In last-mile delivery, drivers frequently deviate from planned delivery routes because of their tacit knowledge of the road and curbside infrastructure, customer availability, and other characteristics of the respective service areas. Hence, the actual stop sequences chosen by an experienced human driver may be potentially preferable to the theoretical shortest-distance routing under real-life operational conditions. Thus, being able to predict the actual stop sequence that a human driver would follow can help to improve route planning in last-mile delivery. This paper proposes a pair-wise attention-based pointer neural network for this prediction task using drivers' historical delivery trajectory data. In addition to the commonly used encoder-decoder architecture for sequence-to-sequence prediction, we propose a new attention mechanism based on an alternative specific neural network to capture the local pair-wise information for each pair of stops. To further capture the global efficiency of the route, we propose a new iterative sequence generation algorithm that is used after model training to identify the first stop of a route that yields the lowest operational cost. Results from an extensive case study on real operational data from Amazon's last-mile delivery operations in the US show that our proposed method can significantly outperform traditional optimization-based approaches and other machine learning methods (such as the Long Short-Term Memory encoder-decoder and the original pointer network) in finding stop sequences that are closer to high-quality routes executed by experienced drivers in the field. Compared to benchmark models, the proposed model can increase the average prediction accuracy of the first four stops from around 0.2 to 0.312, and reduce the disparity between the predicted route and the actual route by around 15%.
翻译:在最后一英里的交付中,司机往往由于对道路和路边基础设施的隐性知识、客户的可用性以及各自服务领域的其他特点而偏离计划交付路线。因此,有经验的人驾驶员所选择的实际停止序列可能比实际操作条件下的理论最短距离路程更可取。因此,如果能够预测一个人驾驶员所遵循的实际停止序列有助于改进最后一英里交付的路线规划。本文件建议使用司机的历史交付轨迹数据,为这一预测任务建立一个双对称的、基于关注的指针神经神经网络。除了经常使用的用于路线到序列预测的电码脱码结构外,我们还提议了一个基于替代特定神经网络选择的新关注机制,以获取每对车站的配对信息。为了进一步捕捉路线的全球效率,我们提议了一个新的迭代序列生成算法,在模型培训后用来确定能够产生最低业务成本的路线的第一站点。通过对亚马逊公司最后一英里实际交付的实地操作数据进行广泛的案例研究,从美国15英里到顺序预测的顺序的准确性测序,我们建议的最接近的电路路段的电路距方法可以大大超越了我们所提议的最接近的模型。