SPATIOTEMPORAL ANALYSIS AND WATER QUALITY PREDICTION MODEL NEAR A NICKEL MINE UTILIZING DRONE MULTISPECTRAL IMAGING
Changes in land use due to community plantation activities and nickel mining activities are thought to have put pressure on the water quality of the Akelamo River. Long-term water quality monitoring is needed to provide basic information in an effort to determine environmental management policies...
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Format: | Theses |
Language: | Indonesia |
Subjects: | |
Online Access: | https://digilib.itb.ac.id/gdl/view/77961 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Changes in land use due to community plantation activities and nickel mining activities
are thought to have put pressure on the water quality of the Akelamo River. Long-term
water quality monitoring is needed to provide basic information in an effort to
determine environmental management policies. In-situ and laboratory measurement
methods generally require a relatively long time and cannot provide a detailed spatial
distribution of water quality. The use of satellite imagery has been extensively
developed to address these challenges. However, the high resolution of satellite images
and the intermittent data availability due to cloud cover render satellite imagery
inapplicable in many locations. Currently, drone technology equipped with
multispectral cameras is capable of providing image data with higher spatiotemporal
resolution. In this study, a machine learning algorithm, specifically supervised
learning, is employed to predict water quality based on multispectral drone image data
using a point and buffer scheme with a 1-meter radius for extracting reflectance values.
The research results indicate that the linear regression model for predicting total
suspended solids (TSS) and turbidity yields the highest coefficient of determination
(????
2
) of 0.79. The use of the buffer scheme in extracting drone reflectance values
significantly enhances the ????
2
value. The optimal prediction of optical water types
(OWT) at the Akelamo River estuary is achieved using the random forest (RF)
algorithm. Clear water and very turbid categories are dominant OWT types identified
in this study. Furthermore, the spatiotemporal distribution of TSS and turbidity values
at the Akelamo River estuary is heavily influenced by rainfall conditions in the
catchment area. Consequently, multispectral drone imagery can be employed to create
a water quality prediction model at the Akelamo River estuary, providing a more detailed and accurate spatiotemporal analysis. |
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