基于多变量线性回归的移动传感器网络计算量大的链路稳定性指标预测

N. Meghanathan
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引用次数: 2

摘要

到目前为止,我们一直在使用直接在自我中心边缘网络上计算的链路稳定性度量(计算量轻或计算量重)来确定移动传感器网络(msn)的稳定数据收集(DG)树。在这些DG树中,基于BPI的DG树被观察到是最稳定的,但BPI的度量也计算量很大。因此,我们试图建立一个多变量线性回归模型,使用三个计算轻的度量(邻域重叠:NOVER,一跳两跳邻域:OTH和归一化邻居度:NND)来预测自中心边缘网络的BPI值,这些度量也是在自中心边缘网络上计算的。培训和测试是作为单一模拟运行的一部分进行的(即,现场)。训练数据集包括模拟第一阶段(总模拟时间的1/5)随机采样的自中心边缘网络的BPI', NOVER, OTH和NND值。我们观察到,对于低密度和高密度网络,预测的r平方值都在0.85以上。我们还观察到,在低-中等密度和中-高密度网络中,预测的基于BPI'的DG树的寿命分别为实际基于BPI'的DG树的87-92%和55-75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Variable Linear Regression-Based Prediction of A Computationally-Heavy Link Stability Metric for Mobile Sensor Networks
Until now, we were determining stable data gathering (DG) trees for mobile sensor networks (MSNs) using a link stability metric (computationally-light or computationally-heavy) that is directly computed on the egocentric edge network. Among such DG trees, the BPI' (complement of bipartivity index)-based DG trees were observed to be the most stable, but the BPI' metric is also computationally-heavy. Hence, we seek to build a multi-variable linear regression model to predict the BPI' values for the egocentric networks of edges using three computationally-light metrics (neighborhood overlap: NOVER, one-hop two-hop neighborhood: OTH, and normalized neighbor degree: NND) that are also computed on the egocentric edge networks. The training and testing are conducted as part of a single simulation run (i.e., in-situ). The training dataset comprises of the BPI', NOVER, OTH and NND values of randomly sampled egocentric edge networks during the first phase of the simulation (1/5th of the total simulation time). We observe the R-square values for the prediction to be above 0.85 for both low density and high density networks. We also observe the lifetimes of the predicted BPI'-based DG trees to be 87-92% and 55-75% of the actual BPI'-based DG trees for low-moderate and moderate-high density networks respectively.
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