Anomaly Detection in Predictive Maintenance: A New Evaluation Framework for Temporal Unsupervised Anomaly Detection Algorithms
Jacinto Carrasco, Irina Markova, David L\'opez, Ignacio Aguilera,, Diego Garc\'ia, Marta Garc\'ia-Barzana, Manuel Arias-Rodil, Juli\'an Luengo,, Francisco Herrera

TL;DR
This paper introduces a flexible evaluation framework for unsupervised anomaly detection in predictive maintenance, addressing the lack of unified definitions and benchmarks in the field, and demonstrates its effectiveness with real-world data.
Contribution
It generalizes anomaly definitions to intervals and proposes the Preceding Window ROC for better evaluation of time-series anomaly detection algorithms.
Findings
Effective evaluation of unsupervised algorithms
Improved early detection measurement
Validated with real-world industrial data
Abstract
The research in anomaly detection lacks a unified definition of what represents an anomalous instance. Discrepancies in the nature itself of an anomaly lead to multiple paradigms of algorithms design and experimentation. Predictive maintenance is a special case, where the anomaly represents a failure that must be prevented. Related time-series research as outlier and novelty detection or time-series classification does not apply to the concept of an anomaly in this field, because they are not single points which have not been seen previously and may not be precisely annotated. Moreover, due to the lack of annotated anomalous data, many benchmarks are adapted from supervised scenarios. To address these issues, we generalise the concept of positive and negative instances to intervals to be able to evaluate unsupervised anomaly detection algorithms. We also preserve the imbalance scheme…
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