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Deep Learning Based Transient Stability Assessment for Grid-Connected Inverter

机译:基于深度学习的网格连接逆变器的瞬态稳定性评估

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Droop control based grid-connected inverters are facing with transient stability problem. At present, the major analysis method for that problem is time-domain simulation, which can get a result in minutes. However, that time consumption can't meet the on-line requirement. In this paper, deep learning theory is applied in transient stability assessment for grid-connected inverter as a data driven framework. Testing results show that the system's stability conclusion can be obtained in microseconds and the prediction accuracy can reach more than 99%. And the effectiveness of proposed algorithms is verified by specific simulation cases.
机译:基于下垂的基于的网格连接的逆变器面向瞬态稳定性问题。目前,该问题的主要分析方法是时域模拟,可以在几分钟内得到结果。但是,时间消耗不能满足在线要求。在本文中,深入学习理论应用于网格连接逆变器的瞬态稳定性评估作为数据驱动框架。测试结果表明,系统的稳定性结论可以以微秒为单位,预测精度可以达到99%以上。通过特定模拟案例验证了所提出的算法的有效性。

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