Machine Learning Enabled Spectrum Sharing in Dense LTE-U/Wi-Fi Coexistence Scenarios

The application of Machine Learning (ML) techniques to complex engineering problems has proved to be an attractive and efficient solution. ML has been successfully applied to several practical tasks like image recognition, automating industrial operations, etc. The promise of ML techniques in solving non-linear problems influenced this work which aims to apply known ML techniques and develop new ones for wireless spectrum sharing between Wi-Fi and LTE in the unlicensed spectrum. In this work, we focus on the LTE-Unlicensed (LTE-U) specification developed by the LTE-U Forum, which uses the duty-cycle approach for fair coexistence. The specification suggests reducing the duty cycle at the LTE-U base-station (BS) when the number of co-channel Wi-Fi basic service sets (BSSs) increases from one to two or more. However, without decoding the Wi-Fi packets, detecting the number of Wi-Fi BSSs operating on the channel in real-time is a challenging problem. In this work, we demonstrate a novel ML-based approach which solves this problem by using energy values observed during the LTE-U OFF duration. It is relatively straightforward to observe only the energy values during the LTE-U BS OFF time compared to decoding the entire Wi-Fi packet, which would require a full Wi-Fi receiver at the LTE-U base-station. We implement and validate the proposed ML-based approach by real-time experiments and demonstrate that there exist distinct patterns between the energy distributions between one and many Wi-Fi AP transmissions. The proposed ML-based approach results in a higher accuracy (close to 99% in all cases) as compared to the existing auto-correlation (AC) and energy detection (ED) approaches.

[1]  Tamma Bheemarjuna Reddy,et al.  Wi-Fi User's Video QoE in the Presence of Duty Cycled LTE-U , 2018, MobiCom.

[2]  Tamma Bheemarjuna Reddy,et al.  On placement and dynamic power control of femtocells in LTE HetNets , 2014, 2014 IEEE Global Communications Conference.

[3]  Morteza Mehrnoush,et al.  Analysis of CSAT Performance in Wi-Fi and LTE-U Coexistence , 2018, 2018 IEEE International Conference on Communications Workshops (ICC Workshops).

[4]  Sanjay Krishnan,et al.  Band-limited Training and Inference for Convolutional Neural Networks , 2019, ICML.

[5]  Sanjay Krishnan,et al.  DeepLens: Towards a Visual Data Management System , 2019, CIDR.

[6]  Cristina Cano,et al.  Unlicensed LTE/WiFi coexistence: Is LBT inherently fairer than CSAT? , 2015, 2016 IEEE International Conference on Communications (ICC).

[7]  Trevor Hastie,et al.  Multi-class AdaBoost ∗ , 2009 .

[8]  Osvaldo Simeone,et al.  Energy-Efficient Resource Allocation for Mobile Edge Computing-Based Augmented Reality Applications , 2016, IEEE Wireless Communications Letters.

[9]  Morteza Mehrnoush,et al.  Association fairness in Wi-Fi and LTE-U coexistence , 2018, 2018 IEEE Wireless Communications and Networking Conference (WCNC).

[10]  Sampath Rangarajan,et al.  LTE in unlicensed spectrum: are we there yet? , 2016, MobiCom.

[11]  L. Deng,et al.  The MNIST Database of Handwritten Digit Images for Machine Learning Research [Best of the Web] , 2012, IEEE Signal Processing Magazine.

[12]  Dries Naudts,et al.  A Q-Learning Scheme for Fair Coexistence Between LTE and Wi-Fi in Unlicensed Spectrum , 2018, IEEE Access.

[13]  A. Antony Franklin,et al.  A Complete Solution to LTE-U and Wi-Fi Hidden Terminal Problem , 2019, IEEE Transactions on Cognitive Communications and Networking.

[14]  Mérouane Debbah,et al.  Wireless Networks Design in the Era of Deep Learning: Model-Based, AI-Based, or Both? , 2019, IEEE Transactions on Communications.

