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Stack emission monitoring using non-dispersive infrared spectroscopy with an optimized nonlinear absorption cross interference correction algorithm

机译:使用非分散红外光谱和优化的非线性吸收交叉干扰校正算法监测烟囱排放

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In this paper, we present an optimized analysis algorithm for non-dispersive infrared (NDIR) to in situ monitor stack emissions. The proposed algorithm simultaneously compensates for nonlinear absorption and cross interference among different gases. We present a mathematical derivation for the measurement error caused by variations in interference coefficients when nonlinear absorption occurs. The proposed algorithm is derived from a classical one and uses interference functions to quantify cross interference. The interference functions vary proportionally with the nonlinear absorption. Thus, interference coefficients among different gases can be modeled by the interference functions whether gases are characterized by linear or nonlinear absorption. In this study, the simultaneous analysis of two components (COsub2/sub and CO) serves as an example for the validation of the proposed algorithm. The interference functions in this case can be obtained by least-squares fitting with third-order polynomials. Experiments show that the results of cross interference correction are improved significantly by utilizing the fitted interference functions when nonlinear absorptions occur. The dynamic measurement ranges of COsub2/sub and CO are improved by about a factor of 1.8 and 3.5, respectively. A commercial analyzer with high accuracy was used to validate the CO and COsub2/sub measurements derived from the NDIR analyzer prototype in which the new algorithm was embedded. The comparison of the two analyzers show that the prototype works well both within the linear and nonlinear ranges.
机译:在本文中,我们提出了一种用于非分散红外(NDIR)的优化分析算法,以现场监控烟囱排放。该算法同时补偿了不同气体之间的非线性吸收和交叉干扰。对于非线性吸收发生时干扰系数变化引起的测量误差,我们给出了数学推导。所提出的算法是从经典算法派生而来的,并使用干扰函数来量化交叉干扰。干涉函数随非线性吸收成比例地变化。因此,无论气体是线性吸收还是非线性吸收,都可以通过干扰函数来模拟不同气体之间的干扰系数。在这项研究中,同时分析两个成分(CO 2 和CO)可作为验证算法的一个例子。这种情况下的干扰函数可以通过与三阶多项式的最小二乘拟合获得。实验表明,当发生非线性吸收时,利用拟合的干涉函数可以显着改善交叉干涉校正的结果。 CO 2 和CO的动态测量范围分别提高了约1.8和3.5倍。使用高精度的商用分析仪来验证从嵌入了新算法的NDIR分析仪原型获得的CO和CO 2 测量值。两种分析仪的比较表明,该原型在线性和非线性范围内均可正常工作。

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