基于人工神经网络的地球动力分区系统方法

Q3 Engineering
V. Tatarinov, A. Manevich, I. V. Losev
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引用次数: 3

摘要

在这项研究中,在选择环境危险物体的位置时(以核燃料循环设施为例),考虑了使用人工神经网络进行领土地球动力学分区的方法学方面。为了克服地质环境的性质、过程和结构信息分析的复杂性所带来的不确定性,采用了系统的信息分析方法。地质环境表现为一个相互作用的人为物体和环境系统,它们之间的联系是有组织的。在评估这类系统的运行安全性时,监测环境状态的指标很重要。根据国际和国内组织的现代监管要求,现代地壳运动是核燃料循环设施场地状态的主要指标之一,同时也是难以确定的指标。在本文中,我们概述了一种基于人工神经网络预测地壳现代运动的方法。根据预测的地壳运动学特征,可以通过地球动力学过程的表现来识别危险区:拉伸区、压缩区、弹性能积累区等。在所提出的神经网络架构上获得的初步结果显示了将该方法应用于地球动力学分区任务的积极前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SYSTEM APPROACH TO GEODYNAMIC ZONING BASED ON ARTIFICIAL NEURAL NETWORKS
In this research are presented methodological aspects of the using of artificial neural networks for the tasks of geodynamic zoning of territories are considered when choosing locations for environmentally hazardous objects (using the example of nuclear fuel cycle facilities). To overcome the uncertainty caused by the complexity of analyzing information about the properties, processes and structure of the geological environment, a systematic information analysis approach is used. The geological environment is represented as a system of interacting anthropogenic object and environment, between which connections are organized. In assessing the safety of operation of this type of system, it is important to monitor indicators of the state of the environment. According to modern regulatory requirements of international and domestic organizations, one of the main, and at the same time, difficult to determine indicators of the state of sites for the nuclear fuel cycle facilities are modern movements of the earth's crust. In this paper, we outlined a method for predicting modern movements of the earth's crust based on artificial neural networks. On the basis of the predicted kinematic characteristics of the earth's crust, it is possible to identify dangerous zones by the manifestation of geodynamic processes: zones of tension, compression, zones of accumulation of elastic energy, and so on. Preliminary results obtained on the presented neural network architecture have shown a positive outlook for the application of this methodology for geodynamic zoning tasks.
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来源期刊
Gornye nauki i tekhnologii
Gornye nauki i tekhnologii Chemical Engineering-Process Chemistry and Technology
CiteScore
3.00
自引率
0.00%
发文量
22
审稿时长
15 weeks
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