论文标题
在线深神经网络,以优化无线通信
Online Deep Neural Network for Optimization in Wireless Communications
论文作者
论文摘要
最近,由于其强大的学习能力和低测试的复杂性,深度神经网络(DNN)在智能通信系统的设计中被广泛采用。但是,大多数当前基于DNN的方法的方法仍然遭受性能不佳,概括能力有限和可解释性差。在本文中,我们提出了一种基于在线DNN的方法,以解决无线通信中的一般优化问题,其中为每个数据示例培训了专用的DNN。通过将优化变量和目标函数视为网络参数和损耗函数,可以通过网络培训等效地解决优化问题。得益于在线优化性质和有意义的网络参数,所提出的方法具有强大的概括能力和可解释性,而其出色的性能是通过在智能反射表面(IRS)中辅助的多用户多用户多输入多输入多数输出(MIMO)系统中的联合波束形成的实际示例来证明的。仿真结果表明,所提出的在线DNN胜过常规的离线DNN和最新的迭代优化算法,但复杂性较低。
Recently, deep neural network (DNN) has been widely adopted in the design of intelligent communication systems thanks to its strong learning ability and low testing complexity. However, most current offline DNN-based methods still suffer from unsatisfactory performance, limited generalization ability, and poor interpretability. In this article, we propose an online DNN-based approach to solve general optimization problems in wireless communications, where a dedicated DNN is trained for each data sample. By treating the optimization variables and the objective function as network parameters and loss function, respectively, the optimization problem can be solved equivalently through network training. Thanks to the online optimization nature and meaningful network parameters, the proposed approach owns strong generalization ability and interpretability, while its superior performance is demonstrated through a practical example of joint beamforming in intelligent reflecting surface (IRS)-aided multi-user multiple-input multiple-output (MIMO) systems. Simulation results show that the proposed online DNN outperforms conventional offline DNN and state-of-the-art iterative optimization algorithm, but with low complexity.