4.6 Article

A Comprehensive Case Study of Data-Driven Methods for Robust Aircraft Sensor Fault Isolation

Journal

SENSORS
Volume 21, Issue 5, Pages -

Publisher

MDPI
DOI: 10.3390/s21051645

Keywords

data-driven fault diagnosis; robust residual generation; fault isolation and estimation; Bayesian filtering; aircraft safety; flight data

Funding

  1. University of Perugia [RICBA17MR, RICBA18MR]

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This paper compares data-driven sensor fault isolation and fault estimation techniques using flight data, deriving residuals from linear regression models for fault isolation. A bank of Bayesian filters is proposed to compute fault beliefs for each sensor, with the techniques validated through experiments. Ultimately, the performance of the methods is evaluated for sensor faults in air-data sensors.
Recent catastrophic events in aviation have shown that current fault diagnosis schemes may not be enough to ensure a reliable and prompt sensor fault diagnosis. This paper describes a comparative analysis of consolidated data-driven sensor Fault Isolation (FI) and Fault Estimation (FE) techniques using flight data. Linear regression models, identified from data, are derived to build primary and transformed residuals. These residuals are then implemented to develop fault isolation schemes for 14 sensors of a semi-autonomous aircraft. Specifically, directional Mahalanobis distance-based and fault reconstruction-based techniques are compared in terms of their FI and FE performance. Then, a bank of Bayesian filters is proposed to compute, in flight, the fault belief for each sensor. Both the training and the validation of the schemes are performed using data from multiple flights. Artificial faults are injected into the fault-free sensor measurements to reproduce the occurrence of failures. A detailed evaluation of the techniques in terms of FI and FE performance is presented for failures on the air-data sensors, with special emphasis on the True Air Speed (TAS), Angle of Attack (AoA), and Angle of Sideslip (AoS) sensors.

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