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Deep Neural Network based Channel Allocation for Interference-Limited Wireless Networks

机译:基于深度神经网络的受干扰有限无线网络的信道分配

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Cooperative communication in wireless networks has received much attention in both academia and industry. How to effectively allocate and schedule radio resources to improve system performance becomes an important issue of cooperative communication. This paper mainly studies the ultra-low complexity wireless channel allocation algorithm for interference-limited networks. Firstly, we use the traditional sequential convex approximation (SCA) technique to design the channel allocation algorithm. Then, we utilize the characteristics of deep neural network (DNN) that can approximate a complex function with multiple layers of mapping to approximate the SCA-based algorithm. Based on DNN, we design an ultra-low complexity algorithm. Simulation results indicate that the DNN-based algorithm can achieve good performance with ultra-low computation time, which is a feature for practical application.
机译:无线网络中的合作沟通在学术界和工业中受到了很多关注。如何有效地分配和安排无线电资源以提高系统性能成为合作沟通的重要问题。本文主要研究干扰限制网络的超低复杂性无线信道分配算法。首先,我们使用传统的顺序凸近似(SCA)技术来设计信道分配算法。然后,我们利用深神经网络(DNN)的特征,其可以近似具有多层映射的复杂功能,以近似于基于SCA的算法。基于DNN,我们设计了一种超低的复杂性算法。仿真结果表明,基于DNN的算法可以实现具有超低计算时间的良好性能,这是实际应用的特征。

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