Weather prediction is a subject that is constantly changing everywhere in the world because of the different methods that are applied. This study is done in the city of Guayaquil remembering that weather forecast has played a very important role for many people who belong to different fields of research because it needs to have a minimum margin of error in order to meet the different objectives of each researcher. This paper aims to find the best type of MLP or LSTM neural network model that has a lower margin of error when predicting the weather at a specific weather station in the aforementioned city. In order to assess the accuracy between these prediction models, the Euclidean estimation standard was used. With the results of this comparison, it is hoped to contribute to the prediction of the climate to be able to help not only the researchers but also the farmers, tourists, and people in general whose work depends on this topic.
CITATION STYLE
Pérez-Espinoza, C. M., Sanchez-Guerrero, J., Samaniego-Cobos, T., & Beltran-Robayo, N. (2019). Comparison between two deep learning models for temperature prediction at guayaquil. In Communications in Computer and Information Science (Vol. 1124 CCIS, pp. 17–29). Springer. https://doi.org/10.1007/978-3-030-34989-9_2
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