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Research on a Novel Kernel Based Grey Prediction Model and Its Applications

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  • Xin Ma

Abstract

The discrete grey prediction models have attracted considerable interest of research due to its effectiveness to improve the modelling accuracy of the traditional grey prediction models. The autoregressive GM model, abbreviated as ARGM , is a novel discrete grey model which is easy to use and accurate in prediction of approximate nonhomogeneous exponential time series. However, the ARGM is essentially a linear model; thus, its applicability is still limited. In this paper a novel kernel based ARGM model is proposed, abbreviated as KARGM . The KARGM has a nonlinear function which can be expressed by a kernel function using the kernel method, and its modelling procedures are presented in details. Two case studies of predicting the monthly gas well production are carried out with the real world production data. The results of KARGM model are compared to the existing discrete univariate grey prediction models, including ARGM , NDGM , DGM , and NGBMOP, and it is shown that the KARGM outperforms the other four models.

Suggested Citation

  • Xin Ma, 2016. "Research on a Novel Kernel Based Grey Prediction Model and Its Applications," Mathematical Problems in Engineering, Hindawi, vol. 2016, pages 1-9, December.
  • Handle: RePEc:hin:jnlmpe:5471748
    DOI: 10.1155/2016/5471748
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