Driving-decision making of autonomous vehicle according to Queensland overtaking traffic rules
Making a driving decision according to traffic rules is a challenging task for improving the safety of Autonomous Vehicles (AVs). Traffic rules often contain open texture expressions and exceptions, which makes it hard for AVs to follow them. This paper introduces a Defeasible Deontic Logic (DDL) ba...
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Institutional Knowledge at Singapore Management University
2022
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sg-smu-ink.cclaw-10032023-02-23T08:39:07Z Driving-decision making of autonomous vehicle according to Queensland overtaking traffic rules BHUIYAN, Hanif GOVERNATORI, Guido MAHAJAN, Avishkar RAKOTONIRAINY, Andry WONG, Meng Weng (HUANG Mingrong) Making a driving decision according to traffic rules is a challenging task for improving the safety of Autonomous Vehicles (AVs). Traffic rules often contain open texture expressions and exceptions, which makes it hard for AVs to follow them. This paper introduces a Defeasible Deontic Logic (DDL) baseddriving decision-making methodology for AVs. We use DDL to formalize traffic rules and facilitate automated reasoning. DDL is used to effectively handle rule exceptions and resolve open texture expressions in rules. Furthermore, we supplement the information provided by the traffic rules by an ontology for AV driving behaviour and environment information. This methodology performs automated reasoning on formalized traffic rules and ontology-based AV driving information to make the driving decision by following the traffic rule. The over-taking traffic rule is our case study to illustrate the usefulness of our methodology. The case study evaluation showed the effectiveness of this proposed driving decision-making methodology. 2022-12-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/cclaw/4 https://ink.library.smu.edu.sg/context/cclaw/article/1003/viewcontent/6._Driving_Decision_Making_of_Autonomous_Vehicle_according_to_Queensland_Overtaking_Traffic_Rules.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Centre for Computational Law eng Institutional Knowledge at Singapore Management University Autonomous Vehicle Driving-Decision Overtaking Defeasible Deontic Logic. Legal Writing and Research Transportation Law |
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Autonomous Vehicle Driving-Decision Overtaking Defeasible Deontic Logic. Legal Writing and Research Transportation Law BHUIYAN, Hanif GOVERNATORI, Guido MAHAJAN, Avishkar RAKOTONIRAINY, Andry WONG, Meng Weng (HUANG Mingrong) Driving-decision making of autonomous vehicle according to Queensland overtaking traffic rules |
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Making a driving decision according to traffic rules is a challenging task for improving the safety of Autonomous Vehicles (AVs). Traffic rules often contain open texture expressions and exceptions, which makes it hard for AVs to follow them. This paper introduces a Defeasible Deontic Logic (DDL) baseddriving decision-making methodology for AVs. We use DDL to formalize traffic rules and facilitate automated reasoning. DDL is used to effectively handle rule exceptions and resolve open texture expressions in rules. Furthermore, we supplement the information provided by the traffic rules by an ontology for AV driving behaviour and environment information. This methodology performs automated reasoning on formalized traffic rules and ontology-based AV driving information to make the driving decision by following the traffic rule. The over-taking traffic rule is our case study to illustrate the usefulness of our methodology. The case study evaluation showed the effectiveness of this proposed driving decision-making methodology. |
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text |
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BHUIYAN, Hanif GOVERNATORI, Guido MAHAJAN, Avishkar RAKOTONIRAINY, Andry WONG, Meng Weng (HUANG Mingrong) |
author_facet |
BHUIYAN, Hanif GOVERNATORI, Guido MAHAJAN, Avishkar RAKOTONIRAINY, Andry WONG, Meng Weng (HUANG Mingrong) |
author_sort |
BHUIYAN, Hanif |
title |
Driving-decision making of autonomous vehicle according to Queensland overtaking traffic rules |
title_short |
Driving-decision making of autonomous vehicle according to Queensland overtaking traffic rules |
title_full |
Driving-decision making of autonomous vehicle according to Queensland overtaking traffic rules |
title_fullStr |
Driving-decision making of autonomous vehicle according to Queensland overtaking traffic rules |
title_full_unstemmed |
Driving-decision making of autonomous vehicle according to Queensland overtaking traffic rules |
title_sort |
driving-decision making of autonomous vehicle according to queensland overtaking traffic rules |
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Institutional Knowledge at Singapore Management University |
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2022 |
url |
https://ink.library.smu.edu.sg/cclaw/4 https://ink.library.smu.edu.sg/context/cclaw/article/1003/viewcontent/6._Driving_Decision_Making_of_Autonomous_Vehicle_according_to_Queensland_Overtaking_Traffic_Rules.pdf |
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