传感器网络中多分辨率表示的分层空间八卦

Rik Sarkar, Xianjin Zhu, Jie Gao
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引用次数: 20

摘要

在本文中,我们提出了一种轻量级算法来构建传感器网络的多分辨率数据表示。在每个传感器节点u上,我们计算了O(log n)个以u为中心的指数扩大的邻域的聚合,第i个聚合是距离u约2i跳内节点的聚合数据,我们提出了一种称为分层空间八卦算法的方案来同时提取和构建所有传感器的这些聚合。总通信代价为O(n polylog n)。分层八卦算法采用原子通信步骤,每个节点选择与距离d的节点交换信息,概率为1/d3。该算法的吸引力在于其简单、通信成本低、分布式以及对节点故障和链路故障的鲁棒性。此外,我们还表明,精确地计算多分辨率聚合(即,每个聚合使用所有且仅使用2i跳内的节点)需要的通信成本为Ω(n√n),这不能很好地随网络规模扩展。因此,在可扩展的高效算法中,像八卦机制引入的聚合计算的近似范围是必要的。除了多分辨率数据摘要在数据验证和信息挖掘中的自然应用外,我们还演示了预计算的多分辨率数据摘要在有效回答范围查询中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical Spatial Gossip for Multiresolution Representations in Sensor Networks
In this article we propose a lightweight algorithm for constructing multiresolution data representations for sensor networks. At each sensor node u, we compute O(log n) aggregates about exponentially enlarging neighborhoods centered at u. The ith aggregate is the aggregated data from nodes approximately within 2i hops of u. We present a scheme, named the hierarchical spatial gossip algorithm, to extract and construct these aggregates, for all sensors simultaneously, with a total communication cost of O(n polylog n). The hierarchical gossip algorithm adopts atomic communication steps with each node choosing to exchange information with a node distance d away with probability ∼ 1/d3. The attractiveness of the algorithm can be attributed to its simplicity, low communication cost, distributed nature, and robustness to node failures and link failures. We show in addition that computing multiresolution aggregates precisely (i.e., each aggregate uses all and only the nodes within 2i hops) requires a communication cost of Ω(n√n), which does not scale well with network size. An approximate range in aggregate computation like that introduced by the gossip mechanism is therefore necessary in a scalable efficient algorithm. Besides the natural applications of multiresolution data summaries in data validation and information mining, we also demonstrate the application of the precomputed multiresolution data summaries in answering range queries efficiently.
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