Department of Signal Theory and Communications, Universitat Politècnica de Catalunya (UPC)-Barcelona Tech, 08034 Barcelona, Spain.
Department of Signal Theory and Communications, Universidad de Sevilla, 41092 Sevilla, Spain.
Sensors (Basel). 2021 Aug 27;21(17):5772. doi: 10.3390/s21175772.
The power amplifier (PA) is the most critical subsystem in terms of linearity and power efficiency. Digital predistortion (DPD) is commonly used to mitigate nonlinearities while the PA operates at levels close to saturation, where the device presents its highest power efficiency. Since the DPD is generally based on Volterra series models, its number of coefficients is high, producing ill-conditioned and over-fitted estimations. Recently, a plethora of techniques have been independently proposed for reducing their dimensionality. This paper is devoted to presenting a fair benchmark of the most relevant order reduction techniques present in the literature categorized by the following: (i) greedy pursuits, including Orthogonal Matching Pursuit (OMP), Doubly Orthogonal Matching Pursuit (DOMP), Subspace Pursuit (SP) and Random Forest (RF); (ii) regularization techniques, including ridge regression and least absolute shrinkage and selection operator (LASSO); (iii) heuristic local search methods, including hill climbing (HC) and dynamic model sizing (DMS); and (iv) global probabilistic optimization algorithms, including simulated annealing (SA), genetic algorithms (GA) and adaptive Lipschitz optimization (adaLIPO). The comparison is carried out with modeling and linearization performance and in terms of runtime. The results show that greedy pursuits, particularly the DOMP, provide the best trade-off between execution time and linearization robustness against dimensionality reduction.
功率放大器(PA)在线性度和功率效率方面是最关键的子系统。数字预失真(DPD)通常用于减轻非线性,而 PA 在接近饱和的电平下工作,在这种情况下,设备具有最高的功率效率。由于 DPD 通常基于 Volterra 级数模型,因此其系数数量很多,从而产生病态和过度拟合的估计。最近,已经独立提出了许多技术来降低其维数。本文致力于对文献中最相关的降阶技术进行公平的基准测试,这些技术按以下方式进行分类:(i)贪婪算法,包括正交匹配追踪(OMP)、双重正交匹配追踪(DOMP)、子空间追踪(SP)和随机森林(RF);(ii)正则化技术,包括岭回归和最小绝对收缩和选择算子(LASSO);(iii)启发式局部搜索方法,包括爬山(HC)和动态模型尺寸(DMS);以及(iv)全局概率优化算法,包括模拟退火(SA)、遗传算法(GA)和自适应 Lipschitz 优化(adaLIPO)。比较了建模和线性化性能以及运行时。结果表明,贪婪算法,特别是 DOMP,在执行时间和线性化稳健性与降维之间提供了最佳的折衷。