The high pile wharf has the advantage
of slight wave reflection, steady
anchoring condition, little investment and
the construction time being short. Therefore
it has been widely used in coastal areas
where the ground has soft soil. But, on the
other hand its penetrant structure raises
some problems also for the structure. In
order to guarantee the request of ships draft,
the front water area of the wharf has to be
dug more deep, and the rear area of the
wharf needs massive backfill so as to link it
with land, which can lead to the balance of
soil body being destroyed, and may cause
deformation of the bank slope which would
influence the stability of the high wharf pile
foundation. Thus, if no control measures are
carried out (such as deformation monitor
forecast), there would be an enormous
security hidden danger in the wharf.

Regarding the wharf deformation monitor
forecast, the traditional analysis models
include the random model, deterministic
model and the mix model. But in case of
complex influencing factors, it is beyond the
ability of the traditional analysis models to
describe the non-linear mapping relations
between the wharf structure and their
deformation, further it affects the data fitting
and the precision of deformation forecast.
The artificial neural network model may
solve this problem to a great extent with its
splendid self-organization, auto-adaptability,
fuzzy judgment and inference, and better
self-study ability. At present, the BP neural
network model has been widely applied
in dam examination forecast. This paper
establishes an improved BP neural network
model used for the deformation observation
data analysis with the high pile wharf
deformation forecasts system. The BP
network is the forward feed network which
is composed by a nonlinear transformation
unit, and is one kind of teacher’s studying
algorithm. It revises the connection
weight between layers and the threshold
value according to the actual output error,
making the value of exports and actual
value as close as possible, thus enabling
the forecast to have good accuracy.
The Principle and
algorithm of ANN
BP (Back Propagation) network
The BP neural network usually contains
three parts the input layer, the hidden layer
and the output layer. The hidden layer
may contain one or more layers, and each
layer is composed of many neurons. Its
network topology is shown in Figure1. Its
characteristic is that: the neuron in each
layer only connects with the neuron in
the neighboring layer; there is no neuron
connection within the layer; and there is
no non-feedback connection between each
neuron layer as well. Firstly, the input signal
is transmitted forward to the hidden node,
and then with the transition function, the
information of hidden node is transmitted
to output node where the result should be
output after the processing. The transmitting
function used in node usually selects the
Sigmoid function. As a general rule, the
hidden layer uses the S logarithm or the
tangent activation function, but output
layer selects the linear activation function.
The algorithm of BP neural
network study
The BP neural network uses the algorithm
of error reverse-transmit study with the
technology of gradient searching. It realizes
the minimum of mean-square deviation
between the actual network output and
the expectant output. The procession

of the network study is the one of error
transmitting backward on one hand while
revising the weight on the other hand.
The study process in the network is
composed by forward-transmitting and
reverse transmitting. In the forward process,
the input signal dealt in each layer begins
from the input layer to output layer, and
the neuron condition in each layer only
influences the next layer. If the expectant
output cannot be obtained in output layer,
the transmitting changes into reverse which
will make the output error return along
the original connection circuit. Through
revising each neuron layer of the weight,
the signal error will become minimized.
After obtaining the appropriate network

of new sample may be carried on.
Information forward transmission
Supposing BP network has L
layers, for P the assigned sample
and the network expecting output
is Td=[Td1,Td2,……,Tdp]
When the Pth sample is inputted, the
operating characteristic of jth neuron
in l (l=1,2, ......L-1) layer is:

2.2.2. Strive for the weight change and
the erroneous reverse dissemination
using the gradient drop law
When revising the value of network
weight and threshold using the gradient
drop law, the iteration equation of weight
coefficient in lth layer is Eq. (7).

The procession of network training
(1) Initializing the value of all connecting
weight: The initial weight value to the
network with group of random numbers
is given. Setting the study length being
?, the allowance error e and the network
structure (i.e. network layer number L and
each node number nl). The initial value
should generally be set with small random
number so as to guarantee that an unusual
saturated case does not exist in the network.
(2) When the appropriate training
sample is selected, the sample data are
inputted to the network so as to acquire
the output value of the network.
(3) After the deviation d(l)
jp between
expected value and output value of
sample is computed, each layer weight
towards the direction of reducing
deviation has been adjusted with the
method of gradient drop algorithm from
the output layer to the input layer.

