Srivastava Madhur, Freed Jack H
J Phys Chem A. 2019 Jan 10;123(1):359-370. doi: 10.1021/acs.jpca.8b07673. Epub 2018 Dec 24.
This paper is a continuation of the method introduced by Srivastava and Freed (2017) that is a new method based on truncated singular value decomposition (TSVD) for obtaining physical results from experimental signals without any need for Tikhonov regularization or other similar methods that require a regularization parameter. We show here how to estimate the uncertainty in the SVD-generated solutions. The uncertainty in the solution may be obtained by finding the minimum and maximum values over which the solution remains converged. These are obtained from the optimum range of singular value contributions, where the width of this region depends on the solution point location (e.g., distance) and the signal-to-noise ratio (SNR) of the signal. The uncertainty levels typically found are very small with substantial SNR of the (denoised) signal, emphasizing the reliability of the method. With poorer SNR, the method is still satisfactory but with greater uncertainty, as expected. Pulsed dipolar electron spin resonance spectroscopy experiments are used as an example, but this TSVD approach is general and thus applicable to any similar experimental method wherein singular matrix inversion is needed to obtain the physically relevant result. We show that the Srivastava-Freed TSVD method along with the estimate of uncertainty can be effectively applied to pulsed dipolar electron spin resonance signals with SNR > 30, and even for a weak signal (e.g., SNR ≈ 3) reliable results are obtained by this method, provided the signal is first denoised using wavelet transforms (WavPDS).
本文是Srivastava和Freed(2017)所介绍方法的延续,该方法是一种基于截断奇异值分解(TSVD)的新方法,用于从实验信号中获得物理结果,而无需任何蒂霍诺夫正则化或其他需要正则化参数的类似方法。我们在此展示如何估计奇异值分解生成的解中的不确定性。解中的不确定性可以通过找到解保持收敛的最小值和最大值来获得。这些值是从奇异值贡献的最佳范围内获得的,该区域的宽度取决于解点位置(例如,距离)和信号的信噪比(SNR)。在(去噪)信号具有相当高的信噪比时,通常发现的不确定性水平非常小,这强调了该方法的可靠性。正如预期的那样,当信噪比更低时,该方法仍然令人满意,但不确定性更大。以脉冲双极电子自旋共振光谱实验为例,但这种TSVD方法具有通用性,因此适用于任何需要奇异矩阵求逆以获得物理相关结果的类似实验方法。我们表明,Srivastava - Freed TSVD方法以及不确定性估计可以有效地应用于信噪比> 30的脉冲双极电子自旋共振信号,并且即使对于弱信号(例如,信噪比≈ 3),只要首先使用小波变换(WavPDS)对信号进行去噪,该方法也能获得可靠的结果。