Порівняння потужності критеріїв наявності тренду в часових рядах

V. Myrhorod, Iryna Hvozdeva
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引用次数: 0

Abstract

The subject of research is methods, mathematical models, and methods of continuous analysis of a multidimensional set of output variables and state variables of power and energy installations built on the basis of gas turbine engines, which in general constitute time series. The purpose of this work is to establish the power of trend and randomness criteria by statistical modeling of time series with a linear trend and the use of known trend and randomness statistics to establish their empirical distributions and operational characteristics for comparing trend criteria by their power. The tasks faced by the developers were to determine the empirical distributions of known parametric and non-parametric trend statistics when applying the linear trend model in superposition with a random component, and set the level of errors of the first kind (false solution), with a given level of errors of the second kind (false anxiety). The methods that were used to achieve the established goal of the research: general methods of trend analysis, methods of applied statistics, and methods of conducting computer experiments. The results of the research provide a rationale for the approach to establishing the power of known criteria of trend and randomness. The limitation of the known methods of applied statistics is that it is theoretically only possible to refute the hypothesis regarding the randomness of the initial data at a certain level of significance, which determines the level of errors of the second kind (false alarms). Establishing the level of errors of the first kind (wrong decision) poses significant difficulties, because in the presence of a trend, the time series can no longer be stationary. But it is the statistical level of such errors that actually determines the strength of the criteria for the presence of a trend in the time series. The resolution of this contradiction is proposed by means of statistical modeling of time series with a linear trend and the use of well-known trend and randomness statistics to establish their empirical distributions and operational characteristics and to compare trend criteria according to their power. Statistical modeling was performed for a number of trend and randomness statistics, namely: the most common parametric statistics: correlation criterion and its modifications, Fisher's criterion, and Student's criterion; and non-parametric Wald-Wolfowitz criteria; Bartles; as well as the inversion criterion. According to the results of statistical modeling, it was established that the Student's criterion is the most powerful of the parametric criteria, and the inversion criterion is the most powerful of the non-parametric criteria. It is understood that such conclusions are valid when the assumptions regarding the initial statistical model of data generation in the form of a superposition of a linear trend and a random component as a sample from the general population of independent and normally distributed random variables and the corresponding algorithm for processing time series counts for the formation of decisive statistics are fulfilled. The scientific novelty of the obtained results lies in the fact that for the first time, the issue of comparing the power of parametric and non-parametric criteria of trend and randomness with respect to the applied model of data generation in the form of a linear trend in superposition with a random component was considered. The practical significance of the obtained results lies in the fact that the research results make it possible to choose an appropriate criterion based on its power for solving applied tasks of monitoring the technical condition of power and energy installations built on the basis of gas turbine engines.
本课题研究的是基于燃气涡轮发动机的动力和能源装置的多维输出变量和状态变量集的连续分析方法、数学模型和方法,这些输出变量和状态变量通常构成时间序列。本工作的目的是通过对具有线性趋势的时间序列进行统计建模,建立趋势和随机性标准的功率,并利用已知的趋势和随机性统计来建立它们的经验分布和操作特征,以比较趋势标准的功率。开发人员面临的任务是确定线性趋势模型与随机成分叠加时已知参数和非参数趋势统计量的经验分布,并设置第一类误差(假解)的水平,第二类误差(假焦虑)的给定水平。为达到既定的研究目标所采用的方法有:趋势分析的一般方法、应用统计学的方法和进行计算机实验的方法。研究结果为建立趋势和随机性的已知标准的力量的方法提供了理论基础。已知的应用统计学方法的局限性在于,理论上只能在一定的显著性水平上反驳关于初始数据随机性的假设,这决定了第二类误差(虚警)的水平。建立第一种错误(错误决策)的水平有很大的困难,因为在趋势存在的情况下,时间序列不再是平稳的。但是,这些误差的统计水平实际上决定了时间序列中趋势存在的标准的强度。解决这一矛盾的方法是对具有线性趋势的时间序列进行统计建模,并利用众所周知的趋势统计和随机统计来建立它们的经验分布和操作特征,并根据它们的功率来比较趋势标准。对一些趋势统计和随机性统计进行了统计建模,即:最常见的参数统计:相关准则及其修正、Fisher准则和Student准则;非参数Wald-Wolfowitz标准;巴图;以及反演准则。根据统计建模结果,确定了学生准则是参数准则中最有效的准则,而反演准则是非参数准则中最有效的准则。可以理解,当以线性趋势和随机成分作为独立和正态分布随机变量的一般总体的样本的叠加形式产生数据的初始统计模型的假设和用于处理时间序列计数以形成决定性统计的相应算法得到满足时,这些结论是有效的。所得结果的科学新颖性在于,第一次考虑了趋势和随机性的参数和非参数准则相对于以线性趋势与随机成分叠加的形式产生数据的应用模型的能力的问题。所得结果的现实意义在于,研究结果为解决燃气轮机动力能源装置技术状况监测的应用任务提供了依据功率选择合适的判据的可能。
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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