Integrasi SIG (Sistem Informasi Geografis) dan Citra ASTER untuk Analisis Sebaran Deposit Nikel Laterit ( Studi Kasus pada Kabupaten Seram Bagian Barat, Provinsi Maluku)
This research investigates the application of GIS (Geographic Information System) and ASTER image for predicting the occurrences of lateritic nickel depsosits. Research area is located in the Kabupaten Seram Bagian Barat, Maluku Province, which is known to have large amount of lateritic nickel depos...
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Main Authors: | , |
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Format: | Theses and Dissertations NonPeerReviewed |
Published: |
[Yogyakarta] : Universitas Gadjah Mada
2014
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Subjects: | |
Online Access: | https://repository.ugm.ac.id/128507/ http://etd.ugm.ac.id/index.php?mod=penelitian_detail&sub=PenelitianDetail&act=view&typ=html&buku_id=68856 |
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Institution: | Universitas Gadjah Mada |
Summary: | This research investigates the application of GIS (Geographic Information
System) and ASTER image for predicting the occurrences of lateritic nickel
depsosits. Research area is located in the Kabupaten Seram Bagian Barat,
Maluku Province, which is known to have large amount of lateritic nickel
deposits. Research methods consist of interpretation of remote sensing data
especially ASTER, field geological works, spatial data management and spatial
analysis using GIS. Research is conducted into four stages, starts from data
collection and entry which will be used as modeling variables. The next steps
consist of processing the ASTER image and digital geology and DEM data,
calculation of relationship between physical variables and occurrences of lateritic
nickel deposits, data integration, spatial modeling and validation using field data.
GIS spatial analysis is applied to quantify spatial relationship between
occurrences of nickel deposits (represented by drillhole data) and following
geological factors: lithology, structures (lineaments), slope, vegetation cover, and
the existence of predictor minerals hematite, goethite, and chlorite. In this case,
lithology is derived from geological map, lineaments and slopes from DEM, while
vegetation and minerals hematite, goethite and chlorite from ASTER. The result
shows that lateritic nickel deposits are associated with seven (7) physical variable
as follows: ultramafic rocks and Taunusa Complex (metamorphic rocks), low
vegetation density (NDVI < 0,3), low to moderate slope class (< 36%), zone at
radii > 300 m from geological lineaments, the presence of indicator minerals
hematite and geothite (PCA > 6,09), and the absence of chlorite (PCA < 3,45).
Then the seven physical variables are made as seven evidence or predictor maps
using binary method (Suitable and Non-suitable class) which are then all
combined using spatial operator AND to produce a map of potential lateritic
nickel deposits. This modeling produces areas of potential lateritic nickel deposits
that covers 14.05 sq. km. that equals approximately with 10% of the total of study
area which is 142.01 sq. km. This result has been succesfully verified using field
data that shows a good correlation between GIS model and field data. This
methoid is expected can be applied to identify the potency of lateritic nickel
deposits in other regions of Indonesia. |
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