移动预测的编码器-解码器生成对抗网络

Sammy Yap Xiang Bang, S. M. Raza, Hui-Lin Yang, Hyunseung Choo
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引用次数: 0

摘要

超5G和6G的超密集蜂窝部署导致蜂窝之间广泛重叠。这使得当前的被动切换机制不充分,因为在一个位置有多个强信号可用。此外,最近提出的预测性交通管理方案也不适合,因为它们可能导致不必要的交接。基于预测路径的移动管理方案可以解决这些问题,但高精度预测用户设备(UE)路径是一项具有挑战性的任务。本文提出了一种编码器-解码器生成对抗网络(EMP-GAN),用于多步提前预测UE路径。EMP-GAN架构由生成器和鉴别器神经网络组成,其中生成器预测移动性(下一个多步目标序列),鉴别器在预测的目标序列和对抗学习的真实情况之间进行分类。在对抗学习的基础上,采用特征匹配和事实强制训练等方法,实现了GAN的快速收敛和性能提升。EMP-GAN在韩国板桥信息通信技术研究中心收集的无线网络移动数据集上进行了评估,结果表明它优于最先进的预测模型。特别是,EMP-GAN在3步、5步、7步和9步预测中分别达到95.55%、94.70%、93.50%和92.39%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EMP-GAN: Encoder-Decoder Generative Adversarial Network for Mobility Prediction
Ultra-dense cell deployments in Beyond 5G and 6G result in extensive overlapping between cells. This makes current reactive handover mechanism inadequate due to availability of multiple strong signals at a position. Moreover, recently proposed predictive mobility management schemes are also not suitable as they may lead to unnecessary handovers. A predictive path-based mobility management scheme can solve these issues, but forecasting User Equipment (UE) paths with high accuracy is a challenging task. This paper proposes Encoder-Decoder Generative Adversarial Network (EMP-GAN) for forecasting multi-step ahead UE path. EMP-GAN architecture consists of generator and discriminator neural networks, where the generator predicts mobility (next multi-step target sequence) and the discriminator classifies between the predicted target sequence and the ground truth in adversarial learning. Besides adversarial learning, feature matching and fact forcing training methods are employed for fast convergence of GAN and performance improvement. EMP-GAN is evaluated on mobility dataset collected from the wireless network of Pangyo ICT Research Center, Korea, and results show that it outperforms state-of-the-art prediction models. In particular, EMP-GAN achieves 95.55%, 94.70%, 93.50%, and 92.39% accuracies for 3, 5, 7, and 9-step predictions, respectively.
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