基于卷积神经网络的矿床空间预测找矿模型构建方法(以跨贝加尔湖东南部为例)

IF 0.3 Q4 GEOCHEMISTRY & GEOPHYSICS
G. A. Grishkov, I. O. Nafigin, S. A. Ustinov, V. A. Minaev, V. A. Petrov
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引用次数: 0

摘要

将神经网络技术应用于地质勘探的不同阶段是当今地质研究的一个迫切趋势。本文考虑了AlexNet神经网络的架构,该网络已经在各个领域进行了测试。AlexNet使得在相对较少的数据上进行训练成为可能,并且具有足够的准确性来解决问题。为了使用选定的神经网络进行操作,已经开发了一种技术,该技术可以基于间接或实际控制矿石对象的准备好的地质和空间特征(标准)来训练神经网络模型,并将其进一步应用于所研究的领域。这种方法允许人们以空间预测搜索模型的形式分析并获得对研究区域的专家评估,该模型预测了最有希望进一步研究的地点的位置。在本文中,演示了在外贝加尔东南部地区使用开发的方法预测热液块状硫化物矿床的一个例子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An Approach to Creating Spatial Predictive Prospecting Models of Deposits Based on Convolutional Neural Networks (A Case Study of the Territory of Southeastern Transbaikalia)

An Approach to Creating Spatial Predictive Prospecting Models of Deposits Based on Convolutional Neural Networks (A Case Study of the Territory of Southeastern Transbaikalia)

An Approach to Creating Spatial Predictive Prospecting Models of Deposits Based on Convolutional Neural Networks (A Case Study of the Territory of Southeastern Transbaikalia)

Today, an urgent trend in geology is the development of approaches to applying neural network technologies at different stages of geological exploration. The article considers the architecture of the AlexNet neural network, which has already been tested in various territories. AlexNet makes it poddible to conduct training on a relatively small amount of data with sufficient accuracy to solve problems. To carry out operations with the selected neural network, a technique has been developed that makes it possible, based on prepared geological and spatial features (criteria) that indirectly or actually control ore objects, to train a neural network model with its further application to the studied territory. This approach allows one to analyze and obtain an expert assessment of the studied area in the form of a spatial predictive search model that predicts the location of the most promising sites for further study. In the current article, an example of using the developed methodology for forecasting hydrothermal massive sulfide deposits in the territory of Southeastern Transbaikalia is demonstrated.

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来源期刊
Seismic Instruments
Seismic Instruments GEOCHEMISTRY & GEOPHYSICS-
自引率
44.40%
发文量
45
期刊介绍: Seismic Instruments is a journal devoted to the description of geophysical instruments used in seismic research. In addition to covering the actual instruments for registering seismic waves, substantial room is devoted to solving instrumental-methodological problems of geophysical monitoring, applying various methods that are used to search for earthquake precursors, to studying earthquake nucleation processes and to monitoring natural and technogenous processes. The description of the construction, working elements, and technical characteristics of the instruments, as well as some results of implementation of the instruments and interpretation of the results are given. Attention is paid to seismic monitoring data and earthquake catalog quality Analysis.
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