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Jet Noise Prediction via Low-order Machine Learning

机译:通过低阶机器学习进行喷气噪声预测

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The intense acoustic emissions from supersonic jets can limit aircraft operation and cause serious hearing damage. It would therefore be beneficial to design low-noise engines. However, most of the factors that control noise production are decided early in the design process when it impractical to perform the simulations or experiments necessary to characterize acoustic emissions. As such, a practical design tool must be developed so engineers have the option to consider noise in future designs. In this work, a deep neural network (DNN) approach coupled with proper orthogonal decomposition (POD) has been explored as a method of predicting jet noise. It was found that coupling POD and DNN could produce a model capable of estimating noise production to within a few dB over a broad range of operating conditions while using a minimal amount of training data.
机译:超音速喷射的强烈声学排放可以限制飞机运行并引起严重的听力损坏。因此,设计低噪音引擎是有益的。然而,在设计过程中,当执行声排放所需的模拟或实验时,控制噪声产生的大多数因素在设计过程中提前决定。因此,必须开发实用的设计工具,因此工程师可以选择在未来的设计中考虑噪音。在这项工作中,已经探讨了与适当的正交分解(POD)耦合的深度神经网络(DNN)方法作为预测射流噪声的方法。发现耦合POD和DNN可以在使用最小量的训练数据的同时,产生能够在广泛的操作条件下估计噪声产生的模型。

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