This paper introduces a low-complexity stochastic optimization-based model coefficients extraction solution for digital predistortion of RF power amplifiers (PAs). The proposed approach uses a closed-loop extraction architecture and replaces conventional least squares (LS) training with a modified version of the simultaneous perturbation stochastic approximation (SPSA) algorithm that requires a very low number of numerical operations per iteration, leading to considerable reduction in hardware implementation complexity. Experimental results show that the complete closed-loop stochastic optimization-based coefficient extraction solution achieves excellent linearization accuracy while avoiding the complex matrix operations associated with con...
In this paper, a new method for dynamically estimating and updating the coefficients of a digital pr...
This paper presents a study oriented at reducing the computational complexity of least squares (LS) ...
International audienceTwo-dimensional digital predistortion (2-D DPD) is one of the most commonly us...
This paper introduces a low-complexity stochastic optimization-based model coefficients extraction s...
Least squares (LS) estimation is widely used in model extraction of digital predistortion for RF pow...
A novel behavioral modeling technique for digital predistortion of radio frequency power amplifiers ...
To address the known trade-off between linearity and efficiency of the PA, several linearization tec...
2017 IEEE Topical Conference on RF/microwave Power Amplifiers for Radio and Wireless Applications (P...
In this article, we present a new method to reduce the model adaptation complexity for digital predi...
In this paper, a low-complexity model is proposed for linearizing power amplifiers with memory effec...
Power amplifiers (PAs) are vital components in radio transmitters because they are responsible to am...
The power amplifier (PA) is the most critical subsystem in terms of linearity and power efficiency. ...
In this paper, we propose a low-cost data acquisition approach for model extraction of digital predi...
In this paper, a low-complexity model is proposed for linearizing power amplifiers with memory effec...
©2016 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for al...
In this paper, a new method for dynamically estimating and updating the coefficients of a digital pr...
This paper presents a study oriented at reducing the computational complexity of least squares (LS) ...
International audienceTwo-dimensional digital predistortion (2-D DPD) is one of the most commonly us...
This paper introduces a low-complexity stochastic optimization-based model coefficients extraction s...
Least squares (LS) estimation is widely used in model extraction of digital predistortion for RF pow...
A novel behavioral modeling technique for digital predistortion of radio frequency power amplifiers ...
To address the known trade-off between linearity and efficiency of the PA, several linearization tec...
2017 IEEE Topical Conference on RF/microwave Power Amplifiers for Radio and Wireless Applications (P...
In this article, we present a new method to reduce the model adaptation complexity for digital predi...
In this paper, a low-complexity model is proposed for linearizing power amplifiers with memory effec...
Power amplifiers (PAs) are vital components in radio transmitters because they are responsible to am...
The power amplifier (PA) is the most critical subsystem in terms of linearity and power efficiency. ...
In this paper, we propose a low-cost data acquisition approach for model extraction of digital predi...
In this paper, a low-complexity model is proposed for linearizing power amplifiers with memory effec...
©2016 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for al...
In this paper, a new method for dynamically estimating and updating the coefficients of a digital pr...
This paper presents a study oriented at reducing the computational complexity of least squares (LS) ...
International audienceTwo-dimensional digital predistortion (2-D DPD) is one of the most commonly us...