2021
DOI: 10.3390/logistics5030063
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Intelligent Vehicle Scheduling and Routing for a Chain of Retail Stores: A Case Study of Dhaka, Bangladesh

Abstract: Background: Retail chains aim to maintain a competitive advantage by ensuring product availability and fulfilling customer demand on-time. However, inefficient scheduling and vehicle routing from the distribution center may cause delivery delays and, thus, stock-outs on the store shelves. Therefore, optimization of vehicle routing can play a vital role in fulfilling customer demand. Methods: In this research, a case study is formulated for a chain of retail stores in Dhaka City, Bangladesh. Orders from various… Show more

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Cited by 10 publications
(7 citation statements)
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“…Fig. 2a displays an example chromosome (1,6,9,8,5,2,10,4,3,7) and its corresponding tour {1→6→9→ 8→5→2→ 10→4→3→7 →1} with 9 customers and 2 vehicles, where the integers 1 and 10 are the depots, the others are customers. Fig.…”
Section: Chromosome Representation and Initial Populationmentioning
confidence: 99%
See 3 more Smart Citations
“…Fig. 2a displays an example chromosome (1,6,9,8,5,2,10,4,3,7) and its corresponding tour {1→6→9→ 8→5→2→ 10→4→3→7 →1} with 9 customers and 2 vehicles, where the integers 1 and 10 are the depots, the others are customers. Fig.…”
Section: Chromosome Representation and Initial Populationmentioning
confidence: 99%
“…Tab. 3 shows the generation of the chromosome (1,6,9,8,5,3,10,2,4,7). Similarly, a population of chromosomes is generated.…”
Section: Chromosome Representation and Initial Populationmentioning
confidence: 99%
See 2 more Smart Citations
“…As depicted in Figure 1, the CVRP problem is concerned with discovering the optimal paths for a given fleet of motor vehicles to fulfill the demands of physically distributed customers [3]. The CVRP and its variants are widely used in many real-life applications, such as smart logistics [1,2], critical data collection in IoT platforms [4], renting-sharing problems for urban bicycles [5], the routing and scheduling of chains of retail stores [6], distributing medical supplies for emergencies [7], crop harvesting and transportation [8], and the dynamic vehicle routing problem with traffic congestion to name a few. The CVRP is a widely-discussed NP-hard [3] problem, and therefore, optimization methods including exact methods (dynamic programming, branch-and-bound); heuristics (the Fisher-Jaikumar algorithm and the Clarke-Wright saving algorithm); swarm and evolutionary algorithms (GA, ACO, and firefly algorithms); local search operators (swap, inversion, scramble) and hybrid approaches have widely been employed to crack the CVRP problem [3,[8][9][10][11][12][13][14].…”
Section: Introductionmentioning
confidence: 99%