The Journal of Grey System ›› 2023, Vol. 35 ›› Issue (4): 154-171.
Previous Articles Next Articles
Online:
Published:
Abstract: Some grey prediction models suffer from outliers and overfitting, and their prediction performance can be improved. Based on the fractional grey model (FGM) and the fractional time delayed grey model (FTDGM), an improved fractional single optimization parameter grey model (IFSGM) is proposed in this paper. A timetranslation power term is used to reduce model overfitting. The data is pre-processed to reduce the influence of outliers based on data transformation in cumulants and summations. The convolutional computational formulation is used to perform the prediction and improve the prediction effect. The genetic optimization algorithm is used to optimize the order of the fractional cumulants, find the optimal value of the order, and improve the model fit and prediction effect. In 6 data sets, the IFSGM and the 7 grey models are compared and tested. The experimental results show that IFSGM achieves excellent prediction performance.
Key words: Grey Model, Fractional Order, Forecast, Optimization
Jiangtao Wei, Yonghong Wu. Improved Fractional Order Single Optimization Parameter Grey Model[J]. The Journal of Grey System, 2023, 35(4): 154-171.
0 / / Recommend
Add to citation manager EndNote|Ris|BibTeX
URL: https://jgrey.nuaa.edu.cn/EN/
https://jgrey.nuaa.edu.cn/EN/Y2023/V35/I4/154