Where k is the studying number, ? is
the studying factor. More the value
of ?, the fiercer is the weight change,
which could lead the studying process
to vibrate. Therefore, in order to get the
value of studying factor large enough
but so as to not lead to vibration, an
additional actional value should be added
in the weight correlation formula.
(5)Each group data of the training sample
should be carried on the training until the
entire training deviation meets the accepted
degree. The neural network being trained
could express accurately the relationship
between the input and the output. When the
known group is inputted, the output value
could be acquired using this neural network.
BP network applying in
deformation forecast
of high pile wharf
This paper takes 14# berth bank slope of 2#
harbor of the high pile wharf basin in the
Tianjin Port as an example to carry on the
simulation forecast analysis. The horizontal
deformation of the high pile wharf based
on the soft soil ground is caused by 1 or 2
main factors and many additional factors[2],
the main factors are: the strength of the high
pile wharf rear-area carries and the ships
lashing rope strength as well as the earth
property of pierre-perdue dike. Therefore,
we can take the earth elasticity coefficient
and the strength of the high pile wharf reararea
carries with the horizontal lashing rope
strength of ships as the neural network input
parameter; the wharf horizontal deformation
as the network output, and establish the
neural network model, carries on the
deformation forecast for the high pile wharf.
Based on the analysis mentioned above,
three layers BP neural network has been
established with the input layer being 3
nodes ( earth elasticity coefficient, high pile
wharf rear-area carries, horizontal lashing
rope strength), the output layer being 1
node (horizontal deformation) and the
hidden layer nodes have yet to be decided.
In many cases, the nodes number in hidden
layer could be set according to Eq.(9).

Where n is the node number of hidden
layer, ni is the node number of input
layer, no is the node number of output
layer, is a constant between 1 and 10.
In the paper, the n scope varies from
3 to 12, the neural network procedure
has been written using Matlab. The
finally training number is 9000 times,
the goal error is 0.001, the node
number of hidden layer is 9 with
which the goal error and the testing
time would achieve optimization.
50 sample points have been selected as
the training sample of the network study
while another 15 sample points picked
as the forecast sample for evaluating the
network training effect which are shown
in Table 1 and Figure 4 and Figure 5.
Seen from Table 1, based on the neural
network model, the deviation of horizontal
deformation of the high pile wharf in
14# berth between predicted value and
actual value is very small, except testing
points 11, 12, and 13 (shown in Figure 5).
This is caused primarily by the sample
quantity not being enough and therefore
the network can not study the relationship
between every element, like in real life.
Although the generalization ability can
not be shown well, but the total relative
error may be accepted (Figure 4).
Based on the training network, the input
value (earth elasticity coefficient, high
pile wharf rear-area carries, horizontal
lashing rope strength) is given with the
weight and the threshold value which
have been saved in the network, thus
the deformation value of the high pile

wharf structural could be output, and
the goal of the high pile wharf structural
deformation forecast could be realized.
Conclusion
(1) The synthetic evaluation for water
conservancy project structure quality is
the multi index, multi-layers hierarchical
analysis. Based on the BP neural network
method , a new evaluation method used
in the high pile wharf quality synthetic
evaluation has been put forward, it is a
synthetic evaluation model combining
with quality and quantity analysis and
even more approaches to human thought
pattern. Through the study of expert
evaluation mode with assigned sample,
expert's experience, knowledge, subjective
judgment the tendency to the important
goal have been acquired. When such object
needs a synthetic evaluation, this model
could reappear the appraising of expert
experience knowledge and the intuition
thought. So the combination of qualitative
and quantitative analysis should be
reached which could guarantee objectivity
of the appraisal result of such object.
(2) This paper research is aimed at the
high pile wharf structure, regarding other
object of water transportation engineering
structure (such as dam);. just changing
the input parameter (or deformation affect
factor), the neural network model for object
deformation forecast could be established
with the same network structure used above.
(3) It is feasible to use fuzzy artificial
neural networks for wharf deformation
forecast and the forecast error meets the
need of hydraulic engineering while the
fuzzy uncertainty between deformation
factors have been solved. Nonetheless
there are many problems that need to be
discussed when the artificial neural network
is used for the deformation forecast, such
as how to use the sample information
fully, how to solve various factors weight
evaluation and increase the forecast
precision etc. Meanwhile the relevance of
each influence factor should be analyzed
fully so as to reduce the model input
parameter and enhance the output stability.
References
? Jiang shaofei, Structure optimization and damage examination
based on neural network, [M], Science Press, 2002
? Chen changlin, Horizontal deformation control for high pile wharf,
Water Transport Engineering, [J], 2000, 313(2, 19~20
? Wang xinzhou, Shi wenzhong, Wang shuliang, Fuzzy space
information processing, [M], Wuhan University Press, 2003
? Wang xinzhou, Deng xinshen, Dam deformation forecast based
on fuzzy neural network model, [J] , Wuhan University journal
(information science version), 2003.(2)
? Cehn jiuyu, Lin jian, The mathematics processing of observation
data [M], Shanghai Jiao Tong University Press, 1986
? Wuzhongru, Shen changsong, Ruan huanxiang, Hydraulic
engineering structure safe monitoring theory and application, [M],
Hohai University, Nanjing, 1990
? Chen ping, Yuan menquan, Deformation reason analysis and
preventive measure for high pile wharf, China Habour Construction,
[J], 146
? Wang yongji, Tu jian, Control of neural cell network, [M],
Mechanical Industry Press, 1998
? Yuan zengren, Artificial neural networks and its application, [M],
Tsinghua University Press , 1999
? Neural network model and MATLAB simulated program
design, [M], Tsinghua University Press , 2006
|