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Impact of the Temporal Distribution of Faults on Prediction of Voltage Anomalies in the Power Grid

机译:故障的时间分布对电网电压异常预测的影响

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Is it possible to reliably predict voltage anomalies in the power grid minutes in advance using machine learning models trained on large quantities of historical data collected by power quality analysers (PQA)? Very little previous research has been done on this topic. To investigate whether this is possible a machine learning model was developed that attempts to predict voltage anomalies 10 minutes in advance based on the presence of early warning signs in the preceding 50 minutes. The model was trained on voltage data collected from 49 measuring locations in the Norwegian power grid. Although results were inconclusive, it was observed that the time that has passed since the previous fault at the same location is a major factor to consider when estimating the probability that a new fault is imminent. It was observed that the probability that a new fault is imminent is proportional to the logarithm of the time passed since the previous anomaly. This means that the risk of a new anomaly is drastically reduced as more time passes since the previous anomaly. This is important to take into consideration when attempting to develop a model that estimates the probability that a new fault is imminent.
机译:是否可以使用机器学习模型提前可靠地预测电网分钟内的电压异常,该机器学习模型是根据电能质量分析仪(PQA)收集的大量历史数据进行训练的?以前很少对此主题进行过研究。为了研究这是否可能,开发了一种机器学习模型,该模型试图根据前50分钟内是否存在早期预警信号来提前10分钟预测电压异常。该模型是根据从挪威电网中49个测量位置收集的电压数据进行训练的。尽管结果尚无定论,但据观察,自从同一位置的先前断层以来经过的时间是估算新断层即将来临的可能性时要考虑的主要因素。可以观察到,即将出现新的断层的概率与自上次异常以来经过的时间的对数成正比。这意味着自上次异常以来经过了更多的时间,可以大大降低发生新异常的风险。在尝试开发一种模型来估计即将出现新故障的可能性时,必须考虑到这一点,这一点很重要。

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