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Neuro-Fuzzy Based Interline Power Flow Controller for Real Time Power Flow Control in Multiline Power System

机译:基于神经模糊的线间潮流控制器在多线电力系统中的实时潮流控制

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This article investigates the power quality enhancement in power system using one of the most famous series converter based FACTS controller like IPFC (Interline Power Flow Controller) in Power Injection Model (PIM). The parameters of PIM are derived with help of the Newton-Raphson power flow algorithm. In general, a sample test power system without FACTs devices has generated more reactive power, decreased real power, more harmonics, small power factor and poor dynamic performance under line and load variations. In order to improve the real power, compensating the reactive power, proficient power factor and excellent load voltage regulation in the sample test power system, an IPFC is designed. The D-Q technique is utilized here to derive the reference current of the converter and its D.C link capacitor voltage is regulated. Also, the reference voltage of the inverter is arrived by park transformation technique and its load voltage is controlled. Here, a sample 230 KV test power system is taken for study. Further as the conventional PI controllers are designed at one nominal operating point they are not competent to respond satisfactorily in dynamic operating conditions. This can be circumvented by a Fuzzy and Neural network based IPFC and its detailed Simulink model is developed using MATLAB and the overall performance analysis is carried out under different operating state of affairs.
机译:本文研究了使用最著名的基于串联变换器的FACTS控制器(如功率注入模型(PIM)中的IPFC(线间潮流控制器))来提高电力系统的电能质量。 PIM的参数借助牛顿-拉夫森潮流算法导出。通常,没有FACTs器件的样本测试电源系统在线路和负载变化下产生了更多的无功功率,降低的有功功率,更多的谐波,较小的功率因数以及较差的动态性能。为了提高有功功率,补偿无功功率,足够的功率因数和出色的负载电压调节能力,设计了IPFC。此处使用D-Q技术来导出转换器的参考电流,并调节其DC链路电容器电压。同样,逆变器的参考电压通过Park变换技术达到,并控制其负载电压。在这里,采用230 KV的示例测试电源系统进行研究。此外,由于传统的PI控制器设计在一个标称工作点上,因此它们无法在动态工作条件下令人满意地响应。可以通过基于模糊和神经网络的IPFC来解决此问题,并使用MATLAB开发其详细的Simulink模型,并在不同操作状态下进行整体性能分析。

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