Identification of sundep, leafhopper and fungus of paddy by using fuzzy SAW method

The process of disease identification of paddy must be in accordance with predetermined criteria. To assist in selecting the determination of participants, they must identify disease characteristics, a decision support system is needed. One method that can be used for decision support systems is FMA...

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Main Authors: Abadi, S., Hawi, A., Akla, Dacholfany, I., Huda, M., Teh, K.S.M., Walidi, J., Hashim, W., Maseleno, A.
Format: Article
Language:English
Published: 2020
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spelling my.uniten.dspace-133002020-03-16T08:12:16Z Identification of sundep, leafhopper and fungus of paddy by using fuzzy SAW method Abadi, S. Hawi, A. Akla Dacholfany, I. Huda, M. Teh, K.S.M. Walidi, J. Hashim, W. Maseleno, A. The process of disease identification of paddy must be in accordance with predetermined criteria. To assist in selecting the determination of participants, they must identify disease characteristics, a decision support system is needed. One method that can be used for decision support systems is FMADM (Fuzzy Multiple Addective Decision Making). Where in this study using the method of SAW (Simple Addictive Weighted) is to find the best alternative from several alternatives. Where the best alternative is based on predetermined criteria. This method was chosen because it was able to choose the best alternative, namely the best identification based on the criteria entered, then look for the weight score of each attribute, after the process of looking for ranking to get the best alternative, namely disease in paddy. © 2019, Advanced Scientific Research. All rights reserved. 2020-02-03T03:31:40Z 2020-02-03T03:31:40Z 2019 Article 10.31838/ijpr/2019.11.01.093 en
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
language English
description The process of disease identification of paddy must be in accordance with predetermined criteria. To assist in selecting the determination of participants, they must identify disease characteristics, a decision support system is needed. One method that can be used for decision support systems is FMADM (Fuzzy Multiple Addective Decision Making). Where in this study using the method of SAW (Simple Addictive Weighted) is to find the best alternative from several alternatives. Where the best alternative is based on predetermined criteria. This method was chosen because it was able to choose the best alternative, namely the best identification based on the criteria entered, then look for the weight score of each attribute, after the process of looking for ranking to get the best alternative, namely disease in paddy. © 2019, Advanced Scientific Research. All rights reserved.
format Article
author Abadi, S.
Hawi, A.
Akla
Dacholfany, I.
Huda, M.
Teh, K.S.M.
Walidi, J.
Hashim, W.
Maseleno, A.
spellingShingle Abadi, S.
Hawi, A.
Akla
Dacholfany, I.
Huda, M.
Teh, K.S.M.
Walidi, J.
Hashim, W.
Maseleno, A.
Identification of sundep, leafhopper and fungus of paddy by using fuzzy SAW method
author_facet Abadi, S.
Hawi, A.
Akla
Dacholfany, I.
Huda, M.
Teh, K.S.M.
Walidi, J.
Hashim, W.
Maseleno, A.
author_sort Abadi, S.
title Identification of sundep, leafhopper and fungus of paddy by using fuzzy SAW method
title_short Identification of sundep, leafhopper and fungus of paddy by using fuzzy SAW method
title_full Identification of sundep, leafhopper and fungus of paddy by using fuzzy SAW method
title_fullStr Identification of sundep, leafhopper and fungus of paddy by using fuzzy SAW method
title_full_unstemmed Identification of sundep, leafhopper and fungus of paddy by using fuzzy SAW method
title_sort identification of sundep, leafhopper and fungus of paddy by using fuzzy saw method
publishDate 2020
_version_ 1662758843009990656
score 13.160551