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SmartCap: Flattening peak electricity demand in smart homes

机译:SmartCap:降低智能家居的峰值用电需求

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Flattening household electricity demand reduces generation costs, since costs are disproportionately affected by peak demands. While the vast majority of household electrical loads are interactive and have little scheduling flexibility (TVs, microwaves, etc.), a substantial fraction of home energy use derives from background loads with some, albeit limited, flexibility. Examples of such devices include A/Cs, refrigerators, and dehumidifiers. In this paper, we study the extent to which a home is able to transparently flatten its electricity demand by scheduling only background loads with such flexibility. We propose a Least Slack First (LSF) scheduling algorithm for household loads, inspired by the well-known Earliest Deadline First algorithm. We then integrate the algorithm into Smart-Cap, a system we have built for monitoring and controlling electric loads in homes. To evaluate LSF, we collected power data at outlets, panels, and switches from a real home for 82 days. We use this data to drive simulations, as well as experiment with a real testbed implementation that uses similar background loads as our home. Our results indicate that LSF is most useful during peak usage periods that exhibit “peaky” behavior, where power deviates frequently and significantly from the average. For example, LSF decreases the average deviation from the mean power by over 20% across all 4-hour periods where the deviation is at least 400 watts.
机译:扁平化的家庭用电需求减少了发电成本,因为成本受到峰值需求的不成比例的影响。尽管绝大多数家庭用电负荷是互动的,并且调度灵活性(电视,微波炉等)几乎没有,但家庭能源使用的很大一部分来自背景负荷,尽管具有一定的灵活性,但也有一定的灵活性。这种设备的示例包括A / C,冰箱和除湿机。在本文中,我们研究了通过仅调度具有这种灵活性的背景负荷,房屋能够透明地平坦化其电力需求的程度。我们提出了一种针对家庭负载的最小松弛优先(LSF)调度算法,该算法受著名的最早截止期限优先算法的启发。然后,我们将算法集成到Smart-Cap中,该系统是我们构建的用于监视和控制家庭用电负荷的系统。为了评估LSF,我们从真实房屋中收集了82天的插座,面板和开关的电源数据。我们使用这些数据来驱动仿真,并使用真实的测试平台实施进行实验,该实施使用与我们的房屋相似的背景负荷。我们的结果表明,在出现“尖峰”行为的峰值使用期间,LSF最有用。在峰值使用期间,功率会频繁地,平均地偏离平均值。例如,在偏差至少为400瓦的所有4小时周期内,LSF将与平均功率的平均偏差降低了20%以上。

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