Publication | Open Access
Neural Fuzzy Inference System-Based Weather Prediction Model and Its Precipitation Predicting Experiment
24
Citations
36
References
2014
Year
Fuzzy SystemsMachine LearningEngineeringFuzzy ModelingNeural NetworkPrecipitation Predicting ExperimentWeather ForecastingIntelligent SystemsEarth ScienceProbabilistic ForecastingNumerical Weather PredictionData ScienceSystems EngineeringFuzzy Natural Language ProcessingHydrometeorologyMeteorologyFuzzy LogicPredictive AnalyticsComputer ScienceForecastingIntelligent ForecastingFuzzy Inference SystemsClimatologyNeuro-fuzzy SystemFuzzy Expert SystemWeather PredictionArtificial Neural NetworkIntelligent Systems Engineering
We propose a weather prediction model in this article based on neural network and fuzzy inference system (NFIS-WPM), and then apply it to predict daily fuzzy precipitation given meteorological premises for testing. The model consists of two parts: the first part is the “fuzzy rule-based neural network”, which simulates sequential relations among fuzzy sets using artificial neural network; and the second part is the “neural fuzzy inference system”, which is based on the first part, but could learn new fuzzy rules from the previous ones according to the algorithm we proposed. NFIS-WPM (High Pro) and NFIS-WPM (Ave) are improved versions of this model. It is well known that the need for accurate weather prediction is apparent when considering the benefits. However, the excessive pursuit of accuracy in weather prediction makes some of the “accurate” prediction results meaningless and the numerical prediction model is often complex and time-consuming. By adapting this novel model to a precipitation prediction problem, we make the predicted outcomes of precipitation more accurate and the prediction methods simpler than by using the complex numerical forecasting model that would occupy large computation resources, be time-consuming and which has a low predictive accuracy rate. Accordingly, we achieve more accurate predictive precipitation results than by using traditional artificial neural networks that have low predictive accuracy.
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