Mathematics (Nov 2022)

Polynomial Fuzzy Information Granule-Based Time Series Prediction

  • Xiyang Yang,
  • Shiqing Zhang,
  • Xinjun Zhang,
  • Fusheng Yu

DOI
https://doi.org/10.3390/math10234495
Journal volume & issue
Vol. 10, no. 23
p. 4495

Abstract

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Fuzzy information granulation transfers the time series analysis from the numerical platform to the granular platform, which enables us to study the time series at a different granularity. In previous studies, each fuzzy information granule in a granular time series can reflect the average, range, and linear trend characteristics of the data in the corresponding time window. In order to get a more general information granule, this paper proposes polynomial fuzzy information granules, each of which can reflect both the linear trend and the nonlinear trend of the data in a time window. The distance metric of the proposed information granules is given theoretically. After studying the distance measure of the polynomial fuzzy information granule and its geometric interpretation, we design a time series prediction method based on the polynomial fuzzy information granules and fuzzy inference system. The experimental results show that the proposed prediction method can achieve a good long-term prediction.

Keywords