The Research Methodology of the Impact of Self-regulatory Methods on Pilot's Performance –Partial Results

This study deals with a selection process of pilots samples and a research methodology, the both as essential criteria for successful completion of the project titled "Application of the self-regulatory methods for the preparation of flight crew". Apart of the selection process, the paper includes project hypothesis based on the analytical phase of the project. The hypothesis are verified in the research phase of this project. The study includes research methodologies for simulator environment or live flying as well as partial research results.

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