is a linear model with an R square value of 59%. The
results of this study are relatively similar when
compared with the results of the Wachid et al (2017)
study which produced an r square value of 59.89% in
mangrove vegetation in Teluk Jor.
Table 1: Result of statistical models using OLS regression
y = - 0.457 + 13.862 NDVI
Based on the selected linear regression model, the
area and percentage of canopy density in each class
can be seen in table 2. The low canopy density class
is 606.80 ha (57.8%), while the high canopy density
class is only 2.25 ha (0.21%). This indicates that the
landscape of the mangrove forest in Percut Sei Tuan
is dominated by vegetation with a low canopy
density. This can also be an indication that the level
of disturbance to the mangrove vegetation in Percut
Sei Tuan is quite high.
Table 2: Class canopy density in mangrove forest Percut Sei
Tuan
The spatial distribution of canopy density in the
mangrove forest landscape of Percut Sei Tuan can be
seen in Figure 3. The distribution of the class of low
density canopy (pink color) is distributed along the
outer land line dominated by Avicennia sp. Low
density canopy classes are also widely seen in former
pond areas.
Figure 3: Spatial distribution of canopy density class in
mangrove forest in Percut Sei Tuan
4 CONCLUSIONS
The result showed that NDVI approaches can
estimate the forest canopy cover with r
square value
59.0 %. Low canopy density (57.8%) is majority
canopy density in mangrove forest of Percut Sei
Tuan.
ACKNOWLEDGEMENTS
This study was partly supported by a TALENTA
Grant 2017 (No. 104/UN5.2.3.1/PPM/KP-
TALENTA USU/2017) from Sumatera Utara
University.
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