Quantitative measurement of gas component using multisensor array and NPSO-based LS-SVR

Kai Song, Qi Wang, Jianfeng Li, Hongquan Zhang
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引用次数: 4

Abstract

To solve the nonlinear response of semiconductor gas sensor and cross-sensitivity to the non-target gases, this paper studies gas sensor array and least square support vector regression (LS-SVR) based gas concentration measurement method. Methane (CH4), hydrogen (H2) and their mixtures are selected as the target gases. A multi-sensor array is composed of four metal oxide semiconductor (MOS) gas sensors with properties of different sensitivity. LS-SVR is used to establish the quantitative analysis model of each gas component. Given the difficulty in selecting parameters of LS-SVR and the high computational complex in using cross-validation when modeling on each gas component, this paper proposes a niche particle swarm optimization (NPSO) based parameter optimization algorithm which can find the global optimal parameters of the established LS-SVR model of each gas component. Compared with other methods such as artificial neural networks (ANNs), this proposed method improves precision of concentration measurement, and it is particularly adequate for the quantitative detection of gas concentrations within small training samples.
基于多传感器阵列和npso的LS-SVR气体组分定量测量
为解决半导体气体传感器的非线性响应和对非目标气体的交叉敏感问题,研究了基于气体传感器阵列和最小二乘支持向量回归(LS-SVR)的气体浓度测量方法。选择甲烷(CH4)、氢(H2)及其混合物作为目标气体。由四个灵敏度不同的金属氧化物半导体(MOS)气体传感器组成多传感器阵列。利用LS-SVR建立了各气体组分的定量分析模型。针对LS-SVR模型在对各气体组分建模时参数选择困难、交叉验证计算量大的问题,提出了一种基于小生境粒子群优化(NPSO)的参数优化算法,该算法能够找到所建立的LS-SVR模型中各气体组分的全局最优参数。与人工神经网络(ann)等方法相比,该方法提高了浓度测量的精度,特别适合于小训练样本内气体浓度的定量检测。
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