Artificial Neural Network-Based Voltage Control of DC/DC Converter for
DC Microgrid Applications
- URL: http://arxiv.org/abs/2111.03207v1
- Date: Fri, 5 Nov 2021 01:20:27 GMT
- Title: Artificial Neural Network-Based Voltage Control of DC/DC Converter for
DC Microgrid Applications
- Authors: Hussain Sarwar Khan, Ihab S. Mohamed, Kimmo Kauhaniemi, and Lantao Liu
- Abstract summary: An artificial neural network (ANN) based voltage control strategy is proposed for the DC-DC boost converter.
The accuracy of the trained ANN model is about 97%, which makes it suitable to be used for DC applications.
- Score: 2.15242029196761
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The rapid growth of renewable energy technology enables the concept of
microgrid (MG) to be widely accepted in the power systems. Due to the
advantages of the DC distribution system such as easy integration of energy
storage and less system loss, DC MG attracts significant attention nowadays.
The linear controller such as PI or PID is matured and extensively used by the
power electronics industry, but their performance is not optimal as system
parameters are changed. In this study, an artificial neural network (ANN) based
voltage control strategy is proposed for the DC-DC boost converter. In this
paper, the model predictive control (MPC) is used as an expert, which provides
the data to train the proposed ANN. As ANN is tuned finely, then it is utilized
directly to control the step-up DC converter. The main advantage of the ANN is
that the neural network system identification decreases the inaccuracy of the
system model even with inaccurate parameters and has less computational burden
compared to MPC due to its parallel structure. To validate the performance of
the proposed ANN, extensive MATLAB/Simulink simulations are carried out. The
simulation results show that the ANN-based control strategy has better
performance under different loading conditions comparison to the PI controller.
The accuracy of the trained ANN model is about 97%, which makes it suitable to
be used for DC microgrid applications.
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