MURAL - Maynooth University Research Archive Library



    Acceleration of Digital Pre- Distortion Training Using Selective Partitioning


    Loughman, Meabh, Byrne, Declan, Farrell, Ronan and Dooley, John (2022) Acceleration of Digital Pre- Distortion Training Using Selective Partitioning. In: 2022 IEEE Topical Conference on RF/Microwave Power Amplifiers for Radio and Wireless Applications (PAWR), 16 - 19 January 2022, Las Vegas, Nevada, USA.

    [thumbnail of Acceleration_of_Digital_Pre-_Distortion_Training_Using_Selective_Partitioning.pdf]
    Preview
    Text
    Acceleration_of_Digital_Pre-_Distortion_Training_Using_Selective_Partitioning.pdf

    Download (410kB) | Preview
    Official URL: https://doi.org/10.1109/PAWR53092.2022.9719839

    Abstract

    In recent years model and Digital Pre-Distortion dimension reduction has been widely researched. The oper- ations involved when running DPD are often far less than those needed during the training of the DPD coefficients. The proposed partitioned Least Squares (LS) adaptation allows a selected subset of DPD coefficients to be updated while the remaining coefficients are held constant. This technique allows a more adaptive training procedure, improved interpretability of the important DPD coefficient’s during training and the ability to partition the DPD function into specific groups. The Frisch-Waugh-Lovell (FWL) theorem is exploited to partition the coefficients of a DPD basis function trained using LS regression. The proposed methodology was experimentally validated with a Generalized Memory Polynomial (GMP) DPD function, used to linearize a 5W power amplifier (PA) driven by a 40MHz 5G-NR signal.
    Item Type: Conference or Workshop Item (Paper)
    Keywords: Acceleration; Digital Pre-Distortion Training; Selective Partitioning;
    Academic Unit: Faculty of Science and Engineering > Electronic Engineering
    Item ID: 15642
    Identification Number: 10.1109/PAWR53092.2022.9719839
    Depositing User: Ronan Farrell
    Date Deposited: 08 Mar 2022 15:43
    Refereed: Yes
    URI: https://mu.eprints-hosting.org/id/eprint/15642
    Use Licence: This item is available under a Creative Commons Attribution Non Commercial Share Alike Licence (CC BY-NC-SA). Details of this licence are available here

    Repository Staff Only (login required)

    Item control page
    Item control page

    Downloads

    Downloads per month over past year

    Origin of downloads