Publication | Open Access
Twenty‐four hour predictions of <i>f</i><sub>0</sub><i>F</i><sub>2</sub> using time delay neural networks
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Citations
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References
2000
Year
EngineeringMachine LearningNeural Networks (Machine Learning)High Solar ActivityWeather ForecastingSolar-terrestrial InteractionRecurrent Neural NetworkEarth ScienceSocial SciencesGeophysicsGeospace PhysicsData ScienceAtmospheric ScienceNonlinear Time SeriesFeed‐forward Neural NetworkPredictive AnalyticsTemporal Pattern RecognitionNeural Networks (Computational Neuroscience)Computer ScienceForecastingTime DelaySpace WeatherPredictive LearningSunspot StudiesSolar VariabilityHour PredictionsSatellite MeteorologyIonosphereTime Perception
The use of time delay feed‐forward neural networks to predict the hourly values of the ionospheric F 2 layer critical frequency, f 0 F 2 , 24 hours ahead, have been examined. The 24 measurements of f 0 F 2 per day are reduced to five coefficients with principal component analysis. A time delay line of these coefficients is then used as input to a feed‐forward neural network. Also included in the input are the 10.7 cm solar flux and the geomagnetic index Ap . The network is trained to predict measured f 0 F 2 data from 1965 to 1985 at Slough ionospheric station and validated on an independent validation set from the same station for the periods 1987–1990 and 1992–1994. The results are compared with two different autocorrelation methods for the years 1986 and 1991, which correspond to low and high solar activity, respectively.
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