Research journal TRANSPORT 31(4) 2016 available online

December 30, 2016
The research journal TRANSPORT is published by Vilnius Gediminas Technical University in partnership with the Lithuanian Academy of Science (since 1986) and Taylor & Francis (since 2011).
 

Electronic version of the current issue is available from Internet: http://www.tandfonline.com/toc/tran/31/4
 
Prentkovskis, Olegas.
 
Hu, Wenbin; Du, Bo; Wu, Ye; Liang, Huangle; Peng, Chao; Hu, Qi
 
Koszałka, Grzegorz; Zniszczyński, Andrzej.
 
Yao, Ronghan
 
El-Rashidy, Rawia Ahmed; Grant-Muller, Susan.
 
Bian, Zhan; Shao, Qianqian; Jin, Zhihong.
 
Prentkovskis, Olegas; Junevičius, Raimundas.
 
Additional information:
  • 2015 Impact Factor IF=0.594, © 2016 Thomson Reuters, 2016 Journal Citation Report
  • 2014 Impact Factor IF=0.553, © 2015 Thomson Reuters, 2015 Journal Citation Report;
  • 2013 Impact Factor IF=0.529, © 2014 Thomson Reuters, 2014 Journal Citation Report;
  • 2012 Impact Factor IF=1.081, © 2013 Thomson Reuters, 2013 Journal Citation Report;
  • 2009 Impact Factor IF=2.552, © 2010 Thomson Reuters, 2010 Journal Citation Report.
 

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