Abstract

Nowadays, finding the optimal route for vehicles through online vehicle path planning is one of the main problems that the logistics industry needs to solve. Due to the uncertainty of the transportation system, especially the last-mile delivery problem of small packages in uncertain logistics transportation, the calculation of logistics vehicle routing planning becomes more complex than before. Most of the existing solutions are less applied to new technologies such as machine learning, and most of them use a heuristic algorithm. This kind of solution not only needs to set a lot of constraints but also requires much calculation time in the logistics network with high demand density. To design the uncertain logistics transportation path with minimum time, this paper proposes a new optimization strategy based on deep reinforcement learning that converts the uncertain online logistics routing problems into vehicle path planning problems and designs an embedded pointer network for obtaining the optimal solution. Considering the long time to solve the neural network, it is unrealistic to train parameters through supervised data. This article uses an unsupervised method to train the parameters. Because the process of parameter training is offline, this strategy can avoid the high delay. Through the simulation part, it is not difficult to see that the strategy proposed in this paper will effectively solve the uncertain logistics scheduling problem under the limited computing time, and it is significantly better than other strategies. Compared with traditional mathematical procedures, the algorithm proposed in this paper can reduce the driving distance by 60.71%. In addition, this paper also studies the impact of some key parameters on the effect of the program.

Highlights

  • An intelligent transportation system (ITS) is crucial to the realization of the goal of a smart city [1,2,3,4]

  • Due to the short computation time of constructing model training cases based on the optimization method, this paper proposes a Deep Reinforcement Learning (DRL) method to solve the key parameters in the model. is solution is suitable for solving large-scale vehicle routing problems because the speed of path planning using this strategy is very fast

  • A new neural network combination optimization strategy based on deep reinforcement learning is proposed, which is used to develop the route planning of online traffic service vehicles, which is difficult to realize by traditional path generation algorithm with minimum computing time in a large network

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Summary

Introduction

An intelligent transportation system (ITS) is crucial to the realization of the goal of a smart city [1,2,3,4]. The existing research can solve the problem of responding to a large number of logistics requests in a short time, the delay is usually longer in an uncertain logistics transportation system on a city scale. In this way, the smart city in the future is difficult to achieve fast door-to-door delivery, and the system can not adapt to the change and update online information in time [19]. Erefore, the trained model can deal with the uncertain logistics transportation scheduling problem, and the efficiency is much higher than the traditional repeated solution

Uncertain Logistics Transportation System Model
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