Weather Forecasting Models Using Neural Networks and Adaptive Neuro Fuzzy Inference for Two Case Studies at Huoston, Texas and Dallas States
Author(s) -
Chelang A. Arslan,
Enas Kayis
Publication year - 2018
Publication title -
journal of asian scientific research
Language(s) - English
Resource type - Journals
eISSN - 2226-5724
pISSN - 2223-1331
DOI - 10.18488/journal.2.2018.81.1.12
Subject(s) - adaptive neuro fuzzy inference system , artificial neural network , inference system , precipitation , inference , computer science , neuro fuzzy , artificial intelligence , machine learning , fuzzy inference system , data mining , meteorology , fuzzy logic , fuzzy control system , geography
Forecasting of precipitation is one of the most challenging operational tasks done by hydrologists. This operation can be described as most complicated procedure that includes multiple specialized fields of expertise. In this research a comprehensive study was employed to forecast daily precipitation depending on different weather parameters. This was done by using two different methods which are back propagation neural networks BPNN and adaptive neuro inference system ANFIS. Two case studies were selected for this operation which are Huoston, Texas and Dallas, Texas. The high performance of the applied models in forecasting the daily precipitation was concluded especially by using auxiliary weather data with the lagged day precipitation values since the BPNN and ANFIS were able to learn from continuous input data
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