Publication | Open Access
A Non-Homogeneous Hidden Markov Model for Precipitation Occurrence
408
Citations
18
References
1999
Year
EngineeringWeather ForecastingClimate ModelingEarth SciencePrecipitationPrecipitation ProcessesNumerical Weather PredictionAtmospheric CirculationHidden Markov ModelApplied MeteorologyHydroclimate ModelingClimate ForecastingPrecipitation OccurrenceHydrometeorologyMeteorologyRain StationsGeographyFitted ModelClimate DynamicsClimatologyFlood Risk Management
SUMMARY A non-homogeneous hidden Markov model is proposed for relating precipitation occurrences at multiple rain-gauge stations to broad scale atmospheric circulation patterns (the so-called ‘downscaling problem’). We model a 15-year sequence of winter data from 30 rain stations in south-western Australia. The first 10 years of data are used for model development and the remaining 5 years are used for model evaluation. The fitted model accurately reproduces the observed rainfall statistics in the reserved data despite a shift in atmospheric circulation (and, consequently, rainfall) between the two periods. The fitted model also provides some useful insights into the processes driving rainfall in this region.
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