马尔可夫链在火灾分级和火灾发展阶段预测中的应用

N. Topolskiy, V. Vilisov, R. S. Khabibulin, B. Pranov, F. V. Demekhin
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引用次数: 0

摘要

介绍。火灾发展和扑救过程的模拟必须考虑与火灾环境和扑救可利用资源有关的大量随机因素。火灾发展的一个重要特征是其循序渐进的性质,由于物理燃烧过程和在某些火灾状态下做出的决定,一个阶段(阶段)自然地被另一个阶段所取代。在建模多阶段过程的实践中,诸如决策树、多步骤位置博弈、随机过程(包括离散马尔可夫链)等模型被广泛使用。每个模型都有自己的结构和参数。为特定应用程序选择模型结构是一个启发式步骤。在几乎每一种情况下,模型的参数都是根据逻辑推理、物理、正在进行的过程和有关模拟现象的可用统计数据来设置的。这种方法通常被称为规范。它的替代方案是一种自适应方法,即使用历史数据评估模型参数。这种方法可以使模型与真实物体足够相似,并且能够适应环境的非平稳特征和决策者偏好的可变性。该研究的相关性在于为火灾发展过程的马尔可夫模型开发了一种机器学习技术,该技术可以预测单个阶段和整个火灾的完成时间。马尔可夫模型也可以作为确定最优火力等级的基础。目标和目的。这项工作的目的是创建和测试设计模型的技术,以便对火灾完成时间进行预测。模型机器学习的任务及其作为预测和确定火灾等级的工具的使用是与这一目标一致的。运用随机过程理论、数理统计、仿真建模、技术经济评价等方法。这项研究是基于从国内外出版物中摘录的材料。结果和讨论。所提出的方法,用于使用消防和救援单位响应时间的统计数据对马尔可夫链进行机器学习,再加上使用经过训练的模型,用于分配最佳消防等级的技术和经济评估,允许应用建立在其基础上的算法,作为消防安全决策支持系统的一部分。就短期消防安全管理而言,本文提出的解决方案可作为有效决策支持系统的基础,以设计适当的模型来预测消防发展阶段和分配消防职级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Markov chains to rank fires and forecast fire development phases
Introduction. The simulation of fire development and suppression processes must take account of a large number of random factors concerning the fire environment and the resources, available for its putting out. An important feature of the fire development is its step-by-step nature, whereby one phase (stage) is naturally replaced by another as a result of physical combustion processes and decisions made amid certain states of fire. In the practice of modeling multiphase (multistage) processes, such models as decision trees, multistep positional games, random processes, including discrete Markov chains, and others are widely used. Each of these models has its own structure and parameters. The choice of the model structure for a particular application represents a heuristic step. In almost every case, parameters of models are set on the basis of logical inferences, physics, ongoing processes and available statistical data about the simulated phenomenon. This approach is usually referred to as normative. Its alternative is an adaptive approach, whereby model parameters are evaluated using historical data. This approach allows to make models that are sufficiently similar to real objects and capable of adapting to the nonstationary features of the environment and the changeability of the decision maker’s preferences.The relevance of the study lies in the development of a machine learning technology for the Markov models of the fire development process, which allow predicting the completion time of individual phases and the whole fire. The Markov model can also serve as the basis for determining the optimal fire rank.Goals and objectives. The aim of the work is to create and test the technology for designing models that allow to make projections of the fire completion time. The tasks of the model machine learning and its use as a tool for making projections and determining the rank of fire are set in line with this goal.Methods. The authors used methods of the theory of random processes, mathematical statistics, simulation modeling, technical and economic evaluations. The research is based on materials extracted from domestic and foreign publications.Results and discussion. The proposed method, designated for the machine learning of the Markov chains using statistical data on the response time of firefighting and rescue units, coupled with the use of trained models, technical and economic evaluations for assigning optimal fire ranks allow to apply algorithms built on their basis as part of fire safety decision support systems.Conclusions. The presented solutions to the problem of designing adequate models designated for projecting fire development phases and assigning fire ranks serve as the basis for effective decision support systems in terms of the short-term fire safety management.
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