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DERIVATIVE SPECTROSCOPY-AN ENHANCED ROLE FOR NUMERICAL DIFFERENTIATION

机译:导数光谱-数值微分的增强作用

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In many areas of science, through the use of modern computer-controlled instrumentation, highly accurate indirect measurements of the phenomenon/process of interest are being generated on a (very) fine spatial and/or temporal grid. Consequently, this is creating new opportunities for the enhanced recovery of information about the underling phenomenon/process being studied. In particular, an enhanced role for numerical differentiation is emerging in the application of derivative spectroscopy, which has its origins in the analysis of various forms of spectroscopic data. For example, through its use, information about the molecular components in plant material, such as barley seeds, is being recovered by comparing the fourth derivatives of their measured near infra-red ( NIR) spectroscopic responses. As well as practical matters that arise with the utilization of derivative spectroscopy in the recovery of information, there are theoretical questions that require investigation about the choice of the numerical differentiator, the interpretation of the fourth derivative and an assessment of how high a level of differentiation that given data will support. Such matters have already been investigated in considerable detail except for the question of estimating the maximum level of differentiation that given data can support before the onset of instability. This is the focus of the current paper, which highlights how published results can be reinterpreted to answer this question. In particular, it will be shown that, if circumstances are such that, for a particular numerical differentiator, an accurate approximation to the first derivative of the available observational data can be guaranteed, then it is highly likely that it can be utilized to generate good approximations to second, third and fourth derivatives. Interestingly, this runs contrary to the historical view that, as the order k of the differentiation of observational data increases, the onset of instability increases rapidly.
机译:在许多科学领域中,通过使用现代计算机控制的仪器,正在(非常)精细的空间和/或时间网格上生成了对感兴趣的现象/过程的高精度间接测量。因此,这为增强有关正在研究的底层现象/过程的信息的恢复创造了新的机会。尤其是,在微分光谱的应用中,数值微分的作用正在增强,而微分光谱的起源则在于分析各种形式的光谱数据。例如,通过比较其测量的近红外(NIR)光谱响应的四阶导数,可以回收有关植物材料(例如大麦种子)中分子成分的信息。除了利用导数光谱在信息恢复中出现的实际问题外,还有一些理论问题需要调查有关数值微分器的选择,四阶导数的解释以及对微分水平的评估。给定的数据将支持。除估计不稳定数据开始之前给定数据可以支持的最大分化水平问题外,已经对这些问题进行了相当详细的研究。这是当前论文的重点,强调了如何重新解释已发布的结果以回答该问题。特别地,将表明,如果情况如此,对于特定的数值微分器,可以保证对可用观测数据的一阶导数的精确近似,那么很有可能可以利用它来生成良好的观测数据。二阶,三阶和四阶导数的近似值。有趣的是,这与历史观点背道而驰,因为随着观测数据的微分阶数k的增加,不稳定的发生迅速增加。

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