location: Current position: Home >> Scientific Research >> Paper Publications

The linguistic forecasting of time series using improved fuzzy cognitive map

Hits:

Indexed by:期刊论文

Date of Publication:2013-09-01

Journal:International Journal of Computational Intelligence and Applications

Included Journals:EI、Scopus

Volume:12

Issue:3

ISSN No.:14690268

Abstract:Most researchers of time series forecasting devote to design and develop quantitative models for pursuing high accuracy of forecasting on the numerical level. However, in real world, the numerical accuracy is sometimes not necessary for human cognition and decision-making and the numerical results of forecasting based on quantitative model are deficient in interpretability, thus the development of qualitative forecasting model of time series becomes an evident challenge. In this paper, the improved fuzzy cognitive map (IFCM) are proposed first, and then it is applied to develop qualitative model for linguistic forecasting of time series together with fuzzy c-means clustering technology and real-coded genetic algorithm (RCGA). Two real life time series are used to test the developed forecasting model and compare with another method based on FCM, whose results show the developed FCM forecasting model is more simpler and high quality on the linguistic level. ? 2013 Imperial College Press.

Pre One:The modeling and prediction of time series based on synergy of high order fuzzy cognitive maps and fuzzy C-means clustering

Next One:Design of fault diagnosis system for coal-bed methane gathering process and research on the fault diagnosis for compressors