In this paper an integrated heath monitoring platform is proposed and developed for performance analysis and degradation diagnostics of gas turbine engines. In a first approach the numerical tool is able to predict engine measurable data from flight data, in order to create a dataset of expected values. Then, in the case of a mismatch between expected values and measured data coming from a real engine, a second part of the tool can be activated to detect the component under degradation. In order to evaluate the performance prediction artificial neural networks (ANN) have been implemented. The tool is able to recognize the degradation due to compressor fouling and turbine erosion. Synthetic data generation has been carried out to show how th...
Hybrid engines are becoming more and more widespread. Electric energy instead is a valid help to red...
Real-time engine condition monitoring and fault diagnostics results in reduced operating and mainten...
The rapid advancement of machine-learning techniques has played a significant role in the evolution ...
In this paper an integrated heath monitoring platform is proposed and developed for performance anal...
Purpose The purpose of this paper is to propose and develop artificially intelligent methodologies ...
Modern condition monitoring-based methods are used to reduce maintenance costs, increase aircraft sa...
Maintenance and diagnostics play a vital role in the aviation sector. This is especially true for th...
An efficient maintenance plan is an important aspect for aeronautical companies to increase flight s...
none4In aerospace sector, reliability is a crucial point. Modern technologies widely use Artificial ...
Gas turbine maintenance is crucial due to high cost for the replacement of its components and associ...
In this paper two artificially intelligent methodologies are proposed and developed for degradation ...
Monitoring aircraft performance in a fleet is fundamental to ensure optimal operation and promptly d...
This paper focuses on the monitoring of the fuel system of a turbofan which is the core organ of an ...
In this study, we present an integrated method for detecting and forecasting the health of gas turbi...
The Tristar aircraft, operated by the Royal Air Force, fly many thousands of hours per year in the ...
Hybrid engines are becoming more and more widespread. Electric energy instead is a valid help to red...
Real-time engine condition monitoring and fault diagnostics results in reduced operating and mainten...
The rapid advancement of machine-learning techniques has played a significant role in the evolution ...
In this paper an integrated heath monitoring platform is proposed and developed for performance anal...
Purpose The purpose of this paper is to propose and develop artificially intelligent methodologies ...
Modern condition monitoring-based methods are used to reduce maintenance costs, increase aircraft sa...
Maintenance and diagnostics play a vital role in the aviation sector. This is especially true for th...
An efficient maintenance plan is an important aspect for aeronautical companies to increase flight s...
none4In aerospace sector, reliability is a crucial point. Modern technologies widely use Artificial ...
Gas turbine maintenance is crucial due to high cost for the replacement of its components and associ...
In this paper two artificially intelligent methodologies are proposed and developed for degradation ...
Monitoring aircraft performance in a fleet is fundamental to ensure optimal operation and promptly d...
This paper focuses on the monitoring of the fuel system of a turbofan which is the core organ of an ...
In this study, we present an integrated method for detecting and forecasting the health of gas turbi...
The Tristar aircraft, operated by the Royal Air Force, fly many thousands of hours per year in the ...
Hybrid engines are becoming more and more widespread. Electric energy instead is a valid help to red...
Real-time engine condition monitoring and fault diagnostics results in reduced operating and mainten...
The rapid advancement of machine-learning techniques has played a significant role in the evolution ...