Applications of Remote
Sensing for Sargassum on Da Ya Bay
Li Tiefang, Yi
Jianchun Center for Remote, Zhongshan University, P.R.C
Liu Huai, Fang Hongda Shouth China Sea Marine
Environmental Monitoring Center, SOA
Dong
Yuguo Guangzhou Institute of New Techniques in Geologym
Academic Sinica,Chen Xuelian Scientific Research
Institute , Pearl River Water Resources Commission, P.R.C.
Abstract There is a lot of sargassum
growing in the sea area of DaYa Bay. Sargassumk is a type of big algae
with body length about 1~2 meters and the longest about 5~6 meters. The
sargassum begins to grow in fall of every year, and breaks in April of May
of the next year and floats away with sea currents. It is the major
clogged material to the cooling system pipe of DaYa Bay Nuclear Power
Station. To provide the design of the filter lack and drum with reliable
data, it's necessary to investigate its culture regularity, distribution,
output and floating quantity toward cooling system pipe on the Bay. As the
Bay areas are very wide, it's quite difficult to determine the
distributional range and the total production on the basis of conventional
oceanic research, but remote sensing investigation is a very effective
method. The paper discusses the methods of using LANDSAT TM data with the
aid of on-the-spot research to recognize the sargassum distributional
range and estimate its output.
The acquisition of remotely
sensed sargassum information
- The Sargassum Distributional Characteristics
Sargassum is an
algae of fixing life, grows on the low water line down to gravel 5
meters deep under water, and distributes in the states of piece or bar.
The water body is usually cleaner when sargassum grows.
- Sargassum Wavebands Characteristics
In the spectrum ranges of
0.4 ~ 0.7 um, the sargassum has its own obvious absorption and
reflection bands, which are important marks of recognizing sargassum.
The average brightness curves on TM images are shown as Fig. 1, which
shows that TM1 wavebands have deeper
Penetration and more information contents than that of TM2
wavebands. Although the noise on TM1 image caused by atmosphere is much
greater than that on TM2, the noise only affects the shift of the
brightness distributional curve, not on its form and its message
recognization.
- The Acquisition of Sargassum Messages
Based on the sargassum
distributional characteristics and waveband features, TM1 images in two
periods, one of which is before sargassum grows (October), the other ,
after the sargassum grows up (January), are chosen to be processed
differentially. The image brightness on gravel beach, on which there is
no sargassum growing , is the highest. Otherwise, its image brightness
will be much lower on the on the TM image when sargassum lives. The
difference of brightness between two periods is very small in the area
where no sargassum grows . As a matter of fact, the greater difference
will occur only in the case of the current in various current speeds in
this area from the above analysis, the sargassum massage could be picked
up. The red algae and sea current have the same differential value of
spectrum. Several differential values of typical bottom materials,
current and algaes are shown below:
Type |
Muddy bed material |
Sandy bed Material |
Current |
Sand beach |
Sargassum |
Red algae |
|
material |
Material |
|
Beach |
|
|
D.V. |
0~5 |
0~3 |
>10 |
0~3 |
8~10 |
8~10 |
D.V --- Differential Values of
Brghtness | It can be seen from the
above table that most of the no-sargassum messages could be removed
after the different processing. The possible confusing messages will
occur in red algae and currents. But when the states of differential
spectrum, original spectrum of sargassum, red algae, current, terrain
and topography are applied to the message processing , they could be
obviously told apart. As red algae is a type of small algae growing on
the water bed of mud with lower current speed, its imagery brightness
value is much darker than that of sargassum living on the gravel beach.
Basides , the current speed in the seas of red algae growing is slower
than of that of sargassum growing , and its imagery texture smoother and
colourgrade, darker. So, the sargassum distributional range can be
decided and different growing densities can be distinguished. The
comprehensive analysis model is given below:
Us(s) = Utm1(D)AUg(G)AUtm1(TM)AUt(T) ----------------(1)
Where: Us(S) -- The sargassum discriminant
function. Utm1(D) - The differential value
of images before and after sargassum growing. Ug(G) -- The membership
function of terrain and topography (gravel beach) for sargassum
living. Utm1(tm1)-The brightness function of TM1 image (original
spectrum). Ut(T) -- Characteristic function of imagery texture for
sargassum growing (consist of the textures of piece or bar
spottedly). A --" AND" operator, means the artificial intelligence
processing of compuper recognization for differential value processing.
