Machine Learning Algorithms for Lithological Mapping Using Landsat 9 Data in Central Western Highlands of Yemen
Authors : Samah Ali Al-Sururi
Volume/Issue : Volume 9 - 2024, Issue 10 - October
Google Scholar : https://tinyurl.com/mr398a6x
Scribd : https://tinyurl.com/yhtythyn
DOI : https://doi.org/10.38124/ijisrt/IJISRT24OCT1535
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
Abstract : This research designed the lithological units of the Central Western Highlands of Yemen (encompassing parts of Dhamar, Raymah, Sana’a, and northern Ibb) using Landsat 9 imagery. The area's complex geological features, characterized by units of the Yemen Volcanic Group from the Tertiary and Quaternary eras, Tertiary granite intrusions, and limestone, sandstone, metamorphic rocks, and Quaternary deposits, pose challenges for traditional field mapping techniques. By leveraging the spectral resolution of Landsat 9, this study aims to achieve accurate classification and mapping of lithological units. ENVI 5.6 software was used for image processing, applying a supervised classification approach represented by the two most common methods: Support Vector Machine (SVM) and Maximum Likelihood Classifier (MLC), based on training samples for each lithological class. The accuracy assessment of the classification was validated through an error matrix. The overall accuracy of SVM reached 85.3% with a Kappa coefficient of 0.8, while the overall accuracy of MLC reached 83.3% with a Kappa coefficient of 0.8, indicating a high degree of consistency and reliability in the classification process. This signifies a highly reliable classification outcome. The findings of this study highlight the significant advantages of utilizing Landsat 9 for detailed geological mapping of complex terrains, demonstrating a notable improvement in efficiency and accuracy over traditional methodologies. It can be relied upon to classify lithological units in other areas.
Keywords : Landsat 9, Yemen Volcanic Group, SVM, MLC, Overall Accuracy, ENVI.
References :
[1]. Abd El-Wahed M., Zoheir B., Pour A. B. and Kamh S.,
(2021). “Shear-related gold ores in the Wadi Hodein
Shear Belt, South Eastern Desert of Egypt: analysis of
remote sensing, field and structural data,” Minerals
11(5), 474
[2]. Al-Kadasi, M. (1994). Temporal and spatial evolution
of the basal flows of the Yemen Volcanic Group.
Unpublished Ph. D. Thesis, Royal Holloway College,
London University, UK. 301pp.
[3]. Al-Subbary, A., Nichols, G., & Bosence, D. (1994).
Contribution to the lithology and paleogeography of
Tawilah Group, Yemen. 14th International
Sedimentological Congress, Recife, Brazil.
[4]. Al-Thour, K. (1992). Stratigraphy, Sedimentology and
Diagenesis of the Amran Group (Jurassic) of the region
to the west and north–west of Sana'a Yemen Republic,
(Ph.D. Thesis): University of Birmingham, England,
293 pp.
[5]. Bachri I., Hakdaoui M., Raji M., Teodoro A. C.,
Benbouziane A., (2019). Machine learning algorithms
for automatic lithological mapping using remote
sensing data: a case study from Souk Arbaa Sahel, Sidi
Ifni Inlier, Western Anti-Atlas. Morocco ISPRS Int J
Geo-Information 8:248.
[6]. Baker, J., Menzies, M., Thirlwall, M., & Macpherson,
C. (1997). Petrogenesis of Quaternary intraplate
volcanism, Sana'a, Yemen: implications for plume-
lithosphere interaction and polybaric melt
hybridization. Journal of Petrology, 38(10), 1359-
1390.
[7]. Beydoun, Z., As-Saruri, M., El-Nakhal, H., Al-Ganad,
I., Baraba, R., Nani, A., & Al-Aawah, M. (1998).
International lexicon of stratigraphy, vol III, Asia,
fascicule 10b2. In: IUGS Publication Republic of
Yemen.
[8]. chowengerdt, R. A. (2006). Remote Sensing: Models
and Methods for Image Processing. 3rd ed. Academic
Press.
[9]. Cohen J (1960). A coefcient of agreement for nominal
scales. Educ Psychol Meas 20:37–46
[10]. Congalton, R. G., & Green, K. (2008). Assessing the
Accuracy of Remotely Sensed Data: Principles and
Practices (2nd ed.). CRC Press.
