An automated machine learning (AutoML) method of risk prediction for decision-making of autonomous vehicles
This study presents a domain-specific automated machine learning (AutoML) for risk prediction and behaviour assessment, which can be used in the behavioural decision-making and motion trajectory planning of autonomous vehicles (AVs). The AutoML enables end-to-end machine learning from vehicle moveme...
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sg-ntu-dr.10356-1603492023-05-19T07:31:19Z An automated machine learning (AutoML) method of risk prediction for decision-making of autonomous vehicles Shi, Xiupeng Wong, Yiik Diew Chai, Chen Li, Michael Zhi Feng School of Civil and Environmental Engineering Nanyang Business School Engineering::Civil engineering Decision Making Feature Extraction This study presents a domain-specific automated machine learning (AutoML) for risk prediction and behaviour assessment, which can be used in the behavioural decision-making and motion trajectory planning of autonomous vehicles (AVs). The AutoML enables end-to-end machine learning from vehicle movement and sensing data to detailed risk levels and corresponding behaviour characteristics, which integrates three main components of: unsupervised risk identification by surrogate risk indicators and big data clustering, feature learning based on XGBoost, and model auto-tuning by Bayesian optimisation. Then, the functions and performance of AutoML are evaluated based on NGSIM data, with assumptions of various sensing configurations or data acquisition conditions. AutoML achieves satisfactory results of behaviour-based risk prediction, which has a predictive power of 91.7% overall accuracy for four risk levels, and about 95% accuracy for safe-risk distinction. Bayesian optimisation guides the self-learning of AutoML to get the optimised feature subsets and hyperparameter values. The identification of key features not only produces better performance with fewer computation costs, but also provides data-driven insights about AV design, such as sensor configurations and sensor data mining, from risk decision-making perspectives. The application potentials of AutoML in AVs are discussed. This work was supported in part by the National Natural Science Foundation of China under Grant 61803283 and in part by the National Key Research and Development Program of China under Grant 2018YFB1600500. 2022-07-19T08:31:26Z 2022-07-19T08:31:26Z 2020 Journal Article Shi, X., Wong, Y. D., Chai, C. & Li, M. Z. F. (2020). An automated machine learning (AutoML) method of risk prediction for decision-making of autonomous vehicles. IEEE Transactions On Intelligent Transportation Systems, 22(11), 7145-7154. https://dx.doi.org/10.1109/TITS.2020.3002419 1524-9050 https://hdl.handle.net/10356/160349 10.1109/TITS.2020.3002419 2-s2.0-85118842848 11 22 7145 7154 en IEEE Transactions on Intelligent Transportation Systems © 2020 IEEE. All rights reserved. |
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Engineering::Civil engineering Decision Making Feature Extraction Shi, Xiupeng Wong, Yiik Diew Chai, Chen Li, Michael Zhi Feng An automated machine learning (AutoML) method of risk prediction for decision-making of autonomous vehicles |
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This study presents a domain-specific automated machine learning (AutoML) for risk prediction and behaviour assessment, which can be used in the behavioural decision-making and motion trajectory planning of autonomous vehicles (AVs). The AutoML enables end-to-end machine learning from vehicle movement and sensing data to detailed risk levels and corresponding behaviour characteristics, which integrates three main components of: unsupervised risk identification by surrogate risk indicators and big data clustering, feature learning based on XGBoost, and model auto-tuning by Bayesian optimisation. Then, the functions and performance of AutoML are evaluated based on NGSIM data, with assumptions of various sensing configurations or data acquisition conditions. AutoML achieves satisfactory results of behaviour-based risk prediction, which has a predictive power of 91.7% overall accuracy for four risk levels, and about 95% accuracy for safe-risk distinction. Bayesian optimisation guides the self-learning of AutoML to get the optimised feature subsets and hyperparameter values. The identification of key features not only produces better performance with fewer computation costs, but also provides data-driven insights about AV design, such as sensor configurations and sensor data mining, from risk decision-making perspectives. The application potentials of AutoML in AVs are discussed. |
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School of Civil and Environmental Engineering |
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School of Civil and Environmental Engineering Shi, Xiupeng Wong, Yiik Diew Chai, Chen Li, Michael Zhi Feng |
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Article |
author |
Shi, Xiupeng Wong, Yiik Diew Chai, Chen Li, Michael Zhi Feng |
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Shi, Xiupeng |
title |
An automated machine learning (AutoML) method of risk prediction for decision-making of autonomous vehicles |
title_short |
An automated machine learning (AutoML) method of risk prediction for decision-making of autonomous vehicles |
title_full |
An automated machine learning (AutoML) method of risk prediction for decision-making of autonomous vehicles |
title_fullStr |
An automated machine learning (AutoML) method of risk prediction for decision-making of autonomous vehicles |
title_full_unstemmed |
An automated machine learning (AutoML) method of risk prediction for decision-making of autonomous vehicles |
title_sort |
automated machine learning (automl) method of risk prediction for decision-making of autonomous vehicles |
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2022 |
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https://hdl.handle.net/10356/160349 |
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1772828294076432384 |