New doctoral dissertation

June 9, 2026

VILNIUS TECH Library invites you to follow the published new dissertations. The dissertation „Investigation of behavioral models used for linearization of radio frequency power amplifiers over a wide carrier frequency range“ prepared at VILNIUS TECH by Andžej Borel. The dissertation was prepared in 2019–2026. Scientific consultant – Prof. Dr Vaidotas Barzdėnas.

The dissertation was defended at the public meeting of the Dissertation Defense Council of the Scientific Field of Electrical and Electronic Engineering in the Aula Doctoralis Meeting Hall of Vilnius Gediminas Technical University at 10 a.m. on 9 June 2026.

The dissertation examines the impact of carrier frequency variation on the accuracy of behavioral models used for power amplifier linearization in radio frequency (RF) systems. In reconfigurable, wideband communication networks, such as those employing cognitive radio and 5G/6G technologies, power amplifiers (PAs) are often required to operate over a range of carrier frequencies. Conventional behavioral models, typically developed for a single frequency, may exhibit decreased accuracy when applied outside their original training conditions. The work is structured around three chapters. The First Chapter is a review of common PA linearization techniques, including feedforward, feedback, and digital predistortion, with an emphasis on their operational principles, implementation considerations, and known limitations. The Second Chapter describes the development of a semi-automated measurement setup designed to characterize PA behavior under varying operating conditions. It discusses different types of PA behaviors, instruments, and techniques needed to excite and capture them. It proposes methods for setup calibration. The regression polynomial model extraction technique is discussed. The parametrization of the memory polynomial model is proposed, as well as measurement metrics to evaluate the modeling error. The Third Chapter experimentally investigates how modeling error varies as the carrier frequency changes. Experimental results indicate that model accuracy decreases with increasing deviation from the training frequency, and that this trend is influenced by the modulation bandwidth of the excitation signal. The proposed parametrization technique is experimentally investigated. The results show a significant modeling error reduction compared to the standard memory polynomial model. The dissertation outlines a methodology for characterizing frequency-dependent modeling error. The proposed modeling technique allows for reducing the error associated with applying the amplifier model to different carrier frequencies. The methods and findings may be applicable in contexts where behavioral models are used in adaptive RF transmitter systems that operate over broad or dynamically changing frequency ranges.

Doctoral dissertation readers can search via VILNIUS TECH Virtual Library.

 

 

 

 

 

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New doctoral dissertation
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