2.765

2022影响因子

(CJCR)

  • 中文核心
  • EI
  • 中国科技核心
  • Scopus
  • CSCD
  • 英国科学文摘

留言板

尊敬的读者、作者、审稿人, 关于本刊的投稿、审稿、编辑和出版的任何问题, 您可以本页添加留言。我们将尽快给您答复。谢谢您的支持!

姓名
邮箱
手机号码
标题
留言内容
验证码

基于自适应扩展卡尔曼滤波与神经网络的HPA预失真算法

吴林煌 苏凯雄 郭里婷 吴子静

吴林煌, 苏凯雄, 郭里婷, 吴子静. 基于自适应扩展卡尔曼滤波与神经网络的HPA预失真算法. 自动化学报, 2016, 42(1): 122-130. doi: 10.16383/j.aas.2016.c150240
引用本文: 吴林煌, 苏凯雄, 郭里婷, 吴子静. 基于自适应扩展卡尔曼滤波与神经网络的HPA预失真算法. 自动化学报, 2016, 42(1): 122-130. doi: 10.16383/j.aas.2016.c150240
WU Lin-Huang, SU Kai-Xiong, GUO Li-Ting, WU Zi-Jing. HPA Predistortion Algorithm Based on Adaptive Extended Kalman Filter and Neural Network. ACTA AUTOMATICA SINICA, 2016, 42(1): 122-130. doi: 10.16383/j.aas.2016.c150240
Citation: WU Lin-Huang, SU Kai-Xiong, GUO Li-Ting, WU Zi-Jing. HPA Predistortion Algorithm Based on Adaptive Extended Kalman Filter and Neural Network. ACTA AUTOMATICA SINICA, 2016, 42(1): 122-130. doi: 10.16383/j.aas.2016.c150240

基于自适应扩展卡尔曼滤波与神经网络的HPA预失真算法

doi: 10.16383/j.aas.2016.c150240
基金项目: 

国家自然科学基金 61401099, 61401100

详细信息
    作者简介:

    苏凯雄 福州大学物理与信息工程学院教授.1988年获得中国科学技术大学通信与电子系统专业硕士学位.主要研究方向为微波通信与图像处理.E-mail:skx@fzu.edu.cn

    郭里婷 福州大学物理与信息工程学院副教授.2006年获得中国科学技术大学通信与信息系统专业博士学位.主要研究方向为数字基带信号的信道编码与调制.E-mail:guoliting@fzu.edu.cn

    吴子静 福州大学物理与信息工程学院博士研究生.2010年获得福州大学物理与信息工程学院学士学位.主要研究方向为LDPC编解码.E-mail:wuzj87@163.com

    通讯作者:

    吴林煌 福州大学物理与信息工程学院助理研究员,博士研究生.2009年获得福州大学物理与信息工程学院硕士学位.主要研究方向为数字预失真与神经网络优化.本文通信作者.E-mail:wlh173@163.com

HPA Predistortion Algorithm Based on Adaptive Extended Kalman Filter and Neural Network

Funds: 

National Natural Science Foundation of China 61401099, 61401100

More Information
    Author Bio:

    Professor at the College of Physics and Information Engineering, Fuzhou University. He received his master degree from University of Science and Technology of China in 1988. His research interest covers microwave communication and image processing

    GUO Li-Ting Associate professor at the College of Physics and Information Engineering, Fuzhou University. She received her Ph. D. degree from University of Science and Technology of China in 2006. Her research interest covers channel coding and modulation of digital baseband signal

    Ph. D. candidate at the College of Physics and Information Engineering, Fuzhou University. She received her bachelor degree from Fuzhou University in 2010. Her research interest covers LDPC coding and decoding

    Corresponding author: WU Lin-Huang Assistant researcher and Ph. D. candidate at the College of Physics and Information Engineering, Fuzhou University. He received his master degree from Fuzhou University in 2009. His research interest covers digital predistortion and neural network optimization. Corresponding author of this paper
  • 摘要: 针对强记忆功放的非线性问题,提出一种基于自适应扩展卡尔曼滤波与神经网络的高功放(High power amplifier, HPA)预失真算法.采用实数固定延时神经网络(Real-valued focused time-delay neural network, RVFTDNN)对间接学习结构预失真系统中的预失真器和逆估计器进行建模,扩展卡尔曼滤波(Extended Kalman filter, EKF)算法训练神经网络,从理论上指出Levenberg-Marquardt(LM)算法是EKF算法的特殊情况,并用李亚普诺夫稳定性理论分析EKF算法的稳定收敛条件,推导出测量误差矩阵的自适应迭代公式.结果表明:自适应EKF算法的训练误差和泛化误差均比LM算法更低,预失真后的邻道功率比(Adjacent channel power ratio, ACPR)比LM算法改善了2dB.
  • 图  1  三层实数固定延时神经网络结构

