Exploiting Chaos in Learning System Identification for Nonlinear State Space Models

被引:0
|
作者
Mehmet Ölmez
Cüneyt Güzeliş
机构
[1] Dokuz Eylül University,Technical Programs Department, İzmir Vocational School
[2] İzmir University of Economics,Electrical and Electronics Engineering Department
来源
Neural Processing Letters | 2015年 / 41卷
关键词
Neural networks; State space; System identification ; Learning; Chaos;
D O I
暂无
中图分类号
学科分类号
摘要
The paper presents two learning methods for nonlinear system identification. Both methods employ neural network models for representing state and output functions. The first method of learning nonlinear state space is based on using chaotic or noise signals in the training of state neural network so that the state neural network is designed to produce a sequence in a recursive way under the excitement of the system input. The second method of learning nonlinear state space has an observer neural network devoted to estimate the states as a function of the system inputs and the outputs of the output neural network. This observer neural network is trained to produce a state sequence when the output neural network is forced by the same sequence and then the state neural network is trained to produce the estimated states in a recursive way under the excitement of the system input. The developed identification methods are tested on a set of benchmark plants including a non-autonomous chaotic system, i.e. Duffing oscillator. Both proposed methods are observed much superior than well-known identification methods including nonlinear ARX, nonlinear ARMAX, Hammerstein, Wiener, Hammerstein–Wiener, Elman network, state space models with subspace and prediction error methods.
引用
收藏
页码:29 / 41
页数:12
相关论文
共 50 条
  • [21] Inferring Gene Regulatory Networks via Nonlinear State-Space Models and Exploiting Sparsity
    Noor, Amina
    Serpedin, Erchin
    Nounou, Mohamed
    Nounou, Hazem N.
    IEEE-ACM TRANSACTIONS ON COMPUTATIONAL BIOLOGY AND BIOINFORMATICS, 2012, 9 (04) : 1203 - 1211
  • [22] Learning nonlinear state-space models using deep autoencoders
    Masti, Daniele
    Bemporad, Alberto
    2018 IEEE CONFERENCE ON DECISION AND CONTROL (CDC), 2018, : 3862 - 3867
  • [23] Nonlinear term selection and parameter estimation in the identification of nonlinear reduced order state space models
    Docter, W
    Georgakis, C
    DYNAMICS & CONTROL OF PROCESS SYSTEMS 1998, VOLUMES 1 AND 2, 1999, : 335 - 340
  • [24] Comparison of some initialisation methods for the identification of nonlinear state-space models
    Van Mulders, Anne
    Vanbeylen, Laurent
    2013 IEEE INTERNATIONAL INSTRUMENTATION AND MEASUREMENT TECHNOLOGY CONFERENCE (I2MTC), 2013, : 807 - 811
  • [25] IDENTIFICATION OF A CLASS OF NONLINEAR STATE-SPACE MODELS USING RPE TECHNIQUES
    ZHOU, WW
    BLANKE, M
    IEEE TRANSACTIONS ON AUTOMATIC CONTROL, 1989, 34 (03) : 312 - 316
  • [26] Identification of State-space Models by Modified Nonlinear LS Optimization Method
    Zhong Lusheng
    Yang Hui
    Lu Rongxiu
    Sun Baohua
    Meng Shasha
    CCDC 2009: 21ST CHINESE CONTROL AND DECISION CONFERENCE, VOLS 1-6, PROCEEDINGS, 2009, : 1184 - 1187
  • [27] Nonlinear state-space system identification with robust laplace model
    Liu, Xin
    Yang, Xianqiang
    Liu, Xiaofeng
    INTERNATIONAL JOURNAL OF CONTROL, 2021, 94 (06) : 1492 - 1501
  • [28] Parameter identification for Hammerstein nonlinear system with polynomial and state space model
    Li, Chenghao
    Li, Feng
    Cao, Qingfeng
    MEASUREMENT & CONTROL, 2023, 56 (1-2): : 327 - 336
  • [29] Identification of nonlinear state-space time-delay system
    Liu, Xin
    Zhang, Hang
    Zhu, Pengbo
    Yang, Xianqiang
    Du, Zhiwei
    ASSEMBLY AUTOMATION, 2020, 40 (01) : 22 - 30
  • [30] An unsupervised ensemble learning method for nonlinear dynamic state-space models
    Valpola, H
    Karhunen, J
    NEURAL COMPUTATION, 2002, 14 (11) : 2647 - 2692