[15]  Gopinath Gampala,et al.  Massive MIMO — Beyond 4G and a basis for 5G , 2018, 2018 International Applied Computational Electromagnetics Society Symposium (ACES).

[16]  John Tran,et al.  cuDNN: Efficient Primitives for Deep Learning , 2014, ArXiv.

[17]  Zhi Ding,et al.  Optimizing Unlicensed Spectrum Sharing for LTE-U and WiFi Network Coexistence , 2016, IEEE Journal on Selected Areas in Communications.

[18]  Mugen Peng,et al.  Application of Machine Learning in Wireless Networks: Key Techniques and Open Issues , 2018, IEEE Communications Surveys & Tutorials.

[19]  Bijan Jabbari,et al.  A Machine Learning Algorithm for Unlicensed LTE and WiFi Spectrum Sharing , 2018, 2018 IEEE International Symposium on Dynamic Spectrum Access Networks (DySPAN).

[20]  Jeff Johnson,et al.  Fast Convolutional Nets With fbfft: A GPU Performance Evaluation , 2014, ICLR.

[21]  Tim Oates,et al.  Time series classification from scratch with deep neural networks: A strong baseline , 2016, 2017 International Joint Conference on Neural Networks (IJCNN).

[22]  Andrew Zisserman,et al.  Very Deep Convolutional Networks for Large-Scale Image Recognition , 2014, ICLR.

[23]  Ulf Leser,et al.  Fast and Accurate Time Series Classification with WEASEL , 2017, CIKM.

[24]  Suzan Bayhan,et al.  Tutorial on Machine Learning for Spectrum Sharing in Wireless Networks , 2017 .

[25]  Hamed Haddadi,et al.  Deep Learning in Mobile and Wireless Networking: A Survey , 2018, IEEE Communications Surveys & Tutorials.

[26]  Monisha Ghosh,et al.  Energy Detection Based Sensing of Multiple Wi-Fi BSSs for LTE-U CSAT , 2018, 2018 IEEE Global Communications Conference (GLOBECOM).

[27]  Sayantan Choudhury,et al.  LTE UL Power Control for the Improvement of LTE/Wi-Fi Coexistence , 2013, 2013 IEEE 78th Vehicular Technology Conference (VTC Fall).

[28]  Jian Sun,et al.  Delving Deep into Rectifiers: Surpassing Human-Level Performance on ImageNet Classification , 2015, 2015 IEEE International Conference on Computer Vision (ICCV).

[29]  Patrick Schäfer,et al.  Scalable time series classification , 2016, Data Mining and Knowledge Discovery.

[30]  Morteza Mehrnoush,et al.  Auto-Correlation Based Sensing of Multiple Wi-Fi BSSs for LTE-U CSAT , 2019, 2019 IEEE 90th Vehicular Technology Conference (VTC2019-Fall).

[31]  David A. Patterson,et al.  In-datacenter performance analysis of a tensor processing unit , 2017, 2017 ACM/IEEE 44th Annual International Symposium on Computer Architecture (ISCA).

[32]  Morteza Mehrnoush,et al.  On the Fairness of Wi-Fi and LTE-LAA Coexistence , 2018, IEEE Transactions on Cognitive Communications and Networking.

[33]  Ursula Challita,et al.  Artificial Neural Networks-Based Machine Learning for Wireless Networks: A Tutorial , 2017, IEEE Communications Surveys & Tutorials.

[34]  Dries Naudts,et al.  Enhancing the Coexistence of LTE and Wi-Fi in Unlicensed Spectrum Through Convolutional Neural Networks , 2019, IEEE Access.

[35]  Pedro Maia de Santana,et al.  DM-CSAT: a LTE-U/Wi-Fi coexistence solution based on reinforcement learning , 2019, Telecommun. Syst..

[36]  Andrew Lavin,et al.  Fast Algorithms for Convolutional Neural Networks , 2015, 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[37]  Ying-Chang Liang,et al.  A Learning-Based Coexistence Mechanism for LAA-LTE Based HetNets , 2018, 2018 IEEE International Conference on Communications (ICC).