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评估机场跑道下滑道沿线的风场特征:一种可解释的增强机辅助风洞研究。

Assessing wind field characteristics along the airport runway glide slope: an explainable boosting machine-assisted wind tunnel study.

机构信息

Key Laboratory of Infrastructure Durability and Operation Safety in Airfield of CAAC, College of Transportation Engineering, Tongji University, 4800 Cao'an Road, Jiading, Shanghai, 201804, China.

Hong Kong Observatory, 134A Nathan Road, Kowloon, Hong Kong, China.

出版信息

Sci Rep. 2023 Jul 6;13(1):10939. doi: 10.1038/s41598-023-36495-5.

Abstract

Aircraft landings are especially perilous when the wind is gusty near airport runways. For this reason, an aircraft may deviate from its glide slope, miss its approach, or even crash in the worst cases. In the study, we used the state-of-the-art glass-box model, the Explainable Boosting Machine (EBM), to estimate the variation in headwind speed and turbulence intensity along the airport runway glide slope and to interpret the various contributing factors. To begin, the wind field characteristics were examined by developing a scaled-down model of Hong Kong International Airport (HKIA) runway as well as and the surrounding buildings and complex terrain in the TJ-3 atmospheric boundary layer wind tunnel. The placement of probes along the glide slope of the model runway aided in the measurement of wind field characteristics at different locations in the presence and absence of surrounding buildings. Next, the experimental data was used to train the EBM model in conjunction with Bayesian optimization approach. The counterpart black box models (extreme gradient boosting, random forest, extra tree and adaptive boosting) as well as other glass box models (linear regression and decision tree) were compared with the outcomes of the EBM model. Based on the holdout testing data, the EBM model revealed superior performance for both variation in headwind speed and turbulence intensity in terms of mean absolute error, mean squared error, root mean squared error and R-square values. To further evaluate the impact of different factors on the wind field characteristics along the airport runway glide slope, the EBM model allows for a full interpretation of the contribution of individual and pairwise interactions of factors to the prediction results from both a global and a local perspective.

摘要

当机场跑道附近阵风强劲时,飞机着陆尤其危险。因此,飞机可能会偏离滑翔坡度,错过进近,甚至在最坏的情况下坠毁。在研究中,我们使用了最先进的玻璃箱模型,可解释提升机(EBM),来估计沿机场跑道滑翔坡度的逆风速度和湍流强度的变化,并解释各种促成因素。首先,通过在 TJ-3 大气边界层风洞中开发香港国际机场(HKIA)跑道以及周围建筑物和复杂地形的缩小模型,研究了风场特征。在模型跑道滑翔坡度沿线放置探头有助于测量存在和不存在周围建筑物时不同位置的风场特征。接下来,使用实验数据结合贝叶斯优化方法训练 EBM 模型。与 EBM 模型的结果进行比较的还有黑箱模型(极端梯度提升、随机森林、额外树和自适应提升)以及其他玻璃箱模型(线性回归和决策树)。基于保留测试数据,EBM 模型在逆风速度和湍流强度的变化方面均表现出优越的性能,其平均绝对误差、均方误差、均方根误差和 R 平方值都较小。为了进一步评估不同因素对机场跑道滑翔坡度下风场特征的影响,EBM 模型允许从全局和局部两个角度全面解释各因素及其两两相互作用对预测结果的贡献。

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