Title :
Augmented radial basis function neural network predistorter for linearisation of wideband power amplifiers
Author :
Ming Hui ; Taijun Liu ; Meng Zhang ; Yan Ye ; Dongya Shen ; Xiangyue Ying
Author_Institution :
Coll. of Inf. Sci. & Eng., Ningbo Univ., Ningbo, China
Abstract :
An augmented radial basis function neural network (ARBFNN) is proposed for modelling and linearising a wideband Doherty power amplifier (DPA) with strong memory effects and static nonlinearity. To evaluate the performance of the ARBFNN, a 51 dBm DPA and a 25 MHz mixed test signal were used in modelling and linearisation measurement. Compared with the memory polynomial (MP) model and the real-valued time-delay neural network (RVTDNN), the ARBFNN is highly effective, leading to 3 and 5 dB improvements in the normalised mean square error. More importantly, the ARBFNN predistorter represents a significant improvement over the RVTDNN and MP in the suppression of the out-of-band spectral regrowth. In addition, the ARBFNN has a similar linearisation capability as the generalised MP model, but has much better numerical stability.
Keywords :
electronic engineering computing; linearisation techniques; mean square error methods; numerical stability; power amplifiers; radial basis function networks; wideband amplifiers; ARBFNN; DPA; MP model; RVTDNN; augmented radial basis function neural network predistorter; frequency 25 MHz; gain 3 dB; gain 5 dB; linearisation measurement; memory polynomial model; normalised mean square error; numerical stability; out-of-band spectral regrowth; real-valued time-delay neural network; wideband Doherty power amplifier;
Journal_Title :
Electronics Letters
DOI :
10.1049/el.2014.0667