急性肾损伤患者呼出气体标志物电子鼻系统设计

Leĭbovich Li, Yao Zheng, Chao Liu, Hongyin Zhu
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引用次数: 1

摘要

为了快速准确地获取急性肾损伤患者呼出气体标志物浓度信息,本文提出了一种基于金属氧化物气体传感器阵列和BP神经网络模型的VOCs定量检测系统。首先,利用四种金属氧化物气体传感器组成传感器阵列,将测量到的气体成分和浓度转换成电信号波形,对传感器阵列信号进行特征提取,得到特征矩阵;然后,利用BP神经网络模型对目标气体浓度进行预测,并对神经网络的拓扑设计和参数进行优化。
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Design of an Electronic Nose System for Exhaled Gas Markers of Acute Kidney Injury Patients
In order to obtain the information of exhaled gas marker concentration of acute kidney injury patients quickly and accurately, a quantitative VOCs detection system based on metal oxide gas sensors array and BP neural network model is proposed in this paper. Firstly, four kinds of metal oxide gas sensors are used to form a sensor array to convert the measured gas components and concentrations into electrical signal waveforms, and the feature matrix is obtained by feature extraction of the sensor array's signals. Then, a BP neural network model is used to predict the target gas concentrations, and the topology design and parameters of the neural network are optimized.
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