Spectral Efficiency Maximization for V2V Communication Underlaid Cellular Uplink Using Deep Neural Networks

Dara Ron, Eun-Jeong Han, Jung-Ryun Lee
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引用次数: 1

Abstract

Vehicle-to-vehicle (V2V) communication has been considered as a key technology of the intelligent transportation system because it has emerged with significant benefits such as improving driver safety and reducing traffic congestion and accidents. Although the V2V technology has provided some key advantages, the challenge still exists. Since V2V communication enables the transceiver pairs to exchange emergency information in the same cellular frequency band, the interferences of V2V links and vehicle-to-cellular (V2C) links should occur. Therefore, in our study, we tackle the interference problem by optimizing the transmit powers of the V2V users and the cellular users. The problem-solving process begins with formulating the optimization problem with linear constraints, where the objective function is the sum of data rates, and the transmit powers of all transmitters are the control variables. Then, we design a proper deep neural network (DNN) to solve the optimization problem. DNN obtains the optimal solution via training the neural networks in a way to minimize the loss function. The simulation results show that the proposed DNN algorithm is better than those of weighted minimum mean squared error (WMMSE), fixed transmit power, and Dinkelbach’s methods, and particularly achieves near-global optimum with lower computation complexity than the exhaustive search (ES).
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基于深度神经网络的V2V通信蜂窝上行链路频谱效率最大化
车对车(V2V)通信在提高驾驶员安全、减少交通拥堵和事故等方面具有显著的优势,被认为是智能交通系统的关键技术。尽管V2V技术提供了一些关键优势,但挑战仍然存在。由于V2V通信使收发器对能够在同一蜂窝频段内交换应急信息,因此V2V链路和V2C链路应该会发生干扰。因此,在我们的研究中,我们通过优化V2V用户和蜂窝用户的发射功率来解决干扰问题。解决问题的过程首先是制定具有线性约束的优化问题,其中目标函数是数据速率的总和,所有发射机的发射功率是控制变量。然后,我们设计了一个合适的深度神经网络(DNN)来解决优化问题。DNN通过以损失函数最小的方式训练神经网络来获得最优解。仿真结果表明,所提出的深度神经网络算法优于加权最小均方误差(WMMSE)、固定发射功率和Dinkelbach方法,特别是实现了近全局最优,且计算复杂度低于穷举搜索(ES)。
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