    Fig.  1  Real-valued focused time-delay neural network architecture with three layers

    图  2  间接学习结构的神经网络预失真系统

    Fig.  2  Indirect learning architecture of neural network predistortion system

    图  3  LM算法和自适应EKF算法的训练误差比较

    Fig.  3  Comparison of training errors using LM algorithm and adaptive EKF algorithm

    图  4  样本量为3000时的泛化误差比较

    Fig.  4  Comparison of generalization errors with 3000 sample data

    图  5  样本量为1000时的泛化误差比较

    Fig.  5  Comparison of generalization errors with 1000 sample data

    图  6  LM和EKF预失真后的信号功率谱密度图比较

    Fig.  6  Comparison of signal power spectrum density with LM and EKF predistortion

    表  1  LM算法和自适应EKF算法的训练误差和泛化误差比较

    Table  1  Comparison of training errors and generalization errors using LM algorithm and adaptive EKF algorithm

    训练误差(样本数3000) 泛化误差(样本数3000) 训练误差(样本数1000) 泛化误差(样本数1000)
    LM算法 $7.5877×10^{-7}$ $1.7229×10^{-6}$ $4.9250×10^{-6}$ $9.4585×10^{-6}$
    自适应EKF算法 $5.4270×10^{-8}$ $7.4936×10^{-7}$ $2.4373×10^{-6}$ $6.8848×10^{-6}$
    下载: 导出CSV
  • [1] Liu Y J, Lu B, Cao T, Zhou B H, Zhou J, Liu Y N. On the robustness of look-up table digital predistortion in the presence of loop delay error. IEEE Transactions on Circuits and Systems I:Regular Papers, 2012, 59(10):2432-2442 doi: 10.1109/TCSI.2012.2185332
    [2] Hammi O, Ghannouchi F M, Boumaiza S, Vassilakis B. A data-based nested LUT model for RF power amplifiers exhibiting memory effects. IEEE Microwave and Wireless Components Letters, 2007, 17(10):712-714 doi: 10.1109/LMWC.2007.905627
    [3] Muhonen K J, Kavehrad M, Krishnamoorthy R. Look-up table techniques for adaptive digital predistortion:a development and comparison. IEEE Transactions on Vehicular Technology, 2000, 49(5):1995-2002 doi: 10.1109/25.892601
    [4] Liu Y J, Zhou J, Chen W H, Zhou B H. A robust augmented complexity-reduced generalized memory polynomial for wideband RF power amplifiers. IEEE Transactions on Industrial Electronics, 2014, 61(5):2389-2401 doi: 10.1109/TIE.2013.2270217
    [5] Morgan D R, Ma Z, Kim J, Zierdt M G, Pastalan J. A generalized memory polynomial model for digital predistortion of RF power amplifiers. IEEE Transactions on Signal Processing, 2006, 54(10):3852-3860 doi: 10.1109/TSP.2006.879264
    [6] Moon J, Bumman K. Enhanced Hammerstein behavioral model for broadband wireless transmitters. IEEE Transactions on Microwave Theory and Techniques, 2011, 59(4):924-933 doi: 10.1109/TMTT.2011.2110659
    [7] Liu Y J, Chen W H, Zhou J, Zhou B H, Ghannouchi F M. Digital predistortion for concurrent dual-band transmitters using 2-D modified memory polynomials. IEEE Transactions on Microwave Theory and Techniques, 2013, 61(1):281-290 doi: 10.1109/TMTT.2012.2228216
    [8] Ibnkahla M, Sombrin J, Castanie F, Bershad N J. Neural networks for modeling nonlinear memoryless communication channels. IEEE Transactions on Communications, 1997, 45(7):768-771 doi: 10.1109/26.602580
    [9] Liu T J, Boumaiza S, Ghannouchi F M. Dynamic behavioral modeling of 3G power amplifiers using real-valued time-delay neural networks. IEEE Transactions on Microwave Theory and Techniques, 2004, 52(3):1025-1033 doi: 10.1109/TMTT.2004.823583
    [10] 瞿建峰, 周健义, 洪伟, 张雷. 有记忆效应的功放实数延时模糊神经网络模型. 微波学报, 2009, 25(5):41-44 http://www.cnki.com.cn/Article/CJFDTOTAL-WBXB200905009.htm

