Power Allocation Based LSTM-FCN in D2D Underlaying with Multi-Cell Cellular Network

Astri Wulandari, Arfianto Fahmi, N. Adriansyah
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Abstract

Device-to-Device (D2D) communication is one of the key technologies to achieving higher speeds, lower latency, and less energy. D2D communication is direct link communication between two communication devices, meaning that communication can occur without going through the base station. However, because communication occurs without going through the base station and D2D users do not have their resources, D2D users simultaneously use the resources owned by Cellular User Equipment (CUE) to communicate and cause interference. Power allocation is optimized to mitigate the interference between D2D users and CUEs and maximize the system's overall sum rate. The traditional power allocation scheme in D2D communication still has problems related to the efficiency of the allocation, coordination of interference, and limitations for operating in real-time systems. This work focuses on designing the Long Short Term Memory with Fully Convolutional Network (LSTM-FCN) algorithm suitable for the power control problem on a D2D underlay communication system with an uplink-side multi-cell scheme. The simulation results show that enhancement of CUE can increase the system's sum rate and energy efficiency. At the same time, enhancement of the D2D pair can also increase the sum rate but decrease energy efficiency. Both LSTM-FCN, LSTM, and FCN can approximate the performance of the conventional scheme (CA-based algorithm). Besides that, LSTM-FCN gets the smallest time complexity compared to the other two algorithms and gets the closest performance to CA in both scenarios above 97% accuracy.
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基于功率分配的LSTM-FCN多蜂窝网络D2D底层
设备到设备(Device-to-Device, D2D)通信是实现更高速度、更低延迟和更少能耗的关键技术之一。D2D通信是两个通信设备之间的直接链路通信,这意味着通信可以不经过基站进行。但是,由于通信不经过基站,D2D用户没有自己的资源,D2D用户同时使用蜂窝用户设备(CUE)拥有的资源进行通信,造成干扰。优化了功率分配,以减轻D2D用户和cue之间的干扰,并最大化系统的总体和速率。在D2D通信中,传统的功率分配方案仍然存在分配效率、干扰协调以及在实时系统中运行的局限性等问题。本文研究了一种基于全卷积网络的长短期记忆(LSTM-FCN)算法,该算法适用于具有上行链路侧多单元方案的D2D底层通信系统的功率控制问题。仿真结果表明,增强CUE可以提高系统的和速率和能效。同时,增强D2D对也可以提高和速率,但降低能量效率。LSTM-FCN、LSTM和FCN都可以近似于传统方案(基于ca的算法)的性能。此外,与其他两种算法相比,LSTM-FCN获得了最小的时间复杂度,并且在准确率超过97%的两种场景下都获得了最接近CA的性能。
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