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Power system online stability assessment using active learning and synchrophasor data

机译:利用主动学习和同步相量数据进行电力系统在线稳定性评估

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Analysis of synchrophasor measurements using data mining tools, in pursuit of precise stability assessment, requires a sufficiently large training data set. Traditionally the process of learning the underlying power system behavioral patterns introduces a significant computational burden such that exhaustive simulations of all possible system operating conditions are necessary. Advancements in machine learning make it possible, in some cases, to reduce the amount of operating conditions that need to be analyzed without impacting the accuracy of stability assessment. By using a probabilistic learning tool in the described active learning scheme to interactively query operating conditions based on their importance, we show that significantly fewer data needs to be processed for accurate voltage stability and oscillatory stability estimation. Results show that the advantage of active learning is greater on more complicated power networks, where larger training data sets are involved.
机译:为了追求精确的稳定性评估,使用数据挖掘工具分析同步相量测量需要足够大的训练数据集。传统上,学习基本电力系统行为模式的过程会引入大量的计算负担,因此必须对所有可能的系统运行状况进行详尽的仿真。机器学习的进步使得在某些情况下可以减少需要分析的运行条件的数量,而又不影响稳定性评估的准确性。通过在所描述的主动学习方案中使用概率学习工具,根据其重要性交互式查询操作条件,我们表明,为进行准确的电压稳定性和振荡稳定性估计,需要处理的数据要少得多。结果表明,在涉及较大训练数据集的更复杂的电力网络中,主动学习的优势更大。

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