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首页> 外文期刊>Electric power systems research >Intelligent particle swarm optimized fuzzy PID controller for AVR system
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Intelligent particle swarm optimized fuzzy PID controller for AVR system

机译:用于AVR系统的智能粒子群优化模糊PID控制器。

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In process plants like thermal power plants, biomedical instrumentation the popular use of proportional-integral-derivative (PID) controllers can be noted. Proper tuning of such controllers is obviously a prime priority as any other alternative situation will require a high degree of industrial expertise. So in order to get the best results of PID controllers the optimal tuning of PID gains is required. This paper, thus, deals with the determination of off-line, nominal, optimal PID gains of a PID controller of an automatic voltage regulator (AVR) for nominal system parameters and step reference voltage input. Craziness based particle swarm optimization (CRPSO) and binary coded genetic algorithm (GA) are the two props used to get the optimal PID gains. CRPSO proves to be more robust than GA in performing optimal transient performance even under various nominal operating conditions. Computational time required by CRPSO is lesser than that of GA. Factors that have influenced the enhancement of global searching ability of PSO are the incorporation of systematic and intelligent velocity, position updating procedure and introduction of craziness. This modified from of PSO is termed as CRPSO. For on-line off-nominal system parameters Sugeno fuzzy logic (SFL) is applied to get on-line terminal voltage response. The work of SFL is to extrapolate intelligently and linearly, the nominal optimal gains in order to determine off-nominal optimal gains. The on-line computational burden of SFL is noticeably low. Consequently, on-line optimized transient response of incremental change in terminal voltage is obtained.
机译:在诸如火力发电厂,生物医学仪器之类的过程工厂中,可以注意到比例积分微分(PID)控制器的广泛使用。适当地调整此类控制器显然是首要任务,因为任何其他替代情况都需要高度的行业专业知识。因此,为了获得PID控制器的最佳结果,需要对PID增益进行优化调整。因此,本文涉及确定标称系统参数和阶跃参考电压输入的自动电压调节器(AVR)的PID控制器的离线,标称最佳PID增益的确定。基于疯狂的粒子群优化(CRPSO)和二进制编码遗传算法(GA)是用于获得最佳PID增益的两个道具。即使在各种标称工作条件下,CRPSO在执行最佳瞬态性能方面也比GA更强大。 CRPSO所需的计算时间少于GA。影响PSO全局搜索能力增强的因素是系统和智能速度的结合,位置更新程序以及疯狂的引入。从PSO修改而来的称为CRPSO。对于在线非标称系统参数,应用Sugeno模糊逻辑(SFL)以获得在线终端电压响应。 SFL的工作是智能,线性地推断标称最佳增益,以便确定偏离标称的最佳增益。 SFL的在线计算负担非常低。因此,获得了端子电压增量变化的在线优化瞬态响应。

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