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Detection of quasi-periodic processes in repeated measurements: New approach for the fitting and clusterization of different data

机译:在重复测量中检测准周期过程:拟合和聚类不同数据的新方法

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Many experimentalists were accustomed to think that any independent measurement forms a non-correlated measurement that depends weakly from others. We are trying to reconsider this conventional point of view and prove that similar measurements form a strongly-correlated sequence of random functions with memory. In other words, successive measurements "remember" each other at least their nearest neighbors. This observation and justification on real data help to fit the wide set of data based on the Prony's function. The Prony's decomposition follows from the quasi-periodic (QP) properties of the measured functions and includes the Fourier transform as a partial case. New type of decomposition helps to obtain a specific amplitude-frequency response (AFR) of the measured (random) functions analyzed and each random function contains less number of the fitting parameters in comparison with its number of initial data points. Actually, the calculated AFR can be considered as the generalized Prony's spectrum (GPS), which will be extremely useful in cases where the simple model pretending on description of the measured data is absent but vital necessity of their quantitative description is remained. These possibilities open a new way for clusterization of the initial data and new information that is contained in these data gives a chance for their detailed analysis. The electron paramagnetic resonance (EPR) measurements realized for empty resonator (pure noise data) and resonator containing a sample (CeO_2 in our case) confirmed the existence of the QP processes in reality. But we think that the detection of the QP processes is a common feature of many repeated measurements and this new property of successive measurements can attract an attention of many experimentalists.
机译:许多实验家习惯于认为任何独立的度量都形成了一种不相关的度量,该度量与其他度量之间的依赖程度很小。我们正在尝试重新考虑这种传统观点,并证明相似的测量结果会形成与内存具有高度相关性的随机函数序列。换句话说,连续的测量至少彼此“记住”了它们最近的邻居。对真实数据的这种观察和证明有助于根据Prony函数拟合广泛的数据集。 Prony分解源自被测函数的准周期(QP)性质,并包括傅立叶变换作为部分情况。新型分解有助于获得所分析的测量(随机)函数的特定幅频响应(AFR),并且与随机数据的初始数据点数量相比,每个随机函数包含的拟合参数数量更少。实际上,可以将计算出的AFR视为广义Prony频谱(GPS),在缺少以测量数据描述为准的简单模型但仍需要定量描述的情况下,这将非常有用。这些可能性为初始数据的聚类开辟了一条新途径,这些数据中包含的新信息为详细分析提供了机会。针对空谐振器(纯噪声数据)和包含样本的谐振器(在我们的情况下为CeO_2)实现的电子顺磁共振(EPR)测量证实了实际上存在QP过程。但是我们认为,QP过程的检测是许多重复测量的共同特征,而连续测量的这一新特性可以吸引许多实验学家的注意。

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