Recognition of geological rocks at the bedded-infiltration uranium fields by using neural networks

R. Muhamedyev, Y. Kuchin, P. Gricenko, Z. Nurushev, K. Yakunin, E. Muhamedyeva
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引用次数: 4

Abstract

Interpretation geophysical data is one of the important factors affecting the economic indicators of mining process. The mining process depend on the speed and accuracy of geophysical data interpretation, but the process of logging data interpretation can not be strictly formalized. Therefore, computer interpretation methods on the basis of expert estimates are necessary. The method is based on expert opinion are widely used in weakly formalized tasks. Mention may be made of the system based on rules, fuzzy logic, Bayesian decision-making systems, artificial neural networks (ANN). ANN have already been used for solving a wide range of recognition problems. The paper analyzes the quality of network's data interpretation essentially depending on its configuration parameters, methods of data preprocessing and learning samples. About 2000 calculation experiments have been made, software and templates for preprocessing of data and interpretation findings have been developed. These experiments showed the effectiveness of neural network approach to solving the problem of geological rocks recognition in stratum-infiltration uranium deposits. Further research in this area will raise the recognition process automation and its accuracy.
层状渗透铀矿田地质岩石的神经网络识别
物探资料解释是影响采矿过程经济指标的重要因素之一。采矿过程取决于物探资料解释的速度和精度,而测井资料解释的过程不能严格形式化。因此,基于专家估计的计算机解释方法是必要的。该方法基于专家意见,广泛应用于弱形式化任务。可以提到基于规则、模糊逻辑、贝叶斯决策系统、人工神经网络(ANN)的系统。人工神经网络已经被用于解决广泛的识别问题。本文分析了网络的数据解释质量主要取决于其配置参数、数据预处理方法和学习样本。进行了约2000次计算实验,开发了数据预处理和解释结果的软件和模板。实验结果表明,神经网络方法在解决层渗铀矿床地质岩石识别问题中的有效性。该领域的进一步研究将提高识别过程的自动化程度和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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