论文标题
预测油轮终端的泊位:一种系统和动态的方法
Predicting Berth Stay for Tanker Terminals: A Systematic and Dynamic Approach
论文作者
论文摘要
鉴于数字化的趋势和海上运输数量的增加,在海上大数据时代的运营研究和调度优化问题的要求触发了船舶泊位停留的预测,这在港口效率和海上物流增强方面具有重要作用。这项研究提出了一种预测油轮终端泊位的系统和动态方法。该方法涵盖了三个创新方面:1)所采用的数据源是多方面的,包括来自油轮终端的货物操作数据,来自自动识别系统(AIS)的时间序列数据(AIS)等。2)2)根据数据分析,根据数据分析和信息提取了多个块,并在创新的情况下将其分解为多个块。 3)泊位停留的预测模型是基于在两种方法下的先前数据分析和信息提取的基础上开发的,包括回归和分解分布。在两个不同终端之间具有某些指定货物的四个动态场景下,对模型进行了评估。评估结果表明,所提出的方法可以通过历史基准验证的高达98.81%的准确性预测泊位,并且还证明了所提出的方法具有预测场景之间泊位的动态能力。该模型可能有可能用于在合理的时间范围内进行短期试点预订或调度优化,以提高港口智能和物流效率。
Given the trend of digitization and increasing number of maritime transport, prediction of vessel berth stay has been triggered for requirements of operation research and scheduling optimization problem in the era of maritime big data, which takes a significant part in port efficiency and maritime logistics enhancement. This study proposes a systematic and dynamic approach of predicting berth stay for tanker terminals. The approach covers three innovative aspects: 1) Data source employed is multi-faceted, including cargo operation data from tanker terminals, time-series data from automatic identification system (AIS), etc. 2) The process of berth stay is decomposed into multiple blocks according to data analysis and information extraction innovatively, and practical operation scenarios are also developed accordingly. 3) The predictive models of berth stay are developed on the basis of prior data analysis and information extraction under two methods, including regression and decomposed distribution. The models are evaluated under four dynamic scenarios with certain designated cargoes among two different terminals. The evaluation results show that the proposed approach can predict berth stay with the accuracy up to 98.81% validated by historical baselines, and also demonstrate the proposed approach has dynamic capability of predicting berth stay among the scenarios. The model may be potentially applied for short-term pilot-booking or scheduling optimizations within a reasonable time frame for advancement of port intelligence and logistics efficiency.