The sargassum distributional range and growing densities
determined by the above methods are as Fig 2.
Sargassum products
estimation
- Sargassum Output Estimation Model
The different growing
densities of sargassum have difference in brightness and differential
value. The higher of the sargassum growing grades are, the darker the
brightness, and the larger their differential vlaues. On the other hand,
the lower sargassum growing grades are, the brightener the and the
smaller the differential value. In order to estimate the sargassum
output, the on-the-spot sampling and weighing are carried based upon
different densities shown on the image to decide the quantities of the
density grades on the image. The sargassum output Gs follows:
Gs = (C1. L1. + C2.L2 + C3.L3) . Pa. gs
-----------------------(2) Where: C1,C2,C3-- The pixels
colour grade (Red, Green and Blue). L1,L2,L3-- The rate of sargassum
length at the sampling area. pa -- The spatial -resolution of
remotely sensed image (m2) gs -- The average output in unit area at
sampling seas.
The above sargassum output estimating model is
the accompaniment of remote sensing technique with actual field sampling
and surveying . L1, L2, and L3, could be regarded as the weight
coefficients on the sargassum desnities Ci, which coame from the
remotely sensed images , also as the calibration value. From the
equation (2), the sargassum output in all of DaYa Bay is about 1700T
- The Predication of Broken Sargassum Drifting Route.
The
sargassum, which breaks in April or May every year, would float away
with tidal currents in side the Bay. The drifting route and hold-up time
are the key problem for the clogging of cooling system pipe of the power
station. The drifting route has much to do with tidal currents and ti
usually mapped out thought the analysis of very few points at actual
station surveying. Because the ordinary current analysis method couldn't
reflect at the current state and it's details inside the Bay length,
it's quite difficult to foretell the broken sargassum drifting routes at
every mouth. The TM image at tidal flood and ebb are chosen to pick up
surface current message to analyze the broken sargessum's floating
routes. The trace and state of surface current message to analyze the
broken sargassum's floating routes. The trace and state of surface
currents, which are shown in great details on remotely sensed images,
are the dynamic factors of sargassum drifting. This is because the
surface current field (speed and direction) has an association with the
brightness and texture on remotely sensed images. [1], [2]
As a
matter of fact, the higher the current sped is, the much rougher the
surface state and the brighter the imagery brightness. In the contrary,
the slower the current speed is, the darker the imagery brightness.
Based upon the statistic results of TM imagery at the same tidal and
meteorological condition with the surveying of current speed and
direction on-the-sopt, the corrlelation coefficient of pixle's
brightness with the current speed is about 0.7 ~ 0.8. Also, where water
flows, the surface roughness, suspended sediment, water colour and so
on, would be the marks of current trace shown on the image , and the
state of the interaction of different water bodies or curren5 system,
such as circumfluent, eddy, shearing, and so on, would be depicted on TM
imagery explicitly. As a result, the surface current field of flood and
ebb current inside the Bay could be mapped out on Fig. 3. By the
analysis of sargassum floating direction and holdup condition at every
bay mouth, the sargassum, which is dangerous for the cooling system pipe
of the power station , is estimated at about 85% of the total output on
DaYa Bay. They are mainly from the west of Central Islets.
Fig. 3 Current field map of Da Ya Bay's
tidal flood and ebb current Results and Discussion So
far, remote sensing for sargassum has been applied only in 2 or 3
countries in the world. The Characteristics of the method discussed in the
paper are as following:
- The scientific combination of oceanic remote sensing and biological
remote sensing with under-water topography.
- The sargassum output estimating model established by the proper
combination of remote sensing method with the ordinary oceanographic
research.
- The recognization and analysis combining water surface remote
sensing massage with under water remote sensing
information.
Thanks to the combination of multi-massages with
different processing methods, the remote sensing of sargassum on DaYa
Bay has good results and it would provide the engineering design of the
filter lock and drum with reliable data.
Acknowledgments The original TM images were provided
by the Remote Sensing Satellite Ground Station of Chinese Academy of
Science. This research was also partly supported by Mr. Ou Huamin, Mr. Lin
Zuheng, Ms. Li Jianrong, Mr. Jiang Yuejin, of South China Sea
Environmental Monitoring Center of SOA and Mr. Li Yinxi, Mr. Ma Yachuan,
of Remote Sensing Satellite Ground Station of Chinese Academy of science.
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