Litcius/Paper detail

Deep echo state network: a novel machine learning approach to model dew point temperature using meteorological variables

Meysam Alizamir, Sungwon Kim, Özgür Kişi, Mohammad Zounemat‐Kermani

2020Hydrological Sciences Journal37 citationsDOIOpen Access PDF

Abstract

The potential of different models – deep echo state network (DeepESN), extreme learning machine (ELM), extra tree (ET), and regression tree (RT) – in estimating dew point temperature by using meteorological variables is investigated. The variables consist of daily records of average air temperature, atmospheric pressure, relative humidity, wind speed, solar radiation, and dew point temperature (Tdew) from Seoul and Incheon stations, Republic of Korea. Evaluation of the model performance shows that the models with five and three-input variables yielded better accuracy than the other models in these two stations, respectively. In terms of root-mean-square error, there was significant increase in accuracy when using the DeepESN model compared to the ELM (18%), ET (58%), and RT (64%) models at Seoul station and the ELM (12%), ET (23%), and RT (49%) models at Incheon. The results show that the proposed DeepESN model performed better than the other models in forecasting Tdew values.

Topics & Concepts

Dew pointWind speedExtreme learning machineMeteorologyRelative humidityEnvironmental scienceMean squared errorDewAir temperatureHumidityRegression analysisStatisticsMathematicsArtificial neural networkComputer scienceGeographyMachine learningCondensationHydrological Forecasting Using AINeural Networks and Reservoir ComputingMeteorological Phenomena and Simulations
Deep echo state network: a novel machine learning approach to model dew point temperature using meteorological variables | Litcius