航运业的预测建模:供需双方的分析

IF 2 Q3 BUSINESS Maritime Business Review Pub Date : 2024-09-09 DOI:10.1108/mabr-04-2024-0038
Siying Zhu, Cheng-Hsien Hsieh
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引用次数: 0

摘要

目的 海运在促进全球和区域商品贸易方面发挥着重要作用,准确的趋势预测对于协助行业决策至关重要。本文旨在从宏观层面对世界船舶供需进行预测研究。设计/方法/途径根据 1980 年至 2021 年的数据记录,采用自动自回归综合移动平均法(ARIMA)对船舶供需进行单变量时间序列预测。研究结果对于需求方的未来预测,2030 年之前的船舶总需求和世界干货船需求预测结果均呈上升趋势。在供应方面,世界船舶总供应量、油轮供应量、集装箱供应量和其他类型船舶供应量均呈上升趋势。世界散货船供应量预测结果表明,最初呈上升趋势,随后略有下降,而世界杂货船供应量预测值保持相对稳定。通过比较预测的百分比变化率,需求和供应变化率在不久的将来会逐渐趋同。我们还发现,COVID-19 大流行对时间序列预测结果的影响在统计上并不显著。原创性/价值该结果可为航运业各利益相关方在船舶建造、报废和调配方面的战略规划和运营提供政策启示。
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Predictive modelling in the shipping industry: analysis from supply and demand sides

Purpose

Maritime transportation plays an important role in facilitating both the global and regional merchandise trade, where accurate trend prediction is crucial in assisting decision-making in the industry. This paper aims to conduct a macro-level study to predict world vessel supply and demand.

Design/methodology/approach

The automatic autoregressive integrated moving average (ARIMA) is used for the univariate vessel supply and demand time-series forecasting based on the data records from 1980 to 2021.

Findings

For the future projection of the demand side, the predicted outcomes for total vessel demand and world dry cargo vessel demand until 2030 indicate upward trends. For the supply side, the predominant upward trends for world total vessel supply, oil tanker vessel supply, container vessel supply and other types of vessel supply are captured. The world bulk carrier vessel supply prediction results indicate an initial upward trend, followed by a slight decline, while the forecasted world general cargo vessel supply values remain relatively stable. By comparing the predicted percentage change rates, there is a gradual convergence between demand and supply change rates in the near future. We also find that the impact of the COVID-19 pandemic on the time-series prediction results is not statistically significant.

Originality/value

The results can provide policy implications in strategic planning and operation to various stakeholders in the shipping industry for vessel building, scrapping and deployment.

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来源期刊
CiteScore
4.80
自引率
0.00%
发文量
19
期刊最新文献
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