Slime Mould Algorithm Training Neural Network in Automatic Voltage Regulator

Authors

  • Widi Aribowo Department of Electrical Engineering, Universitas Negeri Surabaya, Indonesia

DOI:

https://doi.org/10.48048/tis.2022.2145

Keywords:

Slime mould algorithm, Focused time delay, Neural network, Artificial intelligence, Automatic voltage regulator

Abstract

The research is proposed a new method of artificial intelligence (AI) to control automatic voltage regulators. A neural network has improved using a metaheuristic method, namely the slime mould algorithm (SMA). SMA has an algorithm based on the mode of slime mold in nature. SMA has characteristics that use adaptive weights to simulate the process to generate feedback from the movement of bio-oscillator-based slime molds in foraging, exploring, and exploiting areas. The performance of the proposed method is focused on speed and rotor angle. To know the competence and potency of the proposed method, a comparison with feed-forward backpropagation neural networks (FFBNN), cascade-forward backpropagation neural networks (CFBNN), Elman-recurrent neural networks (E-RNN), focused time delay neural network (FTDNN), and Distributed Time Delay Neural Network (DTDNN) method are applied. It can be concluded that the proposed method has the best ability. The Proposed method has ability to reduce the overshoot speed with an average value of 0.78 % and the overshoot rotor angle with an average value of 2.134 %.

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Published

2022-01-20

How to Cite

Aribowo, W. . (2022). Slime Mould Algorithm Training Neural Network in Automatic Voltage Regulator. Trends in Sciences, 19(3), 2145. https://doi.org/10.48048/tis.2022.2145