Published 2012 | Version v1
Publication

Wavelet-based automated localization and classification of peaks in streamflow data seriee

Description

This paper combines discrete wavelet transform (DWT) with artificial intelligence algorithm in order to develop a new unsupervised method for fast detecting, localizing, and classifying flood events in real-world stage-discharge data time series. Localization is performed through a simple hill-climbing search algorithm initialized by the position of the highest DWT coefficients. The proposed method does not require any a priori information such as catchment characteristics or alert flood thresholds.

Additional details

Created:
March 27, 2023
Modified:
November 28, 2023