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Determine the significant digit of spectral data and reduce its redundant digits to eliminate the chance correlation problem based on the 'salami slicing' method

机译:确定光谱数据的大量数字,并减少其冗余数字,以消除基于“萨拉米切片”方法的机会相关问题

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摘要

In recent years, complex solution composition analysis based on spectroscopy has been a research hotspot for researchers and has broad application prospects. Improving the ability of complex solutions component analysis based on spectroscopy, eliminating spectral data redundancy and the chance correlation problem it brings has become an urgent issue. In order to solve these problems, this paper takes the dynamic spectrum (DS) as the research object, and uses the "salami slicing" method to process the DS data. Firstly, the significant digit of the decimal DS data is processed, and then the partial least-squares (PLS) method is applied to model and analyze the processed DS data. The turning point of the modeling accuracy's change is found, and the significant digit number of DS data is determined roughly. On this basis, the weight of the binary number is used skillfully to process the significant digit of DS. The processed DS data is modeled, and the significant digit number of the DS data is accurately analyzed to establish the efficacy of the proposed method. This method does not only improve the signal-to-noise ratio (SNR) of DS data, but also avoids the chance correlation problem due to the data redundancy. This method also provides a good means for SNR estimation of other spectral data and avoiding the chance correlation problem in modeling, and has a high application value.
机译:近年来,基于光谱的复杂解决方案组成分析是研究人员的研究热点,具有广泛的应用前景。基于光谱学,提高复杂解决方案分量分析的能力,消除了光谱数据冗余和它带来的偶然关联问题已成为一种紧急问题。为了解决这些问题,本文将动态频谱(DS)作为研究对象,并使用“Salami SliCing”方法来处理DS数据。首先,处理十进制DS数据的大致数字,然后将部分最小二乘(PLS)方法应用于模型并分析处理的DS数据。找到建模精度的变化的转折点,并且大致确定DS数据的大量数字数。在此基础上,二进制数的重量巧妙地使用以处理DS的大量数字。处理后的DS数据被建模,并且精确地分析DS数据的大量数字以确定所提出的方法的功效。该方法不仅提高了DS数据的信噪比(SNR),而且还避免了由于数据冗余而导致的机会相关问题。该方法还提供了用于其他光谱数据的SNR估计的良好方法,并避免建模中的相互关联问题,并且具有高应用值。

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