多层控制系统应急响应效率的神经网络建模

N. Topolsky, S. Butuzov, V. Vilisov, V. Semikov
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引用次数: 0

摘要

介绍。重要的是要有适当描述系统运作的整体指标与复杂控制系统,特别是区域安全系统中较低管理级别的特定指标之间关系的模型。基于规范模型的传统方法往往是站不住脚的,因为不可能涵盖这类系统运作的所有方面,也因为环境的高度可变性和一套目标指标的价值。最近,自适应机器学习模型已经被证明是有效的,可以建立稳定和充分的模型,其中一个变体是人工神经网络(ANN),基于使用专家估计的逆问题的解决方案。该研究的相关性在于开发紧凑型模型,以便根据各种类型的紧急情况可能同时发生的复杂情景开发评估紧急情况下复杂多级控制系统(RSChS)功能的有效性。目标和目的。本文的目的是构建和测试用于创建紧凑模型的技术,这些模型适合于分层组织的控制系统的功能指标系统。这个目标产生了选择工具来构建必要的模型和初始数据来源的任务。方法。研究工具包括分析层次系统的方法、数理统计、人工神经网络的机器学习方法、仿真建模、专家评估方法、处理统计数据的软件系统。本研究以国内外出版物资料为基础。结果和讨论。本文提出的构建复杂层次系统功能有效性神经网络模型的技术,为构建复杂层次系统的动态模型提供了基础,使系统运行过程中有限的资金和其他资源能够根据复杂的应急响应场景进行分配。结论。本文给出了构建人工神经网络及其相应的非线性函数问题的解决结果,反映了层次控制系统(RSChS)下层性能指标与上层性能指标之间的关系。该方法构建的神经网络模型可用于突发事件发展复杂情景下的资源管理决策支持系统。利用专家评估作为资料基础,可以考虑到以其他方式极难考虑到的许多目标指标。关键词:突发事件,分级控制系统,效率,人工神经网络,专家评估
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Neural network modeling of the efficiency of response to emergency situations in a multi-level control system
Introduction. It is important to have models that adequately describe the relationship between the integral indicators of the functioning of the system with the particular indicators of the lower levels of management in complex control systems, in particular in RSChS. Traditional approaches based on normative models often turn out to be untenable due to the impossibility of covering all aspects of the functioning of such systems, as well as due to the high variability of the environment and the values of the set of target indicators. Recently, adaptive machine-learning models have proven to be productive, allowing build stable and adequate models, one of the variants of which is artificial neural networks (ANN), based on the solution of inverse problems using expert estimates. The relevance of the study lies in the development of compact models that allow assessing the effectiveness of the functioning of complex multi-level control systems (RSChS) in emergency situations, developing according to complex scenarios, in which emergencies of various types can occur simultaneously. Goals and objectives. The purpose of the article is to build and test the technology for creating compact models that are adequate to the system of indicators of the functioning of hierarchically organized control systems. This goal gives rise to the task of choosing tools for constructing the necessary models and sources of initial data. Methods. The research tools include methods for analyzing hierarchical systems, mathematical statistics, machine learning methods of ANN, simulation modeling, expert assessment methods, software systems for processing statistical data. The research is based on materials from domestic and foreign publications. Results and discussion. The proposed technology for constructing a neural network model of the effectiveness of the functioning of complex hierarchical systems provides a basis for constructing dynamic models of this type, which make it possible to distribute limited financial and other resources during the operation of the system according to a complex scenario of emergency response. Conclusion. The paper presents the results of solving the problem of constructing an ANN and its corresponding nonlinear function, reflecting the relationship between the performance indicators of the lower levels of the hierarchical control system (RSChS) with the upper level. The neural network model constructed in this way can be used in the decision support system for resource management in the context of complex scenarios for the development of emergency situations. The use of expert assessments as an information basis makes it possible to take into account numerous target indicators, which are extremely difficult to take into account in other ways. Keywords: emergency situations, hierarchical control system, efficiency, artificial neural network, expert assessments
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