Fast Evaluation of Aircraft Icing Severity Using Machine Learning Based on XGBoost

Aircraft icing represents a serious hazard in aviation which has caused a number of fatal accidents over the years. In addition, it can lead to substantial increase in drag and weight, thus reducing the aerodynamics performance of the airplane. The process of ice accretion on a solid surface is a co...

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Main Authors: Sibo Li, Jingkun Qin, Miao He, Roberto Paoli
Format: Article
Language:English
Published: MDPI AG 2020-03-01
Series:Aerospace
Subjects:
Online Access:https://www.mdpi.com/2226-4310/7/4/36
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spelling doaj-386be4e792b74553b5b1fd8b259a20932020-11-25T02:05:23ZengMDPI AGAerospace2226-43102020-03-017363610.3390/aerospace7040036Fast Evaluation of Aircraft Icing Severity Using Machine Learning Based on XGBoostSibo Li0Jingkun Qin1Miao He2Roberto Paoli3Department of Mechanical and Industrial Engineering, University of Illinois at Chicago, Chicago, IL 60607, USADepartment of Computer Science, Beijing University of Posts and Telecommunications, Beijing 100083, ChinaNational Oilwell Varco, Houston, TX 77041, USADepartment of Mechanical and Industrial Engineering, University of Illinois at Chicago, Chicago, IL 60607, USAAircraft icing represents a serious hazard in aviation which has caused a number of fatal accidents over the years. In addition, it can lead to substantial increase in drag and weight, thus reducing the aerodynamics performance of the airplane. The process of ice accretion on a solid surface is a complex interaction of aerodynamic and environmental variables. The complex relationship makes machine learning-based methods an attractive alternative to traditional numerical simulation-based approaches. In this study, we introduce a purely data-driven approach to find the complex pattern between different flight conditions and aircraft icing severity prediction. The supervised learning algorithm Extreme Gradient Boosting (XGBoost) is applied to establish the prediction framework which makes prediction based on any set of observations. The input flight conditions for the proposed prediction framework are liquid water content, droplet diameter and exposure time. The proposed approach is demonstrated in three cases: maximum ice thickness prediction, icing area prediction and icing severity level evaluation. Performance comparison studies and error analysis are also conducted to verify the effectiveness and performance of the proposed method. Results show that the proposed method has reasonable capability in evaluating aircraft icing severity.https://www.mdpi.com/2226-4310/7/4/36aircraft icingmachine learningOpenFOAMcomputational fluid dynamicsdata-driven
collection DOAJ
language English
format Article
sources DOAJ
author Sibo Li
Jingkun Qin
Miao He
Roberto Paoli
spellingShingle Sibo Li
Jingkun Qin
Miao He
Roberto Paoli
Fast Evaluation of Aircraft Icing Severity Using Machine Learning Based on XGBoost
Aerospace
aircraft icing
machine learning
OpenFOAM
computational fluid dynamics
data-driven
author_facet Sibo Li
Jingkun Qin
Miao He
Roberto Paoli
author_sort Sibo Li
title Fast Evaluation of Aircraft Icing Severity Using Machine Learning Based on XGBoost
title_short Fast Evaluation of Aircraft Icing Severity Using Machine Learning Based on XGBoost
title_full Fast Evaluation of Aircraft Icing Severity Using Machine Learning Based on XGBoost
title_fullStr Fast Evaluation of Aircraft Icing Severity Using Machine Learning Based on XGBoost
title_full_unstemmed Fast Evaluation of Aircraft Icing Severity Using Machine Learning Based on XGBoost
title_sort fast evaluation of aircraft icing severity using machine learning based on xgboost
publisher MDPI AG
series Aerospace
issn 2226-4310
publishDate 2020-03-01
description Aircraft icing represents a serious hazard in aviation which has caused a number of fatal accidents over the years. In addition, it can lead to substantial increase in drag and weight, thus reducing the aerodynamics performance of the airplane. The process of ice accretion on a solid surface is a complex interaction of aerodynamic and environmental variables. The complex relationship makes machine learning-based methods an attractive alternative to traditional numerical simulation-based approaches. In this study, we introduce a purely data-driven approach to find the complex pattern between different flight conditions and aircraft icing severity prediction. The supervised learning algorithm Extreme Gradient Boosting (XGBoost) is applied to establish the prediction framework which makes prediction based on any set of observations. The input flight conditions for the proposed prediction framework are liquid water content, droplet diameter and exposure time. The proposed approach is demonstrated in three cases: maximum ice thickness prediction, icing area prediction and icing severity level evaluation. Performance comparison studies and error analysis are also conducted to verify the effectiveness and performance of the proposed method. Results show that the proposed method has reasonable capability in evaluating aircraft icing severity.
topic aircraft icing
machine learning
OpenFOAM
computational fluid dynamics
data-driven
url https://www.mdpi.com/2226-4310/7/4/36
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AT miaohe fastevaluationofaircrafticingseverityusingmachinelearningbasedonxgboost
AT robertopaoli fastevaluationofaircrafticingseverityusingmachinelearningbasedonxgboost
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