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首页> 外文期刊>Journal of Physics, D. Applied Physics: A Europhysics Journal >The generalized mean value function approach: a new stastistical tool for the detection of weak signals in spectroscopy
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The generalized mean value function approach: a new stastistical tool for the detection of weak signals in spectroscopy

机译:广义均值函数方法:一种用于检测光谱中微弱信号的新型统计工具

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摘要

A 'universal' set of fitting parameters have been recognized (with the help of the eigen-coordinates method) which fit well to any random sequence of points. The methodology is developed within the space of moments and is based upon the definition of the correct fit to the generalized mean value (GMV) function. By fitting G(N)((p)) it is possible to express quantitatively the reduced characteristics of any random sequence, thereby providing a possible instrument for differentiating between statistically close random sequences. It is suggested that this new approach might find application in certain spectroscopic measurements, in cases where the signal to noise ratio is low, but the stability of the noise and the influence of other external factors can be maintained. Those fitting parameters from the approximate analytical expression, which depend on the concentration of the small additive, can then be used for the construction of the quasi-monotonic line, defined as the calibration curve. In certain well-defined cases, the new approach might allow significant improvements in the sensitivity of analytical instrumentation particularly when the available analysis methodology itself is non-optimal or even considered unsuitable. To test this possibility we examined the application of the GMV method to the near-infrared detection of model micro-particles (in our case yeast cells) in an aqueous suspension, and thereby demonstrated the possibility of increasing the sensitivity of a certain spectroscopy by at least one order of magnitude.
机译:(借助本征坐标法)已识别出一组“通用”拟合参数,这些参数非常适合任何随机的点序列。该方法是在矩的空间内开发的,并且基于对广义平均值(GMV)函数的正确拟合的定义。通过拟合G(N)((p)),可以定量表达任何随机序列的简化特征,从而提供一种可能的工具,用于区分统计上接近的随机序列。建议在信噪比很低的情况下,这种新方法可能会在某些光谱测量中找到应用,但是可以保持噪声的稳定性和其他外部因素的影响。然后,可以将近似分析表达式中的那些拟合参数(取决于小添加剂的浓度)用于构建准单调线,定义为校准曲线。在某些定义明确的情况下,新方法可能会大大提高分析仪器的灵敏度,尤其是在可用的分析方法本身不是最佳方法甚至被认为不合适的情况下。为了测试这种可能性,我们研究了GMV方法在水性悬浮液中近红外检测模型微粒(在我们的情况下为酵母细胞)中的应用,从而证明了通过提高温度可以提高某些光谱法的灵敏度的可能性。至少一个数量级。

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