论文标题
用深度学习智能城市应用程序的包裹交付时间的端到端预测
End-to-End Prediction of Parcel Delivery Time with Deep Learning for Smart-City Applications
论文作者
论文摘要
收购包裹交付的大量数据激发了邮政运营商,以促进预测系统的开发以改善客户服务。将连续的交付时间预测到最终仓库中,被称为最后一英里预测,涉及流量,驾驶员行为和天气等复杂因素。这项工作研究了使用深度学习来解决最后一英里包裹交付时间预测的现实情况。我们在物联网范式下介绍解决方案,并讨论其在基于云的架构作为智能城市应用程序上的可行性。我们专注于加拿大邮政提供的大型包裹数据集,涵盖了大多伦多地区(GTA)。我们利用原点用途(OD)公式,其中不可用的路线,而只有开始和终点的交付点。我们研究了三类基于卷积的神经网络,并评估他们在任务上的表现。我们进一步证明了我们的建模如何优于几个基线,从经典的机器学习模型到引用的OD解决方案。具体来说,我们表明,具有8个残留块的重新结构体系结构显示出性能和复杂性之间的最佳权衡。我们对数据进行了彻底的错误分析,并可视化所学到的深度功能,以更好地理解模型行为,并就数据可预测性发表了有趣的评论。我们的工作提供了一条端到端的神经管道,该管道利用包裹OD数据以及天气来准确预测交货时间。我们认为,我们的系统不仅具有通过更好地建模其预期来改善用户体验的潜力,而且还可以帮助整个最后一英里的邮政物流。
The acquisition of massive data on parcel delivery motivates postal operators to foster the development of predictive systems to improve customer service. Predicting delivery times successive to being shipped out of the final depot, referred to as last-mile prediction, deals with complicating factors such as traffic, drivers' behaviors, and weather. This work studies the use of deep learning for solving a real-world case of last-mile parcel delivery time prediction. We present our solution under the IoT paradigm and discuss its feasibility on a cloud-based architecture as a smart city application. We focus on a large-scale parcel dataset provided by Canada Post, covering the Greater Toronto Area (GTA). We utilize an origin-destination (OD) formulation, in which routes are not available, but only the start and end delivery points. We investigate three categories of convolutional-based neural networks and assess their performances on the task. We further demonstrate how our modeling outperforms several baselines, from classical machine learning models to referenced OD solutions. Specifically, we show that a ResNet architecture with 8 residual blocks displays the best trade-off between performance and complexity. We perform a thorough error analysis across the data and visualize the deep features learned to better understand the model behavior, making interesting remarks on data predictability. Our work provides an end-to-end neural pipeline that leverages parcel OD data as well as weather to accurately predict delivery durations. We believe that our system has the potential not only to improve user experience by better modeling their anticipation but also to aid last-mile postal logistics as a whole.