The following information was submitted:
Transactions: WSEAS TRANSACTIONS ON SIGNAL PROCESSING
Transactions ID Number: 31-314
Full Name: Hazem El-Bakry
Position: Assistant Professor
Age: ON
Sex: Male
Address: P.O.Box: 76, Mansoura 35511
Country: EGYPT
Tel:
Tel prefix:
Fax:
E-mail address: helbakry50@yahoo.com
Other E-mails:
Title of the Paper: A New Fast Forecasting Technique using High Speed Neural Networks
Authors as they appear in the Paper: Hazem El-Bakry, Nikos Mastorakis
Email addresses of all the authors: helbakry50@yahoo.com
Number of paper pages: 23
Abstract: Forecasting is an important issue for many different applications. In this paper, a new efficient forecasting technique is presented. Such technique is designed by using fast neural networks (FNNs). The new idea relies on performing cross correlation in the frequency domain between the input data and the input weights of neural networks. It is proved mathematically and practically that the number of computation steps required for the proposed fast forecasting technique is less than that needed by conventional neural-based forecasting. Simulation results using MATLAB confirm the theoretical computations. The proposed fast forecasting technique increases the prediction speed and at the same time does not affect the predication accuracy. It is applied professionally for erythemal ultraviolet irradiance prediction.
Keywords: Fast Neural Network; Cross Correlation, Frequency Domain, Combined Neural Classifiers, Information Fusion, erythemal UV irradiance; total ozone.
EXTENSION of the file: .doc
Special (Invited) Session:
Organizer of the Session:
How Did you learn about congress:
IP ADDRESS: 193.227.51.18