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An In2O3 Nanotubes based Gas Sensor Array combined with Machine Learning Algorithms for Trimethylamine Detection

机译:基于IN2O3纳米管的气体传感器阵列与三甲胺检测的机器学习算法联合使用

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This work focuses on developing an electronic nose system with machine learning algorithm for detection of trimethylamine (TMA). Pure and Ga-doped In2O3 nanotubes are synthesized by a simple electrospinning method, and four kinds of gas sensors (pristine, 1% Ga, 10% Ga, and 20% Ga-doped In2O3) are fabricated to form a sensor array. Results show that the sensor array can classify TMA effectively from interference gases (xylene, ethanol, hydrogen sulfide) by a support vector machine (SVM) algorithm. Several algorithms, including radial basis function neural network (RBFNN), back propagation neural network (BPNN) and principal component analysis combined with linear regression (PCA-LR), are used to predict the concentration level of each gas. For TMA gas, the trained algorithms can predict its concentration with average relative errors of 1.22% for RBFNN, 2.5% for BPNN and 13.34% for PCA-LR. Furthermore, the binary mixtures of TMA and ethanol are measured and used to train the above algorithms, and the lowest average relative error of 1.74% is achieved in the case of RBFNN algorithm.
机译:这项工作侧重于开发带有机器学习算法的电子鼻系统,用于检测三甲胺(TMA)。纯粹和常掺杂 2 O. 3 纳米管通过简单的静电纺丝方法合成,四种气体传感器(原始,1%Ga,10%Ga,以及20%Ga-掺杂 2 O. 3 )制造成形成传感器阵列。结果表明,传感器阵列可以通过通过支撑载体机(SVM)算法有效地从干涉气体(二甲苯,乙醇,硫化氢)来分类TMA。包括径向基函数神经网络(RBFNN),后传播神经网络(BPNN)和主要成分分析与线性回归(PCA-LR)组合的几种算法用于预测每种气体的浓度水平。对于TMA气体,培训的算法可以预测其浓度为RBFNN的平均相对误差为1.22%,BPNN的2.5%,PCA-LR的13.34%。此外,测量TMA和乙醇的二元混合物并用于训练上述算法,在RBFNN算法的情况下实现了1.74%的最低平均相对误差。

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