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Integrating Mach Number Prediction with Outlier Detection for Wind Tunnel Systems

机译:马赫数预测与离群值检测相结合的风洞系统

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摘要

Mach number prediction plays a crucial role in wind tunnel systems. Due to the complicated system behavior, many existing predictors cannot obtain the desired level of accuracy. In addition, the presence of outliers in databases further negatively influences predictive accuracy. In this paper, we address these two problems in one scheme. In contrast to robust regression models, in this paper the problems of prediction and outlier detection are considered separately but are solved by one paradigm. We propose an ensemble model as a predictor, in which a Gaussian process model is used as the base learner. The motivation for using the Gaussian process is its superiority in solving complex nonlinear regression problems. The objective of the ensemble model is to further improve the predictive accuracy of the Gaussian process model. Our outlier detection model is also based on a Gaussian process. It is composed of two complementary components; one is based on Gaussian process regression, and the other is based on Gaussian process classification. We verify our predictor and outlier detection model with three data sets from a real-world wind tunnel system. The results not only verify the model's predictive performance but also underline the superiority of the detection model.
机译:马赫数预测在风洞系统中起着至关重要的作用。由于复杂的系统行为,许多现有的预测器无法获得所需的准确性。此外,数据库中离群值的存在进一步负面影响了预测准确性。在本文中,我们在一个方案中解决了这两个问题。与健壮的回归模型相反,本文将预测和离群值检测的问题分开考虑,但采用一种范式解决。我们提出了一个集成模型作为预测器,其中高斯过程模型被用作基础学习者。使用高斯过程的动机是它在解决复杂的非线性回归问题上的优势。集成模型的目的是进一步提高高斯过程模型的预测精度。我们的异常值检测模型也基于高斯过程。它由两个互补组件组成;一种基于高斯过程回归,另一种基于高斯过程分类。我们使用来自真实风洞系统的三个数据集验证了我们的预测器和离群值检测模型。结果不仅验证了模型的预测性能,而且还强调了检测模型的优越性。

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