4 research outputs found
Improving planned and condition-based maintenance decision support
In both civil and military aviation, maintenance plays a large role in ensuring continued
safe operation and accounts for a significant portion of operating costs. Typically, a
conservative planned maintenance (PM) program is initially developed to ensure the
aircraft reliability but this often leads to over-maintenance. With more in-service
experience, operators seek to customize the maintenance interval accordingly in order
to reduce workload and cost without compromising safety. With prevailing use of
health usage monitoring systems (HUMS), the maintenance can even transit from PM
to condition-based maintenance (CBM) where further safety and costs benefit may be
reaped. Whilst some guidance for such changes exists, it remains challenging for
maintainers in practice as suggested methods often require significant component
failure or test data; which are unavailable or too expensive to obtain. As such, this
research reviews the challenges faced by maintainers when extending PM intervals or
implementing CBM and seeks ways to support decision making for the changes.
For PM, the challenge to extend the maintenance interval with little or no past failure is
addressed. Existing reliability methods were reviewed and two improved methods to
estimate the reliability lower confidence bounds were developed. The first approach
adopts the use of Monte Carlo simulation applied to the Weibull plot equation while the
second uses a probabilistic damage accumulation model together with bootstrap
techniques. Both methods are used to assess the reliability of extending the replacement
interval of a gearbox bearing and are shown to perform better than existing methods as
they provide tighter reliability confidence bounds.
For CBM, a survey on sensor technologies and diagnostic algorithms showed that
vibration-based sensor is most widely used to detect fault. The study then demonstrates
a CBM implementation using vibration-based HUMS data from in-service helicopters.
Analysis of the FFT spectra shows that the fault patterns corresponding to progressing
stages of bearing wear can be clearly observed. The fault patterns are extracted as
features for unsupervised classification using Gaussian Mixture Models and used to
infer the different bearing health states. Signal detection theory was then applied onto
the classified feature to determine the detection thresholds for fault diagnosis. A
simplistic prognostic model using trend extrapolation to determine the replacement
lead-time is then performed and use for maintenance planning.
In an effort to ease the implementation of CBM, ways to improve prognostics
application is explored. The Switching Kalman Filter (SKF) was adapted for both
diagnostic and prognostic under an autonomous framework that requires little user
input. The SKF uses multiple dynamical models with each one describing a different
stage of bearing wear. The most probable wear process is then inferred from the
extracted feature data using Bayesian estimation. As different stages of bearing wear
can be tracked using the dynamical behavior of the measurements, pre-established
threshold for fault detection is no longer required for diagnostics. The SKF approach
provides maintainers with more information for decision-making as a probabilistic
measure of the wear processes are available. It also offers the opportunity to predict
RUL more accurately by distinguishing between the wear stages and performing
prediction only when rapid and unstable wear is detected. The SKF approach is
demonstrated using in-service feature data from the AH64D TRGB and the results have
shown the proposed methods to be a promising tool for maintenance decision-making.
As an extension of research on methodologies to improve PM and CBM decision
support, a thioether mist lubrication is explored for its feasibility as a backup
lubrication system for helicopters. The aim is to reduce the mishap severity category
which in turn eases the extension of PM interval or its replacement with a CBM task.
An experimental setup was developed to test the thermal properties of a spur gearbox
with thioether mist lubrication under various load and speed conditions and it was
shown that only a very small volumetric flow of lubricant is required to preserve the
gears from damage in oil starved environment. As such, a thioether based mist backup
system can potentially reduce the risk of oil starvation failures significantly
Mechanical Properties of Cold Sprayed Aluminium 2024 and 7075 Coatings for Repairs
This study investigates the mechanical properties of aluminium 2024 (Al-2024) and aluminium 7075 (Al-7075) cold-sprayed materials and coatings for repairs. It aims to determine the acceptable data needed to meet regulatory requirement when substantiating cold spray repairs. The study focuses on repairs of non-principal structural element (PSE) structures such as skin and panels that are prone to corrosion and wear. For cold spray repair of such components, the microstructure, tensile, peel, bearing, and bending strength from the repair process and powder materials of Al-2024 and Al-7075, were identified and investigated in accordance with MIL-STD-3021. Results show an average coating porosity of <1.2% for both materials. Average tensile strength was 247.1 MPa (with elongation of 0.76%) for Al-2024 and 264.0 MPa (with elongation of 0.87%) for Al-7075. Al-2024 has an average peel strength of 71.9 MPa, while Al-7075 is at 48.9 MPa. The Al-2024 bearing test specimens gave a maximum load strength before failure of 633.6 MPa, while the Al-7075 gave 762.7 MPa. The bending tests show good flexibility for coating thickness ranges of typical skin and panel parts. The results show that cold spray can be used to restore thickness and oversized hole diameters for Al-2024 and Al-7075 skin and panels. The bearing test conducted in this study has also demonstrated a new test method to determine the bearing load and yield strength of a cold spray-repaired hole in a plate