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Multi-TSformer: Unraveling the potential of virtual sensors in large-scale complex system monitoring via transformer based operator learning

  • Zhongyi Zhang
  • , Chunmin Wang
  • , Meng Ma
  • , Zhirong Zhong
  • , Xuefeng Chen
  • Xi'an Jiaotong University

科研成果: 期刊稿件文章同行评审

摘要

Monitoring key parameters in large-scale complex systems such as liquid propellant rocket engines is challenging because physical sensors often fail under extreme conditions. To address this issue, this work proposes Multi-TSformer, a Transformer-based operator learning framework for constructing virtual sensors. The objective is to accurately estimate unmeasurable parameters by capturing nonlinear spatial-temporal dependencies in multivariate time series. The methodology decomposes input sequences into temporal groups, forms spatial-temporal tokens, and leverages attention mechanisms to learn global dependencies. This design enables efficient mapping from multivariate inputs to outputs while preserving dynamic patterns. Multi-TSformer was validated on rocket engine simulation datasets and fine-tuned with limited real engine test data. Results show that the proposed approach reduces mean absolute error by up to 60% compared to baseline neural operator methods, effectively enhancing monitoring accuracy. Furthermore, the model achieves real-time feasibility, with inference requiring only 0.16 s per second of data on an RTX 3090 GPU. In addition, the method generalizes to solving benchmark PDE problems such as the Darcy equation, outperforming several state-of-the-art transformer solvers. These findings confirm the potential of operator learning for virtual sensor construction in aerospace systems. Broader applicability to different engines and complex industrial systems remains a promising direction for future work.

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