电网稳定的简明模型

Vadim Arzamasov, Klemens Böhm, P. Jochem
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引用次数: 65

摘要

分布式智能电网控制(DSGC)是在不改变基础设施的情况下实现需求响应的一种新型系统。它通过将电价与电网频率绑定来实现这一目标。虽然存在DSGC模型,但它们依赖于各种简化的假设。例如,研究人员假设网格中所有参与者的行为都是相同的。在本文中,我们研究了数据挖掘技术如何帮助消除这些简化,同时保持见解的简洁表示。我们系统地收集各种假设,并确定有关系统仍开放的问题。接下来,我们用不同的输入值运行许多模拟。最后,我们将决策树应用于结果数据,并表明这确实提供了新的见解。例如,我们发现即使一些参与者以高延迟调整其能量消耗,系统也可以稳定,或者快速适应更有利于系统稳定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Concise Models of Grid Stability
Decentral Smart Grid Control (DSGC) is a new system implementing demand response without significant changes of the infrastructure. It does so by binding the electricity price to the grid frequency. While models of DSGC exist, they rely on various simplifying assumptions. For example, researchers have assumed that the behavior of all participants in the grid is identical. In this paper we study how data-mining techniques can help to remove some of these simplifications, while keeping the representation of the insights concise. We systematically collect the various assumptions and identify questions regarding the system that are still open. Next, we run many simulations, with diverse input values. Finally, we apply decision trees to the resulting data and show that this indeed provides new insights. For example, we discover that the system can be stable even if some participants adapt their energy consumption with a high delay, or that fast adaptation is preferable for system stability.
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