Identification of the Sound Field Produced by Turbulent Jets Through the Use of a Neural Network.
Resumen
The development of quieter aircrafts is a strong requirement to achieve the social and ecological targets imposed on the modern aeronautical industry. To accomplish this task, it is necessary to use experimental and numerical methods in order to identify all important noise sources in the aircraft structure, allowing for the designers to intervene in the noise generating mechanisms to reduce noise emission and, as a result, conceive quieter aircrafts. Among a bunch of aircraft noise sources acting at typical operational conditions, turbulent jets are prominent source of noise [1]. [...]
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