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Xusheng  Qian
Xusheng Qian

Public Documents 1
Self-training partial least squares model for semi-supervised multivariate spectrosco...
Xusheng  Qian
Meng Miao

Xusheng Qian

and 5 more

January 06, 2026
Power grid marketing inspection relies on work order data to identify rule violations. However, manual labeling of audit results is costly and often infeasible at scale. This study proposes a self-training partial least squares (STPLS) model to address this challenge by leveraging both labeled and unlabeled data for semi-supervised modeling. The method iteratively augments labeled samples using high-confidence predictions, improving calibration accuracy under limited supervision. Experiments on over 10,000 real-world grid work orders demonstrate the model’s effectiveness in semantic audit topic alignment and time-series prediction of work order volumes. Additional validation on a spectroscopic benchmark dataset confirms the generalizability of the approach. The proposed method supports efficient and scalable intelligent inspection in the power grid domain.

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