Variable-weight combined forecasting model with causal analysis and clustering for refined oil sales forecasting

IF 2.8 4区 管理学 Q2 MANAGEMENT DECISION SCIENCES Pub Date : 2024-10-08 DOI:10.1111/deci.12648
Xiaofeng Xu, Wenzhi Liu, Lean Yu, Yinsheng Yu, Wanli Yi
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Abstract

Forecasting refined oil sales is essential in energy supply chain management. However, accurate forecasting is limited by several factors, including multiple influences of external features, heterogeneity of different gasoline stations, and difficulty in balancing linear and nonlinear forecasting. To address these issues, we propose a novel variable-weight combined forecasting model. In the first stage, the model incorporates causal analysis and clustering methods to provide a quantitative description of multiple effects of external features and highly correlated aggregation of homogeneous data. Subsequently, based on the patterns of external feature influences learned from historical data, variable-weight combined forecasting is realized to balance linear and nonlinear forecasting dynamically. Experiments based on real sales data procured from several regions demonstrate that the proposed model outperforms other benchmark and widely used models in terms of forecasting accuracy and statistical significance. The ablation experimental results confirm the significance of causal analysis, clustering, and variable-weight combined forecasting in improving the balance between linear and nonlinear forecasting. Moreover, our results indicate that improving the quality of clustering can yield greater benefits than improving the amount of training data. Finally, we also explore whether the forecasting superiority translates into better inventory control, and our results show that the proposed optimization model can effectively balance inventory cost and service level, while also better suppress the bullwhip effect.

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成品油销售预测的因果分析聚类变权组合预测模型
成品油销售预测在能源供应链管理中至关重要。然而,准确的预测受到多种因素的限制,包括外部特征的多重影响,不同加油站的异质性,以及难以平衡线性和非线性预测。为了解决这些问题,我们提出了一种新的变权组合预测模型。在第一阶段,该模型结合因果分析和聚类方法,对外部特征的多重效应和同质数据的高度相关聚集进行定量描述。然后,根据从历史数据中学习到的外部特征影响模式,实现变权组合预测,实现线性和非线性预测的动态平衡。基于多个地区实际销售数据的实验表明,该模型在预测精度和统计显著性方面优于其他基准模型和广泛使用的模型。烧蚀实验结果证实了因果分析、聚类和变权组合预测在改善线性和非线性预测平衡方面的重要意义。此外,我们的结果表明,提高聚类的质量比提高训练数据的数量能产生更大的效益。最后,我们还探讨了预测优势是否转化为更好的库存控制,结果表明,所提出的优化模型可以有效地平衡库存成本和服务水平,同时也能更好地抑制牛鞭效应。
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来源期刊
DECISION SCIENCES
DECISION SCIENCES MANAGEMENT-
CiteScore
12.40
自引率
1.80%
发文量
34
期刊介绍: Decision Sciences, a premier journal of the Decision Sciences Institute, publishes scholarly research about decision making within the boundaries of an organization, as well as decisions involving inter-firm coordination. The journal promotes research advancing decision making at the interfaces of business functions and organizational boundaries. The journal also seeks articles extending established lines of work assuming the results of the research have the potential to substantially impact either decision making theory or industry practice. Ground-breaking research articles that enhance managerial understanding of decision making processes and stimulate further research in multi-disciplinary domains are particularly encouraged.
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Issue Information IN THIS ISSUE Issue Information In this issue Explanation seeking and anomalous recommendation adherence in human-to-human versus human-to-artificial intelligence interactions
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