家庭能源预测:智能电网设计的方法与应用

Michelle Lauer, Rupamathi Jaddivada, M. Ilić
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引用次数: 3

摘要

在本文中,我们探讨了生成准确、实时的家庭能源使用预测的方法以及该预测数据的实际用例。随着连接的智能能源设备变得越来越普遍,执行实时预测的能力和这种预测的实用性是最近的发展。这些设备不仅可以收集相关数据以了解历史趋势,还可以通过直接的设备响应来改善整体网格功能。机器学习尚未被广泛探索作为这种类型的非聚合预测方法,但我们证明了它作为一种工具的有效性,即使是相对于其他基线和统计方法的高度噪声数据,以及所有这些方法如何相互补充。这些预测对于使智能电网系统有效地将其需求传达给电网以及电网为未来需求做好适当准备至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Household Energy Prediction: Methods and Applications for Smarter Grid Design
In this paper, we explore methods of generating accurate, real-time household energy usage predictions and the practical use cases for this prediction data. The ability to perform real-time prediction and the usefulness of such predictions are recent developments as connected smart energy devices become increasingly prevalent. These devices not only gather relevant data to learn historic trends, but can also improve overall grid functionality through direct device responsiveness. Machine learning has not yet been widely explored as an approach for this type of non-aggregated prediction, but we demonstrate its effectiveness as a tool even for this highly noisy data relative to other baseline and statistical approaches, and how all these approaches can complement each other. These predictions are crucial for enabling smart grid systems to effectively communicate their needs to the grid, and for the grid to appropriately prepare for future demand.
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