原油期货价格区间数预测的矩阵非线性指数灰色伯努利模型

IF 3.2 3区 工程技术 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Grey Systems-Theory and Application Pub Date : 2023-10-23 DOI:10.1108/gs-08-2023-0073
Haoze Cang, Xiangyan Zeng, Shuli Yan
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引用次数: 0

摘要

目的对原油期货价格进行有效预测,为相关企业制定生产计划和投资决策提供参考。针对原油期货价格的非线性、高波动性和不确定性,提出了一种结合指数积累生成算子(MNEGBM(1,1))的矩阵非线性指数灰色伯努利模型。设计/方法/方法首先,对原始序列进行指数累积生成算子处理,以减弱其波动性。将非线性灰色伯努利模型与指数函数模型相结合,拟合预处理序列。然后,对MNEGBM(1,1)中的参数进行矩阵化处理,可以直接对三进制区间数列进行建模。采用海洋掠食者算法(MPA)对非线性参数进行优化。最后,利用Cramer规则推导出时间递归公式。结果通过与5个比较模型的比较,验证了该模型的预测有效性。对2023/07 - 2023/12年库欣原油期货价格进行了预测和分析。预测结果显示,在未来6个月内,这一数字将逐渐下降。原油期货价格在短期内波动很大。利用灰色模型进行短期预测具有一定的研究价值。针对原油期货价格的数据特点,本文首先提出了一种改进的原油期货价格区间数预测模型。
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A matrixed nonlinear exponential grey Bernoulli model for interval number prediction of crude oil futures prices
Purpose The effective prediction of crude oil futures prices can provide a reference for relevant enterprises to make production plans and investment decisions. To the nonlinearity, high volatility and uncertainty of the crude oil futures price, a matrixed nonlinear exponential grey Bernoulli model combined with an exponential accumulation generating operator (MNEGBM(1,1)) is proposed in this paper. Design/methodology/approach First, the original sequence is processed by the exponential accumulation generating operator to weaken its volatility. The nonlinear grey Bernoulli and exponential function models are combined to fit the preprocessed sequence. Then, the parameters in MNEGBM(1,1) are matrixed, so the ternary interval number sequence can be modeled directly. Marine Predators Algorithm (MPA) is chosen to optimize the nonlinear parameters. Finally, the Cramer rule is used to derive the time recursive formula. Findings The predictive effectiveness of the proposed model is verified by comparing it with five comparison models. Crude oil futures prices in Cushing, OK are predicted and analyzed from 2023/07 to 2023/12. The prediction results show it will gradually decrease over the next six months. Originality/value Crude oil futures prices are highly volatile in the short term. The use of grey model for short-term prediction is valuable for research. For the data characteristics of crude oil futures price, this study first proposes an improved model for interval number prediction of crude oil futures prices.
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来源期刊
Grey Systems-Theory and Application
Grey Systems-Theory and Application MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
CiteScore
4.80
自引率
13.80%
发文量
22
期刊最新文献
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