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Exploring hybrid models for short-term local weather forecasting in IoT environment

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dc.title Exploring hybrid models for short-term local weather forecasting in IoT environment en
dc.contributor.author Tran, Toai Kim
dc.contributor.author Šenkeřík, Roman
dc.contributor.author Hanh, Vo Thi Xuan
dc.contributor.author Huan, Vo Minh
dc.contributor.author Ulrich, Adam
dc.contributor.author Musil, Marek
dc.contributor.author Zelinka, Ivan
dc.relation.ispartof Mendel
dc.identifier.issn 1803-3814 Scopus Sources, Sherpa/RoMEO, JCR
dc.date.issued 2023
utb.relation.volume 29
utb.relation.issue 2
dc.citation.spage 295
dc.citation.epage 306
dc.type article
dc.language.iso en
dc.publisher Brno University of Technology
dc.identifier.doi 10.13164/mendel.2023.2.295
dc.relation.uri https://mendel-journal.org/index.php/mendel/article/view/287
dc.relation.uri https://mendel-journal.org/index.php/mendel/article/view/287/225
dc.relation.uri https://doi.org/10.13164/mendel.2023.2.295
dc.subject ARIMA en
dc.subject hybrid ARIMA-SVR en
dc.subject hybrid RF-LSTM en
dc.subject IoT en
dc.subject LSTM en
dc.subject machine learning en
dc.subject random forest en
dc.subject short-term prediction en
dc.subject SVR en
dc.subject weather forecast en
dc.subject weather station design en
dc.description.abstract This paper explores using and hybridizing simple prediction models to maximize the accuracy of local weather prediction while maintaining low computational effort and the need to process and acquire large volumes of data. A hybrid RF-LSTM model is proposed and evaluated in this research paper for the task of short-term local weather forecasting. The local weather stations are built within an acceptable radius of the measured area and are designed to provide a short period of forecasting-usually within one hour. The lack of local weather data might be problematic for an accurate short-term valuable prediction in sustainable applications like agriculture, transportation, energy management, and daily life. Weather forecasting is not trivial because of the non-linear nature of time series. Thus, traditional forecasting methods cannot predict the weather accurately. The advantage of the ARIMA model lies in forecasting the linear part, while the SVR model indicates the non-linear characteristic of the weather data. Both non-linear and linear approaches can represent the combined model. The hybrid ARIMA-SVR model strengthens the matched points of the ARIMA model and the SVR model in weather forecasting. The LSTM and random forest are both popular algorithms used for regression problems. LSTM is more suitable for tasks involving sequential data with long-term dependencies. Random Forest leverages the wisdom of crowds by combining multiple decision trees, providing robust predictions, and reducing overfitting. Hybrid Random forest-LSTM potentially leverages the robustness and feature importance of Random Forest along with the ability of LSTM to capture sequential dependencies. The comparison results show that the hybrid RF-LSTM model reduces the forecasting errors in metrics of MAE, R-squared, and RMSE. The proposed hybrid model can also capture the actual temperature trend in its prediction performance, which makes it even more relevant for many other possible decision-making steps in sustainable applications. Furthermore, this paper also proposes the design of a weather station based on a real-time edge IoT system. The RF-LSTM leverages the parallelized characteristics of each decision tree in the forest to accelerate the training process and faster inferences. Thus, the hybrid RF-LSTM model offers advantages in terms of faster execution speed and computational efficiency in both PC and Raspberry Pi boards. However, the RF-LSTM consumes the highest peak memory usage due to being a combination of two different models. en
utb.faculty Faculty of Applied Informatics
dc.identifier.uri http://hdl.handle.net/10563/1011894
utb.identifier.obdid 43885307
utb.identifier.scopus 2-s2.0-85183116276
utb.source j-scopus
dc.date.accessioned 2024-02-14T13:51:56Z
dc.date.available 2024-02-14T13:51:56Z
dc.rights Attribution-NonCommercial-ShareAlike 4.0 International
dc.rights.uri https://creativecommons.org/licenses/by-nc-sa/4.0/
dc.rights.access openAccess
utb.contributor.internalauthor Ulrich, Adam
utb.contributor.internalauthor Musil, Marek
utb.fulltext.affiliation Toai Kim Tran a, Roman Senkerik b, Hanh Thi Xuan Vo a, Huan Minh Vo a, Adam Ulrich c, Marek Musil c,Ivan Zelinka b a Ho Chi Minh University of Technology and Education, Vietnam b VSB-Technical University of Ostrava, Ostrava-Poruba, Czech Repulic c Tomas Bata University, Zlin, Czech Republic
utb.fulltext.dates Received:16 November 2023 Accepted:14 December 2023 Online:14 December 2023 Published:20 December 2023
utb.fulltext.sponsorship Supported by Internal Grant Agency of Tomas Bata University under project no. IGA/CebiaTech/2023/004, and by the resources of A.I.Lab at the Faculty of Applied Informatics, Tomas Bata University in Zlin, Czech Republic. Further supported by the European Union under the REFRESH — Research Excellence For Region Sustainability and High-tech Industries project number CZ.10.03.01/00/22-003/0000048 via the Operational Programme Just Transition. The following grants are also acknowledged for the financial support provided for this research: grant of SGS No. SP2023/050, VŠB-Technical University of Ostrava, Czech Republic.
utb.scopus.affiliation Ho Chi Minh University of Technology and Education, Viet Nam; VSB-Technical University of Ostrava, Poruba, Ostrava, Czech Republic; Tomas Bata University, Zlin, Czech Republic
utb.fulltext.projects IGA/CebiaTech/2023/004
utb.fulltext.projects CZ.10.03.01/00/22-003/0000048
utb.fulltext.projects SP2023/050
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