Neural network with data augmentation in multi-objective prediction of
multi-stage pump
- URL: http://arxiv.org/abs/2002.02402v1
- Date: Tue, 4 Feb 2020 11:23:42 GMT
- Title: Neural network with data augmentation in multi-objective prediction of
multi-stage pump
- Authors: Hang Zhao
- Abstract summary: neural network model (NN) is built in comparison with the quadratic response surface model (RSF), the radial basis Gaussian response surface model (RBF), and the Kriging model (KRG)
The accuracy of the head and power based on the four predictions models are analyzed comparing with the CFD simulation values.
A neural network model based on data augmentation (NNDA) is proposed for the reason that simulation cost is too high and data is scarce in mechanical simulation field.
- Score: 16.038015881697593
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A multi-objective prediction method of multi-stage pump method based on
neural network with data augmentation is proposed. In order to study the highly
nonlinear relationship between key design variables and centrifugal pump
external characteristic values (head and power), the neural network model (NN)
is built in comparison with the quadratic response surface model (RSF), the
radial basis Gaussian response surface model (RBF), and the Kriging model
(KRG). The numerical model validation experiment of another type of single
stage centrifugal pump showed that numerical model based on CFD is quite
accurate and fair. All of prediction models are trained by 60 samples under the
different combination of three key variables in design range respectively. The
accuracy of the head and power based on the four predictions models are
analyzed comparing with the CFD simulation values. The results show that the
neural network model has better performance in all external characteristic
values comparing with other three surrogate models. Finally, a neural network
model based on data augmentation (NNDA) is proposed for the reason that
simulation cost is too high and data is scarce in mechanical simulation field
especially in CFD problems. The model with data augmentation can triple the
data by interpolation at each sample point of different attributes. It shows
that the performance of neural network model with data augmentation is better
than former neural network model. Therefore, the prediction ability of NN is
enhanced without more simulation costs. With data augmentation it can be a
better prediction model used in solving the optimization problems of multistage
pump for next optimization and generalized to finite element analysis
optimization problems in future.
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