ScaleNet - Multiscale neural-network architecture for time series prediction

被引:88
作者
Geva, AB [1 ]
机构
[1] Ben Gurion Univ Negev, Dept Elect & Comp Engn, IL-84105 Beer Sheva, Israel
来源
IEEE TRANSACTIONS ON NEURAL NETWORKS | 1998年 / 9卷 / 06期
基金
以色列科学基金会;
关键词
hybrid systems; network initialization; neural networks; nonlinear time series prediction; unsupervised clustering; wavelet analysis;
D O I
10.1109/72.728396
中图分类号
TP18 [人工智能理论];
学科分类号
081104 [模式识别与智能系统]; 0812 [计算机科学与技术]; 0835 [软件工程]; 1405 [智能科学与技术];
摘要
The effectiveness of a multiscale neural-network (NN) architecture for the time series prediction of nonlinear dynamic systems has been investigated. The prediction task is simplified by decomposing different scales of past windows into different scales of wavelets (local frequencies), and predicting the coefficients of each scale of wavelets by means of a separate multilayer perceptron NN. The short-term history (short past windows) is decomposed into the lower scales of wavelet coefficients thigh frequencies) which are utilized for "detailed" analysis and prediction, while the long-term history (long past window) is decomposed into higher scales of wavelet coefficients (low frequencies) that are used for the analysis and prediction of slow trends in the time series. These coordinated scales of time and frequency provides an interpretation of the series structures, and more information about the history of the series, using fewer coefficients than other methods. The prediction's results concerning all the different scales of time and frequencies are combined by another "expert" perceptron MV which learns the weight of each scale in the goal-prediction of the original time series. Each network is trained by the backpropagation algorithm using the Levenberg-Marquadt method. The weights and biases are initialized by a new clustering algorithm of the temporal patterns of the time series, which improves the prediction results as compared to random initialization. Three main sets of data were analyzed: the sunspots' benchmark, fluctuations in a far-infrared laser and a nonlinear numerically generated series. Taking the ultimate goal to be the accuracy of the prediction, we found that the suggested multiscale architecture outperforms the corresponding single-scale architectures. The employment of improved learning methods for each of the ScaleNet networks can further improve the prediction results.
引用
收藏
页码:1471 / 1482
页数:12
相关论文
共 26 条
[1]
[Anonymous], 1995, Advances in Chemical Engineering
[2]
WAVE-NET - A MULTIRESOLUTION, HIERARCHICAL NEURAL NETWORK WITH LOCALIZED LEARNING [J].
BAKSHI, BR ;
STEPHANOPOULOS, G .
AICHE JOURNAL, 1993, 39 (01) :57-81
[3]
Bezdek J. C., 1981, Pattern recognition with fuzzy objective function algorithms
[4]
Bishop C. M., 1995, NEURAL NETWORKS PATT
[5]
ORTHONORMAL BASES OF COMPACTLY SUPPORTED WAVELETS [J].
DAUBECHIES, I .
COMMUNICATIONS ON PURE AND APPLIED MATHEMATICS, 1988, 41 (07) :909-996
[6]
ACCURACY ANALYSIS FOR WAVELET APPROXIMATIONS [J].
DELYON, B ;
JUDITSKY, A ;
BENVENISTE, A .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 1995, 6 (02) :332-348
[7]
INITIALIZING BACK PROPAGATION NETWORKS WITH PROTOTYPES [J].
DENOEUX, T ;
LENGELLE, R .
NEURAL NETWORKS, 1993, 6 (03) :351-363
[8]
UNSUPERVISED OPTIMAL FUZZY CLUSTERING [J].
GATH, I ;
GEVA, AB .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 1989, 11 (07) :773-781
[9]
GEVA AB, 1996, P IEEE INT C SYST MA
[10]
GEVA AB, 1997, MIN SCI INT C FUZZ L