Inland waterway network mapping of AIS data for freight transportation planning

IF 1.9 4区 工程技术 Q2 ENGINEERING, MARINE Journal of Navigation Pub Date : 2022-01-13 DOI:10.1017/S0373463321000953
Magdalena I. Asborno, S. Hernandez, K. Mitchell, Manzi Yves
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引用次数: 2

Abstract

Abstract Travel demand models (TDMs) with freight forecasts estimate performance metrics for competing infrastructure investments and potential policy changes. Unfortunately, freight TDMs fail to represent non-truck modes with levels of detail adequate for multi-modal infrastructure and policy evaluation. Recent expansions in the availability of maritime movement data, i.e. Automatic Identification System (AIS), make it possible to expand and improve representation of maritime modes within freight TDMs. AIS may be used to track vessel locations as timestamped latitude–longitude points. For estimation, calibration and validation of freight TDMs, this work identifies vessel trips by applying network mapping (map-matching) heuristics to AIS data. The automated methods are evaluated on a 747-mile inland waterway network, with AIS data representing 88% of vessel activity. Inspection of 3820 AIS trajectories was used to train the heuristic parameters including stop time, duration and location. Validation shows 84⋅0% accuracy in detecting stops at ports and 83⋅5% accuracy in identifying trips crossing locks. The resulting map-matched vessel trips may be applied to generate origin–destination matrices, calculate time impedances, etc. The proposed methods are transferable to waterways or maritime port systems, as AIS continues to grow.
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利用AIS数据绘制内河航道网络,进行货运规划
具有货运预测功能的旅行需求模型(tdm)可以评估竞争性基础设施投资和潜在政策变化的绩效指标。不幸的是,货运tdm不能代表非卡车模式,其详细程度足以用于多式联运基础设施和政策评估。最近海上移动数据的可用性的扩大,即自动识别系统(AIS),使得在货运tdm内扩大和改进海上模式的表示成为可能。AIS可用于跟踪船只位置,作为时间戳的经纬度点。对于货运tdm的估计、校准和验证,本工作通过对AIS数据应用网络映射(地图匹配)启发式方法来识别船舶行程。自动化方法在747英里的内河航道网络上进行了评估,AIS数据代表了88%的船舶活动。通过检查3820条AIS轨迹来训练启发式参数,包括停止时间、持续时间和位置。验证表明,检测港口停靠的准确率为84⋅0%,识别穿越船闸的行程的准确率为83⋅5%。由此得到的地图匹配的船舶行程可以应用于生成起点-目的地矩阵,计算时间阻抗等。随着AIS系统的不断发展,所提出的方法可转移到水路或海运港口系统。
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来源期刊
Journal of Navigation
Journal of Navigation 工程技术-工程:海洋
CiteScore
6.10
自引率
4.20%
发文量
59
审稿时长
4.6 months
期刊介绍: The Journal of Navigation contains original papers on the science of navigation by man and animals over land and sea and through air and space, including a selection of papers presented at meetings of the Institute and other organisations associated with navigation. Papers cover every aspect of navigation, from the highly technical to the descriptive and historical. Subjects include electronics, astronomy, mathematics, cartography, command and control, psychology and zoology, operational research, risk analysis, theoretical physics, operation in hostile environments, instrumentation, ergonomics, financial planning and law. The journal also publishes selected papers and reports from the Institute’s special interest groups. Contributions come from all parts of the world.
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