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A Novel Adaptive Virtual Inertia Control-Based Adaptive Neuro-Fuzzy to Enhance Frequency Stability of a Microgrid with Seamless Transition

机译:基于新的自适应虚拟惯性控制的自适应神经模糊,以提高微电网的频率稳定性,无缝过渡

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摘要

A frequency stability improvement of a microgrid with low-inertia constant during severe disturbances remains a challenge using a virtual inertia control to compensate the inertia power to the microgrid, using a battery energy storage system. However, the fixed virtual inertia constant and the low-order model of the battery energy storage system utilized in virtual inertia control can affect the stability behaviors of microgrid and virtual inertia control design. Hence, for solving these issues, this paper proposes a novel adaptive virtual inertia control utilizing an adaptive neuro-fuzzy inference system based on a training data design in order to adjust the controller gain that applies for the direct and the quadrature axis model of the battery energy storage system. In order to investigate the proposed method and to verify the performance, the various case studies are carried out under the high, the low levels existing of renewable energy, and the parameter uncertainties in a microgrid. The simulated results with the proposed scheme are compared with the virtual inertia based-linear quadratic Gaussian synthesis and without the virtual inertia control. The comparative results reveal that the proposed method enhances the frequency stability during the disturbances, reduces the switching transition time from the islanded to the grid-connected mode of the microgrid, seamlessly, with superior performance in comparison with the other methods, satisfying a frequency grid code in Thailand.
机译:使用电池储能系统,严重干扰期间,在严重干扰期间具有低惯性恒定的微电网的频率稳定性改善仍然是挑战,以补偿微电网的惯性电力。然而,虚拟惯性控制中使用的电池储能系统的固定虚拟惯性常数和低阶模型可能影响微电网和虚拟惯性控制设计的稳定性行为。因此,为了解决这些问题,本文提出了利用基于训练数据设计的自适应神经模糊推理系统的新型自适应虚拟惯性控制,以调整适用于电池的直接和正交轴模型的控制器增益储能系统。为了研究提出的方法并验证性能,各种案例研究在可再生能源存在的高水平,低水平下进行,以及微电网中的参数不确定性。将所提出方案的模拟结果与虚拟惯性基于线性二次高斯合成和虚拟惯性控制进行比较。比较结果表明,该方法在干扰期间提高了频率稳定性,可无缝地从孤岛连接到微电网的网格连接模式,与其他方法相比,卓越的性能,满足频率网格。代码在泰国。

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