Big Earth Data Processing Using Machine Learning for Integrated Mapping of the Dead Sea Fault, Jordan

Glasnik Šumarskog fakulteta Univerziteta u Banjoj Luci, 31, 79-103. DOI: 10.7251/GSF2131079L, 2021

Posted: 28 Jul 2022

See all articles by Polina Lemenkova

Polina Lemenkova

Alma Mater Studiorum University of Bologna

Date Written: December 31, 2021

Abstract

In this research, an integrated framework on the big Earth data analysis has been developed in the context of the geomorphology of Jordan. The research explores the correlation between several thematic datasets, including machine learning and multidisciplinary geospatial data. GIS mapping is widely used in geological mapping as the most adequate technical tool for data visualization and analysis. GIS applications encourage geological prospective modeling by visualizing data aimed at the prognosis of mineral resources. However, automatization using machine learning for big Earth data processing provides the speed and accurate processing of multisource massive datasets. This is enabled by the application of scripting and programming in cartographic techniques. This study presents the combined machine learning methods of cartographic analysis and big Earth data modeling. The objective is to analyze a correlation between the factors affecting the geomorphological shape of Jordan with respects to the Dead Sea Fault and geological evolution. The technical methodology includes the following three independent tools: 1) Generic Mapping Tools (GMT); 2) Selected libraries of R programming language; 3) QGIS. Specifically, the GMT scripting program was used for topographic, seismic and geophysical mapping, while QGIS was used for geologic mapping and R language for geomorphometric modeling. Accordingly, the workflow is logically structured through these three technical tools, representing different cartographic approaches for data processing. Data and materials include multisource datasets of the various resolution, spatial extent, origin and formats. The results presented cartographic layouts of qualitative and quantitative maps with statistical summaries (histograms). The novelty of this approach is explained by the need to close a technical gap between the traditional GIS and scripting mapping, which is wider for big data mapping and where the crucial factors are speed and precision of data handling, as well as effective visualization achieved by the machine graphics. The paper analyzes the underlying geologic processes affecting the formation of geomorphological landforms in Jordan with a 3D visualization of the selected fragment of the Dead Sea Fault zone. The research presents an extended description in methodology, including the explanations of code snippets from the GMT modules and examples of the use of R libraries ‘raster’ and ‘tmap’. The results revealed strong correlation between the geological and geophysical settings which affect geomorphological patterns. Integrated study of the geomorphology of Jordan was based on multisource datasets processed by scripting. A thorough analysis presented regional correlations between the geomorphological, geological and tectonic settings in Jordan. The paper contributed both to the development of cartographic engineering by introducing scripting techniques and to the regional studies of Jordan including the Dead Sea Fault as a special region of Jordan. The results include 12 new thematic maps including a 3D model.

Keywords: Big data, cartography, dead sea fault, geology, geophysics, GMT, Jordan, machine learning, QGIS, topography

JEL Classification: Y92, Q00, Q01, Q25, Q24, Q25, Q30, Q33, Q34, Q40, Q50, Q54, Q55, Q56, C00, C01, C61

Suggested Citation

Lemenkova, Polina, Big Earth Data Processing Using Machine Learning for Integrated Mapping of the Dead Sea Fault, Jordan (December 31, 2021). Glasnik Šumarskog fakulteta Univerziteta u Banjoj Luci, 31, 79-103. DOI: 10.7251/GSF2131079L, 2021, Available at SSRN: https://ssrn.com/abstract=3997798

Polina Lemenkova (Contact Author)

Alma Mater Studiorum University of Bologna ( email )

Bologna
Italy
+393446928732 (Phone)

HOME PAGE: http://https://www.unibo.it/sitoweb/polina.lemenkova2/

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