Profiling Pumped Storage Power Station via Multi-Sequence Joint Regression

Wancheng He, Xun Li, Kaitao Zhou, Junheng Huang, Shuang Tang
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引用次数: 0

Abstract

Suggesting personalized tags to the Pumped storage hydropower plants (PSHPs) towards purchase requirements forecasting plays a key role in achieving the smart power grids. However, current tag suggestion solutions only take single sequence into consideration, and predict single label for PSHPs, resulting in suboptimal forecasting accuracy. In this paper, we propose a novel Multi-Sequence Joint Regression (MSJR) model towards the task of PSHP tagging. In particular, MSJR exploits multi-sequence as input for collaborative perception purpose, and a multi-label regression module is built in the MSJR framework to predict tags describing the purchase requirements of PSHPs. Our encouraging experimental results on a real-world dataset, crawled from the ERP system of the State Grid Xin Yuan, validate the superiority of the our MSJR over several existing tagging suggestion methods.
多序列联合回归分析抽水蓄能电站
为抽水蓄能电站提供个性化标签,进行购买需求预测,是实现智能电网的关键。然而,目前的标签建议方案只考虑单个序列,并预测pshp的单个标签,导致预测精度不理想。在本文中,我们提出了一种新的多序列联合回归(MSJR)模型来完成PSHP标记任务。特别地,MSJR利用多序列作为协同感知目的的输入,并在MSJR框架中构建了多标签回归模块来预测描述pshp购买需求的标签。我们在一个来自国家电网鑫源ERP系统的真实数据集上取得了令人鼓舞的实验结果,验证了我们的MSJR比现有几种标注建议方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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