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Residual Error Based Anomaly Detection Using Auto-Encoder in SMD Machine Sound

Dong Yul Oh,I. Yun

2018 · DOI: 10.3390/s18051308
Italian National Conference on Sensors · 119 Citations

TLDR

This paper proposes to detect abnormal operation sounds or outliers in a very complex machine along with reducing the data-driven annotation cost by using an auto-encoder, and uses the residual error, which stands for its reconstruction quality, to identify the anomaly.

Abstract

Detecting an anomaly or an abnormal situation from given noise is highly useful in an environment where constantly verifying and monitoring a machine is required. As deep learning algorithms are further developed, current studies have focused on this problem. However, there are too many variables to define anomalies, and the human annotation for a large collection of abnormal data labeled at the class-level is very labor-intensive. In this paper, we propose to detect abnormal operation sounds or outliers in a very complex machine along with reducing the data-driven annotation cost. The architecture of the proposed model is based on an auto-encoder, and it uses the residual error, which stands for its reconstruction quality, to identify the anomaly. We assess our model using Surface-Mounted Device (SMD) machine sound, which is very complex, as experimental data, and state-of-the-art performance is successfully achieved for anomaly detection.