Salvato in:
Dettagli Bibliografici
Autori principali: Li, Yangmeng, Sano, Kei, Kitao, Toshihiro, Anzaki, Ryoji, Saitoh, Yukiya, Moki, Hironori, Djurdjanovic, Dragan
Natura: Preprint
Pubblicazione: 2026
Soggetti:
Accesso online:https://arxiv.org/abs/2604.05335
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866911571453673472
author Li, Yangmeng
Sano, Kei
Kitao, Toshihiro
Anzaki, Ryoji
Saitoh, Yukiya
Moki, Hironori
Djurdjanovic, Dragan
author_facet Li, Yangmeng
Sano, Kei
Kitao, Toshihiro
Anzaki, Ryoji
Saitoh, Yukiya
Moki, Hironori
Djurdjanovic, Dragan
contents Achieving resilient and high-quality manufacturing requires reliable data-driven anomaly detection methods that are capable of addressing differences in behaviors among different individual machines which are nominally the same and are executing the same processes. To address the problem of detecting anomalies in a machine using sensory data gathered from different individual machines executing the same procedure, this paper proposes a cross-machine time-series anomaly detection framework that integrates a domain-invariant feature extractor with an unsupervised anomaly detection module. Leveraging the pre-trained foundation model MOMENT, the extractor employs Random Forest Classifiers to disentangle embeddings into machine-related and condition-related features, with the latter serving as representations which are invariant to differences between individual machines. These refined features enable the downstream anomaly detectors to generalize effectively to unseen target machines. Experiments on an industrial dataset collected from three different machines performing nominally the same operation demonstrate that the proposed approach outperforms both the raw-signal-based and MOMENT-embedding feature baselines, confirming its effectiveness in enhancing cross-machine generalization.
format Preprint
id arxiv_https___arxiv_org_abs_2604_05335
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Cross-Machine Anomaly Detection Leveraging Pre-trained Time-series Model
Li, Yangmeng
Sano, Kei
Kitao, Toshihiro
Anzaki, Ryoji
Saitoh, Yukiya
Moki, Hironori
Djurdjanovic, Dragan
Machine Learning
Signal Processing
Achieving resilient and high-quality manufacturing requires reliable data-driven anomaly detection methods that are capable of addressing differences in behaviors among different individual machines which are nominally the same and are executing the same processes. To address the problem of detecting anomalies in a machine using sensory data gathered from different individual machines executing the same procedure, this paper proposes a cross-machine time-series anomaly detection framework that integrates a domain-invariant feature extractor with an unsupervised anomaly detection module. Leveraging the pre-trained foundation model MOMENT, the extractor employs Random Forest Classifiers to disentangle embeddings into machine-related and condition-related features, with the latter serving as representations which are invariant to differences between individual machines. These refined features enable the downstream anomaly detectors to generalize effectively to unseen target machines. Experiments on an industrial dataset collected from three different machines performing nominally the same operation demonstrate that the proposed approach outperforms both the raw-signal-based and MOMENT-embedding feature baselines, confirming its effectiveness in enhancing cross-machine generalization.
title Cross-Machine Anomaly Detection Leveraging Pre-trained Time-series Model
topic Machine Learning
Signal Processing
url https://arxiv.org/abs/2604.05335