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3D lithological mapping of borehole descriptions using word embeddings

机译:使用Word Embeddings的钻孔描述的3D岩性映射

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摘要

In recent years the exponential growth in digital data and the expansion of machine learning have fostered the development of new applications in geosciences. Natural Language Processing (NLP) tackles various issues that arise from using human language data. In this study, NLP is applied to classify and map lithological descriptions in a three dimensional space. The data originates from the Australian Groundwater Explorer dataset of the Bureau of Meteorology, which contains the description and geolocation of bores drilled in New South Wales (NSW), Australia. A GloVe model trained with scientific journal articles and Wikipedia contents related to geosciences was used to obtain embeddings (vectors) from borehole descriptions. In parallel, and as a baseline, the descriptions were classified combining regular expressions and expert criterion. The description embeddings were subsequently classified using a multilayer perceptron neural network (MLP). The performance was evaluated using different accuracy metrics. The embeddings were triangulated and the resulting embeddings were classified using the trained MLP and compared against a nearest neighbour (NN) interpolation of lithological classes. The mapping of the descriptions was carried out by using 3D voxels. Coupling NLP with supervised classification alternatives and interpolation methods resulted in reasonable 3D representation of lithologies. This methodology is a first step in demonstrating the applicability of NLP to the geosciences, which also allows for an uncertainty quantification in the different steps of the process, such as classification and interpolation. Interpolation techniques, although acceptable, might be replaced by machine learning techniques to improve the performance of 3D models.
机译:近年来,数字数据的指数增长和机器学习的扩展促进了地球科学的新应用的发展。自然语言处理(NLP)解决了使用人类语言数据而产生的各种问题。在本研究中,NLP应用于三维空间中的分类和地图岩性描述。该数据源自气象局的澳大利亚地下水资源集数据集,其中包含在澳大利亚新南威尔士(新南威尔士州)的钻孔的描述和地理位置。使用科学期刊文章和与地球科学相关的维基百科内容培训的手套模型用于从钻孔描述中获得嵌入式(矢量)。并行,作为基线,描述是分类的结合正则表达式和专家标准。随后使用多层Perceptron神经网络(MLP)进行描述嵌入。使用不同的准确度指标评估性能。嵌入的是三角形的,并且使用训练的MLP对所得嵌入的嵌入进行分类,并与最近的邻居(NN)插值进行比较。描述的映射是通过使用3D体素进行的。耦合NLP与监督分类替代品和插值方法导致岩性的合理3D表示。该方法是将NLP的适用性证明了地质学的第一步,其还允许在过程的不同步骤中进行不确定性量化,例如分类和插值。插值技术虽然可以通过机器学习技术代替,以提高3D模型的性能。

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  • 来源
    《Computers & geosciences》 |2020年第8期|104516.1-104516.14|共14页
  • 作者单位

    Univ Sydney Sch Life & Environm Sci Sydney NSW 2006 Australia;

    Univ Sydney Sch Life & Environm Sci Sydney NSW 2006 Australia;

    Australian Natl Univ Fenner Sch Environm & Soc Canberra ACT 0200 Australia;

    Univ Sydney Sch Life & Environm Sci Sydney NSW 2006 Australia;

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