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Very Short-Term Current and Load Forecasting for Distribution Systems in Data Constrained Situations

机译:数据受限情况下的分配系统的短期电流和负载预测

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Load and current forecasting are useful tools for distribution systems (DSs) real-time monitoring and operation. Many techniques have been successfully applied to this task with various different time horizons. For real-time operation, forecasting algorithms must provide fast answers and be able to deal with high granularity and data availability that may be much smaller than in ideal conditions. This paper presents a methodology that combines renowned techniques, gradient boosting and persistence, into a predictor that can adjust itself to real-time changes in DSs and requires very little data to be trained. This method is tested using only 21 days as training dataset to predict the behavior of a portion of a real DSs with average errors lower than 5%.
机译:负载和电流预测是用于分配系统(DSS)实时监控和操作的有用工具。 已经成功地应用于具有各种不同的时间视野的此任务的许多技术。 对于实时操作,预测算法必须提供快速答案,并能够处理可能小于理想条件中的高粒度和数据可用性。 本文介绍了一种将着名的技术,渐变升压和持久性结合到一种可以将自己调整为DSS的实时变化的预测因素,并且需要训练的数据很少。 仅使用21天测试此方法,作为训练数据集,以预测平均误差的一部分真实DS的行为,低于5%。

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