The Method and Application of Time Series Prediction Based Wavelet Neural Network

Autor: Peng Qian Xue, Yu Min Pan, Quan Zhu Zhang
Rok vydání: 2011
Předmět:
Zdroj: Advanced Materials Research. :2312-2317
ISSN: 1662-8985
DOI: 10.4028/www.scientific.net/amr.328-330.2312
Popis: This paper presents a research on modeling and prediction with wavelet neural network in the nonlinear time series of gas emitted. Because accurately predicting the amount of gas emitted from the mine is a very important matter for safety, this paper proposes a new algorithm of wavelet neural network model for time series gas emission prediction. The nervous cells function is the basis of nonlinear wavelets. A wavelet network composed by the wavelet basis function is computed by an expansion and contraction factor and a translation factor to reach the global best approximation effect. Which wavelet basis function has the features of extraction capabilities, self-learning neural network and wavelet transform of the localized nature. The intrinsic defects of artificial BP neural network, e.g., its slow learning speed, difficulty to determine rationally the network structure and existence of partial minimum points, are solved. The simulation results obtained show that the new prediction system has faster convergence and more accurate prediction.
Databáze: OpenAIRE