Computational framework for real-time diagnostics and prognostics of aircraft actuation systems
Pier Carlo Berri, Matteo D.L. Dalla Vedova, Laura Mainini

TL;DR
This paper presents a computational framework combining physical models and machine learning for real-time diagnostics and prognostics of aircraft actuation systems, enhancing reliability and reducing maintenance costs.
Contribution
It introduces a novel, efficient method for real-time fault detection, identification, and remaining useful life estimation using surrogate models and importance sampling.
Findings
High precision RUL estimation achieved
Outperforms traditional model-based techniques in speed
Effective for aircraft electromechanical actuators
Abstract
Prognostics and Health Management (PHM) are emerging approaches to product life cycle that will maintain system safety and improve reliability, while reducing operating and maintenance costs. This is particularly relevant for aerospace systems, where high levels of integrity and high performances are required at the same time. We propose a novel strategy for the nearly real-time Fault Detection and Identification (FDI) of a dynamical assembly, and for the estimation of Remaining Useful Life (RUL) of the system. The availability of a timely estimate of the health status of the system will allow for an informed adaptive planning of maintenance and a dynamical reconfiguration of the mission profile, reducing operating costs and improving reliability. This work addresses the three phases of the prognostic flow - namely (1) signal acquisition, (2) Fault Detection and Identification, and (3)…
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