Visualization and statistical analysis of fuzzy-neuro learning vector quantization based on particle swarm optimization for recognizing mixture odors

W. Jatmiko, Rochmatullah, B. Kusumoputro, H. Sanabila, K. Sekiyama, Toshio Fukuda
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引用次数: 7

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 previous work that FLVQ (Fuzzy Learning Vector 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 influence 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 show that the new recognition system (FLVQ-PSO) has produced higher capability compared to the earlier mentioned system.
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基于粒子群优化的模糊神经学习矢量量化混合气味识别的可视化与统计分析
采用16个石英谐振器敏感膜,基本共振频率为20 MHz作为传感器,研制了电子鼻系统,并通过各种神经网络对测量数据进行分析,作为模式识别系统。该系统具有较高的通用性,对各种单一气味甚至混合气味具有较高的识别概率;然而,该系统仍需要改进。为了提高系统的性能,正在寻求传感器和其他神经网络的发展。本文从神经网络系统的角度阐述了该系统性能的提高。我们之前的工作已经证明,与其他神经网络相比,FLVQ(模糊学习向量量化)即LVQ(学习向量量化)与模糊理论相结合具有较高的识别能力,但FLVQ在选择最佳码本向量方面存在弱点,这将影响识别结果。在此基础上,引入粒子群算法(PSO)来选择最佳的码本向量。实验结果表明,新识别系统(FLVQ-PSO)比之前的系统具有更高的识别能力。
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