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Quantitative Analysis of Gas Phase IR Spectra Based on Extreme Learning Machine Regression Model

机译:基于极端学习机回归模型的气相红外测量分析

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摘要

Advanced chemometric analysis is required for rapid and reliable determination of physical and/or chemical components in complex gas mixtures. Based on infrared (IR) spectroscopic/sensing techniques, we propose an advanced regression model based on the extreme learning machine (ELM) algorithm for quantitative chemometric analysis. The proposed model makes two contributions to the field of advanced chemometrics. First, an ELM-based autoencoder (AE) was developed for reducing the dimensionality of spectral signals and learning important features for regression. Second, the fast regression ability of ELM architecture was directly used for constructing the regression model. In this contribution, nitrogen oxide mixtures (i.e., N2O/NO2/NO) found in vehicle exhaust were selected as a relevant example of a real-world gas mixture. Both simulated data and experimental data acquired using Fourier transform infrared spectroscopy (FTIR) were analyzed by the proposed chemometrics model. By comparing the numerical results with those obtained using conventional principle components regression (PCR) and partial least square regression (PLSR) models, the proposed model was verified to offer superior robustness and performance in quantitative IR spectral analysis.
机译:需要先进的化学计量分析来快速可靠地测定复杂气体混合物中的物理和/或化学成分。基于红外(IR)光谱/感测技术,我们提出了一种基于极端学习机(ELM)算法的高级回归模型,用于定量化学计量分析。该拟议模型对高级化学计量学领域进行了两种贡献。首先,开发了一种基于ELM的AutoEncoder(AE),用于降低光谱信号的维度和学习回归的重要特征。其次,ELM架构的快速回归能力直接用于构建回归模型。在该贡献中,选择在载体排气中的氮氧化物混合物(即,N 2 O / NO 2 / NO)作为现实世界气体混合物的相关示例。通过所提出的化学计量模型分析了使用傅里叶变换红外光谱(FTIR)获取的模拟数据和实验数据。通过将数值结果与使用常规原理分量的回归(PCR)和局部最小二乘回归(PLSR)模型进行比较,验证了所提出的模型,以提供定量IR光谱分析中的优异的鲁棒性和性能。

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