Forecasting of the performance of the shipboard electric power system on the basis of the artificial neural network
DOI:
https://doi.org/10.15587/2312-8372.2017.108528Keywords:
forecasting of the state of the shipboard electric power system, coefficient of the generalized parameter, artificial neural networkAbstract
To date, the main limiting factor in development of forecasting systems based on mathematical methods of data processing, which in most cases is reduced to solving linear deterministic multiparameter problems, is the performance of a computer. Therefore, considerable attention is paid to development and research of neural network methods for solving such problems, which is explained by the inherent massively parallel processing of information that allows building high-performance computing systems.
In connection with this, the aim of this work is development of a system for predicting the SEPS performance on the basis of an artificial neural network implemented by the architecture of a multilayer perceptron. The problem of parameter normalization is solved, caused by the fact that the SEPS mode is characterized by parameters of different physical nature that have different dimensions. The task of training an artificial neural network is also solved. As a learning method, the back propagation algorithm is chosen. For the formation of a rational training sample used in the learning of an artificial neural network, mathematical methods of temporary extrapolation are used. The analysis of the obtained results shows that the value of the mean absolute error on the test set is 3.8 %. This allows to judge the possibility of using an artificial neural network to solve the problems of predicting the SEPS state.
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