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SOLVING THE PROBLEM OF VEHICLE ROUTING BY EVOLUTIONARY ALGORITHM
 
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Faculty of Maritime Technology and Transport, West Pomeranian University of Technology, Al. Piastów 41, 70-065 Szczecin, Poland
 
 
Publication date: 2016-03-01
 
 
Adv. Sci. Technol. Res. J. 2016; 10(29):97-108
 
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ABSTRACT
In the presented work the vehicle routing problem is formulated, which concerns planning the collection of wastes by one garbage truck from a certain number of collection points. The garbage truck begins its route in the base point, collects the load in subsequent collection points, then drives the wastes to the disposal site (landfill or sorting plant) and returns to the another visited collection points. The filled garbage truck each time goes to the disposal site. It returns to the base after driving wastes from all collection points. Optimization model is based on genetic algorithm where individual is the whole garbage collection plan. Permutation is proposed as the code of the individual.
 
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