A New Mathematical Model for the Green Vehicle Routing Problem by Considering a Bi-Fuel Mixed Vehicle Fleet
Subject Areas : Executive ManagementNeda Manavizadeh 1 , Hamed Farrokhi-Asl 2 , Stanley Frederick W.T. Lim 3
1 - Khatam University
2 - School of Industrial Engineering, Iran university of Science & Technology, Tehran, Iran
3 - Institute for Manufacturing, University of Cambridge, Cambridge, United Kingdom
Keywords:
Abstract :
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