感器节点。使用类似于Ising的公式,将传感器节点的睡眠和唤醒模式建模为具有铁磁邻域相互作用的自旋。定义了群体势以表征节点行为。各个传感器节点被设计为根据最新感测到的参数及其邻居的预期行为做出局部概率决策。这些本地决策演变为传感器网络的全局有意义的集成行为,以自适应地组织事件检测和跟踪。所提出的算法自然地导致了分布式实现,而无需集中控制。 A-SAS算法已经过验证,可以在600个节点的模拟传感器字段上进行资源感知的目标跟踪。

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