BALANCED LOAD FREQUENCY CONTROL: CUSTOMIZED WORLD CUP ALGORITHM - DRIVEN PID OPTIMIZATION FOR TWO AREA POWER SYSTEMS
Journal: Proceedings on Engineering Sciences (Vol.6, No. 1)Publication Date: 2024-03-31
Authors : Shweta Singh Vivek Ranjan Padmaja Tripathy M. N. Nachappa;
Page : 331-342
Keywords : Proportional Integral Derivative (PID) controllers; PID optimization; Customized World Cup Algorithm (CWCA); Load Frequency Control;
Abstract
Finding a balance between the loads and generating demands in power systems is a significant challenge since power producers require important inputs such as security, reliability and quality. In this study, a unique method for balanced load frequency control (BLFC) is proposed in two-area power systems, integrating a customized World Cup Algorithm (CWCA)-Driven PID optimization. The primary objective is to enhance the stability and performance of power systems. For this purpose, the integral time-multiplied absolute error (ITAE) is minimized by evaluating the objective function using time-domain simulation. The proposed methodology aims to improve the overall response of the control system, ensuring a reliable and stable power supply. Within the scope of two-area power systems with BLFC, simulation results show the effectiveness and resilience of the CWCA-Driven PID Optimization. The outcomes of the proposed.
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