Method for determining of aircraft landing performance by the simulation modeling
https://doi.org/10.26467/2079-0619-2022-25-3-16-25
Abstract
The paper considers the method for determining of aircraft landing performance, the basic of which is landing roll depending on the type and tire inflation pressure, runway surface condition, aircraft weight, availability of brake parachutes. The given results are received by the simulation modeling of aircraft spatial movement on a landing mode. The model of aircraft dynamics includes modules of aircraft movement kinematic parameters calculation, engine thrust, landing gear ground reaction, retarding force in wheel brakes and brake parachutes. Adequacy and reliability of the designed model of aircraft movement is confirmed by comparison of values of movement kinematic parameters obtained as a result of simulation modeling, and the parameters received from a real flight of the maneuverable aircraft. The designed simulation model allows us to analyze change of aircraft movement kinematic parameters, defining its flight mode. By the results of the conducted study, it has been defined that halving of normal operational pressure in MLG wheels decreases aircraft landing roll by over forty per cent. Installation of КТ-163D wheels instead of КТ-251А reduces landing roll by approximately a factor of one and a half times, use of brake parachutes reduces aircraft landing roll almost twice at landing on an icy runway. The introduced method is recommended to be used while studying aircraft landing performance during its design or modernization. It is also suggested to integrate the designed method for determining landing performance as a part of on-board information and control system with the view of immediate aircraft landing performance determination in real-time operation in specific flight conditions.
About the Authors
P. S. KostinRussian Federation
Pavel S. Kostin, Candidate of Technical Sciences, Associate Professor, Associate Professor of the Aviation Complexes and Aircraft Structure Chair
Voronezh
S. V. Dedov
Russian Federation
Sergey V. Dedov, Doctor of Economic Sciences, Associate Professor, the Head of the Methodological Department
Voronezh
D. V. Gotsev
Russian Federation
Dmitry V. Gotsev, Doctor of Physical and Mathematical Sciences, Associate Professor, Professor of the Mathematics Chair
Voronezh
V. V. Vishinsky
Russian Federation
Victor V. Vishinsky, Doctor of Technical Sciences, Professor, Chief Researcher TsAGI
Zhukovsky
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Review
For citations:
Kostin P.S., Dedov S.V., Gotsev D.V., Vishinsky V.V. Method for determining of aircraft landing performance by the simulation modeling. Civil Aviation High Technologies. 2022;25(3):16-25. (In Russ.) https://doi.org/10.26467/2079-0619-2022-25-3-16-25