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A More Accurate Characterization of UH-60A Pitch Link Loads Using Neural NetworksA more accurate, neural-network-based characterization of the full-scale UH-60A maximum, vibratory pitch link loads (MXVPLL) was obtained. The MXVPLL data were taken from the NASA/Army UH-60A Airloads Program flight test database. This database includes data from level flights, and both simple and "complex" maneuvers. In the present context, a complex maneuver was defined as one which involved simultaneous, non-zero aircraft angle-of-bank (associated with turns) and aircraft pitch-rate (associated with a pull-up or a push-over). The present approach combines physical insight followed by the neural networks application. Since existing load factors do not represent the above-defined complex maneuver, a new, combined load factor ('p resent-load-factor') was introduced. A back-propagation type of neural network with five inputs and one output was used to characterize the UH-60A MXVPLL. The neural network inputs were as follows: rotor advance ratio, aircraft gross weight, rotor RPM, air density ratio, and the present-load-factor. The neural network output was the maximum, vibratory pitch link load (MXVPLL). It was shown that a more accurate characterization of the full-scale flight test pitch link loads can be obtained by combining physical insight with a neural-network-based approach.
Document ID
20020069122
Acquisition Source
Ames Research Center
Document Type
Preprint (Draft being sent to journal)
Authors
Kottapalli, Sesi
(NASA Ames Research Center Moffett Field, CA United States)
Aiken, Ed
Date Acquired
September 7, 2013
Publication Date
January 1, 1998
Subject Category
Cybernetics, Artificial Intelligence And Robotics
Funding Number(s)
PROJECT: RTOP 581-20-22
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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