Study of narrow waterways congestion based on automatic identification system (AIS) data: A case study of Houston Ship Channel

IF 13 1区 工程技术 Q1 ENGINEERING, MARINE
Masood Jafari Kang , Sepideh Zohoori , Maryam Hamidi , Xing Wu
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引用次数: 9

Abstract

Using automatic identification system (AIS) data, this article first has extended the definition of three widely used roadway congestion indices to maritime transportation systems (MTS), traffic speed index (TSI), traffic rate index (TRI), and dwell time index (DTI). Next, a methodology is developed to measure the indices based on AIS data, considering various factors, including path geometry, time of day, and the type and size of vessels, and finally the method has been applied to the AIS data of the Houston Ship Channel (HSC) to evaluate the applicability in real cases. The results show that although average TSI and TRI cannot represent waterway congestion, the real-time values (rather than the average) at the micro level can help finding location, time, and severity of traffic congestion. Besides, while TSI and TRI have shortcomings, both average and real-time dwell time index (DTI) can quantify traffic congestion and highlight severity in different waterway segments for different types of vessels. When congestion happens at some narrow waterways, vessels need to wait at sea buoy or docks, thus dwell time index (DTI) can quantify traffic congestion better than in-transit indices such as travel speed, TSI. According to HSC DTI, most tankers experience long waiting times at the sea buoy and Galveston Bay, while cargo vessels experience delays at Bayport and Barbour's Cut terminals. This paper helps the decision-makers quantify congestion in different sections of a waterway and provides measures to compare congestion for national competing projects at different waterways.

基于自动识别系统(AIS)数据的狭窄航道拥堵研究——以休斯顿航道为例
本文首先利用自动识别系统(AIS)数据,将三种广泛使用的道路拥堵指标的定义扩展到海上运输系统(MTS),即交通速度指数(TSI)、交通率指数(TRI)和停留时间指数(DTI)。其次,提出了一种基于AIS数据的指标测量方法,考虑了路径几何形状、时间、船舶类型和尺寸等多种因素,最后将该方法应用于休斯顿船舶航道(HSC)的AIS数据,以评估其在实际情况中的适用性。结果表明,虽然平均TSI和TRI不能代表航道拥堵,但微观层面的实时值(而不是平均值)可以帮助找到交通拥堵的位置、时间和严重程度。此外,TSI和TRI虽然存在不足,但平均停留时间指数和实时停留时间指数(DTI)都可以量化交通拥堵,并突出不同航段不同类型船舶的严重程度。当某些狭窄航道发生拥堵时,船舶需要在海上浮标或码头等待,因此停留时间指数(DTI)比航行速度、TSI等在途指数更能量化交通拥堵。根据HSC DTI的数据,大多数油轮在海上浮标和加尔维斯顿湾的等待时间很长,而货船在Bayport和Barbour's Cut码头的等待时间也很长。本文可以帮助决策者量化水道不同路段的拥堵情况,并为国家竞争项目在不同水道的拥堵情况提供比较措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
11.50
自引率
19.70%
发文量
224
审稿时长
29 days
期刊介绍: The Journal of Ocean Engineering and Science (JOES) serves as a platform for disseminating original research and advancements in the realm of ocean engineering and science. JOES encourages the submission of papers covering various aspects of ocean engineering and science.
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