An Acoustic Emission Activity Detection Method based on Short-Term Waveform Features: Application to Metallic Components under Uniaxial Tensile Test
Fernando Pinal-Moctezuma, Miguel Delgado-Prieto, Luis, Romeral-Martinez

TL;DR
This paper introduces a novel, efficient AE activity detection method based on waveform features, improving the accuracy of event onset and end detection in metallic component testing, outperforming existing techniques.
Contribution
The work presents a new AE detection framework inspired by speech processing, utilizing Short-Term Energy and Zero-Crossing Rate for precise event boundary identification.
Findings
The proposed method accurately detects AE event boundaries.
It outperforms four existing detection techniques in tests.
The approach is computationally efficient for continuous monitoring.
Abstract
The Acoustic Emission (AE) phenomenon has been used as a powerful tool with the purpose to either detect, locate or assess damage for a wide range of applications. Derived from its monitoring, one major current challenge on the analysis of the acquired signal is the proper identification and separation of each AE event. Current advanced methods for detecting events are primarily focused on identifying with high accuracy the beginning of the AE wave; however, the detection of the conclusion has been disregarded in the literature. For an automatic continuous detection of events within a data stream, this lack of accuracy for the conclusion of the events generates errors in two critical aspects. In one hand, it deteriorates the accuracy of the measurement of the events duration, truncating the span of the event (undesirable in evaluation applications), and in the other hand, it causes…
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