基于lte - laa的频谱共享中KPI和PoC估计的新机器学习方法

S. Mosleh, Yao Ma, J. Rezac, J. Coder
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引用次数: 7

摘要

在过去几年中,机器学习(ML)方法已被广泛用于建模和改进无线通信网络。然而,在基于长期演进许可辅助接入(LTE-LAA)的共存系统中,关键性能指标(kpi)及其不确定性的估计尚未得到充分解决。例如,基于MAC和物理层协议和参数的部分或没有信息,ML方法是否能够准确预测LTE-LAA共存系统的可实现kpi(例如吞吐量)和共存概率(PoC),目前尚不清楚。在本文中,我们开发了一种新的机器学习方法,通过将神经网络与逻辑回归算法相结合来跟踪和估计共存的LTE-LAA和无线局域网(WLAN)链路的kpi和PoC。当基站(BSs)和接入点(ap)的KPI样本可用时,可以应用此ML方法,而无需使用MAC和物理层参数的知识。机器学习与仿真结果的对比表明,所提出的机器学习方法能够很好地跟踪系统kpi并预测系统PoC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Machine Learning Approach to Estimating KPI and PoC for LTE-LAA-Based Spectrum Sharing
Machine learning (ML) approaches have been extensively exploited to model and to improve wireless communication networks in the past few years. Nonetheless, the estimation of key performance indicators (KPIs) and their uncertainties in Long Term Evolution License Assisted Access (LTE-LAA) based coexistence systems is not adequately addressed. For example, it is not clear if an ML method can accurately predict achievable KPIs (e.g. throughput) and the probability of coexistence (PoC) of LTE-LAA coexistence systems based on partial or no information of MAC and physical layer protocols and parameters. In this paper, we develop a novel ML method by combining a neural network with a logistic regression algorithm to track and estimate KPIs and PoC of coexisting LTE-LAA and wireless local area network (WLAN) links. This ML method can be applied when KPI samples at the base stations (BSs) and access points (APs) are available, without using knowledge of MAC and physical layer parameters. Comparison between the ML and simulation results indicate that the proposed ML method can track the system KPIs and predict the system PoC with good accuracy.
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