An adaptive refresh distributed model for estimation and efficient tracking of dynamic boundaries

Nagarathna, S. Valli
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引用次数: 4

Abstract

We propose a distributed algorithm for tracking dynamic boundaries in a ranging sensor network. The main aim here is to minimize the number of data pushes to the sink by the observing sensors. Contour is modeled as correlated Brownian motion with drift. Sensors continuously sample the data. Neighboring sensors communicate and exploit the spatio-temporal correlation and using the parameters of the contour the time to push the sample data to the sink is predicted. A multihop path is established between sensor to sink to route the data. To get the global view of the contour sink apply non parametric regression on the sensor data. Along with the sample data sensors push the mean value so that the sink can estimate the sample point till the next push of data from sensor. The sensors push the data when the confidence in the estimate by the sink is below a specified thereshold. The performance of this model is compared with centralized model with respect to energy consumption for routing samples to sink.
一种用于动态边界估计和有效跟踪的自适应刷新分布式模型
提出了一种分布式测距传感器网络动态边界跟踪算法。这里的主要目的是尽量减少观测传感器推送到接收器的数据数量。等高线被建模为带漂移的相关布朗运动。传感器不断采集数据。相邻传感器相互通信并利用时空相关性,利用轮廓参数预测时间将样本数据推送到汇聚区。在传感器之间建立多跳路径以接收路由数据。为了得到轮廓汇的全局视图,对传感器数据进行非参数回归。随着采样数据的传感器推送平均值,以便sink可以估计采样点,直到下一次从传感器推送数据。当汇估计的置信度低于指定的阈值时,传感器推送数据。将该模型的性能与集中式模型进行了比较,比较了路由样本到sink的能量消耗。
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