SYNTHESIS AND ANALYSIS OF A STATISTICAL MODEL OF THE DYNAMICS OF TIMES SYSTEMS WITH DISCRETE CONTROL UNDER CONDITIONS OF APRIORI UNCERTAINTY

A. V. Lapko, V. A. Lapko, S. T. Im, A. V. Bakhtina, V.L. Аvdeenok, V. P. Tuboltsev
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Abstract

A statistical model of a times system with discrete control is proposed, which is one of the topical are-as of modern decision-making theory. Similar conditions are typical of processing information ob-tained through remote sensing of natural objects. An effective way to solve the emerging problems is to use structural methods of statistical data analysis, when the state of the system is understood as a set of values of random variables with similar properties. Such a definition makes it possible to simplify the task of estimating the states of the system under study using nonparametric image recognition algorithms, which open up the possibility of predicting their time dynamics on the basis of transformation of random variables sets. The study of the properties of the statistical model of the time dynamics of the objects under consideration is carried out. The probability of changing the system macro-states from initial to the final time intervals is used as an efficiency indicator. The asymptotic properties of the mentioned above efficiency indicator are investigated, and the results are compared with the Markov limiting theorem for chain dependences.
先验不确定性条件下具有离散控制的时间系统动力学统计模型的综合与分析
提出了具有离散控制的时代系统的统计模型,这是现代决策理论研究的热点之一。通过自然物体遥感获得的信息的处理也有类似的情况。解决这些新出现问题的有效方法是使用统计数据分析的结构方法,将系统的状态理解为具有相似属性的随机变量值的集合。这样的定义可以简化使用非参数图像识别算法估计所研究系统状态的任务,从而在随机变量集变换的基础上预测其时间动态成为可能。对所考虑对象的时间动力学统计模型的性质进行了研究。从初始时间间隔到最终时间间隔改变系统宏观状态的概率被用作效率指标。研究了上述效率指标的渐近性质,并将结果与链依赖的马尔可夫极限定理进行了比较。
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