Fuzzy time series sliding window model for rainfall forecasting / Siti Nor Fathihah Azahari

Fuzzy time series (FTS) is popular among researchers to forecast rainfall. The division group of interval (u,) in FTS is one of the critical factors that affect the accuracy of forecasting result. Most of the previous studies used the same division group of u> which is 4, 3, and 2. This study def...

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主要作者: Azahari, Siti Nor Fathihah
格式: Thesis
语言:English
出版: 2017
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spelling my-uitm-ir.675682023-03-06T09:09:21Z Fuzzy time series sliding window model for rainfall forecasting / Siti Nor Fathihah Azahari 2017 Azahari, Siti Nor Fathihah Fuzzy logic Rain and rainfall Fuzzy time series (FTS) is popular among researchers to forecast rainfall. The division group of interval (u,) in FTS is one of the critical factors that affect the accuracy of forecasting result. Most of the previous studies used the same division group of u> which is 4, 3, and 2. This study defined the most suitable division group of u, from several division groups, to obtain Sj. The selection of division group w, is done by defining the average of RMSE that is calculated after each division groups of u, is used and tested to the rainfall data. Rainfall data from four Perlis gauge station are selected and deployed in this study which are taken from Department of Irrigation and Drainage (DID). Then, the forecasted rainfall results are validate using RMSE to choose the smallest average RMSE. The chosen division groups of u,, is applied in FTSSW model. At the same time, FTS is combined with Sliding Window Algorithm (SWA) to enhance the model. Several enhancements made to SWA is the second objective in this study. SWA is enhanced by defining the value of temporal prediction (TP) to be fuzzified to S,. Then, the Sj of TP values are defuzzified to the forecasted rainfall values based on the if-then rules which also analysed the trend of fuzzified TP values. Hence, both the enhanced models are combined to propose the fuzzy time series sliding window (FTSSW) model to forecast rainfall. Then the proposed model is validated, using two types of error measurement, which are root mean squared error (RMSE) and relative geometric root mean squared error (relative GRMSE). The result of of RMSE and relative GRMSE of FTSSW model is compared to SWA by Kapoor and Bedi (2013). Result show that the proposed model, FTSSW, is better and produces satisfactory forecasting result compared to the previous methods of SWA, according to the smallest value of RSME and relative GRMSE. The FTSSW model is suggested be tested with other types of data for forecasting. 2017 Thesis https://ir.uitm.edu.my/id/eprint/67568/ https://ir.uitm.edu.my/id/eprint/67568/1/67568.pdf text en public masters Universiti Teknologi MARA (UiTM) Faculty of Computer and Mathematical Sciences Saian, Rizauddin
institution Universiti Teknologi MARA
collection UiTM Institutional Repository
language English
advisor Saian, Rizauddin
topic Fuzzy logic
Rain and rainfall
spellingShingle Fuzzy logic
Rain and rainfall
Azahari, Siti Nor Fathihah
Fuzzy time series sliding window model for rainfall forecasting / Siti Nor Fathihah Azahari
description Fuzzy time series (FTS) is popular among researchers to forecast rainfall. The division group of interval (u,) in FTS is one of the critical factors that affect the accuracy of forecasting result. Most of the previous studies used the same division group of u> which is 4, 3, and 2. This study defined the most suitable division group of u, from several division groups, to obtain Sj. The selection of division group w, is done by defining the average of RMSE that is calculated after each division groups of u, is used and tested to the rainfall data. Rainfall data from four Perlis gauge station are selected and deployed in this study which are taken from Department of Irrigation and Drainage (DID). Then, the forecasted rainfall results are validate using RMSE to choose the smallest average RMSE. The chosen division groups of u,, is applied in FTSSW model. At the same time, FTS is combined with Sliding Window Algorithm (SWA) to enhance the model. Several enhancements made to SWA is the second objective in this study. SWA is enhanced by defining the value of temporal prediction (TP) to be fuzzified to S,. Then, the Sj of TP values are defuzzified to the forecasted rainfall values based on the if-then rules which also analysed the trend of fuzzified TP values. Hence, both the enhanced models are combined to propose the fuzzy time series sliding window (FTSSW) model to forecast rainfall. Then the proposed model is validated, using two types of error measurement, which are root mean squared error (RMSE) and relative geometric root mean squared error (relative GRMSE). The result of of RMSE and relative GRMSE of FTSSW model is compared to SWA by Kapoor and Bedi (2013). Result show that the proposed model, FTSSW, is better and produces satisfactory forecasting result compared to the previous methods of SWA, according to the smallest value of RSME and relative GRMSE. The FTSSW model is suggested be tested with other types of data for forecasting.
format Thesis
qualification_level Master's degree
author Azahari, Siti Nor Fathihah
author_facet Azahari, Siti Nor Fathihah
author_sort Azahari, Siti Nor Fathihah
title Fuzzy time series sliding window model for rainfall forecasting / Siti Nor Fathihah Azahari
title_short Fuzzy time series sliding window model for rainfall forecasting / Siti Nor Fathihah Azahari
title_full Fuzzy time series sliding window model for rainfall forecasting / Siti Nor Fathihah Azahari
title_fullStr Fuzzy time series sliding window model for rainfall forecasting / Siti Nor Fathihah Azahari
title_full_unstemmed Fuzzy time series sliding window model for rainfall forecasting / Siti Nor Fathihah Azahari
title_sort fuzzy time series sliding window model for rainfall forecasting / siti nor fathihah azahari
granting_institution Universiti Teknologi MARA (UiTM)
granting_department Faculty of Computer and Mathematical Sciences
publishDate 2017
url https://ir.uitm.edu.my/id/eprint/67568/1/67568.pdf
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