Construction and analysis of universal 2D distributions with a bounded rectangular variation domain

E. Hladkyi, V.I. Perlyk
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Abstract

When solving parametric reliability problems, one often has to construct distributions of statistical data to find the probability of containment in the operability region. This paper considers the problem of 2D statistical ensemble fitting. The use of a 2D normal distribution in statistical data description is not always justified because statistical ensembles rather frequently (at the level of marginal components and a stochastic relationship between them) have properties different from the normal case. From a practical standpoint, it is desirable for researchers to describe 2D statistical ensembles with the use of universal distributions, which allow one to cover a wide range of source data using a single analytical form. In the process of fitting, account should be made of bounded ranges of random variables. The paper considers who universal distribution construction methods, which are based on 1D orthogonal Jacobi polynomial expansions. In these distributions, the random variable range is a rectangle. In the first method, a 2D distribution is constructed using a direct expansion in the 1D Jacobi polynomials. A 2D Jacobi distribution function and regression lines are obtained, and methods to fit it are considered. In theory, a distribution obtained in this way can be used, up to the fourth order inclusive, for marginal and even reduced moments different from the normal case. However, its real capabilities are limited to values of reduced moments (1D and even) that differ from the normal case only very slightly. Otherwise, the probability surface may enter negative ranges with the occurrence of multiple modes. The second way to construct a 2D distribution is to use a normal copula and 1D Jacobi distributions as components. The resulting 2D distribution allows one to deal with 1D distributions different from the normal case and linear correlation. This approach is justified because, according to research data, it is a linear stochastic relationship that relates a significant part of 2D statistical ensembles, and marginal distributions deviate from the normal case. Regression lines of a distribution of this kind are obtained, and it is shown that they are curved because marginal distributions differ from the normal one. The paper considers the practical example of fitting a 2D ensemble of characteristics of a liquid-propellant rocket engine some components of which are related via a linear stochastic relationship (the parameters that characterize a nonlinear stochastic relationship proved to be insignificant) and have 1D distributions different from the normal one. The fitted and observed frequencies are in rather good agreement. It is shown that a distribution based on a normal copula is more universal, and it is recommended for practical calculations.
具有有界矩形变分域的二维普适分布的构造与分析
在解决参数可靠性问题时,通常必须构造统计数据的分布,以找到可操作性区域的安全壳概率。本文研究二维统计系综拟合问题。在统计数据描述中使用二维正态分布并不总是合理的,因为统计集成经常(在边缘分量和它们之间的随机关系的水平上)具有与正常情况不同的特性。从实际的角度来看,研究人员希望使用通用分布来描述二维统计集合,这允许人们使用单一的分析形式来覆盖广泛的源数据。在拟合过程中,应考虑随机变量的有界范围。本文研究了基于一维正交雅可比多项式展开的who通用分布构造方法。在这些分布中,随机变量的范围是一个矩形。在第一种方法中,使用一维雅可比多项式的直接展开构造二维分布。得到了二维雅可比分布函数和回归线,并考虑了其拟合方法。理论上,对于不同于正常情况的边际矩甚至简化矩,可以使用这种方法得到的分布,直至四阶。然而,它的实际功能仅限于与正常情况相差很小的简化矩值(一维和偶数)。否则,随着多模态的出现,概率面可能进入负范围。第二种构造二维分布的方法是使用正态联结和一维雅可比分布作为分量。由此产生的二维分布允许人们处理与正常情况和线性相关不同的一维分布。这种方法是合理的,因为根据研究数据,它是一个线性随机关系,与2D统计集合的重要部分有关,并且边际分布偏离正常情况。得到了这类分布的回归线,并说明由于边缘分布与正态分布不同,回归线是弯曲的。本文考虑了拟合液体推进剂火箭发动机二维特性集合的实例,其中一些部件是通过线性随机关系(表征非线性随机关系的参数被证明是不显著的)联系起来的,并且具有不同于正常分布的一维分布。拟合的频率和观测到的频率相当吻合。结果表明,基于正态联结的分布更具有普适性,并推荐用于实际计算。
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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