Unsupervised classification applications in enhancing lithological mapping and geological understanding – A case study from Northern Ireland

IF 2.6 3区 地球科学 Q2 GEOSCIENCES, MULTIDISCIPLINARY Journal of the Geological Society Pub Date : 2023-04-28 DOI:10.1144/jgs2022-136
Z. Smillie, V. Demyanov, J. McKinley, M. Cooper
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Abstract

Using pattern classification algorithms can help recognise and predict patterns in large and complex multivariate datasets. Utilising competitive learning, self-organising maps (SOMs) are known unsupervised classification tools that are considered very useful in pattern classification and recognition. This technique is based on the principles of vector quantification of similarities and clustering in a high-dimensional space, where the method can handle the analysis and visualization of high-dimensional data. The tool is ideal for analysing a complex combination of categorical and continuous spatial variables, with particular applications to geological features. In this paper, we employ the tool to predict geological features based on airborne geophysical data acquired through the Tellus project in Northern Ireland. SOMs are applied through 8 experiments (iterations), incorporating the radiometric data in combination with geological features, including elevation, slope angle, terrain ruggedness (TRI), and geochronology. The SOMs proved successful in differentiating contrasting bedrock geology, such as acidic versus mafic igneous rocks, while data clustering over intermediate rocks was not as apparent. The presence of a thick cover of glacial deposits in most of the study area presented a challenge in the data clustering, particularly over the intermediate igneous and sedimentary bedrock types. Supplementary material: https://doi.org/10.6084/m9.figshare.c.6603098
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无监督分类在增强岩性测绘和地质理解方面的应用——以北爱尔兰为例
使用模式分类算法可以帮助识别和预测大型复杂多元数据集中的模式。利用竞争学习,自组织地图(SOM)是已知的无监督分类工具,被认为在模式分类和识别中非常有用。该技术基于高维空间中相似性的矢量量化和聚类的原理,其中该方法可以处理高维数据的分析和可视化。该工具非常适合分析分类和连续空间变量的复杂组合,特别适用于地质特征。在本文中,我们使用该工具基于通过北爱尔兰Tellus项目获得的航空地球物理数据来预测地质特征。SOM通过8个实验(迭代)应用,结合辐射数据和地质特征,包括海拔、坡度角、地形崎岖度(TRI)和地质年代。SOM成功地区分了对比基岩地质,如酸性火成岩和镁铁质火成岩,而中间岩石的数据聚类则不那么明显。研究区域的大部分地区都存在厚厚的冰川沉积物,这对数据聚类提出了挑战,尤其是在中等火成岩和沉积基岩类型上。补充材料:https://doi.org/10.6084/m9.figshare.c.6603098
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来源期刊
Journal of the Geological Society
Journal of the Geological Society 地学-地球科学综合
CiteScore
6.00
自引率
3.70%
发文量
68
审稿时长
6-12 weeks
期刊介绍: Journal of the Geological Society (JGS) is owned and published by the Geological Society of London. JGS publishes topical, high-quality recent research across the full range of Earth Sciences. Papers are interdisciplinary in nature and emphasize the development of an understanding of fundamental geological processes. Broad interest articles that refer to regional studies, but which extend beyond their geographical context are also welcomed. Each year JGS presents the ‘JGS Early Career Award'' for papers published in the journal, which rewards the writing of well-written, exciting papers from early career geologists. The journal publishes research and invited review articles, discussion papers and thematic sets.
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