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Transportation Letters
The International Journal of Transportation Research
Volume 2, 2010 - Issue 3
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Original

Lane changing models: a critical review

Pages 157-173 | Published online: 02 Dec 2013

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Gen Li, Zhen Yang, Yiyong Pan & Jianxiao Ma. (2023) Analysing and modelling of discretionary lane change duration considering driver heterogeneity. Transportmetrica B: Transport Dynamics 11:1, pages 343-360.
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Franco Basso, Álvaro Cifuentes, Francisca Cuevas-Pavincich, Raúl Pezoa & Mauricio Varas. (2022) Assessing influential factors for lane change behavior using full real-world vehicle-by-vehicle data. Transportation Letters 14:10, pages 1126-1137.
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Matthew Vechione & Ruey Long Cheu. (2022) Comparative evaluation of adaptive fuzzy inference system and adaptive neuro-fuzzy inference system for mandatory lane changing decisions on freeways. Journal of Intelligent Transportation Systems 26:6, pages 746-760.
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Muhammed Emin Cihangir Bagdatli, Ahmet Sakir Dokuz & Ayetullah Honul. (2022) Investigating lane-changing moves of vehicles departing from signalized junction. Transportation Letters 14:9, pages 1043-1055.
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Xiafan Gan, Jinxian Weng, Wenwen Li & Mengyuan Han. (2022) Spatial-temporal varying coefficient model for lane-changing behavior in work zone merging areas. Journal of Transportation Safety & Security 14:6, pages 949-972.
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Wang Fenghui, Li Lingyi, Liu Yongtao, Tian Shun & Wei Lang. (2022) One-dimensional cellular automaton traffic flow model based on defensive driving strategy. International Journal of Crashworthiness 27:1, pages 193-197.
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Muhammed Emin Cihangir Bağdatli & Ahmet Şakir Dokuz. (2021) Modeling discretionary lane-changing decisions using an improved fuzzy cognitive map with association rule mining. Transportation Letters 13:8, pages 623-633.
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Ahmad Mohajeri & Meisam Akbarzadeh. (2020) Appraisal of different HCM methodologies for analysis of weaving segments, case study: a weaving segment in Isfahan, Iran. Transportation Letters 12:6, pages 408-416.
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Hongmei Zhou, Ye Sun, Xiao Qin, Xiujuan Xu & Ronghan Yao. (2020) Modeling discretionary lane-changing behavior on urban streets considering drivers’ heterogeneity. Transportation Letters 12:3, pages 213-222.
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Cheng-Jie Jin, Victor L. Knoop, Dawei Li, Ling-Yu Meng & Hao Wang. (2019) Discretionary lane-changing behavior: empirical validation for one realistic rule-based model. Transportmetrica A: Transport Science 15:2, pages 244-262.
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B Zhang, W K V Chan & S V Ukkusuri. (2014) On the modelling of transportation evacuation: an agent-based discrete-event hybrid-space approach. Journal of Simulation 8:4, pages 259-270.
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Sara Moridpour, Majid Sarvi, Geoff Rose & Ehsan Mazloumi. (2012) Lane-Changing Decision Model for Heavy Vehicle Drivers. Journal of Intelligent Transportation Systems 16:1, pages 24-35.
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