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Analysis of Green Spaces by Utilizing Big Data to Support Smart Cities and Environment: A Case Study About the City Center of Shanghai

机译:利用大数据来支持智能城市和环境的绿地分析 - 以上海市中心为例

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摘要

Green areas or parks are the best way to encourage people to take part in physical exercise. Traditional techniques of researching the attractiveness of green parks, such as surveys and questionnaires, are naturally time consuming and expensive, with less transferable outcomes and only site-specific findings. This research provides a factfinding study by means of location-based social network (LBSN) data to gather spatial and temporal patterns of green park visits in the city center of Shanghai, China. During the period from July 2014 to June 2017, we examined the spatiotemporal behavior of visitors in 71 green parks in Shanghai. We conducted an empirical investigation through kernel density estimation (KDE) and relative difference methods on the effects of green spaces on public behavior in Shanghai, and our main categories of findings are as follows: (i) check-in distribution of visitors in different green spaces, (ii) users’ transition based on the hours of a day, (iii) famous parks in the study area based upon the number of check-ins, and (iv) gender difference among green park visitors. Furthermore, the purpose of obtaining these outcomes can be utilized in urban planning of a smart city for green environment according to the preferences of visitors.
机译:绿色地区或公园是鼓励人们参与体育锻炼的最佳方式。研究绿色公园的吸引力的传统技术,如调查和调查问卷,自然是耗时和昂贵的,具有较少可转移的结果和仅特定的现场调查结果。本研究通过基于位置的社交网络(LBSN)数据提供了事实研究,以收集中国上海市中心的绿色公园访问空间和时间模式。在2014年7月至2017年6月期间,我们研究了上海71个绿色公园的游客时尚行为。我们通过内核密度估计(KDE)和相对差异方法对上海市公共行为的影响进行了实证调查,我们主要类别的结果如下:(i)在不同绿色中检入访客的分配空间,(ii)用户的转型基于一天的时间,(iii)基于签到的核实人数和(iv)绿色公园游客之间的性别差异。此外,根据游客的偏好,可以利用获得这些结果的智能城市的城市规划。

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