Archive/Empirically Calibrated Multi-Fidelity Fusion with Conformal Prediction Intervals for Reliability Assessment of Aerospace Dormant Components
Empirically Calibrated Multi-Fidelity Fusion with Conformal Prediction Intervals for Reliability Assessment of Aerospace Dormant Components
Shengpeng Zhang, Shuanglong Rong, Hao Li et al.
30 de junio de 2026
en

Abstract

Reliability prediction of aerospace dormant components requires fusing natural-storage observations at the operating temperature with accelerated-storage testing data at elevated temperatures. Existing scalar-weight fusion methods apply a global weight that cannot reflect the time-varying trustworthiness of the accelerated branch as Arrhenius extrapolation distance grows. Physics-based fusion propagates accelerated-test scatter through least squares but leaves the dominant error source—the degradation-model form itself—unaccounted for, and no method in either class verifies the coverage of its intervals. This paper proposes an empirically calibrated multi-fidelity fusion that selects a mechanism-specific natural-branch degradation model by the corrected Akaike information criterion and augments the accelerated-branch variance with an additive model-form term fitted from natural-storage residuals. This term turns the fusion weight into a continuous, time-varying diagnostic that detects Arrhenius misspecification from training data alone and falls back safely to the natural-only estimate. Prediction intervals are calibrated by split-conformal prediction on a disjoint simulated population, giving finite-sample, distribution-free coverage, and the remaining-storage-life interval follows from the band’s first-passage time. On a 1000-run varying-truth simulation, the calibrated band attains 95.5% trajectory coverage at the narrowest band width among six methods; on the torsion-bar case, the fusion reaches a held-out RMSE of 0.045 N·m and a remaining-life interval of 10.4–12.6 years. The model-form variance ratio provides a single-number regime diagnostic across all cases.

IPC Classification

G06A61

Keywords

empiricallycalibratedmulti-fidelityfusionconformalpredictionintervalsreliabilityassessmentaerospacedormantcomponentsrequiresfusingnatural-storageobservationsoperatingtemperatureaccelerated-storagetestingdataelevatedtemperaturesexisting
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