Authors
Nawaf Abdulla, Mehmet Demirci, Suat Ozdemir
Publication date
2022/11/1
Journal
Engineering Applications of Artificial Intelligence
Volume
116
Pages
105440
Publisher
Pergamon
Description
Deep learning has emerged as a promising tool in time-series prediction tasks such as weather forecasting, and adaptive models can deal with dynamic data more effectively. In this work, we first investigate how successfully meteorological features can be predicted by a deep learning model based on long-short-term memory (LSTM). Then, we endeavor to improve the prediction model’s performance by employing various LSTM types and choosing a model type that provides robust and accurate results. After that, we extend the proposed model to deal with univariate and multivariate problems, and we compare them. Finally, we apply the adaptive learning concept to the selected model by retraining and updating the model periodically to improve its accuracy. The experimental findings demonstrate that applying adaptive learning in the bidirectional LSTM-based model decreases the prediction error by 45 …
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Scholar articles
N Abdulla, M Demirci, S Ozdemir - Engineering Applications of Artificial Intelligence, 2022