An intelligent model for managing the risks of violation of the characteristics of electromechanical devices in a multi-stage system for processing ore raw materials

IF 0.4 Q4 MATHEMATICS, APPLIED Journal of Applied Mathematics & Informatics Pub Date : 2023-02-10 DOI:10.37791/2687-0649-2023-18-1-22-36
A. Puchkov, M. Dli, Nikolay N. Prokimnov, A. M. Sokolov
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Abstract

The results of studies on the development of the structure of an intelligent model for managing the risks of violation of the characteristics of electromechanical devices in a multi-stage system for processing ore raw materials are presented. Such devices are involved in all cycles of the technological process, so the assessment of this risk for them is an urgent task. A method for assessing such risks is proposed, which is based on the assessment of the useful life of equipment, performed on the basis of the prediction of characteristics by a deep recurrent neural network, with further generalization of the results of such an assessment in a fuzzy inference block. Recurrent neural networks with long short-term memory were used, which are one of the most powerful tools for solving time series regression problems, including predicting their values for long intervals. The use of deep neural networks to predict the characteristics of electromechanical devices made it possible to obtain a high prediction accuracy, which made it possible to apply a relatively less accurate recurrent least squares method for the iterative process of estimating the useful life of equipment. This approach made it possible to build a computational evaluation process with its constant refinement as new results of measurements of the characteristics of electromechanical devices become available. The results of a model experiment with a software implementation of the proposed method, performed in the MatLab 2021a environment, are presented, which showed the consistency of the program modules and obtaining a risk assessment result that is consistent with the expected dynamics of its change.
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矿石原料多阶段加工系统中机电设备违反特性风险的智能管理模型
介绍了矿石原料多阶段加工系统中机电设备违反特性风险管理智能模型结构开发的研究结果。这些设备涉及技术过程的所有周期,因此对它们的这种风险进行评估是一项紧迫的任务。提出了一种基于设备使用寿命评估的风险评估方法,该方法基于深度递归神经网络对特征的预测进行评估,并将评估结果进一步推广到模糊推理块中。使用具有长短期记忆的递归神经网络,这是解决时间序列回归问题最强大的工具之一,包括预测其长间隔的值。利用深度神经网络对机电设备的特性进行预测,可以获得较高的预测精度,从而可以将精度相对较低的递归最小二乘法应用于设备使用寿命估计的迭代过程。这种方法使得建立一个计算评估过程成为可能,随着机电设备特性测量的新结果的不断改进而成为可能。给出了在MatLab 2021a环境下软件实现该方法的模型实验结果,表明了程序模块的一致性,并获得了与其预期变化动态相一致的风险评估结果。
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