[11]. Davison, I., Al-Kadasi, M., Al-Khirbash, S., Al-
Subbary, A. K., Baker, J., Blakey, S., Bosence, D.,
Dart, C., Heaton, R., & McCLAY, K. (1994).
Geological evolution of the southeastern Red Sea Rift
margin, Republic of Yemen. Geological Society of
America Bulletin, 106(11), 1474-1493.
[12]. Drury, S. A. (1993). Image Interpretation in Geology.
3rd ed. Chapman & Hall, London.
[13]. El-Omairi M.A. and Garouani A. El (2023). A Review
on Advancements in Lithological Mapping Utilizing
Machine Learning Algorithms and Remote Sensing
Data.
[14]. Foody, G. M. (2002). Status of land cover
classification accuracy assessment. Remote Sensing of
Environment, 80(1), 185-201.
[15]. Gupta, R. P. (2018). Remote Sensing Geology. Berlin,
Springer.
[16]. J. Aisabokhae and I. Osazuwa, (2021). “Radiometric
mapping and spectral based classification of rocks
using remote sensing data analysis: the Precambrian
basement complex, NW Nigeria,” Remote Sens. Appl.:
Soc. Environ. 21, 100447
[17]. Jensen, J. R. (2005). Introductory Digital Image
Processing: A Remote Sensing Perspective (3rd ed.).
Pearson Prentice Hall.
[18]. Khanbari, K. (2015). Structural Analysis and Tertiary
Tectonic Evolution of Yemen. Faculty of Science
Bulletin, 75-87.
[19]. Kumar C., Chatterjee S., Oommen T., Guha A. (2020).
Automated lithological mapping by integrating spectral
enhancement techniques and machine learning
algorithms using AVIRIS-NG hyperspectral data in
gold-bearing granite-greenstone rocks in Hutti, India.
Int J Appl Earth Obs Geoinf 86:102006.
[20]. Lillesand, T. M., Kiefer, R. W., & Chipman, J. W.
(2015). Remote Sensing and Image Interpretation. 7th
ed. Wiley.
[21]. Menzies, M., Baker, J., Chazot, G., & Al-Kadasi, M.
(1997). Evolution of the Red Sea volcanic margin,
western Yemen. Geophysical Monograph-American
Geophysical Union, 100, 29-44.
[22]. Ranjbari M. R, Vagheei R, Salehi H (2022b)
Integration of Landsat-8 and Sentinel-1 dataset to
extract geological lineaments in complex formations of
Tepal mountain area, Shahrood, north Iran. Adv Space
Res.
[23]. Ranjbari M. R., Bigdeli B., Salehi H., (2020).
Lithological mapping for complex geological
formations with mixed classifiers using Landsat 8 data.
J. Appl. Rem. Sens. 16(1) 014514
[24]. Richards, J. A. (2013). Remote Sensing Digital Image
Analysis: An Introduction. 5th ed. Springer.
[25]. Richards, J. A., & Jia, X. (1999). Remote Sensing
Digital Image Analysis: An Introduction. 4th ed.
Springer-Verlag, Berlin.
[26]. Robertson Group Plc. (1991). Satellite mapping
programme, final report, topographic maps; geological
maps; hydrogeological maps; volcanic and earthquake
risk maps; mineral and petroleum potential study: Tech
report for Yemeni joint project for Natural Resource,
Ministry of Oil and Ministry Resources, Sana'a.
Liandudno, Gwynedd, U.k.
[27]. Turner, D., Lucieer, A., & Watson, C. (2015). An
automated technique for generating georectified
mosaics from ultra-high resolution unmanned aerial
vehicle (UAV) imagery, based on structure from
motion (SfM) point clouds. Remote Sensing, 5(5),
2371-2390.
[28]. Wanyan Ge., Cheng Q., Jing L., Armenakis C., Ding
H., (2018). Lithological discrimination using ASTER
and Sentinel-2A in the Shibanjing ophiolite complex of
Beishan orogenic in Inner Mongolia, China. Adv Sp
Res 62:1702–1716.
[29]. Warner, T. A., Nerry, F., & Chelle, M. (2009). The
FLAASH atmospheric correction algorithm: Analyzing
its performance in the context of geological mapping.
Remote Sensing of Environment, 113(10), 2175-2185.
Keywords : Landsat 9, Yemen Volcanic Group, SVM, MLC, Overall Accuracy, ENVI.