location:Home > 2019 VOL.2 Apr No.2 > With time window scheduling of vehicles loaded with logistics optimization

2019 VOL.2 Apr No.2

  • Title: With time window scheduling of vehicles loaded with logistics optimization
  • Name: Bill Christopher
  • Company: Nanyang Technological University, Singapore
  • Abstract:

     Traditional logistics vehicle scheduling method for scheduling only estimate the total mass-produced vehicle, without taking into account the capacity constraints of logistics vehicles single platform, resulting in a non-loaded and waste problems during vehicle transport. This paper presents a method for scheduling a non-loaded logistics vehicle under time constraints, scheduling model by establishing time windows, vehicle scheduling tasks to perform within the time window under the specified constraints, the establishment of a dynamic scheduling model. If necessary, divide some time constraints, logistics and transport vehicles can be arranged according to the actual situation, make the best decisions for maximum full load rate of the vehicle and ensure that the time constraints under dynamic non-strategic logistics laden vehicle scheduling. The simulation results show that the proposed method can improve the scheduling efficiency and rationality of logistics vehicles. The algorithm is stable and reliable, and has strong practicability.

  • Keyword: Set delivery integration; Vehicle scheduling; Dynamic scheduling; Time Window
  • DOI: 10.12250/jpciams2019020125
  • Citation form: Bill Christopher.With time window scheduling of vehicles loaded with logistics optimization[J]. Computer Informatization and Mechanical System, 2019, vol. 2, pp. 73-77.
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Tsuruta Institute of Medical Information Technology
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