Wavelet Transform Noise Elimination and Its Application in City Heating Load Prediction

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Title: Wavelet Transform Noise Elimination and Its Application in City Heating Load Prediction
Author: Jiang, Y.; Jun, X.; Wei, B.
Abstract: In this paper, the real-time measuring data with noise undergo wavelet transformation. With the treated data and an internal time-delay Elman network, city heating supply predictive models are established and short-term real-time predictions are realized. The result indicates that selecting the proper level of decomposition to denoise measuring signals can eliminate high frequency noise disturbance, improve identification precision, shorten identification time and meet the demands of real-time identification.
Publisher: Energy Systems Laboratory (http://esl.tamu.edu)
Subject: wavelet transform
data denoising
Elman network
heat load prediction
URI: http://handle.tamu.edu/1969.1/5245
Date: 2006

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