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Establishment of Dynamic Evolving Neural‐Fuzzy Inference System Model for Natural Air Temperature Prediction

Suraj Kumar Bhagat, Tiyasha Tiyasha, Zainab Al-Khafaji, Patrick Laux, Ahmed A. Ewees, Tarik A. Rashid, Sinan Q. Salih, Roland Yonaba, Ufuk Beyaztaş, Zaher Mundher Yaseen‬‬‬‬‬‬‬‬‬‬‬‬‬‬‬‬

2022Complexity18 citationsDOIOpen Access PDF

Abstract

Air temperature (AT) prediction can play a significant role in studies related to climate change, radiation and heat flux estimation, and weather forecasting. This study applied and compared the outcomes of three advanced fuzzy inference models, i.e., dynamic evolving neural‐fuzzy inference system (DENFIS), hybrid neural‐fuzzy inference system (HyFIS), and adaptive neurofuzzy inference system (ANFIS) for AT prediction. Modelling was done for three stations in North Dakota (ND), USA, i.e., Robinson, Ada, and Hillsboro. The results reveal that FIS type models are well suited when handling highly variable data, such as AT, which shows a high positive correlation with average daily dew point (DP), total solar radiation (TSR), and negative correlation with average wind speed (WS). At the Robinson station, DENFIS performed the best with a coefficient of determination ( R 2 ) of 0.96 and a modified index of agreement (md) of 0.92, followed by ANFIS with R 2 of 0.94 and md of 0.89, and HyFIS with R 2 of 0.90 and md of 0.84. A similar result was observed for the other two stations, i.e., Ada and Hillsboro stations where DENFIS performed the best with R 2 : 0.953/0.960, md: 0.903/0.912, then ANFIS with R 2 : 0.943/0.942, md: 0.888/0.890, and HyFIS with R 2 : 0.908/0.905, md: 0.845/0.821, respectively. It can be concluded that all three models are capable of predicting AT with high efficiency by only using DP, TSR, and WS as input variables. This makes the application of these models more reliable for a meteorological variable with the need for the least number of input variables. The study can be valuable for the areas where the climatological and seasonal variations are studied and will allow providing excellent prediction results with the least error margin and without a huge expenditure.

Topics & Concepts

Adaptive neuro fuzzy inference systemInference systemArtificial neural networkDew pointFuzzy inference systemComputer scienceInferenceCorrelation coefficientAir temperatureWind speedMeteorologySunshine durationEnvironmental scienceFuzzy logicArtificial intelligenceMachine learningFuzzy control systemRelative humidityGeographyAir Quality Monitoring and ForecastingSolar Radiation and PhotovoltaicsHydrological Forecasting Using AI
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