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Interline power flow controller (IPFC) based damping recurrent neural network controllers for enhancing stability

机译:基于线间潮流控制器(IPFC)的阻尼递归神经网络控制器,可增强稳定性

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摘要

This paper presents a method to improve power system stability using IPFC based damping online learning recurrent neural network controllers for damping oscillations in a power system. Parameters of equipped controllers for enhancing dynamical stability at the IPFC are tuned using mathematical methods. Therefore these control parameters are often fixed and are set for particular system configurations or operating points. Multilayer recurrent neural network, which can be tuned for changing system conditions, is used in this paper for effectively damp the oscillations. Training is based on back propagation with adaptive training parameters. This controller is tested to variations in system loading and fault in the power system and its performance is compared with performance of a controller that the phase compensation method is used to set its parameters. Selection of effectiveness damping control signal for the design of robust IPFC damping controller carried out through singular value decomposition (SVD) method. Simulation studies show the superior robustness and stabilizing effect of the proposed controller in comparison with phase compensation method.
机译:本文提出了一种基于IPFC的阻尼在线学习递归神经网络控制器来改善电力系统稳定性的方法,该控制器用于阻尼电力系统中的振荡。使用数学方法调整用于增强IPFC的动态稳定性的已配置控制器的参数。因此,这些控制参数通常是固定的,并针对特定的系统配置或操作点进行设置。多层递归神经网络可以针对系统条件的变化进行调整,可用于有效地抑制振荡。训练基于具有自适应训练参数的反向传播。该控制器经过测试以适应电力系统中系统负载和故障的变化,并将其性能与使用相位补偿方法设置其参数的控制器的性能进行比较。通过奇异值分解(SVD)方法进行鲁棒IPFC阻尼控制器的设计,选择有效阻尼控制信号。仿真研究表明,与相位补偿方法相比,该控制器具有更高的鲁棒性和稳定性。

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