A Stacked Autoencoder Neural Network based Automated Feature Extraction Method for Anomaly detection in On-line Condition Monitoring
Mohendra Roy, Sumon Kumar Bose, Bapi Kar, Pradeep Kumar, Gopalakrishnan, Arindam Basu

TL;DR
This paper presents a novel automated feature extraction method using stacked autoencoders combined with an online sequential extreme learning machine for real-time fault detection in industrial condition monitoring, achieving high accuracy and easy IoT integration.
Contribution
It introduces a new autoencoder-based automated feature extraction technique specifically designed for online condition monitoring in industrial settings.
Findings
Achieved 100% detection accuracy on NASA bearing dataset.
Comparable performance to traditional handcrafted feature methods.
Suitable for IoT-based prognostics with simple hardware implementation.
Abstract
Condition monitoring is one of the routine tasks in all major process industries. The mechanical parts such as a motor, gear, bearings are the major components of a process industry and any fault in them may cause a total shutdown of the whole process, which may result in serious losses. Therefore, it is very crucial to predict any approaching defects before its occurrence. Several methods exist for this purpose and many research are being carried out for better and efficient models. However, most of them are based on the processing of raw sensor signals, which is tedious and expensive. Recently, there has been an increase in the feature based condition monitoring, where only the useful features are extracted from the raw signals and interpreted for the prediction of the fault. Most of these are handcrafted features, where these are manually obtained based on the nature of the raw data.…
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Taxonomy
TopicsFault Detection and Control Systems · Machine Learning and ELM · Thermography and Photoacoustic Techniques
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