Mathematical models of non-stationary random processes in the SVVP representation

IF 0.2 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
V. Tikhonov, V. Kartashov, O.V. Kartashov, V.A. Pososhenko
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Abstract

The work examines methods and mathematical models that provide the possibility of researching the statistical characteristics of complex and non-stationary random processes describing a wide class of physical phenomena. The proposed models can be used to study the processes observed in various fields of human activity, namely, to analyze the trajectories of unmanned aerial vehicles, their acoustic signals, meteorological processes reflecting the state of the atmosphere. Real and simulated non-stationary random processes considered in the work are represented by the complex vector random process (CVRP) model. In this case, the length of the subvector is equal to the period of the seasonal component. In fact, in such a representation, the time series readings are replaced by their aggregate, i.e. subvectors. Statistical relationships are analyzed for subvectors, and not, as usual, for process counts. If the length of the subvector is equal to one, all operations in the SVVP representation are equivalent to the usual operations for time series. The mathematical apparatus developed in the article was used to analyze changes in time series of atmospheric temperature observed over a long period of time; average annual temperatures were estimated with subsequent smoothing with a low-pass filter. The results obtained can be used to analyze medium-term and long-term changes in atmospheric conditions, refine the results obtained by traditional methods of mathematical statistics, analyze and predict data flows in mobile communication networks, as well as in other areas of human activity.
SVVP表示中非平稳随机过程的数学模型
这项工作考察了方法和数学模型,这些方法和数学模型提供了研究描述广泛物理现象的复杂和非平稳随机过程的统计特征的可能性。所提出的模型可用于研究在人类活动的各个领域中观测到的过程,即分析无人飞行器的轨迹、它们的声信号、反映大气状态的气象过程。研究中考虑的真实和模拟的非平稳随机过程用复向量随机过程(CVRP)模型表示。在这种情况下,子向量的长度等于季节分量的周期。事实上,在这种表示中,时间序列读数被它们的集合,即子向量所取代。分析子向量的统计关系,而不是像通常那样分析进程计数。如果子向量的长度等于1,则SVVP表示中的所有操作都等同于时间序列的通常操作。本文所研制的数学装置用于分析长时间观测到的大气温度时间序列的变化;年平均气温估计,随后平滑与低通滤波器。所获得的结果可用于分析大气条件的中期和长期变化,改进传统数理统计方法所获得的结果,分析和预测移动通信网络以及其他人类活动领域的数据流。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Visnyk NTUU KPI Seriia-Radiotekhnika Radioaparatobuduvannia
Visnyk NTUU KPI Seriia-Radiotekhnika Radioaparatobuduvannia ENGINEERING, ELECTRICAL & ELECTRONIC-
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