Anomaly detection (AD) is a crucial process often required in industrial settings. Anomalies can signal underlying issues within a system, prompting further investigation. Industrial processes aim to streamline operations as much as possible, encompassing the production of the final product, making AD an essential mean to reach this goal. Conventional anomaly detection methodologies typically clas-sify observations as either normal or anomalous without providing insight into the reasons behind these classifications. Consequently, in light of the emergence of Industry 5.0, a more desirable approach involves providing interpretable outcomes, enabling users to understand the rationale behind the results. This paper presents the first industrial application of ExIFFI, a recently developed approach focused on the production of fast and efficient explanations for the Extended Isolation Forest (EIF) Anomaly detection method. ExIFFI is tested on two publicly available industrial datasets demonstrating superior effectiveness in explanations and computational efficiency with the respect to other state-of-the-art explainable AD models.

Interpretable Data-Driven Anomaly Detection in Industrial Processes With ExIFFI

D. Frizzo;F. Borsatti;A. Arcudi;A. De Moliner;R. Oboe;G. A. Susto
2024

Abstract

Anomaly detection (AD) is a crucial process often required in industrial settings. Anomalies can signal underlying issues within a system, prompting further investigation. Industrial processes aim to streamline operations as much as possible, encompassing the production of the final product, making AD an essential mean to reach this goal. Conventional anomaly detection methodologies typically clas-sify observations as either normal or anomalous without providing insight into the reasons behind these classifications. Consequently, in light of the emergence of Industry 5.0, a more desirable approach involves providing interpretable outcomes, enabling users to understand the rationale behind the results. This paper presents the first industrial application of ExIFFI, a recently developed approach focused on the production of fast and efficient explanations for the Extended Isolation Forest (EIF) Anomaly detection method. ExIFFI is tested on two publicly available industrial datasets demonstrating superior effectiveness in explanations and computational efficiency with the respect to other state-of-the-art explainable AD models.
2024
Proceedings of the 8th IEEE International Forum on Research and Technology for Society and Industry (RTSI 2024)
8th IEEE International Forum on Research and Technologies for Society and Industry Innovation, RTSI 2024
9798350362138
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3531200
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