Abstract

In last-mile delivery, on-line retailers deliver goods from local distribution centers to endpoint customers using a fleet of vehicles. This problem is often related to vehicle routing problems with time windows (VRPTWs) in the literature. For an on-line retailer in China, it was found that experienced drivers could often find better routes rather than relying on computerized tools using state-of-the-art algorithms. Therefore, the focus of this paper is to generate routes based on experience. To do so, we propose a methodology based on case base reasoning (CBR). The methodology designs new routes to fulfill orders by retrieving and adapting routes previously performed from a repository named case base. A mechanism is also developed to maintain good quality routes in the case base. The methodology is first tested on problem instances generated using a construction heuristic. Other tests are also performed using real data from an on-line retailer in China. Results show that the CBR methodology designed can effectively generate routes to solve new problems similar to routes previously performed. A comparison to the BoneRoute algorithm show that the solutions obtained with CBR are in average 18.4% longer. However, this result does not take into consideration the time required by the drivers to adapt to a very different route.

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