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Cost-Efficient Data Collection Approach Using K-Nearest Neighbors in a 3D Sensor Network

机译:在3D传感器网络中使用K最近邻居的经济高效的数据收集方法

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Sensor networks represent an important component of distributed infrastructure supplying raw data to various applications from military to healthcare. A key challenge is cost-efficient collection of distributed data streaming from those sensor networks. In this paper we propose the use of mobile data collectors that employ K-NN queries as a cost-efficient approach to collect data within the sensor network. We investigate a 3Dsensor network and propose a cost-efficient 3D-KNN algorithm that uses minimal energy and communication overheads to compute k-nearest neighbors. The 3D-KNN algorithm uses a 3dimensional plane rotation algorithm that maps sensor nodes on a 3D plane to a reference plane identified by the mobile data collector We propose a cost-efficient KNN boundary estimation algorithm that computes KNN boundary based on network density We also propose a neighbor prediction algorithm that uses distance, signal to noise ratio and mobile data collectorȁ9;strajectory information to identify sensor nodes along the mobile data collectorȁ9;s path. We simulate the proposed 3D-KNN algorithm using GlomoSim and validate its cost efficiency by evaluating its energy efficiency and query latency. Lessons and results of extensive simulation conclude the paper.
机译:传感器网络代表了分布式基础设施的重要组成部分,该基础设施为从军事到医疗保健的各种应用程序提供原始数据。一个关键的挑战是从这些传感器网络中以经济高效的方式收集分布式数据流。在本文中,我们建议使用采用K-NN查询的移动数据收集器,作为一种经济高效的方法来收集传感器网络中的数据。我们研究了3Dsensor网络,并提出了一种经济高效的3D-KNN算法,该算法使用最少的能量和通信开销来计算k个最近的邻居。 3D-KNN算法使用3维平面旋转算法,该算法将3D平面上的传感器节点映射到移动数据收集器标识的参考平面。我们提出了一种经济高效的KNN边界估计算法,该算法基于网络密度来计算KNN边界。一种使用距离,信噪比和移动数据收集器9的邻居预测算法;轨迹信息来识别沿移动数据收集器9的路径的传感器节点。我们使用GlomoSim模拟提出的3D-KNN算法,并通过评估其能效和查询等待时间来验证其成本效率。大量模拟的教训和结果总结了本文。

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