一种新的混合累积灰色模型在西南各省能源消费总量预测中的应用

IF 3.2 3区 工程技术 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Grey Systems-Theory and Application Pub Date : 2023-06-06 DOI:10.1108/gs-02-2023-0013
X. Zhao, Xin Ma, Yubin Cai, H. Yuan, Yanqiao Deng
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引用次数: 0

摘要

目的针对西南地区部分省份历史能源消费数据的小样本量和非线性特点,提出混合累积算子和混合累积灰色单变量模型作为更准确、可靠的能源消费预测方法。该方法可为参与能源管理和规划的决策者提供有价值的决策支持。设计/方法/方法将分数阶累积算子与新的信息优先级累积算子线性结合,提出了混合累积算子。然后利用新算子建立一个新的灰色系统模型,称为混合累积灰色模型(HAGM)。然后设计了基于JAYA优化器的优化算法来求解模型的非线性参数θ、r和γ。使用四种不同类型的曲线来验证模型对具有完全不同趋势的数据序列的预测性能。最后,利用实际数据集对2010 - 2020年中国西南省份能源消费总量进行了预测。结果提出的HAGM是现有灰色系统模型的一般表述,包括分数阶积累和新信息优先级积累。通过对中国西南省份能源消费总量预测的验证案例和实际案例分析表明,该模型在不同建模方法下均优于其他7种模型。利用HAGM对2010 - 2020年中国西南省份的能源消费总量进行了预测。结果表明,与7种比较模型相比,含HA的HAGM模型具有更高的预测精度和更广泛的适用性,显示了其在能源领域的应用潜力。应用HAGM(1,1)对2010 - 2020年中国西南省份的能源消费进行了预测。与现有模型相比,含HA的HAGM(1,1)具有更高的预测精度和更广泛的适用性,在能源领域具有较大的应用潜力。在理论上,本文首次提出了一种基于混合积累算子的混合积累灰色单变量模型。在应用方面,本研究为中国西南省份能源消费总量的准确预测提供了一种新的方法。
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Application of a novel hybrid accumulation grey model to forecast total energy consumption of Southwest Provinces in China
PurposeConsidering the small sample size and non-linear characteristics of historical energy consumption data from certain provinces in Southwest China, the authors propose a hybrid accumulation operator and a hybrid accumulation grey univariate model as a more accurate and reliable methodology for forecasting energy consumption. This method can provide valuable decision-making support for policy makers involved in energy management and planning.Design/methodology/approachThe hybrid accumulation operator is proposed by linearly combining the fractional-order accumulation operator and the new information priority accumulation. The new operator is then used to build a new grey system model, named the hybrid accumulation grey model (HAGM). An optimization algorithm based on the JAYA optimizer is then designed to solve the non-linear parameters θ, r, and γ of the proposed model. Four different types of curves are used to verify the prediction performance of the model for data series with completely different trends. Finally, the prediction performance of the model is applied to forecast the total energy consumption of Southwest Provinces in China using the real world data sets from 2010 to 2020.FindingsThe proposed HAGM is a general formulation of existing grey system models, including the fractional-order accumulation and new information priority accumulation. Results from the validation cases and real-world cases on forecasting the total energy consumption of Southwest Provinces in China illustrate that the proposed model outperforms the other seven models based on different modelling methods.Research limitations/implicationsThe HAGM is used to forecast the total energy consumption of the Southwest Provinces of China from 2010 to 2020. The results indicate that the HAGM with HA has higher prediction accuracy and broader applicability than the seven comparative models, demonstrating its potential for use in the energy field.Practical implicationsThe HAGM(1,1) is used to predict energy consumption of Southwest Provinces in China with the raw data from 2010 to 2020. The HAGM(1,1) with HA has higher prediction accuracy and wider applicability compared with some existing models, implying its high potential to be used in energy field.Originality/valueTheoretically, this paper presents, for the first time, a hybrid accumulation grey univariate model based on a new hybrid accumulation operator. In terms of application, this work provides a new method for accurate forecasting of the total energy consumption for southwest provinces in China.
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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
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