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A novel locally adaptive method for modeling the spatiotemporal dynamics of global electric power consumption based on DMSP-OLS nighttime stable light data

机译:基于DMSP-OLS夜间稳定光数据的全球电力消耗时空动态建模的新型局部自适应方法

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摘要

Timely and reliable estimation of electricity power consumption (EPC) is essential to the rational deployment of electricity power resources. Nighttime stable light (NSL) data from the Defense Meteorological Satellite Program Operational Linescan System (DMSP-OLS) have the potential to model global 1-km gridded EPC. A processing chain to estimate EPC includes: (1) NSL data correction; and (2) regression model between EPC statistics and NSL data. For the global gridded EPC estimation, the current approach is to correct the global NSL image in a uniform manner and establish the linear relationships between NSL and EPC. However, the impacts of local socioeconomic inconsistencies on the NSL correction and model establishment are not fully considered. Therefore, in this paper, we propose a novel locally adaptive method for global EPC estimation. Firstly, we set up two options (with or without the correction) for each local area considering the global NSL image is not saturated everywhere. Secondly, three directions (forward, backward, or average) are alternatives for the inter-annual correction to remove the discontinuity effect of NSL data. Thirdly, four optional models (linear, logarithmic, exponential, or second-order polynomial) are adopted for the EPC estimation of each local area with different socioeconomic dynamic. Finally, the options for each step constitute all candidate processing chains, from which the optimal one is adaptively chosen for each local area based on the coefficient of determination. The results demonstrate that our product outperforms the existing one, at global, continental, and national scales. Particularly, the proportion of countries/districts with a high accuracy (MARE (mean of the absolute relative error) = 10%) increases from 17.8% to 57.8% and the percentage of countries/districts with inaccurate results (MARE 50%) decreases sharply from 23.0% to 3.7%. This product can enhance the detailed understanding of the spatiotemporal dynamics of global EPC.
机译:及时可靠地估算电力消耗(EPC)对于合理部署电力资源至关重要。来自国防气象卫星计划作战线扫描系统(DMSP-OLS)的夜间稳定光(NSL)数据具有为全球1公里网格EPC建模的潜力。估计EPC的处理链包括:(1)NSL数据校正; (2)EPC统计数据与NSL数据之间的回归模型。对于全局网格化EPC估计,当前方法是以统一的方式校正全局NSL图像,并建立NSL和EPC之间的线性关系。但是,尚未充分考虑当地社会经济矛盾对NSL修正和模型建立的影响。因此,在本文中,我们提出了一种用于全局EPC估计的新颖的局部自适应方法。首先,考虑到全局NSL图像并非到处都饱和,我们为每个局部区域设置了两个选项(有或没有校正)。其次,三个方向(向前,向后或平均)是年际校正的替代方法,以消除NSL数据的不连续性影响。第三,采用四个可选模型(线性,对数,指数或二阶多项式)对具有不同社会经济动态的每个局部地区进行EPC估算。最后,每个步骤的选项构成所有候选处理链,基于确定系数从中为每个局部区域自适应地选择最佳的处理链。结果表明,我们的产品在全球,大陆和国家范围内都优于现有产品。特别是,准确度高的国家/地区(MARE(绝对相对误差的平均值)<= 10%)的比例从17.8%增加到57.8%,结果不准确(MARE> 50%)的国家/地区的百分比从23.0%急剧下降到3.7%。该产品可以增强对全球EPC时空动态的详细了解。

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