一种用于端口拥塞估计和预测的深度学习方法

IF 3.7 3区 工程技术 Q2 TRANSPORTATION Maritime Policy & Management Pub Date : 2022-04-07 DOI:10.1080/03088839.2022.2057608
Wenhao Peng, Xiwen Bai, Dong Yang, Kum Fai Yuen, Junfeng Wu
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引用次数: 10

摘要

摘要本研究提出了基于自动识别系统(AIS)数据的高频集装箱港口拥堵措施。包括2017年3月至2017年4月3957艘集装箱船的船舶动态信息。通过基于密度的噪声应用空间聚类(DBSCAN)和凸包法确定了世界前20大集装箱港口的泊位和锚地,并根据交通量和周转时间描述了其每小时的港口拥堵状态。构建的拥堵措施克服了传统使用的港口或行业数据的缺点,这些数据是异构的、落后的,并且不容易公开获取。拟议措施的频率较高(每小时),可以有效地监测港口性能的任何微小变化。然后,提出了一种长短期记忆(LSTM)神经网络模型,用于使用构建的拥塞度量进行拥塞预测。同时执行点预测和序列预测。我们创新性地将拥塞传播效应作为输入特征引入到预测模型中。以上海、新加坡和宁波港口为例,研究结果表明,包含拥堵传播效应可以提高预测性能,尤其是序列预测。这项研究为集装箱运输市场参与者提供了重要的启示和决策支持。
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A deep learning approach for port congestion estimation and prediction
ABSTRACT This study proposes high-frequency container port congestion measures based on Automatic Identification System (AIS) data. Vessel movement information of 3,957 container ships from March 2017 to April 2017 is included. The world top 20 container ports’ berth and anchorage areas are identified through Density Based Spatial Clustering of Applications with Noise (DBSCAN) and convex hull methods, and their hourly port congestion statuses are depicted in terms of the traffic volume and turnaround time. The constructed congestion measures overcome the disadvantages of the traditionally used port or industry data, which is heterogenous, behind the time and not easy to obtain publicly. The higher frequency (hourly) of the proposed measures can effectively monitor any slight change in port performance. A Long Short-Term Memory (LSTM) neural network model is then proposed for congestion prediction using constructed congestion measures. Point prediction and sequence prediction are both performed. We innovatively introduce congestion propagation effects into the prediction model as input features. Using Shanghai, Singapore and Ningbo ports as case studies, results show that the inclusion of congestion propagation effect can improve the prediction performance especially for sequence prediction. This study provides significant implications and decision support for container shipping market participants.
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来源期刊
CiteScore
8.20
自引率
8.60%
发文量
66
期刊介绍: Thirty years ago maritime management decisions were taken on the basis of experience and hunch. Today, the experience is augmented by expert analysis and informed by research findings. Maritime Policy & Management provides the latest findings and analyses, and the opportunity for exchanging views through its Comment Section. A multi-disciplinary and international refereed journal, it brings together papers on the different topics that concern the maritime industry. Emphasis is placed on business, organizational, economic, sociolegal and management topics at port, community, shipping company and shipboard levels. The Journal also provides details of conferences and book reviews.
期刊最新文献
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