Prediction of relative humidity based on long short-term memory network

The main goal of this paper to evaluate the performance of the proposed long short-term memory (LSTM)- basis relative humidity (RH) prediction model. Computational physics learning theory is a subfield in artificial intelligence. In this paper, we use the real observed weather data of RH from synopt...

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Hauptverfasser: Hutapea, Marlyna Infryanty, Pratiwi, Yolanda Yulianti, Sarkis, Indra M., Jaya, Indra Kelana, Sinambela, Marzuki
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:The main goal of this paper to evaluate the performance of the proposed long short-term memory (LSTM)- basis relative humidity (RH) prediction model. Computational physics learning theory is a subfield in artificial intelligence. In this paper, we use the real observed weather data of RH from synoptic station location as an important aspect and effect in weather and climate and using machine learning approach basis on the LSTM neural network, which is a type of recurrent neural network (RNN). We use a machine learning approach to compute the relative humidity basis on the LSTM model. The LSTM is trained by using two years of climate data (from January 2008 to December 2009). LSTM is capable of forecasting complex univariate relative humidity time series with strong no-stationarity. The result shows the usefulness of LSTM and out performs traditional forecasting methods in the challenging relative humidity record problem.
ISSN:0094-243X
1551-7616
DOI:10.1063/5.0003171