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  4. Performance Optimization of an E-Band Communication Link using Open-Loop Predistortion
 
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2022
Conference Paper
Title

Performance Optimization of an E-Band Communication Link using Open-Loop Predistortion

Abstract
This paper demonstrates the performance optimization of a millimeter wave transmit frontend operating in E-band, using a digital predistortion method with an open-loop architecture. The Tx system contains a cascaded amplifier module chain, realized in different technologies, to achieve modulated signals with record output powers of 2 W. An open-loop DPD system with an indirect learning architecture and a Volterra series based nonlinear model has been selected to investigate the improvements in the frequency range from 71 to 76 GHz with bandwidths up to 800 MHz. The transmitter's linearity, signal quality, and spectral regrowth were measured with a modulated signal containing different power levels. Three channels with different sizes, located in the proposed channel arrangements by the ITU, were chosen to exemplarily test the performance of the DPD. An implemented DPD algorithm could demonstrate improvements in signal quality and adjacent channel power.
Author(s)
Schoch, Benjamin
Universität Stuttgart  
Wiewel, Florian
Universität Stuttgart  
Wrana, Dominik
Universität Stuttgart  
Manoliu, Laura
Universität Stuttgart  
Haussmann, Simon
Universität Stuttgart  
Tessmann, Axel  
Fraunhofer-Institut für Angewandte Festkörperphysik IAF  
Kallfass, Ingmar
Universität Stuttgart  
Mainwork
14th German Microwave Conference, GeMiC 2022. Proceedings  
Conference
German Microwave Conference 2022  
Link
Link
Language
English
Fraunhofer-Institut für Angewandte Festkörperphysik IAF  
Keyword(s)
  • Transmitter

  • E-band

  • Wireless communication

  • Predistortion

  • Predictive models

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