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首页> 外文期刊>Internet of Things Journal, IEEE >A Machine Learning-Based Algorithm for Joint Scheduling and Power Control in Wireless Networks
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A Machine Learning-Based Algorithm for Joint Scheduling and Power Control in Wireless Networks

机译:基于机器学习的无线网络联合调度和功率控制算法

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摘要

Wireless network resource allocation is an important issue for designing Internet of Things systems. In this paper, we consider the problem of wireless network capacity optimization that involves issues such as flow allocation, link scheduling, and power control. We show that it can be decomposed into a linear program and a nonlinear weighted sum-rate maximization problem for power allocation. Unlike most traditional methods that iteratively search the optimal solutions of the nonlinear sub-problem, we propose to directly compute approximated solutions based on machine learning techniques. Specifically, the learning systems consist of both support vector machines (SVMs) and deep belief networks (DBNs) that are trained based on offline computed optimal solutions. In the running phase, the SVMs perform classification for each link to decide whether to use maximal transmit power or be turned off. At the same time, the DBNs compute an approximation of the optimal power allocation. The two results are combined to obtain an approximated solution of the nonlinear program. Simulation results demonstrate the effectiveness of the proposed machine learning-based algorithm.
机译:无线网络资源分配是设计物联网系统的重要问题。在本文中,我们考虑了无线网络容量优化问题,其中涉及流量分配,链路调度和功率控制等问题。我们证明了它可以分解为一个线性程序和一个非线性加权和率最大化功率分配问题。与大多数传统方法迭代地搜索非线性子问题的最优解不同,我们建议基于机器学习技术直接计算近似解。具体来说,学习系统既包含支持向量机(SVM),也包括基于离线计算的最佳解决方案进行训练的深度信任网络(DBN)。在运行阶段,SVM对每个链路执行分类,以决定是使用最大发射功率还是将其关闭。同时,DBN计算出最佳功率分配的近似值。将这两个结果结合起来,可以得到非线性程序的近似解。仿真结果证明了所提出的基于机器学习的算法的有效性。

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