Litcius/Paper detail

Anomaly Detection Methods for Industrial Applications: A Comparative Study

Maria Antonietta Panza, Marco Pota, Massimo Esposito

2023Electronics32 citationsDOIOpen Access PDF

Abstract

Anomaly detection (AD) algorithms can be instrumental in industrial scenarios to enhance the detection of potentially serious problems at a very early stage. Of course, the “Industry 4.0” revolution is fostering the implementation of intelligent data-driven decisions in industry based on increasingly efficient machine learning (ML) algorithms. Most well-known AD methods use a supervised learning approach focusing on fault classification. They assume the availability of labeled data for both normal and anomalous classes. However, in many industrial environments, a labeled set of anomalous data instances is more challenging to obtain than a labeled set of normal data. Hence, this work implements an unsupervised approach based on two different methods using a typical benchmark bearing-fault dataset. The first method relies on the manual extraction of typical vibration metrics provided as input to an ML algorithm. The second one is based on a deep learning (DL) approach, automatically learning latent representation from raw data. The performance metrics demonstrate that both approaches can distinguish the state of a bearing from normal to faulty. DL methodology proves a higher accuracy rate in recognizing faults and a better ability to provide information about the fault size.

Topics & Concepts

Computer scienceAnomaly detectionBenchmark (surveying)Artificial intelligenceFault detection and isolationSet (abstract data type)Data miningFault (geology)Representation (politics)Machine learningData setDeep learningPattern recognition (psychology)Programming languagePolitical scienceActuatorGeodesySeismologyLawPoliticsGeologyGeographyAnomaly Detection Techniques and ApplicationsFault Detection and Control SystemsMachine Fault Diagnosis Techniques
Anomaly Detection Methods for Industrial Applications: A Comparative Study | Litcius