Lane‐changing decision method based Nash Q‐learning with considering the interaction of surrounding vehicles (Englisch)
Freier Zugriff
- Neue Suche nach: Zhou, Xiaochuan
- Neue Suche nach: Kuang, Dengming
- Neue Suche nach: Zhao, Wanzhong
- Neue Suche nach: Xu, Can
- Neue Suche nach: Feng, Jian
- Neue Suche nach: Wang, Chunyan
- Neue Suche nach: Zhou, Xiaochuan
- Neue Suche nach: Kuang, Dengming
- Neue Suche nach: Zhao, Wanzhong
- Neue Suche nach: Xu, Can
- Neue Suche nach: Feng, Jian
- Neue Suche nach: Wang, Chunyan
In:
IET Intelligent Transport Systems
;
14
, 14
;
2064-2072
;
2020
- Aufsatz (Zeitschrift) / Elektronische Ressource
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Titel:Lane‐changing decision method based Nash Q‐learning with considering the interaction of surrounding vehicles
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Beteiligte:Zhou, Xiaochuan ( Autor:in ) / Kuang, Dengming ( Autor:in ) / Zhao, Wanzhong ( Autor:in ) / Xu, Can ( Autor:in ) / Feng, Jian ( Autor:in ) / Wang, Chunyan ( Autor:in )
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Erschienen in:IET Intelligent Transport Systems ; 14, 14 ; 2064-2072
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Verlag:
- Neue Suche nach: The Institution of Engineering and Technology
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Erscheinungsdatum:01.12.2020
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Format / Umfang:9 pages
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ISSN:
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DOI:
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Medientyp:Aufsatz (Zeitschrift)
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Format:Elektronische Ressource
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Sprache:Englisch
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Schlagwörter:interactive motion prediction method , driver information systems , decision making , Nash Q‐learning , lane change process , lane‐changing decision method , autonomous driving vehicle , game theory , object detection , advantageous decision , road traffic , existing rule‐based lane change decision algorithm , motion decision algorithm , traffic engineering computing , different interaction , interactive game , optimisation , road vehicles , motion decision method , autonomous vehicle
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Datenquelle:
Inhaltsverzeichnis – Band 14, Ausgabe 14
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