DEVELOPMENT OF CHLOROPHYLL-A STATUS MODEL IN SAGULING RESERVOIR BASED ON PHYSICOCHEMICAL PARAMETERS AND LANDSAT SATELLITE IMAGERY USING ARTIFICIAL NEURAL NETWORK
Water body quality management is one of the important parameters in maintaining the availability of clean water sources. The entry of various pollutants originating from domestic and non-domestic activities due to uncontrolled human activities has resulted in damage to water bodies. Monitoring ac...
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Format: | Theses |
Language: | Indonesia |
Subjects: | |
Online Access: | https://digilib.itb.ac.id/gdl/view/80296 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Water body quality management is one of the important parameters in maintaining
the availability of clean water sources. The entry of various pollutants originating
from domestic and non-domestic activities due to uncontrolled human activities has
resulted in damage to water bodies. Monitoring activities by taking water samples
have been carried out for many years in Saguling Reservoir, but this is certainly a
burden for the reservoir manager. Modeling is one of the shortcuts for reservoir
managers to monitor sustainable water quality, through the use of satellite imagery.
The presence of chlorophyll-a is one of the important parameters that is an
indicator of ecosystem fertility that acts as primary productivity and is responsible
for the sustainability of the aquaculture food chain. However, poor management
with the influx of various kinds of pollutants makes the reservoir become excess
nutrient eutrophication events.
This research proposes an Artificial Neural Network (ANN) method of multilayer
perceptron model with back-propagation algorithm type consisting of
physicochemical data variabels such as: PO4, NH3-N, NO2-N, NO3-N,
transparency, NH3, temperature, pH, phytoplankton, chlorophyll-a, BOD, COD,
turbidity, DO and light intensity and Landsat satellite data from 2013-2023 are
used as input variabels to model chlorophyll-a in the reservoir.
The evaluation results of regression analysis (R2
), Root Mean Square Error
(RMSE) and Mean Square Error (MSE) are used to see the performance of the ANN
model in predicting chlorophyll-a. The ANN prediction model is expected to show
better prediction ability when other parameter levels. The results of the prediction
test of observed chlorophyll-a with predicted chlorophyll-a were carried out with
two models, namely the prediction model with physicochemical data and a
combination of landsat bands, where the physicochemical model was R
2 0,974,
RMSE 0,106, MSE 0.106 and %Error 2,13% while the landsat band combination
model was R2
0,85, RMSE 0,142, MSE 0,106 and %Error 2,62%.Based on the prediction results and comparison with field observation data, the
overall condition of the reservoir is in ultra-microtrophic to mesotrophic
conditions, which means that the average value of chlorophyll-a concentration
scattered in the reservoir area is 0 - 5 mg/m3.
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