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Imputation of rainfall data using the sine cosine function fitting neural network

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dc.rights.license CC BY eng
dc.contributor.author Chiu, P.C. cze
dc.contributor.author Selamat, Ali Bin cze
dc.contributor.author Krejcar, Ondřej cze
dc.contributor.author Kuok, K.K. cze
dc.contributor.author Herrera-Viedma, E. cze
dc.contributor.author Fenza, G. cze
dc.date.accessioned 2025-12-05T20:35:59Z
dc.date.available 2025-12-05T20:35:59Z
dc.date.issued 2021 eng
dc.identifier.issn 1989-1660 eng
dc.identifier.uri http://hdl.handle.net/20.500.12603/2507
dc.description.abstract Missing rainfall data have reduced the quality of hydrological data analysis because they are the essential input for hydrological modeling. Much research has focused on rainfall data imputation. However, the compatibility of precipitation (rainfall) and non-precipitation (meteorology) as input data has received less attention. First, we propose a novel pre-processing mechanism for non-precipitation data by using principal component analysis (PCA). Before the imputation, PCA is used to extract the most relevant features from the meteorological data. The final output of the PCA is combined with the rainfall data from the nearest neighbor gauging stations and then used as the input to the neural network for missing data imputation. Second, a sine cosine algorithm is presented to optimize neural network for infilling the missing rainfall data. The proposed sine cosine function fitting neural network (SC-FITNET) was compared with the sine cosine feedforward neural network (SC-FFNN), feedforward neural network (FFNN) and long short-term memory (LSTM) approaches. The results showed that the proposed SC-FITNET outperformed LSTM, SC-FFNN and FFNN imputation in terms of mean absolute error (MAE), root mean square error (RMSE) and correlation coefficient (R), with an average accuracy of 90.9%. This study revealed that as the percentage of missingness increased, the precision of the four imputation methods reduced. In addition, this study also revealed that PCA has potential in pre-processing meteorological data into an understandable format for the missing data imputation. © 2021, Universidad Internacional de la Rioja. All rights reserved. eng
dc.format p. 39-48 eng
dc.language.iso eng eng
dc.publisher Universidad Internacional de la Rioja eng
dc.relation.ispartof International Journal of Interactive Multimedia and Artificial Intelligence, volume 6, issue: 7 eng
dc.subject Deep Learning eng
dc.subject Imputation eng
dc.subject Missing Rainfall Data eng
dc.subject Principal Component Analysis (PCA) eng
dc.subject Sine Cosine Neural Network eng
dc.title Imputation of rainfall data using the sine cosine function fitting neural network eng
dc.type article eng
dc.identifier.obd 43877958 eng
dc.identifier.doi 10.9781/ijimai.2021.08.013 eng
dc.publicationstatus postprint eng
dc.peerreviewed yes eng
dc.source.url https://www.ijimai.org/journal/sites/default/files/2021-08/ijimai6_7_4.pdf cze
dc.relation.publisherversion https://www.ijimai.org/journal/sites/default/files/2021-08/ijimai6_7_4.pdf eng
dc.rights.access Open Access eng


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