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Main Authors: Chen, Zhang, Zhang, Yucong, Miao, Xiaoxiao, Li, Ming
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.07130
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author Chen, Zhang
Zhang, Yucong
Miao, Xiaoxiao
Li, Ming
author_facet Chen, Zhang
Zhang, Yucong
Miao, Xiaoxiao
Li, Ming
contents We introduce a multimodal industrial fault analysis dataset collected from a single-speed chain conveyor (SSCC) system, targeting system-level fault detection in production lines. The dataset consists of multimodal signals, including three audio and four vibration channels. It covers normal operation and four representative fault types under multiple speeds, loads, and both clean and realistic factory-noise conditions reproduced on-site. It is explicitly designed to support channel-wise analysis and multimodal fusion research. We establish standardized evaluation protocols for unsupervised fault detection with normal-only training and supervised fault classification with balanced dataset splits across different operating conditions and fault types. A unified channel-wise kNN baseline is provided to enable fair comparison of representation quality without task-specific training. The dataset offers a practical and extensible benchmark for robust multimodal industrial fault analysis.
format Preprint
id arxiv_https___arxiv_org_abs_2603_07130
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Toward Multimodal Industrial Fault Analysis: A Single-Speed Chain Conveyor Dataset with Audio and Vibration Signals
Chen, Zhang
Zhang, Yucong
Miao, Xiaoxiao
Li, Ming
Sound
Audio and Speech Processing
We introduce a multimodal industrial fault analysis dataset collected from a single-speed chain conveyor (SSCC) system, targeting system-level fault detection in production lines. The dataset consists of multimodal signals, including three audio and four vibration channels. It covers normal operation and four representative fault types under multiple speeds, loads, and both clean and realistic factory-noise conditions reproduced on-site. It is explicitly designed to support channel-wise analysis and multimodal fusion research. We establish standardized evaluation protocols for unsupervised fault detection with normal-only training and supervised fault classification with balanced dataset splits across different operating conditions and fault types. A unified channel-wise kNN baseline is provided to enable fair comparison of representation quality without task-specific training. The dataset offers a practical and extensible benchmark for robust multimodal industrial fault analysis.
title Toward Multimodal Industrial Fault Analysis: A Single-Speed Chain Conveyor Dataset with Audio and Vibration Signals
topic Sound
Audio and Speech Processing
url https://arxiv.org/abs/2603.07130