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EXAMINATION FOR INFLUENCE ASSESSMENT METHOD ON FOREST VOLUME
ESTIMATE USING REMOTE SENSING AND GIS
Hisao. Ito ^*, Susumu. Ogawa "
* Dept of geography, Graduate school of science, Tokyo Metropolitan university 1-1 Minami-Ohsawa, Hachiohji-city, Tokyo 192-0397, Japan
ito-hisao(@c.metro-u.ac.jp
? Dept of environmental system, faculty of geo-environmental science, Rissho university 1700 Magechi, Kumagaya, Saitama, 360-0194, Japan
ogawa(@ris.ac.jp
Key words: Remote Sensing, Forestry, Resources, Statistics, Calibration, Estimation, Measurement
Abstract:
Since waming of the global warming by carbon dioxide, the biomass distribution of forest has been concemed and its study has been requested. Much
expectation has focused on the remote sensing corresponding to wide area. We noticed small area and estimated the spatial distribution of the forest
volume using the actual GIS and remote sensing data. We comprehended the spatial distribution of the vegetation types, the geological formation, and
the water cycle. Moreover, considering the seasonal change, we assessed influence and relationship between the estimated forest volume and other
natural factors. The forest volume was largely influenced by the forest types.
1. INTRODUCTION
Since warning of the global warming by carbon dioxide, the
biomass distribution of forest has been concerned and its study
has been requested. Much expectation has focused on the
remote sensing corresponding to wide area. However, many
existing studies have discussed global forest distribution. We
noticed small area and estimated the forest volume using the
actual GIS and remote sensing data. Next, the estimated forest
volume was compared with the vegetation types, the geological
formation, and the water environments which may affect forest
volume.
2. METHODS
The spatial distribution of forest volume (timber volume, whole
volume, and biomass) was estimated by comparing the digital
numbers of satellite images and actual measurement data. At
first, the effects of haze and shade were reduced by Tasseled
Cap correction. Next, the forest volume each small catchment
was compared with the spatial distribution of the vegetation
types, the geological formation, and the water cycles estimated
by the satellite images, the GIS data, and the atmospheric data.
1.1 Study Area
Okutama forest area was selected as a study area and is located
in the headwaters of the Tamagawa River, the western part of
Tokyo. It functions for a municipal drinking-water source, river
recharge, sediment run-off prevention, and water purification
for Tokyo. Most Okutama forest areas exist in intensely uneven
mountainous area. The altitude ranges 200m to 2000m high.
First, the small catchments were divided by DEM. The Figure 1
shows study area divided to small catchments .
* Corresponding author.
851
Yamanashi up
Figure 1. Study area
1.2 Data
We chose each seasonal satellite data from Landsat/TM images
(Path = 107, Row = 35; Path = 108, Row = 35) and
TERRA/ASTER images covering Okutama forest area. We also
used a Digital Map 25000, a digital elevation model 50-m Grid
(Nippon-II) produced by Japan Geographical Survey Institute,
and monthly meteorological grid data made by National Digital
Land Information. Moreover, we used a vegetation map and
timber volume statistics (1999), breast-height diameter, height,
ages, species, and the number of trees in Okutama forest area,
offered by the Bureau of Waterworks of Tokyo Metropolitan
Government.