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Support Vector Machine Based Mobility Prediction Scheme in Heterogeneous Wireless Networks

机译:异构无线网络中基于支持向量机的移动性预测方案

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摘要

To improve the intelligence of the mobile-aware applications in the heterogeneous wireless networks (HetNets), it is essential to establish an advanced mechanism to anticipate the change of the user location in every subnet for HetNets. This paper proposes a multiclass support vector machine based mobility prediction (Multi-SVMMP) scheme to estimate the future location of mobile users according to the movement history information of each user in HetNets. In the location prediction process, the regular and random user movement patterns are treated differently, which can reflect the user movements more realistically than the existing movement models in HetNets. And different forms of multiclass support vector machines are embedded in the two mobility patterns according to the different characteristics of the two mobility patterns. Moreover, the introduction of target region (TR) cuts down the energy consumption efficiently without impacting the prediction accuracy. As reported in the simulations, our Multi-SVMMP can overcome the difficulties found in the traditional methods and obtain a higher prediction accuracy and user adaptability while reducing the cost of prediction resources.
机译:为了提高异构无线网络(HetNets)中移动感知应用程序的智能,必须建立一种先进的机制来预测HetNets每个子网中用户位置的变化。本文提出了一种基于多类支持向量机的移动性预测(Multi-SVMMP)方案,根据HetNets中每个用户的移动历史信息来估计移动用户的未来位置。在位置预测过程中,对常规和随机用户移动模式进行了不同的处理,这比HetNets中的现有移动模型可以更真实地反映用户移动。根据两种移动性模式的不同特征,将不同形式的多类支持向量机嵌入到两个移动性模式中。此外,引入目标区域(TR)可有效降低能耗,而不会影响预测准确性。如仿真报告所示,我们的Multi-SVMMP可以克服传统方法中发现的困难,并在降低预测资源成本的同时获得更高的预测准确性和用户适应性。

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