2014
DOI: 10.1002/mmce.20850
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Orthonormal basis functions for memory predistorter in oversampled systems

Abstract: Volterra model or memory polynomial model are commonly used to describe the nonlinearity with memory effects for power amplifier (PA) modeling as well as digital predistorter designs. Different monomial terms of the Volterra model or memory polynomial model are highly correlated, which become a challenge during the fixed-point implementation of the coefficients estimation as the data matrix is ill-conditioned. Previous works derived orthogonal basis functions to eliminate the correlation among different monomi… Show more

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Cited by 5 publications
(3 citation statements)
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“…We compare the RV 2 LASSO and RV 2 SGL run for two sets of sparsity parameters, the one that corresponds to the best AIC scores and another that implies a more reduced model complexity. The RV 2 LASSO and RV 2 SGL models outperform the GMP and CRV models, as well as the sparse selection of regressors based on the greedy orthogonal matching pursuit (OMP) [34], [35], [67], as in the tables. The LASSO sparse estimation technique preserves the model's performance, while significantly reducing its running cost.…”
Section: ) Rv2 Lasso Resultsmentioning
confidence: 99%
“…We compare the RV 2 LASSO and RV 2 SGL run for two sets of sparsity parameters, the one that corresponds to the best AIC scores and another that implies a more reduced model complexity. The RV 2 LASSO and RV 2 SGL models outperform the GMP and CRV models, as well as the sparse selection of regressors based on the greedy orthogonal matching pursuit (OMP) [34], [35], [67], as in the tables. The LASSO sparse estimation technique preserves the model's performance, while significantly reducing its running cost.…”
Section: ) Rv2 Lasso Resultsmentioning
confidence: 99%
“…In recent years, the digital predistortion (DPD) has been a very popular and an active linearization technique for radio frequency PAs . Before linearizing with DPD, an accurate behavioral model for PAs is necessary.…”
Section: Introductionmentioning
confidence: 99%
“…The high dimensionality of the Volterra series model has motivated sparse, parsimonious approximate solutions (STANKOVIC et al, 2018), (BRAITHWAITE, 2017), also used in the context of compressed sensing (CS), to the original model. The more prominent ones have been applied to PA and DPD, such as the least absolute shrinkage and selection operator (LASSO) (ZENTENO et al, 2015), (KEKATOS;GIANNAKIS, 2011), (WISELL;JALDEN;, ridge regression (GUAN; ZHU, 2012) and orthogonal matching pursuit (OMP) (ABDELHAFIZ et al, 2014), (TOSINA et al, 2015), (YAO et al, 2014). In this thesis, firstly, the LASSO technique is applied to the WHFB DPD model in chapter 6 and to pruned-Volterra models in chapter 7.…”
Section: Pa Digital Pre-distortionmentioning
confidence: 99%