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Combined Forecasting of Rainfall Based on Fuzzy Clustering and Cross Entropy
2017
Entropy
Rainfall is an essential index to measure drought, and it is dependent upon various parameters including geographical environment, air temperature and pressure. The nonlinear nature of climatic variables leads to problems such as poor accuracy and instability in traditional forecasting methods. In this paper, the combined forecasting method based on data mining technology and cross entropy is proposed to forecast the rainfall with full consideration of the time-effectiveness of historical data.
doi:10.3390/e19120694
fatcat:wz5lsdb7pfgavnzmlw2jzcebya