    Zhai Jian-Feng, Zhou Jian-Yi, Hong Wei, Zhang Lei. Real-valued time-delay neuro-fuzzy model for power amplifier with memory effects. Journal of Microwaves, 2009, 25(5):41-44 http://www.cnki.com.cn/Article/CJFDTOTAL-WBXB200905009.htm
    [11] Mkadem F, Boumaiza S. Physically inspired neural network model for RF power amplifier behavioral modeling and digital predistortion. IEEE Transactions on Microwave Theory and Techniques, 2011, 59(4):913-923 doi: 10.1109/TMTT.2010.2098041
    [12] Chen S, Hong X, Gong Y, Harris C J. Digital predistorter design using B-spline neural network and inverse of De Boor algorithm. IEEE Transactions on Circuits and Systems I:Regular Papers, 2013, 60(6):1584-1594 doi: 10.1109/TCSI.2012.2226514
    [13] Rawat M, Ghannouchi F M. Distributed spatiotemporal neural network for nonlinear dynamic transmitter modeling and adaptive digital predistortion. IEEE Transactions on Instrumentation and Measurement, 2012, 61(3):595-608 doi: 10.1109/TIM.2011.2170915
    [14] Hagan M T, Menhaj M B. Training feedforward networks with the Marquardt algorithm. IEEE Transactions on Neural Networks, 1994, 5(6):989-993 doi: 10.1109/72.329697
    [15] Rawat M, Rawat K, Ghannouchi F M. Adaptive digital predistortion of wireless power amplifiers/transmitters using dynamic real-valued focused time-delay line neural networks. IEEE Transactions on Microwave Theory and Techniques, 2010, 58(1):95-104 doi: 10.1109/TMTT.2009.2036334
    [16] Zayani R, Bouallegue R, Roviras D. Levenberg-Marquardt learning neural network for adaptive predistortion for time-varying HPA with memory in OFDM systems. In:Proceedings of the 16th European Signal Processing Conference. Lausanne, Switzerland:IEEE, 2008. 1-5
    [17] Zhang R, Xu Z B, Huang G B, Wang D H. Global convergence of online BP training with dynamic learning rate. IEEE Transactions on Neural Networks and Learning Systems, 2012, 23(2):330-341 doi: 10.1109/TNNLS.2011.2178315
    [18] 黄春晖, 温永杰. 用记忆型BP神经网络实现HPA预失真的算法研究. 通信学报, 2014, 35(1):16-23 http://www.cnki.com.cn/Article/CJFDTOTAL-TXXB201401003.htm

    Huang Chun-Hui, Wen Yong-Jie. Algorithm study of digital HPA predistortion using one novel memory type BP neural network. Journal on Communications, 2014, 35(1):16-23 http://www.cnki.com.cn/Article/CJFDTOTAL-TXXB201401003.htm
    [19] 赵光琼, 陈绍刚, 付奎, 唐忠樑, 贺威. 基于变尺度变换减少Sigma点的粒子滤波算法研究. 自动化学报, 2015, 41(7):1350-1355 http://www.aas.net.cn/CN/abstract/abstract18708.shtml

    Zhao Guang-Qiong, Chen Shao-Gang, Fu Kui, Tang Zhong-Liang, He Wei. A particle filter algorithm based on scaled UKF with reduced sigma points. Acta Automatica Sinica, 2015, 41(7):1350-1355 http://www.aas.net.cn/CN/abstract/abstract18708.shtml
    [20] Bonnabel S, Slotine J J. A contraction theory-based analysis of the stability of the deterministic extended Kalman filter. IEEE Transactions on Automatic Control, 2015, 60(2):565-569 doi: 10.1109/TAC.2014.2336991
    [21] Wang B, Ren Q, Deng Z H, Fu M Y. A self-calibration method for nonorthogonal angles between gimbals of rotational inertial navigation system. IEEE Transactions on Industrial Electronics, 2015, 62(4):2353-2362 doi: 10.1109/TIE.2014.2361671
    [22] 赵欣, 王仕成, 廖守亿, 马龙, 刘志国. 基于抗差自适应容积卡尔曼滤波的超紧耦合跟踪方法. 自动化学报, 2014, 40(11):2530-2540 http://www.aas.net.cn/CN/abstract/abstract18529.shtml

