Light goods vehicles (LGV) used extensively in the last mile of delivery are one of the leading polluters in cities. Cargo-bike logistics has been put forward as a high impact candidate for replacing LGVs, with experts estimating over half of urban van deliveries being replaceable by cargo bikes, due to their faster speeds, shorter parking times and more efficient routes across cities. By modelling the relative delivery performance of different vehicle types across urban micro-regions, machine learning can help operators evaluate the business and environmental impact of adding cargo-bikes to their fleets. In this paper, we introduce two datasets, and present initial progress in modelling urban delivery service time (e.g. cruising for parking, unloading, walking). Using Uber's H3 index to divide the cities into hexagonal cells, and aggregating OpenStreetMap tags for each cell, we show that urban context is a critical predictor of delivery performance.
翻译:在最后一英里的交付中广泛使用的轻型货物车辆(LGV)是城市中的主要污染者之一。货运物流被作为替代LGV的高影响力候选物提出,专家们估计超过一半的城市货车交付量可以被货运自行车取代,因为其速度更快,停车时间较短,而且横跨城市的路线效率更高。通过模拟城市微型区域不同类型车辆的相对交付性能,机器学习可以帮助运营商评估在其车队中增加货运机对商业和环境影响。在本文中,我们引入了两个数据集,并介绍了城市交付服务模拟的初步进展(例如,泊车、卸货、步行)。使用Uber的H3指数将城市分为六边形细胞,并为每个单元汇总OpenStreeMap标签,我们表明城市环境是交付性能的关键预测。