The following information was submitted:
Transactions: Please, select the Journal that you submit to
Transactions ID Number: 32-694
Full Name: Wisnu Jatmiko
Position: Doctor (Researcher)
Age: ON
Sex: Male
Address: Faculty of Computer Science, University of Indonesia, Kampus UI Depok
Country: INDONESIA
Tel: 7863419
Tel prefix: +62-21
Fax: +62-21-7863419
E-mail address: wisnuj@cs.ui.ac.id
Other E-mails: wisnuj@yahoo.com
Title of the Paper: Fuzzy Learning Vector Quantization Based on Particle Swarm Optimization For Artificial Odor Dicrimination System
Authors as they appear in the Paper: Wisnu Jatmiko, Rochmatullah, B. Kusumoputro, K. Sekiyama and T. Fukuda
Email addresses of all the authors: wisnuj@cs.ui.ac.id, sekiyama@mein.nagoya-u.ac.jp, fukuda@mein.nagoya-u.ac.jp
Number of paper pages: 14
Abstract: An electronic nose system had been developed by using 16 quartz resonator sensitive membranes-basic resonance frequencies 20 MHz as a sensor, and analyzed the measurement data through various neural network as a pattern recognition system. The developed system showed high recognition probability to discriminate various single odors even mixture odor to its high generality properties; however the system still need improvement. In order to improve the performance of the proposed system, development of the sensor and other neural network are being sought. This paper explains the improvement of the capability of that system from the point of neural network system. It has been proved from our previos work that FLVQ (Fuzzy Learning Vectoq Quantization) which is LVQ (Learning Vector Quantization) together with fuzzy theory shows high recognition capability compared with other neural networks, however FLVQ have a weakness for selecting the best codebook vector that will in!
fluence the result of recognition. This problem will be anticipated by adding the PSO (Particle Swarm Optimization) method to select the best codebook vector. Then experiment showt that the new recognition system (FLVQ-PSO) has produced higher capability compared to the earlier mentioned system.
Keywords: Fuzzy Learning Vector Quantization, Matrix Similarity Analysis, Particle Swarm Optimization, Codebook, Electronic Nose, Odor
EXTENSION of the file: .pdf
Special (Invited) Session:
Organizer of the Session:
How Did you learn about congress: lily@cs.ui.ac.id
IP ADDRESS: 152.118.24.10