待机功耗估计,用于节能业务

Zhen Wei, Yanan Zhang, Feng Jin, Wenjun Yin, Lin Wu
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引用次数: 4

摘要

待机耗电往往在不知不觉中发生,对待机耗电的疏忽往往会造成无形的能源浪费。虽然已经有一些与这个问题相关的研究,但还没有开发出通过分析用户的功耗数据来估计这种方式消耗的电量的方法。因此,本文在前人研究成果的基础上,结合用户功耗数据,提出了一种创新的用户待机功耗表征模型。首先,将电源数据视为连续信号,利用频率分析和高频去噪模型估计待机功耗;在此基础上,对中国用户的数千次用电数据进行了信号分解分析,并进行了严格的数学推导,得到了平均待机功率。最后,结果表明,该方法成功地将待机功率从整个消耗数据集中分离出来。根据待机模式和标称模式的分布,将用户分为四类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Standby power consumption estimation for energy saving service
Standby power consumption often takes place unnoticeably, the negligence of which often leads to intangible energy waste. Although there have been several studies related to this issue, no method has been developed to estimate the amount of power consumed this way by analyzing users' power consumption data. Therefore, this paper, based on findings of previous researches and users' power consumption data, proposes an innovative model to characterize users' standby power consumption. Firstly, by considering power data as continuous signal, standby power consumption is estimated by using frequency analysis and high frequency denoising model. Furthermore, Signal decomposition analysis has also been implemented as well as the conduction of rigorous mathematical derivation to get the average standby power based on thousands of power consumption data from Chinese users. Finally, results show that this method successfully separates standby power from the whole consumption dataset. Users are divided into four types based on the distribution of standby mode and nominal mode.
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