arXiv Open Access 2026

LoRM: Learning the Language of Rotating Machinery for Self-Supervised Condition Monitoring

Xiao Qin Xingyi Song Tong Liu Hatim Laalej Zepeng Liu +2 lainnya
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Abstrak

We present LoRM (Language of Rotating Machinery), a self-supervised framework for multi-modal rotating-machinery signal understanding and real-time condition monitoring. LoRM is built on the idea that rotating-machinery signals can be viewed as a machine language: local signals can be tokenised into discrete symbolic units, and their future evolution can be predicted from observed multi-sensor context. Unlike conventional signal-processing methods that rely on hand-crafted transforms and features, LoRM reformulates multi-modal sensor data as a token-based sequence-prediction problem. For each data window, the observed context segment is retained in continuous form, while the future target segment of each sensing channel is quantised into a discrete token. Then, efficient knowledge transfer is achieved by partially fine-tuning a general-purpose pre-trained language model on industrial signals, avoiding the need to train a large model from scratch. Finally, condition monitoring is performed by tracking token-prediction errors as a health indicator, where increasing errors indicate degradation. In-situ tool condition monitoring (TCM) experiments demonstrate stable real-time tracking and strong cross-tool generalisation, showing that LoRM provides a practical bridge between language modelling and industrial signal analysis. The source code is publicly available at https://github.com/Q159753258/LormPHM.

Topik & Kata Kunci

Penulis (7)

X

Xiao Qin

X

Xingyi Song

T

Tong Liu

H

Hatim Laalej

Z

Zepeng Liu

Y

Yunpeng Zhu

L

Ligang He

Format Sitasi

Qin, X., Song, X., Liu, T., Laalej, H., Liu, Z., Zhu, Y. et al. (2026). LoRM: Learning the Language of Rotating Machinery for Self-Supervised Condition Monitoring. https://arxiv.org/abs/2604.05863

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2026
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en
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arXiv
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