考虑概念漂移的在线位置边际价格预测堆叠框架

Hanning Mi;Qingxin Li;Ming Shi;Sijie Chen;Yutong Li;Yiyan Li;Zheng Yan
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摘要

概念漂移是指预测因子所预测变量的统计属性会随着时间的推移发生不可预见的变化。现有研究通过在线方法更新预测器来解决本地边际价格(LMP)预测过程中的概念漂移问题。然而,在这些方法中,新数据被不加区分地用于更新预测器。当概念漂移发生时,无法准确捕捉新的属性变化。考虑到概念漂移现象,本文提出了一种用于在线 LMP 预测的堆叠框架。本文选择了长短期记忆网络和图注意网络作为基础预测器,以捕捉 LMP 中的时空依赖关系。当概念漂移发生时,使用自适应窗口算法选择的漂移数据来更新堆叠预测器。基于澳大利亚能源市场运营商和中洲独立系统运营商真实数据的数值结果验证了所提框架的有效性。对比实验证明,试图改变或简化所提出的框架会损害预测精度。
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A Stacking Framework for Online Locational Marginal Price Prediction Considering Concept Drift
Concept drift means the statistical properties of the variable that a predictor is predicting change over time in unforeseen ways. Existing research solves concept drift in the locational marginal price (LMP) prediction process by updating predictors in online approaches. However, new data is indiscriminately utilized to update predictors in these methods. The new property changes can not be accurately captured when concept drift occurs. This paper proposes a stacking framework for online LMP prediction considering the concept drift phenomenon. Long short-term memory networks and graph attention networks are selected as the base predictors to capture the spatio-temporal dependencies in LMPs. When concept drift occurs, data with drift selected by the adaptive windowing algorithm is used to update the stacked predictor. Numerical results based on real data from Australian Energy Market Operator and Midcontinent Independent System Operator validate the effectiveness of the proposed framework. The comparative experiments prove that attempts to change or simplify the proposed framework can undermine prediction accuracy.
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