MODELING THE TIME-KEEPING FUNCTION OF THE CENTRAL PATTERN GENERATOR FOR LOCOMOTION USING ARTIFICIAL SEQUENTIAL NEURAL-NETWORK

被引:7
|
作者
PRENTICE, SD
PATLA, AE
STACEY, DA
机构
[1] UNIV WATERLOO,DEPT KINESIOL,WATERLOO,ON N2L 3G1,CANADA
[2] UNIV GUELPH,DEPT COMP & INFORMAT SCI,GUELPH,ON N1G 2W1,CANADA
关键词
ARTIFICIAL NEURAL NETWORKS; CENTRAL PATTERN GENERATOR; LOCOMOTION;
D O I
10.1007/BF02510506
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
The paper investigates the ability of a sequential neural network to model the time-keeping function (fundamental frequency oscillation) of a central pattern generator for locomotion. The intention is not to strive for biological fidelity, but rather to ensure that the network obeys the organisational and operational principles of central pattern generators developed through empirical research. The timing function serves to produce the underlying locomotor rhythm:which can be transformed by nonlinear static shaping functions to construct the necessary locomotor activation patterns. Using two levels of tonic activations in the form of a step increase, a network consisting of nine processing units was successfully trained to output both sine and cosine waveforms, whose frequencies were modified in response to the level of input activation. The network's ability to generalise was demonstrated by appropriately scaling the frequency of oscillation in response to a range of input amplitudes, both within and outside the values on which it was trained. A notable and fortunate result was the model's failure to oscillate in the absence of input activation, which is a necessary property of the CPG model. It was further demonstrated that the oscillation frequency of the output waveforms exhibited both a high temporal stability and a very low sensitivity to input noise. The results indicate that the sequential neural network is a suitable candidate to model the time-keeping functions of the central pattern generator for locomotion.
引用
收藏
页码:317 / 322
页数:6
相关论文
共 46 条
  • [21] Prediction and evaluation of tropospheric ozone concentration in Istanbul using artificial neural network modeling according to time parameter
    Demir, Goksel
    Altay, Gokmen
    Sakar, C. Okan
    Albayrak, Sefika
    Ozdemir, Huseyin
    Yalcin, Senay
    JOURNAL OF SCIENTIFIC & INDUSTRIAL RESEARCH, 2008, 67 (09): : 674 - 679
  • [22] Modeling and predicting execution time of scientific workflows in the Grid using radial basis function neural network
    Nadeem, Farrukh
    Alghazzawi, Daniyal
    Mashat, Abdulfattah
    Fakeeh, Khalid
    Almalaise, Abdullah
    Hagras, Hani
    CLUSTER COMPUTING-THE JOURNAL OF NETWORKS SOFTWARE TOOLS AND APPLICATIONS, 2017, 20 (03): : 2805 - 2819
  • [23] Modeling and predicting execution time of scientific workflows in the Grid using radial basis function neural network
    Farrukh Nadeem
    Daniyal Alghazzawi
    Abdulfattah Mashat
    Khalid Fakeeh
    Abdullah Almalaise
    Hani Hagras
    Cluster Computing, 2017, 20 : 2805 - 2819
  • [24] MATHEMATICAL-MODELING OF LIQUID-LIQUID EQUILIBRIA IN AQUEOUS POLYMER-SOLUTION CONTAINING NEUTRAL PROTEINASE AND OXYTETRACYCLINE USING ARTIFICIAL NEURAL-NETWORK
    BOGDAN, S
    GOSAK, D
    VASICRACKI, D
    COMPUTERS & CHEMICAL ENGINEERING, 1995, 19 : S791 - S796
  • [25] Statistical modeling of monthly streamflow using time series and artificial neural network models: Hindiya Barrage as a case study
    Al-Saati, Nabeel H.
    Omran, Isam I.
    Salman, Alaa Ali
    Al-Saati, Zainab
    Hashim, Khalid S.
    WATER PRACTICE AND TECHNOLOGY, 2021, 16 (02) : 681 - 691
  • [26] Optimization of a segmented thermoelectric generator with various doping amounts using central composite design, multi-objective genetic algorithm, and artificial neural network
    Chen, Wei-Hsin
    Lin, Yen-Kuan
    Luo, Ding
    Jin, Liwen
    Bandala, Argel A.
    ENERGY, 2025, 316
  • [27] Modeling and Optimization of Fe(III) Adsorption from Water using Bentonite Clay: Comparison of Central Composite Design and Artificial Neural Network
    Savic, Ivana M.
    Stojiljkovic, Stanisa T.
    Savic, Ivan M.
    Stojanovic, Sreten B.
    Moder, Karl
    CHEMICAL ENGINEERING & TECHNOLOGY, 2012, 35 (11) : 2007 - 2014
  • [28] Predictive modeling of allowable storage time of finger millet grains using artificial neural network and support vector regression approaches
    Joshi, T. Jayasree
    Rao, P. Srinivasa
    JOURNAL OF FOOD ENGINEERING, 2024, 383
  • [29] Nitrate concentration analysis and prediction in a shallow aquifer in central-eastern Tunisia using artificial neural network and time series modelling
    El Amri, Asma
    M'nassri, Soumaia
    Nasri, Nessrine
    Nsir, Hanen
    Majdoub, Rajouene
    ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2022, 29 (28) : 43300 - 43318
  • [30] Nitrate concentration analysis and prediction in a shallow aquifer in central-eastern Tunisia using artificial neural network and time series modelling
    Asma El Amri
    Soumaia M’nassri
    Nessrine Nasri
    Hanen Nsir
    Rajouene Majdoub
    Environmental Science and Pollution Research, 2022, 29 : 43300 - 43318