Machine Learning Based Link-to-System Mapping for System-Level Simulation of Cellular Networks

Eunmi Chu, Hyuk Ju Jang, B. Jung
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引用次数: 2

Abstract

This paper proposes a machine learning (ML)-based exponential effective signal-to-noise ratio (SNR) mapping (EESM) method for simulating the system-level performance of cellular networks, which utilizes a deep neural network (DNN) regression algorithm. We first explain overall procedure of the link-to-system (L2S) mapping algorithm which has been used in commercial standardization organizations such as IEEE 802.16 and 3GPP LTE. Then, we apply the proposed ML-based EESM method to the existing L2S mapping procedure. The processing time of the L2S mapping becomes significantly reduced through the proposed method while the mean squared errors (MSE) between the actual block-error rate (BLER) from the link-level simulator and the estimated BLER from the L2S mapping technique is also decreased, compared with the conventional L2S mapping method.
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基于机器学习的链路到系统映射,用于蜂窝网络的系统级仿真
本文提出了一种基于机器学习(ML)的指数有效信噪比(SNR)映射(EESM)方法,利用深度神经网络(DNN)回归算法模拟蜂窝网络的系统级性能。我们首先解释了链路到系统(L2S)映射算法的整体流程,该算法已被 IEEE 802.16 和 3GPP LTE 等商业标准化组织采用。然后,我们将提出的基于 ML 的 EESM 方法应用到现有的 L2S 映射程序中。与传统的 L2S 映射方法相比,拟议方法大大缩短了 L2S 映射的处理时间,同时降低了链路级模拟器得出的实际误块率(BLER)与 L2S 映射技术估算出的误块率(BLER)之间的均方误差(MSE)。
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