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Community scale livability evaluation integrating remote sensing, surface observation and geospatial big data

机译:社区规模宜家评估集成遥感,表面观察和地理空间大数据

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摘要

Effective evaluation of community livability is in urgent need to avoid increased livability at the expense of sustainability. However, studies concerning community livability evaluation were still conceptual, qualitative or conducted at city or regional scales. The availability of abundant, fine-grained, and multi-source data in the big data era laid the foundation for comprehensive livability evaluation at much finer scales. This paper proposed a quantitative and practical method for up-to-date livability evaluation at individual community scale in China. Nine evaluation criteria were identified spanning dimensions of environment, traffic, convenience, and population. These criteria were calculated respectively from remote sensing, surface observation and geospatial big data. The Technique for Order Preference by Similarity to an Ideal Solution (TOPSIS) was applied for community livability evaluation, and the uncertainty and sensitivity of evaluation results were assessed. The livability evaluation in the case study area of Haidian District, Beijing, China demonstrated the practicality and effectiveness of the framework. A total number of 1242 communities in Haidian District were evaluated. Communities in urban area were generally associated with higher evaluation scores and lower uncertainties than those in rural area. The careful selection of criteria weights with high sensitivity, i.e., green space coverage within community and driving time to schools, can potentially significantly reduce the uncertainty of the livability evaluation. The community scale livability evaluation is expected to bridge the gap between theoretical concepts and practical implementations of livability evaluation, and enables the development of more effective and locally specific regulations and policies to improve community livability.
机译:有效评估社区居民迫切需要避免以牺牲可持续性的牺牲品增加宜居性。然而,关于社区居民评估的研究仍然是概念性的,在城市或区域尺度的定性或进行。大数据时代的丰富,细粒度和多源数据的可用性为综合宜象评估进行了更精细的秤。本文提出了中国各个社区规模的最新居民评价的定量和实用方法。九个评估标准被确定为环境,交通,便利性和人口的跨度尺寸。这些标准分别从遥感,表面观察和地理空间大数据计算。通过相似性与理想解决方案(TOPSIS)的顺序偏好的技术用于社区居民评估,评估评估结果的不确定性和敏感性。中国北京市海淀区案例研究区的宜居性评价展示了框架的实用性和有效性。评估了海淀区的1242个社区总数。城市地区的社区通常与较高的评估评分相关,比农村地区的不确定性较低。仔细选择具有高灵敏度的标准权重,即社区内的绿色空间覆盖范围和学校的驾驶时间,可能会显着降低宜居性评估的不确定性。预计社区规模宜居性评价将弥合理论概念与宜家评估实际实施之间的差距,使得开发更有效和局部具体的法规和政策,以提高群落居住能力。

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