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: http://www.astro.spbu.ru/DOP/A-PERC/PAPER2/node4.html Дата изменения: Fri Nov 19 12:11:47 2010 Дата индексирования: Mon Oct 1 23:31:00 2012 Кодировка: Поисковые слова: rainbow | 
 
 
 
 
 
   
 .
 The output perceptron data are the expansion coefficients of the
scattering matrix elements in series of the generalized spherical functions.
.
 The output perceptron data are the expansion coefficients of the
scattering matrix elements in series of the generalized spherical functions.
 the number of nonzero coefficients was equal to approximately 22-24.
 So, the number of output neurons was 30, and the number of "hidden" layers
was 2 with 30 neurons in each layer.
 the number of nonzero coefficients was equal to approximately 22-24.
 So, the number of output neurons was 30, and the number of "hidden" layers
was 2 with 30 neurons in each layer.
|  | (1) | 
 is the gyration radius of the cluster
 is the gyration radius of the cluster
|  | (2) | 
 is the distance from the
 is the distance from the  th particle to the center of mass
of the cluster.
th particle to the center of mass
of the cluster.
 ,
,  and
 and  but
produced under different initial generation conditions
are presented in Fig.1.
Up to now, about two hundred points for the input parameters in the range of
 but
produced under different initial generation conditions
are presented in Fig.1.
Up to now, about two hundred points for the input parameters in the range of
 ,
, 
 , and for
, and for
 ,
,  ,
,  and
 and  were utilized for
training the perceptron.
 As the cluster structure depends on the generation conditions
the expansion coefficients were averaged over 5--7 realizations of
the clusters (for N < 35).
 During this training process the perceptron was defining and
memorizing a hypersurface in space of input-output parameters
that in the best way corresponded to the data set presented for training.
 The trained perceptron allows calculating the approximate values of
the expansion coefficients for any input data from the data range
that was used for the training.
Some examples of calculation of the dependencies of expansion coefficients
 were utilized for
training the perceptron.
 As the cluster structure depends on the generation conditions
the expansion coefficients were averaged over 5--7 realizations of
the clusters (for N < 35).
 During this training process the perceptron was defining and
memorizing a hypersurface in space of input-output parameters
that in the best way corresponded to the data set presented for training.
 The trained perceptron allows calculating the approximate values of
the expansion coefficients for any input data from the data range
that was used for the training.
Some examples of calculation of the dependencies of expansion coefficients
 and
 and  of the scattering matrixes elements
 of the scattering matrixes elements  and
 and  are given in Fig.2.
 The points correspond to the data obtained directly from the theory of
light scattering by a cluster of spherical subparticles.
Solid curves show data calculated by the perceptron.
are given in Fig.2.
 The points correspond to the data obtained directly from the theory of
light scattering by a cluster of spherical subparticles.
Solid curves show data calculated by the perceptron.
|   | 
 ;
;  ) was not used in perceptron training,
which illustrates the potential of our database.
) was not used in perceptron training,
which illustrates the potential of our database.
 
 
 
 
