利用随机森林回归模拟疾病爆发对国际原油供应链的影响

Ganisha N.P. Athaudage, H. Perera, P. Sugathadasa, M. D. De Silva, O. K. Herath
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引用次数: 1

摘要

目的原油供应链是世界上最复杂、规模最大的供应链之一。它很容易受到极端事件的影响。最近,严重急性呼吸综合征冠状病毒2型(SARS-CoV-2)(通常称为新冠肺炎)大流行造成了巨大的供需失衡,导致价格大幅波动。本研究的目的是从消费、生产和价格三个方面探讨影响国际COSC的因素。此外,它还开发了一个模型,使用随机森林(RF)回归来预测疾病爆发期间的国际原油价格。设计/方法论/方法本研究采用定性和定量方法。采用文献综述的方法进行了定性研究,探讨了影响COSC的因素。所有数据都是从Web源中提取的。除了新冠肺炎,还考虑了其他四种疾病来优化预测结果的准确性。采用主成分分析来减少变量的数量。利用RF回归建立了一个预测模型。结果定性分析的结果表征了影响国际COSC的因素。定量分析的结果强调,生产和消费对数据集方差的贡献更大。此外,这项研究发现,对原油价格的影响因地区而异。最重要的是,使用RF技术引入的模型在传染病等短期内提供了很高的预测能力。这项研究为研究人员和从业者提供了进一步扩展研究的未来方向和见解。原创性/价值这是为数不多的在原油价格预测中使用RF方法的研究之一。此外,本研究还使用机器学习技术研究了突发事件中的国际COSC,特别是疾病爆发。
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Modelling the impact of disease outbreaks on the international crude oil supply chain using Random Forest regression
Purpose The crude oil supply chain (COSC) is one of the most complex and largest supply chains in the world. It is easily vulnerable to extreme events. Recently, the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) (often known as COVID-19) pandemic created a massive imbalance between supply and demand which caused significant price fluctuations. The purpose of this study is to explore the influential factors affecting the international COSC in terms of consumption, production and price. Furthermore, it develops a model to predict the international crude oil price during disease outbreaks using Random Forest (RF) regression. Design/methodology/approach This study uses both qualitative and quantitative approaches. A qualitative study is conducted using a literature review to explore the influential factors on COSC. All the data are extracted from Web sources. In addition to COVID-19, four other diseases are considered to optimize the accuracy of predictive results. A principal component analysis is deployed to reduce the number of variables. A forecasting model is developed using RF regression. Findings The findings of the qualitative analysis characterize the factors that influence international COSC. The findings of quantitative analysis emphasize that production and consumption have a higher contribution to the variance of the data set. Also, this study found that the impact caused to crude oil price varies with the region. Most importantly, the model introduced using the RF technique provides a high predictive ability in short horizons such as infectious diseases. This study delivers future directions and insights to researchers and practitioners to expand the study further. Originality/value This is one of the few available pieces of research which uses the RF method in the context of crude oil price forecasting. Additionally, this study examines international COSC in the events of emergencies, specifically disease outbreaks using machine learning techniques.
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来源期刊
CiteScore
6.80
自引率
22.60%
发文量
63
期刊介绍: The International Journal of Energy Sector Management aims to facilitate dissemination of research on issues relating to supply management (covering the entire supply chain of resource finding, extraction, production, treatment, conversion, transportation, distribution and retail supply), demand and usage management, waste management, customer and other stakeholder management, and solutions thereto. The journal covers all forms of energy (non-renewable and renewable), forms of supply (centralised or decentralised), ownership patterns (public or private, cooperative, joint, or any other), market structures (formal, informal, integrated, disintegrated, national, international, local, etc.) and degress of commoditisation (e.g. internationally traded, regionally traded, non-traded, etc.). The journal aims to cover a wide range of subjects relevant to the management of the energy sector, including but not limited to: Management of scarce resources (economic, financial, human and natural), projects, activities and concerns (e.g. regulatory, social and environmental aspects), technologies and knowledge Business strategy, policy and planning as well as decision support systems for energy sector management Business organisation, structure and environment, and changes thereto Globalisation and multi-cultural management Management of innovation, change and transition.
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