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Application of artificial intelligence techniques for LFC and AVR systems using PID controller

机译:人工智能技术在采用PID控制器的LFC和AVR系统中的应用

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Development of electrical power systems led to search for a new mathematical methods to find the values of PID (Proportional-Integral-Derivative) controller. The goal of the paper is to improve the performance of the overall system, through improved the frequency deviation and the voltage deviation characteristics using PID controller, so in this paper are proposed three methods of artificial intelligence techniques for designing the optimal values of PID controller of Load-Frequency-Control (LFC) and Automatic-Voltage-Regulator (AVR), the first is the Firefly Algorithm (FA), the second is the Genetic Algorithm (GA) and the third is the Particle Swarm Optimization (PSO), in addition to these three methods use the conventional (Ziegler–Nichols, Z-N). The FA, GA and PSO are used to obtain the optimal parameters of PID controller based on minimized different various indices as a fitness function, these fitness functions namely Integral-Time-Absolute-Error (ITAE) and Integral-Time-Square-Error (ITSE). Comparison between the results obtained show that FA has better performance to control of frequency deviation and terminal voltage than GA and PSO, so the results observed the FA is more effectual and reliable to determine the optimal values of PID controller.
机译:电力系统的发展导致寻找新的数学方法来查找PID(比例-积分-微分)控制器的值。本文的目的是通过使用PID控制器改善频率偏差和电压偏差特性来改善整个系统的性能,因此,本文提出了三种人工智能技术来设计PID控制器最优值的方法。负载频率控制(LFC)和自动电压调节器(AVR),第一个是Firefly算法(FA),第二个是遗传算法(GA),第三个是粒子群优化(PSO),除这三种方法外,还使用常规方法(Ziegler-Nichols,ZN)。 FA,GA和PSO用于基于最小化的各种指标作为适应度函数来获取PID控制器的最佳参数,这些适应度函数即积分时间绝对误差(ITAE)和积分时间平方误差( ITSE)。所得结果的比较表明,FA具有比GA和PSO更好的控制频率偏差和端电压的性能,因此观察到的结果表明FA在确定PID控制器的最佳值方面更为有效和可靠。

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