A GNN-based Day Ahead Carbon Intensity Forecasting Model for Cross-Border Power Grids

Xiaoyang Zhang, Dan Wang
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引用次数: 1

Abstract

Carbon intensity forecasting of power grids is critical to the optimization of demand-side consumers. Recently, cross-border power grids have emerged, i.e., those allowing electricity to be transmitted across different national transmission systems. Cross-border power grids substantially increase the sharing of highly variable renewable energy sources (VRE), leading to greater economic benefits and increased reliability. In Europe, the total volume of cross-border electricity that is exchanged comprises 13% of the annual net electricity that is generated. Current studies on carbon intensity forecasting, however, apply to individual regional power grids. In cross-border grids, the carbon intensity of a regional grid depends not only on that of its own electricity but also on the carbon intensity from the electricity exchanged with cross-border grids. Thus, if the cross-border electricity exchange is not captured appropriately, significant forecasting errors can occur. In this paper, we formulate a new Carbon Intensity Forecasting for Cross-border Grids (CFCG) problem by proposing and integrating carbon flows generated by cross-border electricity exchanges. The challenge is to capture the complex spatial and temporal dependencies that are involved. We propose a CFCG model based on a Graph Neural Network (GNN) submodel to learn the spatial dependencies and a Long Short Term Memory (LSTM) submodel to learn the temporal dependencies. We evaluate the CFCG model using real-world data from the cross-border power grids in Europe involving 28 member countries. We compare five baseline models. Our results show that the CFCG model achieves an average improvement of 26.46% or 20.34% as compared to state-of-the-art forecasting models based on regional grids or one-hop neighbor grids, respectively.
基于gnn的跨境电网日前碳强度预测模型
电网碳强度预测对需求侧用户优化至关重要。最近出现了跨境电网,即允许电力在不同的国家输电系统之间传输的电网。跨境电网大大增加了高可变可再生能源(VRE)的共享,从而带来更大的经济效益和更高的可靠性。在欧洲,跨境电力交换总量占年净发电量的13%。然而,目前对碳强度预测的研究只适用于个别区域电网。在跨境电网中,区域电网的碳强度不仅取决于自身电力的碳强度,还取决于与跨境电网交换的电力的碳强度。因此,如果没有适当地捕捉跨境电力交换,就可能出现重大的预测错误。本文通过提出并整合跨境电力交换产生的碳流,提出了一个新的跨境电网碳强度预测(CFCG)问题。我们面临的挑战是如何捕捉其中涉及的复杂的空间和时间依赖关系。本文提出了一种基于图神经网络(GNN)子模型来学习空间依赖关系和基于长短期记忆(LSTM)子模型来学习时间依赖关系的CFCG模型。我们使用来自欧洲28个成员国跨境电网的真实数据来评估CFCG模型。我们比较了五个基线模型。结果表明,与基于区域网格和单跳相邻网格的预测模型相比,CFCG模型的平均改进率分别为26.46%和20.34%。
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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