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A Sparse Bayesian Technique to Learn the Frequency-Domain Active Regressors in OFDM Wireless Systems
by
Madero-Ayora, María José
, Becerra, Juan A.
, Cruces, Sergio
, Marqués-Valderrama, Elías
, Crespo-Cadenas, Carlos
in
Algorithms
/ Analysis
/ behavioral modeling
/ Fourier transforms
/ frequency domain
/ Methods
/ nonlinear model identification
/ OFDM
/ power amplifier
/ Power amplifiers
/ sparse Bayesian learning
/ Telecommunication systems
2025
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A Sparse Bayesian Technique to Learn the Frequency-Domain Active Regressors in OFDM Wireless Systems
by
Madero-Ayora, María José
, Becerra, Juan A.
, Cruces, Sergio
, Marqués-Valderrama, Elías
, Crespo-Cadenas, Carlos
in
Algorithms
/ Analysis
/ behavioral modeling
/ Fourier transforms
/ frequency domain
/ Methods
/ nonlinear model identification
/ OFDM
/ power amplifier
/ Power amplifiers
/ sparse Bayesian learning
/ Telecommunication systems
2025
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Do you wish to request the book?
A Sparse Bayesian Technique to Learn the Frequency-Domain Active Regressors in OFDM Wireless Systems
by
Madero-Ayora, María José
, Becerra, Juan A.
, Cruces, Sergio
, Marqués-Valderrama, Elías
, Crespo-Cadenas, Carlos
in
Algorithms
/ Analysis
/ behavioral modeling
/ Fourier transforms
/ frequency domain
/ Methods
/ nonlinear model identification
/ OFDM
/ power amplifier
/ Power amplifiers
/ sparse Bayesian learning
/ Telecommunication systems
2025
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A Sparse Bayesian Technique to Learn the Frequency-Domain Active Regressors in OFDM Wireless Systems
Journal Article
A Sparse Bayesian Technique to Learn the Frequency-Domain Active Regressors in OFDM Wireless Systems
2025
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Overview
Digital predistortion and nonlinear behavioral modeling of power amplifiers (PA) have been the subject of intensive research in the time domain (TD), in contrast with the limited number of works conducted in the frequency domain (FD). However, the adoption of orthogonal frequency division multiplexing (OFDM) as a prevalent modulation scheme in current wireless communication standards provides a promising avenue for employing an FD approach. In this work, a procedure to model nonlinear distortion in wireless OFDM systems in the frequency domain is demonstrated for general model structures based on a sparse Bayesian learning (SBL) algorithm to identify a reduced set of regressors capable of an efficient and accurate prediction. The FD-SBL algorithm is proposed to first identify the active FD regressors and estimate the coefficients of the PA model using a given symbol, and then, the coefficients are employed to predict the distortion of successive OFDM symbols. The performance of this proposed FD-SBL with a validation NMSE of −47 dB for a signal of 30 MHz bandwidth is comparable to −46.6 dB of the previously proposed implementation of the TD-SBL. In terms of execution time, the TD-SBL fails due to excessive processing time and numerical problems for a 100 MHz bandwidth signal, whereas the FD-SBL yields an adequate validation NMSE of −38.6 dB.
Publisher
MDPI AG,MDPI
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