In digital radio systems, high data transmission rates require the use of spectrally efficient linear modulation techniques; however, these techniques are generally sensitive to nonlinearity caused by the high-power amplifier (HPA) employed in transmitter systems. The nonlinearity of HPA is potentia
Using recurrent neural network for adaptive predistortion linearization of RF amplifiers
β Scribed by Chunguang Li; Songbai He; Xiaofeng Liao; Juebang Yu
- Publisher
- John Wiley and Sons
- Year
- 2001
- Tongue
- English
- Weight
- 118 KB
- Volume
- 12
- Category
- Article
- ISSN
- 1096-4290
No coin nor oath required. For personal study only.
β¦ Synopsis
A novel adaptive predistorter for linearizing a power amplifier in a mobile transmitter is studied. Unlike most other predistorters reported in the literatures, this predistorter is constructed as a complex-valued recurrent neural network (RNN). The weights of the RNN were adjusted by using complex real time recurrent learning (RTRL) algorithm. Thus the AM/AM and AM/PM responses of the proposed predistorter are simultaneously implemented. The proposed scheme is shown to attain superior performance in comparison with other most well-known predistortion structures. The performance of the proposed predistorter is demonstrated through computer simulations.
π SIMILAR VOLUMES
## Abstract In this paper, an RF curveβfitting predistorter is proposed to extend the linearized dynamic range of a power amplifier. AMβAM and AMβPM distortion of the power amplifier can be compensated by accurately adjusting the gain and phase gradients of the threeβreflectionβtype diode predistor
Digital Predistorter is a cost-effective solution to compensate for the nonlinear distortions appearing in the RF power amplifiers (PAs). The indirect learning scheme is widely implemented because of its flexibility to eliminate the requirement for building a closed-loop real time system, which dram