CWE/1021/2017 当前世界环境 0973-4929 2320-8031 Enviro Research Publishers CWE--51-00 Weather Modeling Using Data-Driven Adaptive Rough-Neuro-Fuzzy Approach 1 , Department of Information Technology, VIT University, India. 2017-08-31 10.12944/CWE.12.2.27 Volume 12 Volume 12 429-435 Abstract

Recently, hybrid data-driven models have become appropriate predictive patterns in various hydrological forecast scenarios. Especially, meteorology has witnessed that there is a need for a much better approach to handle weather-related parameters intelligently.  To handle this challenging issue, this research intends to apply the fuzzy and ANN theories for developing hybridized adaptive rough-neuro-fuzzy intelligent system. . Assimilating the features of ANN and FIS has attracted the rising attention of researchers due to the growing requisite of adaptive intelligent systems to solve the real world requirements. The proposed model is capable of handling soft rule boundaries and linguistic variables to improve the prediction accuracy. The adaptive rough-neuro-fuzzy approach attained an enhanced prediction accuracy of 95.49 % and outperformed the existing techniques.

Keywords Rainfall prediction Data-driven approach 模糊和神经网络