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Data Preservation in Intermittently Connected Sensor Networks With Data Priority

机译:具有数据优先级的间歇连接传感器网络的数据保存

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Data generated in sensor networks may have different importance and priority. Different types of data contribute differently for scientists to analyze the physical environment. In a challenging environment, wherein sensor nodes do not always have connected paths to the base station, and not all the data can be preserved inside the network due to severe energy constraints and storage constraints at sensor nodes, how to preserve data with maximum priority is a new and challenging problem. In this paper, we study how to preserve data that yield maximum total priorities, under the constraints that each sensor node has limited energy level and storage capacity. We design an efficient optimal algorithm and prove its optimality. The core of the problem is a maximum weighted flow problem, which is to maximize the total weight of flow in the network considering different flows have different weights. Maximum weighted flow is a generalization of the classic maximum flow problem, wherein each unit of flow has the same weight. To the best of our knowledge, our work is the first to study and solve the maximum weighted flow problem. We propose a more time efficient heuristic algorithm. Via simulation, we show that it performs comparably to the optimal algorithm and performs better than the classic maximum flow algorithm, which does not consider data priority. Finally we design a distributed data preservation algorithm based on push-relabel algorithm, analyze its time and message complexities, and empirically show that it outperforms the push-relabel distributed maximum flow algorithm in terms of the total preserved priorities.
机译:传感器网络中生成的数据可能具有不同的重要性和优先级。科学家们分析物理环境的不同类型的数据有所不同。在一个具有挑战性的环境中,其中传感器节点并不总是具有到基站的连接路径,并且由于传感器节点的严重能量约束和存储约束,并且如何保护具有最大优先级的数据,而不是所有数据都可以在网络内保留。一个新的和挑战性问题。在本文中,我们研究了如何保留产生最大总优先级的数据,每个传感器节点能量水平和存储容量有限。我们设计了一种高效的最佳算法,并证明了其最优性。问题的核心是最大加权流动问题,这是考虑不同流量的网络中流量的总重量。最大加权流是经典最大流量问题的概括,其中每个流动单位具有相同的重量。据我们所知,我们的作品是第一个学习和解决最大加权流量问题的问题。我们提出了一种更历时的高效启发式算法。通过仿真,我们表明它与最佳算法相当执行,并且比经典的最大流量算法更好地执行,这不考虑数据优先级。最后,我们设计了一种基于Push-Relabel算法的分布式数据保存算法,分析其时间和消息复杂性,并经验证明它在总保存优先级的条件下表现出推动 - Relabel分布式最大流量算法。

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