论文标题

使用常规培训更新策略对LSTMS进行垂直功率流量预测

Vertical Power Flow Forecast with LSTMs Using Regular Training Update Strategies

论文作者

Brauns, Katharina, Scholz, Christoph, Baier, Andre, Jost, Dominik

论文摘要

可再生能源的强劲增长和这些来源发电的高波动性以及越来越多的挥发性能源消耗量导致电网带来重大挑战。为了确保电网的安全性和可靠性,需要观察电网中的电流以防止超载。此外,必须持续平衡能源供应和消费,以确保能源供应的安全性。因此,需要在网格中接下来的几个小时的高质量流量预测。在本文中,我们调查了中等电压和高压网格之间变压器垂直功率流的预测。由于变压器的功率流的特性不断变化,因此对垂直功率流进行预测是具有挑战性的。这主要是由于动态网格拓扑,安装资产的变化,变压器本身的维护以及挥发性生成的结果。在本文中,我们提出了一种应对这些挑战的新方法。对于多步骤时间序列预测,使用长期术语内存(LSTM)。在我们提出的方法中,定期研究模型并将其与基线模型进行比较的更新过程。一旦有足够的新测量,该模型就会立即重新训练。该重新训练应捕获模型过去尚未看到的变压器特征的变化,因此该模型无法预测。对于常规更新过程,我们调查了不同的策略,特别是考虑使用过的时期的数量,但也使用了不同的学习率。我们表明,我们的新方法大大优于研究的基线方法。

The strong growth of renewable energy sources and the high volatility in power generation of these sources, as well as the increasing amount of volatile energy consumption is leading to major challenges in the electrical grid. In order to ensure safety and reliability in the electricity grid, the power flow in the grid needs to be observed to prevent overloading. Furthermore, the energy supply and consumption need to be continuously balanced to ensure the security of energy supply. Therefore a high quality of power flow forecasts for the next few hours within the grid are needed. In this paper we investigate forecasts of the vertical power flow at transformer between the medium and high voltage grid. Forecasting the vertical power flow is challenging due to constantly changing characteristics of the power flow at the transformer. This is mainly a result of dynamic grid topologies, changes in the installed assets, maintenance of the transformer itself as well as the volatile generation. In this paper we present a novel approach to deal with these challenges. For the multi step time series forecasts a Long-Short Term Memory (LSTM) is used. In our presented approach an update process where the model is retrained regularly is investigated and compared to baseline models. The model is retrained as soon as a sufficient amount of new measurements are available. This retraining should capture changes in the characteristic of the transformer that the model has not yet seen in the past and therefore cannot be predicted by the model. For the regular update process we investigate different strategies where especially the number of used epochs are considered, but also different learning rates are used. We show that our new approach significantly outperforms the investigated baseline approaches.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源