    Zhao Xin, Wang Shi-Cheng, Liao Shou-Yi, Ma Long, Liu Zhi-Guo. An ultra-tightly coupled tracking method based on robust adaptive cubature Kalman filter. Acta Automatica Sinica, 2014, 40(11):2530-2540 http://www.aas.net.cn/CN/abstract/abstract18529.shtml
    [23] Choi J, de C Lima A C, Simon H. Kalman filter-trained recurrent neural equalizers for time-varying channels. IEEE Transactions on Communications, 2005, 53(3):472-480 doi: 10.1109/TCOMM.2005.843416
    [24] de Jesús Rubio J, Yu W. Nonlinear system identification with recurrent neural networks and dead-zone Kalman filter algorithm. Neurocomputing, 2007, 70(13-15):2460-2466 doi: 10.1016/j.neucom.2006.09.004
    [25] Wang X Y, Huang Y. Convergence study in extended Kalman filter-based training of recurrent neural networks. IEEE Transactions on Neural Networks, 2011, 22(4):588-600 doi: 10.1109/TNN.2011.2109737
    [26] Jun Z, Zhu X L, Wang W, Liu Y. Extended Kalman filter-based Elman networks for industrial time series prediction with GPU acceleration. Neurocomputing, 2013, 118:215-224 doi: 10.1016/j.neucom.2013.02.031
    [27] Ahmed R, Sayed M E, Gadsden S A, Tjong J, Habibi S. Automotive internal-combustion-engine fault detection and classification using artificial neural network techniques. IEEE Transactions on Vehicular Technology, 2015, 64(1):21-33 doi: 10.1109/TVT.2014.2317736
    [28] Guillermoa J E, Castellanos L J R, Sanchez E N, Alanis A Y. Detection of heart murmurs based on radial wavelet neural network with Kalman learning. Neurocomputing, 2015, 164:307-317 doi: 10.1016/j.neucom.2014.12.059
    [29] Feng X X, Snoussi H, Liang Y. Constrained extended Kalman filter for ultra-wideband radio based individual navigation. In:Proceedings of the 17th International Conference on Information Fusion. Salamanca, Spain:IEEE, 2014. 1-7
    [30] 殷礼胜, 何怡刚, 董学平, 鲁照权. 交通流量VNNTF神经网络模型多步预测研究. 自动化学报, 2014, 40(9):2066-2072 http://www.aas.net.cn/CN/abstract/abstract18480.shtml

    Yin Li-Sheng, He Yi-Gang, Dong Xue-Ping, Lu Zhao-Quan. Research on the multi-step prediction of Volterra neural network for traffic flow. Acta Automatica Sinica, 2014, 40(9):2066-2072 http://www.aas.net.cn/CN/abstract/abstract18480.shtml
    [31] 钱业青. 一种高效的用于RF功率放大器线性化的自适应预失真结构. 通信学报, 2006, 27(5):35-40, 46-46 http://www.cnki.com.cn/Article/CJFDTOTAL-TXXB200605006.htm

    Qian Ye-Qing. High-efficient adaptive predistortion structure for RF power amplifier linearization. Journal on Communications, 2006, 27(5):35-40, 46-46 http://www.cnki.com.cn/Article/CJFDTOTAL-TXXB200605006.htm
    [32] Hunter D, Yu H, Pukish M S, Kolbusz J, Wilamowski B M. Selection of proper neural network sizes and architectures-a comparative study. IEEE Transactions on Industrial Informatics, 2012, 8(2):228-240 doi: 10.1109/TII.2012.2187914
  • 加载中
图(6) / 表(1)
计量
  • 文章访问数:  3136
  • HTML全文浏览量:  267
  • PDF下载量:  1122
  • 被引次数: 0
出版历程
  • 收稿日期:  2015-04-22
  • 录用日期:  2015-09-14
  • 刊出日期:  2016-01-01

目录

    /

    返回文章
    返回