Dynamical prediction of two meteorological factors using the deep neural network and the long short-term memory $(2)$
Ki-Hong Shin, Jae-Won Jung, Ki-Ho Chang, Dong-In Lee, Cheol-Hwan You,, Kyungsik Kim

TL;DR
This study compares various neural network architectures, including LSTM, for predicting temperature and humidity across multiple cities, demonstrating LSTM's superior accuracy in meteorological forecasting.
Contribution
It introduces a comprehensive comparison of neural network models, especially LSTM variants, for meteorological prediction using multi-year city data, highlighting LSTM's effectiveness.
Findings
LSTM models outperform other neural networks in accuracy.
Mokpo's humidity prediction achieved RMSE of 5.732%.
Tonyeong's temperature prediction achieved RMSE of 0.866%.
Abstract
This paper presents the predictive accuracy using two-variate meteorological factors, average temperature and average humidity, in neural network algorithms. We analyze result in five learning architectures such as the traditional artificial neural network, deep neural network, and extreme learning machine, long short-term memory, and long-short-term memory with peephole connections, after manipulating the computer-simulation. Our neural network modes are trained on the daily time-series dataset during seven years (from 2014 to 2020). From the trained results for 2500, 5000, and 7500 epochs, we obtain the predicted accuracies of the meteorological factors produced from outputs in ten metropolitan cities (Seoul, Daejeon, Daegu, Busan, Incheon, Gwangju, Pohang, Mokpo, Tongyeong, and Jeonju). The error statistics is found from the result of outputs, and we compare these values to each…
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