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Interference Prediction in Mobile Ad Hoc Networks With a General Mobility Model

机译:具有通用移动性模型的移动自组织网络中的干扰预测

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摘要

In a mobile ad hoc network (MANET), effective prediction of time-varying interferences can enable adaptive transmission designs and therefore improve the communication performance. This paper investigates interference prediction in MANETs with a finite number of nodes by proposing and using a general-order linear model for node mobility. The proposed mobility model can well approximate node dynamics of practical MANETs. In contrast to previous studies on interference statistics, we are able through this model to give a best estimate of the time-varying interference at any time rather than long-term average effects. Specifically, we propose a compound Gaussian point process functional as a general framework to obtain analytical results on the mean value and moment-generating function of the interference prediction. With a series form of this functional, we give the necessary and sufficient condition for when the prediction is essentially equivalent to that from a binomial point process (BPP) network in the limit as time goes to infinity. These conditions permit one to rigorously determine when the commonly used BPP approximations are valid. Finally, our simulation results corroborate the effectiveness and accuracy of the analytical results on interference prediction and also show the advantages of our method in dealing with complex mobilities.
机译:在移动自组织网络(MANET)中,时变干扰的有效预测可以实现自适应传输设计,从而提高通信性能。通过提出并使用通用线性模型进行节点移动性,本文研究了节点数量有限的MANET中的干扰预测。提出的移动性模型可以很好地近似实际MANET的节点动力学。与以前关于干扰统计的研究相比,我们能够通过该模型对随时变化的干扰做出最佳估计,而不是长期平均影响。具体来说,我们提出了一个复合高斯点过程函数作为通用框架,以获取有关干扰预测的平均值和矩生成函数的分析结果。通过此功能的一系列形式,我们给出了必要的充分条件,以便预测随着时间的推移,随着时间的流逝,无穷大时,该预测基本上等于来自二项式点过程(BPP)网络的预测。这些条件允许严格确定何时常用的BPP近似有效。最后,我们的仿真结果证实了分析结果对干扰预测的有效性和准确性,并且还显示了我们的方法在处理复杂运动性方面的优势。

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