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A comparison of time series methods for forecasting container throughput

机译:集装箱吞吐量的时间序列方法比较

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摘要

A good port data management system can undoubtedly improve a port's operations. This, in turn, affects the economic development of the port city or region. Given the fast-changing global environment, forecasting the container throughput of a port is of vital importance. There are many existing time series forecasting methods, which can be used to forecast a port's container throughput. However, there is limited research comparing the performance of different commonly employed methods on the same time series. This study attempts to bridge this gap. This paper first presents several time series forecasting methods, including machine learning-based methods such as Support Vector Regression. Next, these forecasting methods are employed to forecast the port's container throughput using the same set of historical secondary data. Finally, a comparison is made and discussed. Six time series methods were employed for forecasting a port's container throughput and their performances were compared.
机译:良好的端口数据管理系统无疑可以改善端口的操作。反过来,这影响了港口城市或地区的经济发展。鉴于快速变化的全球环境,预测港口的集装箱吞吐量至关重要。存在许多现有的时间序列预测方法,可用于预测端口的集装箱吞吐量。但是,研究了有限的研究比较了不同常用方法在同一时间序列的性能。这项研究试图弥合这个差距。本文首先介绍了多个时间序列预测方法,包括基于机器学习的方法,如支持向量回归。接下来,采用这些预测方法使用相同的历史二级数据预测端口的集装箱吞吐量。最后,进行了比较并讨论。采用六次时间序列方法预测港口的集装箱吞吐量及其表演进行了比较。

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