Improving Energy Efficiency Fairness of Wireless Networks: A Deep Learning Approach

Achieving energy efficiency (EE) fairness among heterogeneous mobile devices will become a crucial issue in future wireless networks. This paper investigates a deep learning (DL) approach for improving EE fairness performance in interference channels (IFCs) where multiple transmitters simultaneously convey data to their corresponding receivers. To improve the EE fairness, we aim to maximize the minimum EE among multiple transmitter–receiver pairs by optimizing the transmit power levels. Due to fractional and max-min formulation, the problem is shown to be non-convex, and, thus, it is difficult to identify the optimal power control policy. Although the EE fairness maximization problem has been recently addressed by the successive convex approximation framework, it requires intensive computations for iterative optimizations and suffers from the sub-optimality incurred by the non-convexity. To tackle these issues, we propose a deep neural network (DNN) where the procedure of optimal solution calculation, which is unknown in general, is accurately approximated by well-designed DNNs. The target of the DNN is to yield an efficient power control solution for the EE fairness maximization problem by accepting the channel state information as an input feature. An unsupervised training algorithm is presented where the DNN learns an effective mapping from the channel to the EE maximizing power control strategy by itself. Numerical results demonstrate that the proposed DNN-based power control method performs better than a conventional optimization approach with much-reduced execution time. This work opens a new possibility of using DL as an alternative optimization tool for the EE maximizing design of the next-generation wireless networks.

[1]  Sergey Ioffe,et al.  Batch Normalization: Accelerating Deep Network Training by Reducing Internal Covariate Shift , 2015, ICML.

[2]  Yongming Huang,et al.  Coordinated Multicell Multiuser Precoding for Maximizing Weighted Sum Energy Efficiency , 2014, IEEE Transactions on Signal Processing.

[3]  Tony Q. S. Quek,et al.  Constrained Deep Learning for Wireless Resource Management , 2019, ICC 2019 - 2019 IEEE International Conference on Communications (ICC).

[4]  Markku J. Juntti,et al.  Achieving Energy Efficiency Fairness in Multicell MISO Downlink , 2015, IEEE Communications Letters.

[5]  Eduard A. Jorswieck,et al.  Energy Efficiency in Wireless Networks via Fractional Programming Theory , 2015, Found. Trends Commun. Inf. Theory.

[6]  Markku J. Juntti,et al.  Optimal Energy-Efficient Transmit Beamforming for Multi-User MISO Downlink , 2015, IEEE Transactions on Signal Processing.

[7]  Woongsup Lee,et al.  Deep Power Control: Transmit Power Control Scheme Based on Convolutional Neural Network , 2018, IEEE Communications Letters.

[8]  Inkyu Lee,et al.  Binary signaling design for visible light communication: a deep learning framework. , 2018, Optics express.

[9]  Inkyu Lee,et al.  Deep learning based transceiver design for multi-colored VLC systems. , 2018, Optics express.

[10]  Woongsup Lee,et al.  Transmit Power Control Using Deep Neural Network for Underlay Device-to-Device Communication , 2018, IEEE Wireless Communications Letters.

[11]  Dong-Ho Cho,et al.  Deep Learning Based Transmit Power Control in Underlaid Device-to-Device Communication , 2019, IEEE Systems Journal.

[12]  Guigang Zhang,et al.  Deep Learning , 2016, Int. J. Semantic Comput..

[13]  Jimmy Ba,et al.  Adam: A Method for Stochastic Optimization , 2014, ICLR.

[14]  Yoshua Bengio,et al.  Understanding the difficulty of training deep feedforward neural networks , 2010, AISTATS.

[15]  N. Sidiropoulos,et al.  Learning to Optimize: Training Deep Neural Networks for Interference Management , 2017, IEEE Transactions on Signal Processing.

[16]  Geoffrey Ye Li,et al.  Energy-Efficient CoMP Precoding in Heterogeneous Networks , 2014, IEEE Transactions on Signal Processing.

[17]  Zhi-Quan Luo,et al.  A Unified Algorithmic Framework for Block-Structured Optimization Involving Big Data: With applications in machine learning and signal processing , 2015, IEEE Signal Processing Magazine.

[18]  Liwei Wang,et al.  The Expressive Power of Neural Networks: A View from the Width , 2017, NIPS.

[19]  Jakob Hoydis,et al.  An Introduction to Deep Learning for the Physical Layer , 2017, IEEE Transactions on Cognitive Communications and Networking.

[20]  Kurt Hornik,et al.  Multilayer feedforward networks are universal approximators , 1989, Neural Networks.

[21]  Stephan ten Brink,et al.  Deep Learning Based Communication Over the Air , 2017, IEEE Journal of Selected Topics in Signal Processing.

[22]  Inkyu Lee,et al.  Deep Learning Framework for Wireless Systems: Applications to Optical Wireless Communications , 2018, IEEE Communications Magazine.

[23]  Yongming Huang,et al.  Max-Min Energy Efficient Beamforming for Multicell Multiuser Joint Transmission Systems , 2013, IEEE Communications Letters.

[24]  Ming Chen,et al.  Distributed Energy-Efficient Power Optimization for CoMP Systems With Max-Min Fairness , 2014, IEEE Communications Letters.

[25]  Stephen P. Boyd,et al.  Convex Optimization , 2004, Algorithms and Theory of Computation Handbook.

[26]  Le-Nam Tran,et al.  Distributed Solutions for Energy Efficiency Fairness in Multicell MISO Downlink , 2017, IEEE Transactions on Wireless Communications.

[27]  Gerhard Fettweis,et al.  Framework for Link-Level Energy Efficiency Optimization with Informed Transmitter , 2011, IEEE Transactions on Wireless Communications.

[28]  Woongsup Lee,et al.  Resource Allocation for Multi-Channel Underlay Cognitive Radio Network Based on Deep Neural Network , 2018, IEEE Communications Letters.