A Procedure for on Line Learning and Improvemnet of Wavelet Based Neural Networks
نویسندگان
چکیده
Abstract . The technological advancement in the computer controlled systems and other areas in the process industries makes available continuous stream of data to be exploited utilizing on-line systems environment. This paper presents a procedure for on-line learning with wave-nets with the aid of such a stream of data. Wave-nets are wavelet-based neural networks with localized and hierarchical multiresolution learning. The multiresolution framework of wave-nets is briefly explained. Then, based on the L∞ learning algorithm, a new procedure for on-line improvement of wave-net structure is proposed. The capability of the on-line wave-net is verified using a typical example.
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تاریخ انتشار 1999