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2022 | OriginalPaper | Chapter

A Comparative Analysis of Anomaly Detection Methods for Predictive Maintenance in SME

Authors : Muhammad Qasim, Maqbool Khan, Waqar Mehmood, Florian Sobieczky, Mario Pichler, Bernhard Moser

Published in: Database and Expert Systems Applications - DEXA 2022 Workshops

Publisher: Springer International Publishing

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Abstract

Predictive maintenance is a crucial strategy in smart industries and plays an important role in small and medium-sized enterprises (SMEs) to reduce the unexpected breakdown. Machine failures are due to unexpected events or anomalies in the system. Different anomaly detection methods are available in the literature for the shop floor. However, the current research lacks SME-specific results with respect to comparison between and investment in different available predictive maintenance (PdM) techniques. This applies specifically to the task of anomaly detection, which is the crucial first step in the PdM workflow. In this paper, we compared and analyzed multiple anomaly detection methods for predictive maintenance in the SME domain. The main focus of the current study is to provide an overview of different unsupervised anomaly detection algorithms which will enable researchers and developers to select appropriate algorithms for SME solutions. Different Anomaly detection algorithms are applied to a data set to compare the performance of each algorithm. Currently, the study is limited to unsupervised algorithms due to limited resources and data availability. Multiple metrics are applied to evaluate these algorithms. The experimental results show that Local Outlier Factor and One-Class SVM performed better than the rest of the algorithms.

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Metadata
Title
A Comparative Analysis of Anomaly Detection Methods for Predictive Maintenance in SME
Authors
Muhammad Qasim
Maqbool Khan
Waqar Mehmood
Florian Sobieczky
Mario Pichler
Bernhard Moser
Copyright Year
2022
DOI
https://doi.org/10.1007/978-3-031-14343-4_3

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