Title :
Prediction Intervals for a Noisy Nonlinear Time Series Based on a Bootstrapping Reservoir Computing Network Ensemble
Author :
Chunyang Sheng ; Jun Zhao ; Wei Wang ; Leung, Henry
Author_Institution :
Res. Center of Inf. & Control, Dalian Univ. of Technol., Dalian, China
Abstract :
Prediction intervals that provide estimated values as well as the corresponding reliability are applied to nonlinear time series forecast. However, constructing reliable prediction intervals for noisy time series is still a challenge. In this paper, a bootstrapping reservoir computing network ensemble (BRCNE) is proposed and a simultaneous training method based on Bayesian linear regression is developed. In addition, the structural parameters of the BRCNE, that is, the number of reservoir computing networks and the reservoir dimension, are determined off-line by the 0.632 bootstrap cross-validation. To verify the effectiveness of the proposed method, two kinds of time series data, including the multisuperimposed oscillator problem with additive noises and a practical gas flow in steel industry are employed here. The experimental results indicate that the proposed approach has a satisfactory performance on prediction intervals for practical applications.
Keywords :
Bayes methods; forecasting theory; learning (artificial intelligence); neural nets; regression analysis; time series; BRCNE; Bayesian linear regression; additive noises; bootstrap cross-validation; bootstrapping reservoir computing network ensemble; estimated values; multisuperimposed oscillator problem; noisy nonlinear time series; noisy time series; nonlinear time series forecast; practical gas flow; reliable prediction intervals; reservoir computing networks; reservoir dimension; simultaneous training method; steel industry; structural parameters; time series data; Accuracy; Artificial neural networks; Bayes methods; Noise measurement; Reservoirs; Time series analysis; Training; Bootstrap; network ensemble; noisy nonlinear time series; prediction intervals (PIs); reservoir computing networks (RCNs);
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2013.2250299