具有广义分形导数的新型灰色预测模型及其优化

IF 3.2 3区 工程技术 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Grey Systems-Theory and Application Pub Date : 2024-04-30 DOI:10.1108/gs-11-2023-0109
Lina Jia, MingYong Pang
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引用次数: 0

摘要

本文旨在提出一种新的灰色预测模型 GOFHGM (1,1),该模型结合了广义分形导数和粒子群优化算法。本文介绍了广义分形导数的概念,并将其应用于灰色预测模型的阶次优化。同时还采用了粒子群优化算法来寻找最优的阶次组合。研究发现,GOFHGM(1,1) 模型在预测准确度方面优于传统的灰色预测模型。研究的局限性/启示这项研究在范围和结果的普遍性方面可能存在局限性。需要进一步开展研究,探索 GOFHGM(1,1) 在不同领域的适用性,并改进模型的性能。原创性/价值该研究通过引入一种结合了广义分形导数和粒子群优化算法的新灰色预测模型,为该领域做出了贡献。这种整合提高了灰色预测的准确性和可靠性,并增强了其在各种预测应用中的适用性。
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A novel grey forecasting model with generalised fractal derivative and its optimisation

Purpose

The purpose of this paper is to propose a new grey prediction model, GOFHGM (1,1), which combines generalised fractal derivative and particle swarm optimisation algorithms. The aim is to address the limitations of traditional grey prediction models in order selection and improve prediction accuracy.

Design/methodology/approach

The paper introduces the concept of generalised fractal derivative and applies it to the order optimisation of grey prediction models. The particle swarm optimisation algorithm is also adopted to find the optimal combination of orders. Three cases are empirically studied to compare the performance of GOFHGM(1,1) with traditional grey prediction models.

Findings

The study finds that the GOFHGM(1,1) model outperforms traditional grey prediction models in terms of prediction accuracy. Evaluation indexes such as mean squared error (MSE) and mean absolute error (MAE) are used to evaluate the model.

Research limitations/implications

The research study may have limitations in terms of the scope and generalisability of the findings. Further research is needed to explore the applicability of GOFHGM(1,1) in different fields and to improve the model’s performance.

Originality/value

The study contributes to the field by introducing a new grey prediction model that combines generalised fractal derivative and particle swarm optimisation algorithms. This integration enhances the accuracy and reliability of grey predictions and strengthens their applicability in various predictive applications.

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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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