Power Grid Behavioral Patterns and Risks of Generalization in Applied Machine Learning

Shimiao Li, Ján Drgoňa, S. Abhyankar, L. Pileggi
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Abstract

Recent years have seen a rich literature of data-driven approaches designed for power grid applications. However, insufficient consideration of domain knowledge can impose a high risk to the practicality of the methods. Specifically, ignoring the grid-specific spatiotemporal patterns (in load, generation, and topology, etc.) can lead to outputting infeasible, unrealizable, or completely meaningless predictions on new inputs. To address this concern, this paper investigates real-world operational data to provide insights into power grid behavioral patterns, including the time-varying topology, load, and generation, as well as the spatial differences (in peak hours, diverse styles) between individual loads and generations. Then based on these observations, we evaluate the generalization risks in some existing ML works caused by ignoring these grid-specific patterns in model design and training.
应用机器学习中的电网行为模式和泛化风险
近年来出现了大量针对电网应用设计的数据驱动方法的文献。然而,对领域知识的考虑不足会给方法的实用性带来很大的风险。具体来说,忽略特定于网格的时空模式(在负载、生成和拓扑等方面)可能导致对新输入输出不可行、无法实现或完全无意义的预测。为了解决这一问题,本文研究了现实世界的运行数据,以提供对电网行为模式的见解,包括时变拓扑、负载和发电,以及各个负载和各代之间的空间差异(在高峰时段,不同的风格)。然后基于这些观察结果,我们评估了由于在模型设计和训练中忽略这些网格特定模式而导致的一些现有ML工作中的泛化风险。
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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