Estimating Helicopter Noise Abatement Information with Machine Learning

F-0074-2018-12666

5/14/2018

Authors
Abstract
Content

Machine learning techniques are applied to the NASA Langley Research Center's expansive database of helicopter noise measurements containing over 1500 steady flight conditions for ten different helicopters. These techniques are then used to develop models capable of predicting the operating conditions under which significant Blade-Vortex Interaction noise will be generated for any conventional helicopter. A measure for quantifying the overall ground noise exposure of a particular helicopter operating condition is developed. This measure is then used to classify the measured flight conditions as noisy or not-noisy. These data are then parameterized on a non-dimensional basis that defines the main rotor operating condition and are then scaled to remove bias. Several machine learning methods are then applied to these data. The developed models show good accuracy in identifying the noisy operating region for helicopters not included in the training data set. Noisy regions are accurately identified for a variety of different helicopters. One of these models is applied to estimate changes in the noisy operating region as vehicle drag and ambient atmospheric conditions are varied.

Meta TagsDetails
DOI
https://doi.org/10.4050/F-0074-2018-12666
Citation
Greenwood, E., "Estimating Helicopter Noise Abatement Information with Machine Learning," Vertical Flight Society 74th Annual Forum and Technology Display, Phoenix, Arizona, May 14, 2018, https://doi.org/10.4050/F-0074-2018-12666.
Additional Details
Publisher
Published
5/14/2018
Product Code
F-0074-2018-12666
Content Type
Technical Paper
Language
English