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Monitoring continuous all k-nearest neighbor query in mobile network environments

机译:在移动网络环境中监控连续所有K-最近邻查询

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This paper investigates the continuous all k-nearest neighbor (CAkNN) problem in a pervasive and mobile computing environment, which is a spatial query that continuously monitors kNN results for all mobile users in the network for a specified period of time. This problem is characterized by the fact that a single movement of a node may result in that several users have to re-compute their kNN results. The affected nodes are the moving node itself and its Reverse-kNN (RkNN) nodes at both the previous and the new locations. This paper proposes the use of a bucket point-region quadtree to index mobile users. This structure is unique in that it can be readily reorganized for maintenance purpose when nodes move. In addition, it helps to quickly determine an appropriate search radius for each of these nodes. In this paper, we have proposed two novel RkNN techniques that are tailored for the structure with only small maintenance overhead. These techniques enable us to integrate kNN and RkNN searching operations together so as to facilitate continuous monitoring of the query result. Based on the notion of maximum prune distance, we present two algorithms to offer true continuity for a CAkNN query. Simulation results show that our algorithms outperform existing solutions by a significant margin. (C) 2016 Elsevier B.V. All rights reserved.
机译:本文调查了普遍存在和移动计算环境中的连续所有k最近邻(CAKNN)问题,这是一个空间查询,即在网络中的所有移动用户在特定时间段内连续监控KNN结果。该问题的特征在于,节点的单个移动可能导致多个用户必须重新计算其KNN结果。受影响的节点是前一个和新位置的移动节点本身及其反向knn(RKNN)节点。本文建议使用铲斗点区域Quadtree来索引移动用户。这种结构是独一无二的,因为当节点移动时,它可以容易地重新组织以进行维护。此外,它有助于快速确定每个节点的适当搜索半径。在本文中,我们提出了两种新的RKNN技术,该技术仅针对的结构,只有小的维护开销。这些技术使我们能够将KNN和RKNN集成在一起,以便于持续监视查询结果。基于最大剪枝距离的概念,我们呈现了两个算法,为CAKNN查询提供了真正连续性。仿真结果表明,我们的算法优于现有的解决方案,通过显着的余量。 (c)2016年Elsevier B.v.保留所有权利。

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