基于学习方法的送货速度预测

IF 2.1 Q2 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Maha Gmira , Michel Gendreau , Andrea Lodi , Jean-Yves Potvin
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引用次数: 13

摘要

在许多城市交通环境中,从一个地点到另一个地点的旅行时间是一个重要的考虑因素,从规划货物运输的交付路线到确定先进的旅行者信息系统的最短行程。因此,准确的旅行时间预测是最重要的。在城市环境中,由于交通事故或恶劣天气等原因造成的拥堵,车辆的速度和行驶时间可能会发生很大变化。在另一个层次上,人们还观察日常模式(例如,高峰时间)、每周模式(例如,工作日与周末)和季节性模式。在建模旅行速度时捕捉这些随时间变化的模式可以为分销货物的商业运输公司提供直接的好处,因为它允许他们更好地优化路线并减少环境足迹。本文介绍了一个项目的第一部分,旨在优化城市环境中与时间相关的送货路线。它的重点是使用在相当长的一段时间内收集的商用车辆的GPS轨迹作为输入来预测行驶速度。提出的算法框架由许多宏观步骤组成,其中应用了不同的机器学习和数据挖掘方法。通过对实际数据的计算结果,从经验上证明了所得预测的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Travel speed prediction based on learning methods for home delivery

The travel time to proceed from one location to another in a network is an important consideration in many urban transportation settings ranging from the planning of delivery routes in freight transportation to the determination of shortest itineraries in advanced traveler information systems. Accordingly, accurate travel time predictions are of foremost importance. In an urban environment, vehicle speeds, and consequently travel times, can be highly variable due to congestion caused, for instance, by accidents or bad weather conditions. At another level, one also observes daily patterns (e.g., rush hours), weekly patterns (e.g., weekdays versus weekend), and seasonal patterns. Capturing these time-varying patterns when modeling travel speeds can provide an immediate benefit to commercial transportation companies that distribute goods, since it allows them to better optimize their routes and reduce their environmental footprint.

This paper presents the first part of a project aimed at optimizing time-dependent delivery routes in an urban setting. It focuses on the prediction of travel speeds using as input GPS traces of commercial vehicles collected over a significant period of time. The proposed algorithmic framework is made of a number of macro-steps where different machine learning and data mining methods are applied. Computational results are reported on real data to empirically demonstrate the accuracy of the obtained predictions.

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来源期刊
CiteScore
4.60
自引率
0.00%
发文量
24
审稿时长
129 days
期刊介绍: The EURO Journal on Transportation and Logistics promotes the use of mathematics in general, and operations research in particular, in the context of transportation and logistics. It is a forum for the presentation of original mathematical models, methodologies and computational results, focussing on advanced applications in transportation and logistics. The journal publishes two types of document: (i) research articles and (ii) tutorials. A research article presents original methodological contributions to the field (e.g. new mathematical models, new algorithms, new simulation techniques). A tutorial provides an introduction to an advanced topic, designed to ease the use of the relevant methodology by researchers and practitioners.
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