FORECASTING OF THE DISTRIBUTED CYBER-PHYSICAL SYSTEMS STATE (Ukr)

М. S. Yukhymchuk
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Abstract

The important component for the solution of the problem of decentralized coordination of the distributed cyber-physical systems (DCPS) control is obtaining of the primary information, needed for searching the optimal control. Such information may be divided into conditional constant – the parameters of the controlled object, and variable – state of the controlled object. Determination of the object parameters is carried out by means of identification problem solution. Object persistence and correspondingly, the possibility of changing its elements state during the coordination cycle stipulates the need to forecast the processes in DCPS. In greater part of the research, dealing with the forecasting problem methods are considered where in this or that way expert assessments and conclusions are used. This concerns mainly social-economic processes, forecasts in the sphere of medicine, education, etc. In the given study the forecasts for the cyber-physical systems are considered, although, in this case models of physical processes and formal methods of the forecasting play far more important role , however, at certain stages expert assessments are also used, in particular, regarding the ranges of possible change of the parameters, list of influencing factors, etc. The prediction method of the state of the distributed cyber-physical systems with the continuous objects on the base of space-time spectral approach to the prediction of DCPS state with continuous and discrete object states has been improved, study of the characteristic of DCPS state prediction has been performed. The possibility of the realization of the prediction method, using the machine learning and simulation modelling has been considered. The expediency of the prediction depth as with the increasing of the depth (interval) of the prediction the fuzziness of the prediction results increases. At the same time, computational resources and time are spent for the prediction. Gradually the situation arises, when the positive effect of the prediction becomes less than the expenses for its realization, this determines the expedient maximum depth of the prediction.
分布式信息物理系统状态预测(Ukr)
解决分布式网络物理系统(DCPS)控制分散协调问题的重要组成部分是获取搜索最优控制所需的主信息。这些信息可以分为条件常数——被控对象的参数和可变状态——被控对象的状态。通过识别问题求解的方法确定目标参数。对象的持久性以及相应的,在协调周期中改变其元素状态的可能性规定了需要预测DCPS中的过程。在大部分研究中,都考虑了处理预测问题的方法,其中以这种或那种方式使用了专家评估和结论。这主要涉及社会经济进程、医学、教育等领域的预测。在给定的研究中,考虑了网络物理系统的预测,尽管在这种情况下,物理过程模型和预测的形式化方法发挥了更重要的作用,但是,在某些阶段也使用了专家评估,特别是关于参数可能变化的范围、影响因素列表等。在对具有连续和离散对象状态的分布式网络物理系统状态预测的空时谱方法进行改进的基础上,对具有连续和离散对象状态的分布式网络物理系统状态预测的特点进行了研究。考虑了利用机器学习和仿真建模实现预测方法的可能性。预测深度的方便性在于随着预测深度(区间)的增加,预测结果的模糊性增加。同时,需要耗费大量的计算资源和时间进行预测。逐渐出现的情况是,当预测的积极效果小于其实现的费用时,这就决定了预测的权宜之计最大深度。
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