Developing Data Mining-Based Prognostic Models for CF-18 Aircraft

Author:

Zaluski Marvin1,Létourneau Sylvain1,Bird Jeff1,Yang Chunsheng1

Affiliation:

1. National Research Council of Canada, Ottawa, ON, K1A 0R6, Canada

Abstract

The CF-18 (CF denotes Canadian Forces) aircraft is a complex system for which a variety of data are systematically being recorded: flight data from sensors, built-in test equipment data, and maintenance data. Without proper analytical and statistical tools, these data resources are of limited use to the operating organization. Focusing on data mining-based modeling, this paper investigates the use of readily available CF-18 data to support the development of prognostics and health management systems. A generic data mining methodology has been developed to build prognostic models from operational and maintenance data. This paper introduces the methodology and elaborates on challenges specific to the use of CF-18 data from the Canadian Forces. A number of key data mining tasks are examined including data gathering, information fusion, data preprocessing, model building, and model evaluation. The solutions developed to address these tasks are described. A software tool developed to automate the model development process is also presented. Finally, this paper discusses preliminary results on the creation of models to predict F404 no. 4 bearing and main fuel control failures on the CF-18.

Publisher

ASME International

Subject

Mechanical Engineering,Energy Engineering and Power Technology,Aerospace Engineering,Fuel Technology,Nuclear Energy and Engineering

Reference13 articles.

1. Engine Performance Monitoring and Troubleshooting Techniques for the CF-18 Aircraft;Cue;ASME J. Eng. Gas Turbines Power

2. Data Mining-Based Prognostics for CF-18 Components;Zaluski

3. A Domain Independent Data Mining Methodology for Prognostics;Létourneau

4. Data Mining for Prediction of Aircraft Component Replacement;Létourneau;IEEE Intell. Syst.

5. Learning to Predict Train Wheel Failures;Yang

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