Accurate and Data-Limited Prediction for Smart Home Energy Management

Baris Aksanli
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引用次数: 2

Abstract

Residential energy applications have become an important domain of cyber-physical systems. These applications provide significant opportunities for end-users to reduce their electricity costs and for the utilities to balance their supply and demand in the most effective way. One of the most important applications is predicting the total energy usage of a house. However, an accurate time-series prediction may require significant amount of data, e.g. per appliance energy consumption values, that need costly installations, data storage units, and computation and communication devices. In this paper, we propose a framework that uses a forward-selection-based input filtering mechanism for residential prediction applications. Our framework can effectively reduce the amount of data required for residential energy prediction without sacrificing prediction performance. We demonstrate that 94% of the houses can leverage our method, which leads to up to 80% reduction in required data, greatly reducing the system cost and overhead.
智能家居能源管理的准确和有限数据预测
住宅能源应用已成为信息物理系统的一个重要领域。这些应用为最终用户降低电力成本和公用事业以最有效的方式平衡供需提供了重要的机会。最重要的应用之一是预测房屋的总能耗。然而,准确的时间序列预测可能需要大量的数据,例如,每个设备的能耗值,这需要昂贵的安装、数据存储单元、计算和通信设备。在本文中,我们提出了一个框架,该框架使用基于前向选择的输入过滤机制用于住宅预测应用。我们的框架可以在不牺牲预测性能的情况下有效地减少住宅能源预测所需的数据量。我们证明94%的房屋可以利用我们的方法,这导致所需数据减少了80%,大大降低了系统成本和开销。
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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