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Mapping the Changes in Urban Greenness Based on Localized Spatial Association Analysis under Temporal Context Using MODIS Data

机译:利用MODIS数据基于时空背景下的局部空间关联分析绘制城市绿地变化。

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Vegetation plays an irreplaceable role for urban ecosystem services. Urban greenness represents all vegetation cover in and around cities. Understanding spatiotemporal patterns of the changes in urban greenness (CUG) provides fundamental clues for urban planning. The impact on CUG can be roughly categorized as being climate-induced and human-induced. Methods for mapping human-induced CUG (H-CUG) are rare. In this paper, a new framework, known as Localized Spatial Association Analysis under Temporal Context (LSAA-TC), was proposed to explore H-CUG. Localized spatial association analysis (LSAA) was performed first to extract local spatial outliers (LSOs), or locations that differ significantly in urban greenness from those located in the neighborhood. LSOs were then analyzed under the temporal context to map their intertemporal variations known as spatiotemporal outliers. We applied LSAA-TC to mapping H-CUG in the Wuhan Metropolitan Area, China during 2000–2015 using the vegetation index from Moderate-resolution Imaging Spectroradiometer (MODIS) 13Q1 as the proxy for urban greenness. The computed H-CUG demonstrated apparent spatiotemporal patterns. The result is consistent with the fact that the traditional downtown area presents the lowest H-CUG, while it is found that the peripheral area in the circular belt within 14–20 km from the urban center demonstrates the most significant H-CUG. We conclude that LSAA-TC can be a widely applicable framework to understand H-CUG patterns and is a promising tool for informative urban planning.
机译:植被对于城市生态系统服务起着不可替代的作用。城市绿色代表着城市及其周围的所有植被。了解城市绿度变化的时空模式为城市规划提供了基本线索。对CUG的影响可大致归类为气候引起的和人为引起的。绘制人源性CUG(H-CUG)的方法很少。在本文中,提出了一种新的框架,称为时间上下文下的局部空间关联分析(LSAA-TC),以探索H-CUG。首先执行局部空间关联分析(LSAA),以提取局部空间离群值(LSO),或者说城市绿度与附近的绿地差异显着的位置。然后在时态背景下对LSO进行分析,以绘制其跨时空变化(称为时空离群值)。我们使用中分辨率成像光谱仪(MODIS)13Q1的植被指数作为城市绿色的代表,将LSAA-TC应用于2000-2015年中国武汉都会区的H-CUG测绘。计算的H-CUG表现出明显的时空模式。该结果与传统市区的H-CUG最低的事实相吻合,而发现距市中心14-20 km的环形带外围区域显示出最显着的H-CUG。我们得出的结论是,LSAA-TC可以成为了解H-CUG模式的广泛适用框架,并且是进行信息城市规划的有前途的工具。

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