Tesis
Aplicación de La Red Neuronal Artificial Feedforward Backpropagation para la predicción de demanda de energía eléctrica en la Empresa Eléctrica Riobamba S.A.
Fecha
2017-10Registro en:
Sinaluisa Lozano, Iván Fernando. (2017). Aplicación de La Red Neuronal Artificial Feedforward Backpropagation para la predicción de demanda de energía eléctrica en la Empresa Eléctrica Riobamba S.A. Escuela Superior Politécnica de Chimborazo. Riobamba.
Autor
Sinaluisa Lozano, Iván Fernando
Resumen
This research proposes a model based on the artificial neural network Feedforward Back
propagation capable of predicting the demand of electric power with a percentage of absolute
error lower than the one generated due to the methodology used by a distributor, with which it is
intended to contribute to the planning of operation and maintenance of power plants and at the
same time to serve as a model for other institutions with similar characteristics. Field observations
was performed on the substations and measurers of the three outputs where 70128 observations
were obtained, of which 61344 were used for the training of the network and 8784 for tests of the
model. Through pre-processing of data it was detected and corrected 406 lost data and 320
atypical data, which the majority correspond to the year 2009 and 2014, it was determined that
the percentage of mean absolute error (MAPE) of the prediction model of the demand electrical
energy based on the neural network Feedforward Back propagation was 2.63%, while the one
based on multiple linear regression was 4.56%. It is concluded that the prediction model of the
demand for electrical energy based on the neural network FeedForward Backpropagation holds
better prediction performance. Before designing a neural, it is recommended to perform the preprocessing
of
data
to
correct
atypical
data,
lost
and
softened
of
the
time
series
in
order
to
obtain
satisfactory
results.