基于回归集成的离群值挖掘方法改进跨声速风洞系统辨识

Hongyan Zhao, Dong Yu, Biao Wang
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引用次数: 0

摘要

在跨声速风洞中,异常数据通常被称为异常值或异常,对系统识别有严重的影响。为了解决这个问题,应该在系统识别之前检测异常值并提供新的替代。对离群点检测和补偿的综合要求使得基于回归的离群点挖掘算法成为一种合适的研究方向。为了提高传统的基于回归的算法的有效性,本文提出了一种基于集成学习的新算法。在我们的离群集合中,基本回归模型是在两级集合结构上学习的。第一级的目的是通过齐次集成增强对未知异常值的鲁棒性。第二个层次的目标是提高对基础回归模型的鲁棒性。为了验证所提出的混合离群集合的有效性,我们使用了来自跨声速风洞的几个真实数据集,并将其与几个潜在的竞争对手进行了比较。实验结果表明,所提出的离群集合在离群挖掘和系统识别的改进方面都优于竞争对手。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the System Identification of Transonic Wind Tunnel by a Regression Ensemble-Based Outlier Mining Method
In transonic wind tunnel, anomalous data that are often referred to as outliers or anomalies have severe impact on system identification. To address such a problem, outliers should be detected and new substitutions should be provided before system identification. The combined request for outlier detection and compensation makes it suitable to develop a regression-based outlier mining algorithm. To enhance the effectiveness of traditional regression-based algorithm, this paper proposes a novel one based on ensemble learning. In our outlier ensemble, the base regression models are learnt on a two-level ensemble structure. The aim of the first level is to enhance the robustness to unknown outliers by homogeneous ensemble. The goal of the second level is to improve the robustness to base regression model. In order to verify the effectiveness of the proposed hybrid outlier ensemble, we use several real-world datasets from transonic wind tunnel and compare it with several underlying competitors. The experimental results have shown that the proposed outlier ensembles could outperform its competitors with respect to both outlier mining and the improvement of system identification.
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