捕捉英国高地地区裸露的基岩:一种地貌学聚焦的随机森林方法

IF 4.2 2区 地球科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Chris Williams , Katie Whitbread , Alex Hall , Sam Roberson , Andrew Finlayson , Romesh N. Palamakumbura , Andrew Hulbert , Matthew Paice
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引用次数: 0

摘要

岩石暴露分布图为从地质灾害评估到综合资源潜力评估等一系列应用提供了宝贵的信息。尽管这些信息很有用,但在整个英国范围内,这些信息只在有限的范围内可用。机器学习方法用于绘制裸露岩石分布的最新进展依赖于现有的地质和土地覆盖图作为模型训练的关键输入数据。我们提出了一种流域尺度的方法来提供高分辨率岩石暴露地图的GB山地地形。我们的应用程序有两个目标:建立一个一致的和交叉应用的方法,使特征识别从高程数据集;使用应用程序的结果和诊断来帮助进一步了解环境过程。我们利用人工航空图像解译和一套由5米数字地形模型生成的地貌地形变量作为分布式随机森林模型的输入。使用“留一个”方法从训练数据集中导出了8个独立的流域模型。汇总结果表明,模型精度为79%,以相对较低的精度(20%)为代价,模型灵敏度相对较高(78%)。可变重要性评估强调了与山区景观中重力驱动的斜坡过程有关的岩石暴露的预期地貌控制相一致的模式。这些结果突出了高分辨率岩石暴露测绘的多变量方法的潜力,并为进一步发展奠定了基础,特别是与进一步训练数据捕获的机会有关,以确保模型的准确性。根据地貌变量(表明包括侵蚀和沉积在内的景观过程)将特征联系起来的能力提供了超越岩石暴露的机会,例如用于关键矿物和资源评估。这种方法将应用于初始现场特征,作为未来陆上和海上地质调查活动的一部分,在这些活动中可以获得高分辨率地形和水深数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Capturing exposed bedrock in the upland regions of Great Britain: A geomorphometric focused random forest approach
Rock exposure distribution maps provide invaluable information for a range of applications from geohazard assessment through to aggregate resource potential assessments. Despite the usefulness of such information, it is only available to a limited extent across Great Britain (GB). Recent developments in the application of machine learning approaches to map exposed rock distribution rely on existing geological and land cover maps as the key input data for model training. We present a catchment-scale approach for delivering high-resolution rock exposure maps for GB mountain terrains. Our application has two objectives: establish a consistent and cross-applicable approach enabling feature identification from elevation datasets; use the results and diagnostics of the application to assist in further environmental process understanding. We utilize manual aerial image interpretation, and a suite of geomorphic terrain variables generated from a 5 m Digital Terrain Model as inputs to a distributed random forest model. Eight separate catchment models were derived from the training datasets using a leave-one-out approach. Aggregated results indicate a model accuracy of 79%, with a relatively high model sensitivity (78%) at the cost of relatively low precision (20%). Variable importance assessment highlighted patterns consistent with expected geomorphic controls on rock exposure related to gravity-driven slope processes in mountain landscapes. These results highlight the potential of multi-variant approaches for high-resolution rock exposure mapping, and lay a foundation for further development, particularly in relation to opportunities for further training data capture to ensure model accuracy. The ability to associate features based on geomorphological variables - indicative of landscape processes including erosion and deposition - presents opportunities that go beyond rock exposure such as for critical mineral and resource assessment. This approach will be applied for initial site characterisation as part of future onshore and offshore geological survey activities where high-resolution terrain and bathymetric data are available.
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来源期刊
Computers & Geosciences
Computers & Geosciences 地学-地球科学综合
CiteScore
9.30
自引率
6.80%
发文量
164
审稿时长
3.4 months
期刊介绍: Computers & Geosciences publishes high impact, original research at the interface between Computer Sciences and Geosciences. Publications should apply modern computer science paradigms, whether computational or informatics-based, to address problems in the geosciences.
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