Machine Learning Based Uplink Transmission Power Prediction for LTE and Upcoming 5G Networks using Passive Downlink Indicators

被引:0
|
作者
Falkenberg, Robert [1 ]
Benjamin, Sliwa [1 ]
Piatkowski, Nico [2 ]
Wietfeld, Christian [1 ]
机构
[1] TU Dortmund Univ, Commun Networks Inst, D-44227 Dortmund, Germany
[2] TU Dortmund Univ, Dept Comp Sci, AI Grp, D-44227 Dortmund, Germany
关键词
D O I
暂无
中图分类号
U [交通运输];
学科分类号
08 ; 0823 ;
摘要
Energy-aware system design is an important optimization task for static and mobile Internet of Things (IoT)-based sensor nodes, especially for highly resource-constrained vehicles such as mobile robotic systems. For 4G/5G-based cellular communication systems, the effective transmission power of uplink data transmissions is of crucial importance for the overall system power consumption. Unfortunately, this information is usually hidden within off-the-shelf modems and mobile handsets and can therefore not be exploited for enabling green communication. Moreover, the dynamic transmission power control behavior of the mobile device is not even explicitly modeled in most of the established simulation frameworks. In this paper, we present a novel machine learning-based approach for forecasting the resulting uplink transmission power used for data transmissions based on the available passive network quality indicators and application-level information. The model is derived from comprehensive field measurements of drive tests performed in a public cellular network and can be parameterized for integrating all measurements a given target platform is able to provide into the prediction process. In a comparison of three different machine learning methods, Random-Forest models thoroughly performed best with a mean average error of 3.166 dB. As the absolute sum of errors converges towards zero and falls below 1 dB after 28 predictions in average, the approach is well-suited for long-term power estimations.
引用
收藏
页数:7
相关论文
共 50 条
  • [1] Throughput Prediction Using Machine Learning in LTE and 5G Networks
    Minovski, Dimitar
    Ogren, Niclas
    Mitra, Karan
    Ahlund, Christer
    IEEE TRANSACTIONS ON MOBILE COMPUTING, 2023, 22 (03) : 1825 - 1840
  • [2] A machine learning framework for predicting downlink throughput in 4G-LTE/5G cellular networks
    Al-Thaedan A.
    Shakir Z.
    Mjhool A.Y.
    Alsabah R.
    Al-Sabbagh A.
    Nembhard F.
    Salah M.
    International Journal of Information Technology, 2024, 16 (2) : 651 - 657
  • [3] Downlink throughput prediction using machine learning models on 4G-LTE networks
    Al-Thaedan A.
    Shakir Z.
    Mjhool A.Y.
    Alsabah R.
    Al-Sabbagh A.
    Salah M.
    Zec J.
    International Journal of Information Technology, 2023, 15 (6) : 2987 - 2993
  • [4] Uplink Power Control Framework Based on Reinforcement Learning for 5G Networks
    Costa Neto, Francisco Hugo
    Araujo, Daniel Costa
    Mota, Mateus Pontes
    Maciel, Tarcisio F.
    de Almeida, Andr L. F.
    IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2021, 70 (06) : 5734 - 5748
  • [5] Mixed Uplink, Downlink Channel Allocation and Power Allocation Schemes for 5G Networks
    Dubey, Rishav
    Mishra, Pavan Kumar
    Pandey, Sudhakar
    WIRELESS PERSONAL COMMUNICATIONS, 2020, 112 (04) : 2253 - 2274
  • [6] Mixed Uplink, Downlink Channel Allocation and Power Allocation Schemes for 5G Networks
    Rishav Dubey
    Pavan Kumar Mishra
    Sudhakar Pandey
    Wireless Personal Communications, 2020, 112 : 2253 - 2274
  • [7] Downlink and Uplink Decoupling: a Disruptive Architectural Design for 5G Networks
    Elshaer, Hisham
    Boccardi, Federico
    Dohler, Mischa
    Irmer, Ralf
    2014 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM 2014), 2014, : 1798 - 1803
  • [8] An Energy Efficient Mechanism for Downlink and Uplink Decoupling in 5G Networks
    Bouras, Christos
    Diles, Georgios
    Kalogeropoulos, Rafail
    ADVANCES ON BROAD-BAND WIRELESS COMPUTING, COMMUNICATION AND APPLICATIONS, 2020, 97 : 241 - 252
  • [9] Machine learning-based methods for MCS prediction in 5G networks
    Tsipi, Lefteris
    Karavolos, Michail
    Papaioannou, Grigorios
    Volakaki, Maria
    Vouyioukas, Demosthenes
    TELECOMMUNICATION SYSTEMS, 2024, 86 (04) : 705 - 728
  • [10] Predicting Downlink Retransmissions in 5G Networks using Deep Learning
    Bouk, Safdar Hussain
    Omoniwa, Babatunji
    Shetty, Sachin
    2024 IEEE 21ST CONSUMER COMMUNICATIONS & NETWORKING CONFERENCE, CCNC, 2024, : 1056 - 1057