Algorithm for predicting the parameters of a system for processing waste apatite-nepheline ores

IF 0.4 Q4 MATHEMATICS, APPLIED Journal of Applied Mathematics & Informatics Pub Date : 2022-01-30 DOI:10.37791/2687-0649-2022-17-1-55-68
A. Puchkov, E. Lobaneva, Oleg P. Kultygin
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引用次数: 8

Abstract

Within the framework of the concept of a circular economy, research in the field of creating technological systems for recycling waste from mining and processing plants occupies one of the key positions. This is connected, on the one hand, with significant volumes of such waste, reaching tens of millions of tons and posing a significant environmental hazard to air and water basins, human health, and, on the other hand, with their rich chemical and mineralogical composition, which makes it possible to call them accumulations of technogenic deposits. In this regard, the task of creating control systems for technological processes of processing such waste and their information support, including support for all stages of the passage of information processes, is urgent. The novelty of the presented research lies in the proposed structure of an intelligent control system for a complex chemical and energy technological system for processing apatite-nepheline ores, as well as in an algorithm for predicting technological parameters, which is part of the information support of the control system under consideration. The algorithm is based on the use of the apparatus of deep recurrent neural networks and Kalman filtering, which is used at the stage of data preprocessing to train the neural network. The paper describes the proposed algorithm for predicting multidimensional time series, adapted to the considered technological process, presents the software executed in the MatLab environment to demonstrate the efficiency of the specified combination of methods for processing technological parameters. In a model experiment, it has been shown that the use of filtering makes it possible to increase the accuracy of the forecast, which is especially noticeable at its large horizons. The practical significance of the research results is the proposed structure of an intelligent control system for the processing of apatite-nepheline ore waste and software for predicting its parameters, which can be used in various decision support systems.
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废磷灰石-霞石选矿系统参数预测算法
在循环经济概念的框架内,建立从采矿和加工厂回收废物的技术系统领域的研究占据了关键地位之一。这一方面与大量的此类废物有关,这些废物达到数千万吨,对空气和水域以及人类健康造成严重的环境危害,另一方面与它们丰富的化学和矿物成分有关,这使它们有可能被称为技术矿床的积累。在这方面,为处理这类废物的技术过程及其信息支助,包括对信息过程通过的所有阶段的支助,建立控制系统的任务是紧迫的。本研究的新颖之处在于提出了一种复杂磷灰石-霞石矿石化工与能源工艺系统的智能控制系统结构,并提出了一种预测工艺参数的算法,该算法是控制系统信息支持的一部分。该算法基于使用深度递归神经网络和卡尔曼滤波的装置,在数据预处理阶段使用卡尔曼滤波来训练神经网络。本文描述了所提出的多维时间序列预测算法,该算法与所考虑的工艺过程相适应,并给出了在MatLab环境下执行的软件,以证明指定的组合方法处理工艺参数的效率。在一个模型实验中,已经表明使用滤波可以提高预报的精度,这在大视界下尤其明显。研究成果的实际意义在于提出了磷灰石-霞石矿石废石处理智能控制系统的结构和参数预测软件,可用于各种决策支持系统。
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