In wireless network, the optimization problems generally have complex constraints, and are usually solved via utilizing the traditional optimization methods that have high computational complexity and need to be executed repeatedly with the change of network environments. In this paper, to overcome these shortcomings, an unsupervised deep unrolling framework based on projection gradient descent, i.e., unrolled PGD network (UPGDNet), is designed to solve a family of constrained optimization problems. The set of constraints is divided into two categories according to the coupling relations among optimization variables and the convexity of constraints. One category of constraints includes convex constraints with decoupling among optimization variables, and the other category of constraints includes non-convex or convex constraints with coupling among optimization variables. Then, the first category of constraints is directly projected onto the feasible region, while the second category of constraints is projected onto the feasible region using neural network. Finally, an unrolled sum rate maximization network (USRMNet) is designed based on UPGDNet to solve the weighted SR maximization problem for the multiuser ultra-reliable low latency communication system. Numerical results show that USRMNet has a comparable performance with low computational complexity and an acceptable generalization ability in terms of the user distribution.
翻译:在无线网络中,优化问题一般有复杂的制约因素,通常通过使用传统的优化方法加以解决,这些方法的计算复杂程度高,需要随着网络环境的变化反复执行。在本文件中,为了克服这些缺陷,一个基于预测梯度的未经监督的深度推进框架,即无滚动的PGD网络(UPGDNet),旨在解决一个限制优化问题的大家庭。一套制约因素根据优化变数和制约的共性之间的混合关系分为两类。一类制约因素包括与优化变数脱钩的螺旋式制约,其他类型的制约因素包括非螺旋或与优化变数的混合制约。然后,第一类制约因素直接预测到可行的区域,而第二类制约则预测到使用神经网络的可行区域。最后,一个基于UPGDNet的无滚动总和率最大化网络(USRMNet)的设计,目的是解决多用户超能性能极低拉伸缩变量之间的加权斯洛伐克共和国最大化问题,而其他类别的制约因素则包括非螺旋或螺旋形限制与优化变速变量的组合组合。NumeralNet的运行结果显示美国通用系统具有可比较的可接受性能的低的磁性能。