Analysis of quasi-periodic space-time non-separable processes to support decision-making in medical monitoring systems

O. D. Franzheva
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Abstract

In many decisionsupport systemsthere are processedchaotic spatial-time processes which are non-separable and quasi-periodic. Some examples of such systemsareepidemic spreading, population development, fire spreading, radio wave signals, image processing, information encryption, radio vision, etc. Processes in these systems have periodic character, e.g. seasonal fluctuations(epidemic spreading, population development), harmonic fluctuations (pattern recognition, image processing),etc. In simulation block the existing systems use separable process models which are presented as multiplication of spatialand temporal parts and are linearized. This significantly reduces the quality of spatial-time non-separable processes. The quality model building of chaotic spa-tial-time non-separable processwhich is processed by decisionsupport systemis necessary for getting of learning set. Itis really complicated especially if the random process is formed. The implementation ensemble of chaotic spatial-time non-separable process requires high costs what causes reduction of the system efficiency. Moreover, in many cases the implementation ensemble of spatial-time processes is impossible to get. In this workthemathematical model of a quasi-periodic spatial-time non-separable process has been developed. Based on it the formation method of this process has been developed and investigated. The epidemic spreading pro-cessed was presented as an example
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准周期时空不可分过程分析支持医疗监测系统决策
在许多决策支持系统中,存在着经过处理的、不可分的、准周期的混沌时空过程。这些系统的一些例子是流行病传播、人口发展、火灾蔓延、无线电波信号、图像处理、信息加密、无线电视觉等。这些系统中的过程具有周期性,如季节波动(流行病蔓延、人口发展)、谐波波动(模式识别、图像处理)等。在仿真块中,现有系统使用可分离的过程模型,该模型表示为空间和时间部分的乘法并进行线性化。这大大降低了时空不可分离过程的质量。由决策支持系统处理的混沌时空不可分过程的质量模型的建立是获得学习集的必要条件。这真的很复杂,尤其是当随机过程形成的时候。混沌时空不可分过程集成的实现成本高,导致系统效率降低。而且,在很多情况下,时空过程的实现集成是不可能得到的。本文建立了准周期时空不可分过程的数学模型。在此基础上,研究了该工艺的形成方法。以疫情传播过程为例
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