LGAIMar 19

Transformer-Based Predictive Maintenance for Risk-Aware Instrument Calibration

arXiv:2603.202974.9h-index: 40
Predicted impact top 94% in LG · last 90 daysOriginality Incremental advance
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This work addresses calibration scheduling for instruments in risk-sensitive applications, offering an incremental improvement over existing methods by integrating sequence models with risk-aware policies.

The paper tackled predictive maintenance for instrument calibration by estimating time-to-drift from sensor data, showing that a Transformer model provided the strongest point forecasts and uncertainty-aware scheduling reduced violations and costs compared to reactive and fixed policies.

Accurate calibration is essential for instruments whose measurements must remain traceable, reliable, and compliant over long operating periods. Fixed-interval programs are easy to administer, but they ignore that instruments drift at different rates under different conditions. This paper studies calibration scheduling as a predictive maintenance problem: given recent sensor histories, estimate time-to-drift (TTD) and intervene before a violation occurs. We adapt the NASA C-MAPSS benchmark into a calibration setting by selecting drift-sensitive sensors, defining virtual calibration thresholds, and inserting synthetic reset events that emulate repeated recalibration. We then compare classical regressors, recurrent and convolutional sequence models, and a compact Transformer for TTD prediction. The Transformer provides the strongest point forecasts on the primary FD001 split and remains competitive on the harder FD002--FD004 splits, while a quantile-based uncertainty model supports conservative scheduling when drift behavior is noisier. Under a violation-aware cost model, predictive scheduling lowers cost relative to reactive and fixed policies, and uncertainty-aware triggers sharply reduce violations when point forecasts are less reliable. The results show that condition-based calibration can be framed as a joint forecasting and decision problem, and that combining sequence models with risk-aware policies is a practical route toward smarter calibration planning.

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