单变量和多变量随机函数最优量化的改进算法

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Liyang Ma , Daniel Conus , Wei-Min Huang , Paolo Bocchini
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引用次数: 0

摘要

函数量子化(FQ)方法是为了用优化构造的有限确定性函数集(量子)和相关概率质量来逼近随机过程而开发的。量子和相应的概率质量统称为 "量子"。为了在数值上实现 FQ,我们开发了一种名为 "无穷维中心 Voronoi Tessellation 函数量化"(FQ-IDCVT)的方法。与其他方法相比,FQ-IDCVT 算法具有通用性强、简单易用等优点。事实证明,FQ-IDCVT 算法能够捕捉到随机过程的整体随机特征。然而,对于过程的某些时间瞬时,FQ-IDCVT 算法可能无法很好地近似随机特性,从而导致显著的局部误差。例如,在某些时间时刻,它可能会大大低估方差,高估相关系数。此外,FQ 概念是为单变量过程的量化而开发的。文献中缺乏对其应用于多变量过程的正式描述。因此,本文有两个目标:将 FQ 概念扩展到多变量过程,并增强 FQ-IDCVT 算法,使其在单变量过程的不同时间时刻的精度更加统一,并适用于多变量过程。为此,解释了 FQ-IDCVT 算法的局限性,并提出了一种新的改进型 FQ-IDCVT 算法。介绍了量化算法全局和局部量化性能的四个标准。为了说明和验证,对四个具有高斯和非高斯边际分布的单变量和多变量、静态和非静态过程的数值示例进行了量化。数值示例的结果表明,与原始的 FQ-IDCVT 算法相比,建议的算法性能优越。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved algorithm for the optimal quantization of single- and multivariate random functions

The Functional Quantization (FQ) method was developed for the approximation of random processes with optimally constructed finite sets of deterministic functions (quanta) and associated probability masses. The quanta and the corresponding probability masses are collectively called a “quantizer”. A method called “Functional Quantization by Infinite-Dimensional Centroidal Voronoi Tessellation” (FQ-IDCVT) was developed for the numerical implementation of FQ. Compared to other methodologies, the FQ-IDCVT algorithm has the advantages of versatility, simplicity, and ease of application. The FQ-IDCVT algorithm was proved to be able to capture the overall stochastic characteristics of random processes. However, for certain time instants of the processes, the FQ-IDCVT algorithm may fail in approximating well the stochastic properties, which results in significant local errors. For instance, it may significantly underestimate the variances and overestimate the correlation coefficients for some time instants. In addition, the FQ concept was developed for the quantization of single-variate processes. A formal description of its application to multivariate processes is lacking in the literature. Therefore, this paper has two objectives: to extend the FQ concept to multivariate processes and to enhance the FQ-IDCVT algorithm so that its accuracy is more uniform across the various time instants for single-variate processes and applicable to multivariate processes. Along this line, the limitations of the FQ-IDCVT algorithm are explained, and a novel improved FQ-IDCVT algorithm is proposed. Four criteria are introduced to quantify the algorithms' global and local quantization performance. For illustration and validation purposes, four numerical examples of single-variate and multivariate, stationary and non-stationary processes with Gaussian and non-Gaussian marginal distributions were quantized. The results of the numerical examples demonstrate the performance and superiority of the proposed algorithm compared to the original FQ-IDCVT algorithm.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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