基于模糊神经网络的人工嗅觉系统烟气监测

Bo Zhou, Shitian Zhao, Guohua Cai
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引用次数: 0

摘要

研究了基于金属氧化物气体传感器阵列的人工嗅觉技术在不同焚烧温度下烟气在线监测中的应用潜力。在650至950°C的温度下收集了120个烟道气样品的传感器信号。统计方法采用主成分分析(PCA)、线性判别分析(LDA)和模糊神经网络(FNN)。采用PCA和LDA对数据集进行降维和可视化处理。该模型的识别准确率高达85%。从而提出了一种判别不同焚烧温度下烟气的有效方法。
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Monitoring the Flue Gas Using a Fuzzy Neural Network Based Artificial Olfactory System
The potential of artificial olfactory technique for on-line monitoring of waste flue gas at different incineration temperatures was examined based on a metal oxide gas sensors array. The sensors signals from 120 samples of flue gas were collected at temperatures from 650 to 950°C. Statistical methods used in this study were principal component analysis (PCA), Linear discriminant analysis (LDA) and Fuzzy neural network (FNN). PCA and LDA were used to reduce the dimensionality and visualization of datasets. The FNN model was achieved with a high discrimination accuracy rate of 85%. Thus, an effective way to discriminate flue gas under different incineration temperatures was put forward.
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