A CMOS realizable recurrent neural network for signal identification

被引:0
|
作者
Kothapalli, G [1 ]
机构
[1] Edith Cowan Univ, Perth, WA 6027, Australia
关键词
signal identification; recurrent neural networks; analog synapse; continuous-time trajectory learning;
D O I
10.1117/12.582648
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The architecture of an analog recurrent neural network that can learn a continuous-time trajectory is presented. The proposed learning circuit does not distinguish parameters based on a presumed model of the signal or system for identification. The synaptic weights are modeled as variable gain cells that can be implemented with a few MOS transistors. The network output consists primarily of neuron signals which portray the periodic characteristics of the input signal in unsupervised mode. For the specific purpose of demonstrating the trajectory learning capabilities, a periodic signal with varying characteristics is used. The developed architecture, however, allows for more general learning tasks typical in applications of identification and control. The periodicity of the input signal ensures consistency in the outcome of the error and convergence speed at different instances in time. While alternative on-line versions of the synaptic update measures can be formulated, which allow for faster learning speed and better convergence behavior, the architecture of the analog RNN used here is easier to implement while still allowing to demonstrate the general principle. Because the architecture depends on the network generating a stable limit cycle, and consequently a periodic solution which is robust over an interval of parameter uncertainties, we currently place the restriction of a periodic format for the input signals. The simulated network contains interconnected recurrent neurons with continuous-time dynamics. The system basically performs random-direction descent of the error as a multidimensional extension to the stochastic approximation. To achieve unsupervised learning in recurrent dynamical systems we propose a synapse circuit which has a very simple structure and is suitable for implementation in VLSI.
引用
收藏
页码:93 / 100
页数:8
相关论文
共 50 条
  • [31] Anaerobic Digestion Process Identification Using Recurrent Neural Network Model
    Galvan-Guerra, Rosalba
    Baruch, Ieroham S.
    MICAI 2007: SIXTH MEXICAN INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE, PROCEEDINGS, 2008, : 319 - 329
  • [32] Deep Recurrent Neural Network-Based Identification of Precursor microRNAs
    Park, Seunghyun
    Min, Seonwoo
    Choi, Hyun-Soo
    Yoon, Sungroh
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 30 (NIPS 2017), 2017, 30
  • [33] Evolutionary diagonal recurrent neural network for nonlinear dynamic system identification
    Mu Yuqiang
    Sheng Andong
    Guo Zhi
    PROCEEDINGS OF 2008 IEEE INTERNATIONAL CONFERENCE ON NETWORKING, SENSING AND CONTROL, VOLS 1 AND 2, 2008, : 837 - +
  • [34] Identification and Classification of Electrocardiogram Signals Based On Convolutional Recurrent Neural Network
    Ma, Jinwei
    Liu, Shengping
    Chen, Guoming
    2018 11TH INTERNATIONAL CONGRESS ON IMAGE AND SIGNAL PROCESSING, BIOMEDICAL ENGINEERING AND INFORMATICS (CISP-BMEI 2018), 2018,
  • [35] A block-diagonal recurrent fuzzy neural network for system identification
    Paris A. Mastorocostas
    Constantinos S. Hilas
    Neural Computing and Applications, 2009, 18 : 707 - 717
  • [36] Evolutionary identification of a recurrent fuzzy neural network with enhanced memory capabilities
    Stavrakoudis, D. G.
    Papastamoulis, A. K.
    Theocharis, J. B.
    2008 3RD INTERNATIONAL WORKSHOP ON GENETIC AND EVOLVING FUZZY SYSTEMS, 2008, : 75 - 80
  • [37] Signal Processing for Diffuse Correlation Spectroscopy with Recurrent Neural Network of Deep Learning
    Zhang, Peng
    Gui, Zhiguo
    Hao, Ling
    Zhang, Xiaojuan
    Liu, Caicai
    Shang, Yu
    2019 IEEE FIFTH INTERNATIONAL CONFERENCE ON BIG DATA COMPUTING SERVICE AND APPLICATIONS (IEEE BIGDATASERVICE 2019), 2019, : 328 - 332
  • [38] Genetic programming techniques that evolve recurrent neural network architectures for signal processing
    EsparciaAlcazar, AI
    Sharman, KC
    NEURAL NETWORKS FOR SIGNAL PROCESSING VI, 1996, : 139 - 148
  • [39] Dynamic system identification using a recurrent compensatory fuzzy neural network
    Lee, Chi-Yung
    Lin, Cheng-Jian
    Chen, G-Hung
    Chang, Chun-Lung
    2008, Institute of Control, Robotics and Systems (06)
  • [40] Identification of tumor-immune system via recurrent neural network
    Pourhashemi A.
    Haghighatnia S.
    Moghaddam R.K.
    Health and Technology, 2014, 4 (1) : 27 - 30