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Alerting to Rare Large-Scale Ramp Events in Wind Power Generation

机译:提醒风力发电中罕见的大规模停机事件

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Wind power is an unstable power source, as its output fluctuates drastically according to the weather. Such instability can cause sudden large-scale changes in output, called ramp events; the frequency of such events is relatively low throughout the year but they could negatively affect the supply–demand balance in a power system. This study focuses on an alerting scheme of wind power ramp events for a transmission system operator to support operational decisions on cold reserve power plants. The ramp alerting scheme is implemented from the viewpoint of supervised learning by using the prediction results of wind power output. In particular, the authors address the class imbalance problem, as the accuracy of ramp event prediction tends to be low because of the infrequency of such ramp events in the database used for learning. In this study, several data sampling strategies are proposed and implemented to overcome the problem in the ramp alert task. The effectiveness of the proposed data sampling framework is evaluated experimentally by predicting real-world wind power ramps, based on a dataset collected in Japan. The experimental results show that the proposed framework effectively improves the ramp alert accuracy by addressing the class imbalance problem.
机译:风力发电是一种不稳定的能源,因为其输出会根据天气急剧波动。这种不稳定性可能会导致输出突然发生大规模变化,称为斜坡事件。全年此类事件的发生频率相对较低,但它们可能会对电力系统的供需平衡产生负面影响。这项研究的重点是为输电系统运营商提供风能斜坡事件的警报方案,以支持冷储备电厂的运营决策。从监督学习的角度,通过使用风能输出的预测结果来实施斜坡警报方案。尤其是,作者解决了类别不平衡问题,因为由于用于学习的数据库中此类斜坡事件的频率不高,因此斜坡事件预测的准确性往往较低。在这项研究中,提出并实施了几种数据采样策略来克服斜坡警报任务中的问题。根据在日本收集的数据集,通过预测现实世界的风力发电坡度,对所提出的数据采样框架的有效性进行了实验评估。实验结果表明,提出的框架通过解决类不平衡问题有效地提高了斜坡警报的准确性。

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