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#AVR CONTROL SYSTEM SIMULATOR#
Then, to verify the optimization results, a simulator is built experimentally for AVR and PID system that can also be used for other studies on AVR systems. The objective of the optimization is defined as minimizing the characteristics of transient step response such as settling time, rise time, overshoot, and steady state error. Therefore, different optimization algorithms are used to determine those parameters.
#AVR CONTROL SYSTEM PROFESSIONAL#
However, reliable performance of AVR depends on professional tuning of its PID controller’s parameters. Automatic Voltage Regulator (AVR) is employed to stabilize the output voltage of the generators in the electric power plants.