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A Modified Fruit-Fly Optimization Algorithm aided PID controller designing

机译:改进的果蝇优化算法辅助PID控制器设计

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Fruit Fly Optimization Algorithm (FOA) is one of the newest intelligent optimization algorithms. Attracted by its simple implement procedure with effective searching capability, our work is to popularize this algorithm to tackle some practical optimization applications requesting real-time performance. However, the updating strategy of FOA is with strong randomness, thus bringing in some blindness searching in solution updating, which will result in slow convergence rate and premature. Therefore, a modified FOA (MFOA) based on PSO and SA was proposed in this paper to improve the performance of basic FOA. Besides, Chaos function was used to enhance the stochastic and ergodic features of initial solution so as to improve the diversity of initial population in MFOA. PSO is introduced to reduce the blindness searching in solution updating. SA is used as a local search to improve the convergence rate. Finally, in order to verify the efficiency of MFOA algorithm, two common functions and a practical high-order AVR system with PID controller were tested in simulation. Experimental results revealed the encouraging performance of our proposed algorithm.
机译:果蝇优化算法(FOA)是最新的智能优化算法之一。受其具有有效搜索功能的简单实现过程的吸引,我们的工作是推广该算法,以解决一些要求实时性能的实际优化应用。但是,FOA的更新策略具有很强的随机性,因此在解决方案更新中带来了一些盲目搜索,这将导致收敛速度慢和过早。因此,本文提出了一种基于PSO和SA的改进型FOA(MFOA),以提高基本FOA的性能。此外,利用混沌函数增强了初始解的随机性和遍历性,从而提高了MFOA中初始种群的多样性。引入PSO以减少解决方案更新中的盲目搜索。 SA被用作本地搜索以提高收敛速度。最后,为了验证MFOA算法的效率,在仿真中测试了两个常用功能和带有PID控制器的实用高阶AVR系统。实验结果表明,我们提出的算法具有令人鼓舞的性能。

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