Item Infomation
Title: | Enhanced Machine Learning Techniques for Early HARQ Feedback Prediction in 5G |
Authors: | Strodthoff, N. |
Participants: | Göktepe,B. Schierl, T. Hellge, C. Samek, W. |
Issue Date: | 2019 |
Publisher: | IEEE Explore |
Series/Report no.: | IEEE Journal on Selected Areas in Communications, 2019, Vol37, Issue 11, pp 2573-2587 |
Abstract: | We investigate Early Hybrid Automatic Repeat reQuest (E-HARQ) feedback schemes enhanced by machine learning techniques as a path towards ultra-reliable and lowlatency communication (URLLC). To this end, we propose machine learning methods to predict the outcome of the decoding process ahead of the end of the transmission. We discuss different input features and classification algorithms ranging from traditional methods to newly developed supervised autoencoders. These methods are evaluated based on their prospects of complying with the URLLC requirements of effective block error rates below 10 at small latency overheads. We provide realistic performance estimates in a system model incorporating scheduling effects to demonstrate the feasibility of E-HARQ across different signal-to-noise ratios, subcode lengths, channel conditions and system loads, and show the benefit over regular HARQ and existing E-HARQ schemes without machine learning. |
URI: | http://tailieuso.tlu.edu.vn/handle/DHTL/10444 |
Appears in Collections: | Tài liệu hỗ trợ nghiên cứu khoa học |
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