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Location representation of single-position fault for power system transient stability intelligent assessment

机译:电力系统暂态稳定性智能评估单位故障的位置表示

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Fast and accurate transient stability assessment (TSA) is the basis of intelligent security and risk control of large-scale renewable AC/DC power systems. The TSA model based on machine learning needs to adapt to different generation-load patterns and fault locations. In existing power system transient stability intelligent assessment methods, the generation-load pattern was widely adopted as input features. However, there was still a lack of accurate methods to represent fault locations quantitatively. To accurately and quantitatively represent fault location, this paper proposed a novel concept of the electrical coordinate system (ECS) based on the electrical distance. Firstly, ECS is built based on the electrical distance. Then, ECS is optimized by comparing different combinations of reference nodes. Finally, with fault locations coordinates as input features, a TSA model for fault locations is built based on the improved convolutional neural network. The proposed ECS and intelligent TSA model are verified with the New England 39-bus system.
机译:快速准确的瞬态稳定性评估(TSA)是大型可再生AC / DC电力系统智能安全和风险控制的基础。基于机器学习的TSA模型需要适应不同的一代负载模式和故障位置。在现有电力系统瞬态稳定性智能评估方法中,发电负载模式被广泛采用作为输入特征。但是,仍然缺乏定量表示故障位置的准确方法。为了准确和定量地表示故障位置,本文提出了基于电距离的电坐标系(ECS)的新颖概念。首先,ECS基于电距离而构建。然后,通过比较参考节点的不同组合来优化ECS。最后,通过故障位置坐标作为输入特征,基于改进的卷积神经网络构建故障位置的TSA模型。建议的ECS和智能TSA模型通过新英格兰39总线系统进行了验证。

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