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Rendezvous Delivery: Utilizing Autonomous Electric Vehicles to Improve the Efficiency of Last Mile Parcel Delivery in Urban Areas

机译:配合交付:利用自主电动车辆提高城市地区最后一英里包裹交付的效率

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Recent advances in technology have led to an increasing degree of automation and optimization in most areas of the parcel logistics process. However, this trend has not been widely adopted in one critical part of the process, which is the actual delivery (also often referred to as “last mile”). One critical task in the last mile delivery process is the computation of a set of optimal delivery tours for a set of given delivery locations. This task is commonly known as the vehicle routing problem. In this work, we propose an extended version of the vehicle routing problem that aims to increase the degree of automation in the last mile delivery process by leveraging on the current advancements in the area of autonomous driving. Furthermore, we study the application of state-of-the-art machine learning methods to solve the proposed problem. We show that such a set up can reduce the overall time needed for delivering parcels compared to the conventional method, in which the delivery agent manually drives the delivery vehicle to each delivery address. In addition, the proposed model is computationally cheap which is essential to support close to real time analysis of context changes (e.g., traffic situation) and decision making, which is critical for an application in the context of highly dynamic Smart City environments.
机译:技术的最新进展导致了在大多数地区的自动化和优化程度上的大多数领域。然而,这种趋势在过程的一个关键部分没有被广泛采用,这是实际交付(也经常被称为“最后一英里”)。最后一英里交付过程中的一个关键任务是为一组给定的传送位置计算一组最佳交付之旅。此任务通常称为车辆路由问题。在这项工作中,我们提出了一个扩展的车辆路由问题,旨在通过利用自主驾驶领域的当前进步来提高最后一英里交付过程中的自动化程度。此外,我们研究了最先进的机器学习方法的应用来解决所提出的问题。我们表明,与传统方法相比,这样的设置可以减少输送包裹所需的总时间,其中递送代理手动将递送车辆驱动到每个递送地址。此外,所提出的模型是计算值便宜的,这对于支持对上下文变化(例如,交通状况)和决策来说是至关重要的,这对于在高度动态的智能城市环境中的上下文中是至关重要的。

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