Articles | Open Access |

OPTIMIZING NETWORK WEAK UNBALANCE WITH EVOLUTIONARY ALGORITHMS: A NOVEL METHOD

Liang Wang , School of Computer Science and Technology, Wuhan University of Technology, Wuhan, China

Abstract

In the realm of power system analysis and management, the identification and mitigation of network weak unbalance issues are of paramount importance. This paper introduces a novel method for addressing symbolic network weak unbalance using evolutionary algorithms. The proposed approach leverages the power of genetic algorithms to optimize network configurations, reducing weak unbalance and enhancing overall system stability. Through rigorous experimentation and validation, the method showcases its efficacy in improving power system performance, minimizing voltage deviations, and increasing operational robustness.

Keywords

Network weak unbalance, Evolutionary algorithms, Power system analysis, Genetic algorithms, System stability, Voltage deviations, Power grid optimization

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How to Cite

OPTIMIZING NETWORK WEAK UNBALANCE WITH EVOLUTIONARY ALGORITHMS: A NOVEL METHOD. (2022). International Journal of IoT, 2(01), 1-7. https://www.academicpublishers.org/journals/index.php/ijiot/article/view/86