More General Wall Pressure Spectra Models: Combining Feature Engineering with Evolutionary Algorithms

IF 2.1 3区 工程技术 Q2 ENGINEERING, AEROSPACE AIAA Journal Pub Date : 2024-06-10 DOI:10.2514/1.j063322
Shubham Shubham, Richard D. Sandberg, A. Kushari
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Abstract

This paper presents an improved mathematical expression for semi-empirical wall pressure spectra modeling based on gene expression programming (GEP). The main focus of this work is to obtain a model that applies to a wide range of cases in terms of parameters and the source of data. The dataset comprises flat plate and airfoil cases with adverse and favorable pressure gradients at various Reynolds numbers. First, a characterization of the dataset is performed to understand the low-dimensional distribution of parameters. Then, a feature importance study is conducted to choose the most suitable model input variables from the exhaustive list of nondimensional parameters. The GEP algorithm is modified to ensure that trained models adhere to the basic structure of previously published semi-empirical models. Following training on the diverse database, the new model is compared against existing, best-performing empirical models to quantify the performance improvements. The models are tested on cases with completely different configurations and parameter ranges, unseen during training, and maintain their superior performance. Finally, a comparison is made between models developed with GEP and neural networks in terms of their efficacy, complexity, and interpretability.
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更通用的壁压频谱模型:将特征工程与进化算法相结合
本文提出了一种基于基因表达编程(GEP)的半经验壁压谱建模的改进数学表达式。这项工作的重点是获得一个在参数和数据源方面适用于各种情况的模型。数据集包括在不同雷诺数下具有不利和有利压力梯度的平板和翼面情况。首先,对数据集进行特征描述,以了解参数的低维分布。然后,进行特征重要性研究,从详尽的非维参数列表中选择最合适的模型输入变量。对 GEP 算法进行了修改,以确保训练出的模型符合之前发布的半经验模型的基本结构。在不同的数据库中进行训练后,新模型将与现有的最佳经验模型进行比较,以量化性能改进。这些模型在完全不同的配置和参数范围的情况下进行了测试,这些情况在训练过程中是没有出现过的,但这些模型仍然保持了卓越的性能。最后,对使用 GEP 和神经网络开发的模型在功效、复杂性和可解释性方面进行了比较。
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来源期刊
AIAA Journal
AIAA Journal 工程技术-工程:宇航
CiteScore
5.60
自引率
12.00%
发文量
458
审稿时长
4.6 months
期刊介绍: This Journal is devoted to the advancement of the science and technology of astronautics and aeronautics through the dissemination of original archival research papers disclosing new theoretical developments and/or experimental results. The topics include aeroacoustics, aerodynamics, combustion, fundamentals of propulsion, fluid mechanics and reacting flows, fundamental aspects of the aerospace environment, hydrodynamics, lasers and associated phenomena, plasmas, research instrumentation and facilities, structural mechanics and materials, optimization, and thermomechanics and thermochemistry. Papers also are sought which review in an intensive manner the results of recent research developments on any of the topics listed above.
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