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Power Law Analysis Estimates of Analyte Concentration and Particle Size in Highly Scattering Granular Samples from Photon Time-of-Flight Measurements

机译:从光子飞行时间测量中高散射颗粒样品中分析物浓度和粒径的幂律分析估计

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摘要

Optical measurements of particle size and compositionin granular samples are difficult to make due to complex light scattering from particles. These multiple scattering events bias absorption estimates and complicate the calculation of scattering and absorption coefficients used to estimate sample properties. Time series data, such as chromatograms and photon time-of-flight (TOF) profiles, contain self-repeating (fractal) characteristics. Power law analysis of photon TOF profiles allows the determination of absorption coefficients and particle sizes in a single experiment. A correlation dimension algorithm was used on photon TOF data from scattering samples. MLR models were then obtained from correlation dimension plots for the estimation of sample properties. Estimates of particle sizes and absorption coefficients were shown to agree well with theoretical values when compared using independent validation sets. Results show close to a 3-fold and up to a 5-fold decrease in the errors of estimation of dye concentration and particle size, respectively, as compared to steady-state measurements. The power law approach provides a useful means of determining sample properties in highly scattering media.
机译:由于颗粒的复杂光散射,很难对颗粒样品中的颗粒大小和组成进行光学测量。这些多重散射事件会使吸收估计值产生偏差,并使用于估计样品特性的散射和吸收系数的计算复杂化。时间序列数据(例如色谱图和光子飞行时间(TOF)曲线)包含自重复(分形)特征。对光子TOF分布的幂律分析允许在单个实验中确定吸收系数和粒径。相关维度算法用于散射样本的光子TOF数据。然后从相关维数图获得MLR模型,以估计样品特性。当使用独立的验证集进行比较时,表明粒径和吸收系数的估计值与理论值非常吻合。结果表明,与稳态测量相比,染料浓度和颗粒大小的估计误差分别降低了近3倍和最多5倍。幂律法提供了一种确定高散射介质中样品性质的有用方法。

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