细矿原料加工综合系统最优控制评价与决策的多级算法

IF 0.4 Q4 MATHEMATICS, APPLIED Journal of Applied Mathematics & Informatics Pub Date : 2022-12-26 DOI:10.37791/2687-0649-2022-17-6-102-121
A. Puchkov, M. Dli, Nikolay N. Prokimnov, D. Y. Shutova
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引用次数: 6

摘要

介绍了一种复杂的多阶段矿石原料加工系统的能源和资源效率、技术和环境安全管理的多级决策算法的研究结果(MSPFORM)。这种系统的一个显著特征是它的多维度和多尺度,这表现在有两种选择来执行处理精细分散的矿石原料的技术过程,需要考虑到系统中包括的集料的相互作用,以及描述其中发生的过程的层次-机械,热物理,水动力,物理和化学。这种过程的多样性体现了研究的跨学科性和获得分析的、相互关联的数学模型的复杂性。这种情况激发了人工智能方法的分析使用,如深度机器学习和模糊逻辑,来描述和分析过程。研究成果的科学组成部分包括:建立了MSPFORM的广义结构,提出了评价和决策该系统最优控制的多级算法的概念基础,提出了参数的组成和优化准则的形式。这项研究的任务是分析矿石原料加工的可能选择,为MSPFORM的建设制定一个概念,使其能够根据能源和资源效率的标准优化其功能,同时满足环境安全的要求。应用进化算法求解以最小能耗为准则的MSPFORM优化问题,并给出了优化的步骤。提出了基于深度递归和卷积神经网络以及模糊推理系统的MSPFORM过程参数信息神经模糊分析块的结构。给出了在MatLab环境下对该模块软件实现的验证仿真实验结果。
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Multilevel algorithms for evaluating and making decisions on the optimal control of an integrated system for processing fine ore raw materials
The results of studies aimed at developing multi-level decision-making algorithms for management of energy and resource efficiency, technogenic and environmental safety of a complex multi-stage system for processing fine ore raw materials are presented (MSPFORM). A distinctive feature of such a system is its multidimensionality and multiscale, which manifests itself in the presence of two options for implementing technological processes for processing finely dispersed ore raw materials, the need to take into account the interaction of the aggregates included in the system, as well as the hierarchy of describing the processes occurring in them - mechanical, thermophysical, hydrodynamic, physical and chemical. Such a variety of processes characterizes the interdisciplinarity of research and the complexity of obtaining analytical, interconnected mathematical models. This situation inspired the analyze use of artificial intelligence methods, such as deep machine learning and fuzzy logic, to describe and analyze processes. The scientific component of the research results consists in the developed generalized structure of the MSPFORM, the conceptual basis of multilevel algorithms for evaluating and making decisions on the optimal control of this system, the proposed composition of the parameters and the form of the optimization criterion. The task of the study was to analyze possible options for the processing of ore raw materials, to develop a concept for the construction of the MSPFORM allowing the possibility of optimizing its functioning according to the criterion of energy and resource efficiency while meeting the requirements of environmental safety. The application of evolutionary algorithms for solving the problem of optimizing the MSPFORM according to the criterion of minimum energy consumption is announced and its stages are specified. The structure of the block of neuro-fuzzy analysis of information about the parameters of processes in MSPFORM is presented, which is based on the use of deep recurrent and convolutional neural networks, as well as a fuzzy inference system. The results of a simulation experiment on approbation of the software implementation of this block in the MatLab environment are presented.
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