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Improving estimates of built-up area from night time light across globally distributed cities through hierarchical modeling

机译:通过分层建模提高全球分布城市夜间照明的建筑面积估计

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Built-up area has become an important indicator for studying urban environments, but mapping built-up area at the regional/global scale remains challenging due to the complexity of impervious surface features. Nighttime light data (NTL) is one of the major remote sensing data sources for regional/global built-up or impervious surface mapping. A single regression relationship between fractional built-up/impervious area and NTL or various indices derived based on NTL and vegetation index (e.g., NDVI) data had been established in many previous studies. However, due to the varying geographical, climatic, and socio-economic characteristics of cities, the same regression relationship may vary significantly across cities. In this study, we examined the regression relationship between percentage of built-up area (pBUA) and vegetation adjusted nighttime light urban index (VANUI) for 120 randomly selected cities around the world with a hierarchical hockey-stick regression model. We found that there is a substantial variability in the slope (0.658 +/- 0.318), the threshold VANUI (-1.92 +/- 0.769, log scale) after which the linear relationship holds, and the coefficient of determination R-2 (0.71 +/- 0.14) among globally distributed cities. A small proportion of this substantial variability can be attributed to socio-economic status (e.g., total population, GDP per capita) and landscape structures (e.g., compactness and fragmentation). Due to these variations, our hierarchical model or no-pooling model (i.e., fit each city individually) can significantly improve model prediction accuracy (17% in terms of root mean squared error) over a complete-pooling model. We, however, recommend hierarchical models as they can provide meaningful priors for future modeling under a Bayesian framework, and achieve higher prediction accuracy than no-pooling models when sample size is small. (C) 2018 Elsevier B.V. All rights reserved.
机译:建筑面积已成为研究城市环境的重要指标,但是由于不透水的地表特征的复杂性,在区域/全球范围内绘制建筑面积图仍然具有挑战性。夜间光数据(NTL)是主要的遥感数据源之一,用于区域/全球累积或不透水的表面贴图。在先前的许多研究中,已经建立了分数累积/不透水面积与NTL或基于NTL和植被指数(例如NDVI)数据得出的各种指数之间的单一回归关系。但是,由于城市的地理,气候和社会经济特征的差异,相同的回归关系在各个城市之间可能会有很大差异。在这项研究中,我们使用曲棍球棒回归模型研究了全球120个随机选择的城市的建筑面积百分比(pBUA)与植被调整的夜间光照城市指数(VANUI)之间的回归关系。我们发现斜率(0.658 +/- 0.318),阈值VANUI(-1.92 +/- 0.769,对数刻度)和线性关系的确定系数R-2(0.71)之间存在很大的差异。 +/- 0.14)。这种实质性变化的一小部分可归因于社会经济地位(例如总人口,人均国内生产总值)和景观结构(例如紧凑性和破碎性)。由于这些变化,我们的分层模型或无池模型(即分别适合每个城市)可以比完整池模型显着提高模型预测准确性(就均方根误差而言为17%)。但是,我们建议使用分层模型,因为它们可以为贝叶斯框架下的未来建模提供有意义的先验条件,并且在样本量较小时比无池模型具有更高的预测准确性。 (C)2018 Elsevier B.V.保留所有权利。

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