Abstract:
The
gas turbine engine has a wide range of applications, these include industrial and
aerospace applications on locomotive, ferry, compressor and power generation, and
the most popular application will be for the air transportation. The application for air
transportation including military and commercial aircraft is highly sensitive to safety
concerns. The engine health monitoring system plays a major role for addressing this
concern, a good engine monitoring system will not only to provide immediate and
correct information to the engine user but also provide useful information for
managing the maintenance activities. Without a reliable performance diagnosis
module involved, there will be not possible to build a good health monitoring system.
There are many methodologies had been proposed and studied during past three
decades, and yet still struggling to search for some good techniques to handle
instrumentation errors. In order to develop a reliable engine performance diagnosis
technique, a fully understanding and proper handling of the instrumentation is
essential.
A engine performance fault pattern matching method has been proposed and
developed in this study, two fault libraries contains a complete defined set of 51963
faults was created by using a newly serviced fighter engine component data. This
pattern matching system had been verified by different approaches, such as compares
with linear and nonlinear diagnosis results and compares with performance sensitivity
analysis results by using LTF program engine data. The outcomes from the
verications indicate an encouraging result for further exploring this method.
In
conclusion, this research has not only propose a feasible performance diagnosis
techniques, but also developed and verified through different kind of approaches for
this techniques. In addition to that, by proper manipulating the created fault library, a
possible new tool for analyzing the application of instruments' implementation was
discovered. The author believes there will be more to study by using this created fault
pattern library. For instance, this fault pattern library can be treated as a very good
initial training sets for neural networking to develop a neural diagnosis technique.
This study has put a new milestone for further exploring gas turbine diagnosis
technique by using fault pattern related methods.