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Use of smart meter readings and nighttime light images to track pixel-level electricity consumption

机译:使用智能电表读数和夜间光图像来跟踪像素级的电量消耗

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摘要

Despite a wealth of night remote sensing studies on electricity consumption, some unsolved issues limit future studies. These include the coarse resolution of nighttime light (NTL) imagery, the mismatching acquisition time between current NTL imagery and electric power data, and unknown data quality of public power records with a low update frequency and at a regionalational level. Thus, we attempt to address these well-known issues by using readings from smart meters. Such a new dataset provides high spatial and temporal resolution electricity consumption information, which enables the tracking of electricity consumption at the fine scale. To this end, all available NTL images from space and over eight million records of electric power consumption from ground smart meters with matching acquisition time were collectively employed for comprehensive examinations. Results of our analyses suggest two major findings. First, positive linear correlation exists between NTL images and smart meter readings at the pixel level. Second, their relationship is changing in different seasons, due to vegetation seasonality and snow cover. With the high update frequency of power consumption data from smart meters, these findings provide guidance for electricity consumption estimation at the fine-grained resolution, which will be informative and useful for local power planning.
机译:尽管夜间有很多关于耗电量的遥感研究,但一些未解决的问题限制了未来的研究。这些包括夜间光(NTL)图像的粗分辨率,当前NTL图像和电力数据之间的采集时间不匹配以及区域/国家/地区级别更新频率较低的公共电力记录的数据质量未知。因此,我们尝试通过使用智能电表的读数来解决这些众所周知的问题。这样的新数据集提供了高时空分辨率的耗电量信息,从而可以在精细范围内跟踪耗电量。为此,将所有来自太空的可用NTL图像和地面智能电表的超过800万条电能消耗记录(与采集时间相匹配)一起用于全面检查。我们的分析结果表明了两个主要发现。首先,在像素级的NTL图像和智能电表读数之间存在正线性相关。其次,由于植被的季节性和积雪,它们的关系在不同的季节中变化。由于智能电表的耗电量数据更新频率很高,因此这些发现可为以细粒度分辨率进行的耗电量估算提供指导,这将为本地电力计划提供有用的信息。

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  • 来源
    《Remote sensing letters》 |2019年第3期|205-213|共9页
  • 作者单位

    SUNY Binghamton Dept Geog Binghamton NY 13902 USA;

    SUNY Binghamton Dept Geog Binghamton NY 13902 USA|Sun Yat Sen Univ Geog & Planning Sch Guangzhou Guangdong Peoples R China;

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  • 正文语种 eng
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