Aplikasi growing self organizing map dan bee colony optimization algorithm pada group technology = Application of growing self organizing map and bee colony optimization algorithm for group technology
Muhammad Rizki;
Amalia Suzianti, supervisor; Erlinda Muslim, supervisor; Akhmad Hidayatno, examiner; Maya Arlini Puspasari, examiner; Amar Rachman, examiner; Boy Nurtjahyo Moch., examiner
(Fakultas Teknik Universitas Indonesia, 2014)
|
[ABSTRAK Penelitian ini terdiri dari dua tahap. Growing self-organizing map (GSOM) algorithm danhybrid bee colony optimization (BCO) dan self-organizing map (SOM) untuk mengimproveSOM performance. Pada tahap pertama GSOM digunakan untuk menentukan SOM topologydan pada tahap kedua, hybrid BCOSOM digunakan untuk mengadjust SOM weights. MetodeBCOSOM akan dibandingkan dengan metode PSO, BCO, SOM, PSOSOM, SOM+PSO, danSOM+BCO dengan menggunakan 4 benchmark data sets (Iriss, Glass, Wine, dan Vowel).Dari hasil komputasi menunjukkan bahwa metode BCOSOM dapat mencari solusi yang lebihbaik dari algoritma lainnya. Dari hasil tersebut, BCOSOM digunakan pada GroupTechnology untuk menentukan part families pada komponen plat disebuah perusahaanmedical furniture di Yogyakarta. ABSTRACT ABSTRACT This research proposes a two stage method growing self organizing map GSOM algorithm and bee colony optimization BCO based self organizing map BSOSOM to improve SOM performance In the first stage GSOM is used to determine the SOM topology and then followed by BCOSOM to fine tune the SOM weights The proposed BCOSOM algorithm is compared with other algorithms PSO BCO SOM PSOSOM SOM PSO and SOM BCO using four benchmark data sets Iris Glass Wine and Vowel The computational result indicates that BCOSOM algorithm is able to find a better solution than other algorithms Furthermore the proposed algorithm has been also employed to Group Technology to cluster components into part families for a medical manufacture in Indonesia ; ABSTRACT This research proposes a two stage method growing self organizing map GSOM algorithm and bee colony optimization BCO based self organizing map BSOSOM to improve SOM performance In the first stage GSOM is used to determine the SOM topology and then followed by BCOSOM to fine tune the SOM weights The proposed BCOSOM algorithm is compared with other algorithms PSO BCO SOM PSOSOM SOM PSO and SOM BCO using four benchmark data sets Iris Glass Wine and Vowel The computational result indicates that BCOSOM algorithm is able to find a better solution than other algorithms Furthermore the proposed algorithm has been also employed to Group Technology to cluster components into part families for a medical manufacture in Indonesia ; ABSTRACT This research proposes a two stage method growing self organizing map GSOM algorithm and bee colony optimization BCO based self organizing map BSOSOM to improve SOM performance In the first stage GSOM is used to determine the SOM topology and then followed by BCOSOM to fine tune the SOM weights The proposed BCOSOM algorithm is compared with other algorithms PSO BCO SOM PSOSOM SOM PSO and SOM BCO using four benchmark data sets Iris Glass Wine and Vowel The computational result indicates that BCOSOM algorithm is able to find a better solution than other algorithms Furthermore the proposed algorithm has been also employed to Group Technology to cluster components into part families for a medical manufacture in Indonesia , ABSTRACT This research proposes a two stage method growing self organizing map GSOM algorithm and bee colony optimization BCO based self organizing map BSOSOM to improve SOM performance In the first stage GSOM is used to determine the SOM topology and then followed by BCOSOM to fine tune the SOM weights The proposed BCOSOM algorithm is compared with other algorithms PSO BCO SOM PSOSOM SOM PSO and SOM BCO using four benchmark data sets Iris Glass Wine and Vowel The computational result indicates that BCOSOM algorithm is able to find a better solution than other algorithms Furthermore the proposed algorithm has been also employed to Group Technology to cluster components into part families for a medical manufacture in Indonesia ] |
![]()
|
No. Panggil : | T43172 |
Entri utama-Nama orang : | |
Entri tambahan-Nama orang : | |
Entri tambahan-Nama badan : | |
Subjek : | |
Penerbitan : | Salemba: Fakultas Teknik Universitas Indonesia, 2014 |
Program Studi : |
Bahasa : | ind |
Sumber Pengatalogan : | LibUI ind rda |
Tipe Konten : | text |
Tipe Media : | unmediated ; computer |
Tipe Carrier : | volume ; online resource |
Deskripsi Fisik : | Xi, 51 pages. illustration.: 30 cm. + appendix |
Naskah Ringkas : | |
Lembaga Pemilik : | Universitas Indonesia |
Lokasi : | Perpustakaan UI, Lantai 3 |
No. Panggil | No. Barkod | Ketersediaan |
---|---|---|
T43172 | 15-18-534748115 | TERSEDIA |
Ulasan: |
Tidak ada ulasan pada koleksi ini: 20404429 |