| Literature DB >> 35328888 |
Ruijing Yu1, Chen Zeng1,2, Mingxin Chang1, Chanchan Bao1, Mingsong Tang1, Feng Xiong3.
Abstract
In the context of rapid urbanisation and an emerging need for a healthy urban environment, revitalising urban spaces and its effects on the urban eco-environment in Chinese cities have attracted widespread attention. This study assessed urban vibrancy from the dimensions of density, accessibility, liveability, diversity, and human activity, with various indicators using an adjusted spatial TOPSIS (technique for order preference by similarity to an ideal solution) method. The study also explored the effects of urban vibrancy on the urban eco-environment by interpreting PM 2.5 and land surface temperature using "big" and "dynamic" data, such as those from mobile and social network data. Thereafter, spatial modelling was performed to investigate the influence of urban vibrancy on air pollution and temperature with inverted and extracted remote sensing data. This process identified spatial heterogeneity and spatial autocorrelation. The majority of the dimensions, such as density, accessibility, liveability, and diversity, are negatively correlated with PM 2.5, thereby indicating that the advancement of urban vibrancy in these dimensions potentially improves air quality. Conversely, improved accessibility increases the surface temperature in most of the districts, and large-scale infrastructure construction generally contributes to the increase. Diversity and human activity appear to have a cooling effect. In the future, applying spatial heterogeneity is advised to assess urban vibrancy and its effect on the urban eco-environment, to provide valuable references for spatial urban planning, improve public health and human wellbeing, and ensure sustainable urban development.Entities:
Keywords: Wuhan; spatial modelling; urban eco-environment; urban vibrancy
Mesh:
Substances:
Year: 2022 PMID: 35328888 PMCID: PMC8955519 DOI: 10.3390/ijerph19063200
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Location of research area (Wuhan).
Descriptions of DALDH model.
| Dimensions | Indicators | Data Source | Year |
|---|---|---|---|
| Density | Population density | Census data set from local government | 2017 |
| Building density | Wuhan Natural Resources and Planning Bureau | 2017 | |
| Density of mobile users | Mobile phone GPS positioning requests | 2017 | |
| Floor Area Ratio | Wuhan Natural Resources and Planning Bureau | 2017 | |
| Road density | Wuhan Natural Resources and Planning Bureau | 2017 | |
| Accessibility | Distance to school | Big data platform (Baidu API) | 2017 |
| Distance to hospital | Big data platform (Baidu API) | 2017 | |
| Distance to shop | Big data platform (Baidu API) | 2017 | |
| Distance to bus stop | Big data platform (Baidu API) | 2017 | |
| Liveability | Number of banks | Big data platform (Baidu API) | 2017 |
| Number of food service sites | Big data platform (Baidu API) | 2017 | |
| Number of life service sites | Big data platform (Baidu API) | 2017 | |
| Number of leisure sites | Big data platform (Baidu API) | 2017 | |
| Diversity | Land use diversity | National Geomatics Centre of China | 2017 |
| Human activity | Inflow | Mobile phone GPS positioning requests | 2017 |
| Outflow | Mobile phone GPS positioning requests | 2017 | |
| Total Flow | Mobile phone GPS positioning requests | 2017 | |
| Weibo check-in | Social network platform (Weibo) | 2017 |
Note: Baidu API, Application Programming Interface, a developer’s open data platform; GPS, Global Positioning system.
Normalised values in different dimensions.
| Dimension | Density | Accessibility | Liveability | Diversity | Human Activity | Urban Vibrancy |
|---|---|---|---|---|---|---|
| Mean | 0.0985 | 0.865 | 0.0477 | 0.184 | 0.0932 | 0.1085 |
| SD | 0.0038 | 0.0096 | 0.0043 | 0.0201 | 0.0057 | 0.002 |
Note: Mean indicates mean value, and SD indicates standard deviation.
Figure 2Spatial distribution of the values of urban vibrancy and of its dimensions.
Figure 3Mobile phone trajectories.
Figure 4Distribution of PM 2.5 values and PM 2.5 NW–SE profile.
Figure 5Spatial distribution of PM 2.5.
Figure 6PM 2.5 values of different districts.
Figure 7Spatial distribution of LST.
Figure 8Land surface temperature of different districts.
Figure 9Scatterplot between LST and PM 2.5.
Results of spatial regression for PM 2.5 in different districts.
| Jiangan | Jianghan | Wuchang | Hongshan | Qiaokou | Qingshan | Hanyang | |
|---|---|---|---|---|---|---|---|
| Observation | 50 | 31 | 62 | 154 | 42 | 34 | 63 |
| Density | −5.77 *** | −12.62 *** | 0.1563 | 0.4902 | −4.14 | 2.08 *** | −1.13 |
| Accessibility | 0.7992 | −14.37 *** | −0.2465 | 0.3763 | −3.59 ** | 6.27 ** | −2.08 * |
| Liveability | −0.0425 | 0.5554 | −3.26 | 7.14 *** | 4.77 | −1.24 | 3.08 |
| Diversity | 0.6657 | −1.36 ** | −0.1600 | 0.0696 | 2.16 ** | 0.5472 * | −1.23 ** |
| Human activity | 1.44 | 6.10 *** | −0.1149 | −0.1318 | 2.25 | −3.62 ** | 3.16 *** |
| α | - | - | - | - | 0.0161 ** | - | - |
| λ | 0.7122 *** | 0.7830 *** | 0.5963 *** | 0.7903 *** | - | 0.8571 *** | 0.5583 *** |
| R2 | 0.6730 | 0.7607 | 0.4809 | 0.6991 | 0.4828 | 0.8445 | 0.4700 |
Note: *, ** and *** indicate 10%, 5% and 1% significance levels, respectively.
Results of spatial regression for land surface temperature in different districts.
| Jiangan | Jianghan | Wuchang | Hongshan | Qiaokou | Qingshan | Hanyang | |
|---|---|---|---|---|---|---|---|
| Observation | 207 | 143 | 206 | 316 | 175 | 83 | 141 |
| Density | −4.33 ** | 5.49 * | −6.03 * | 1101 | 0.9157 | −1623 | −0.8696 |
| Accessibility | 13.08 *** | 18.09 *** | 9.61 ** | 2464 *** | 1.36 | 2369 | 11.40 *** |
| Liveability | 2.85 ** | −3.90 ** | −0.9617 | −1815 | 1.29 | −618 | 3.32 |
| Diversity | 0.0769 | 0.032 | −4.57 *** | −1041 ** | −3.63 *** | −2144 *** | −0.4684 |
| Human activity | −6.00 *** | −4.37 * | −4.50 ** | 648.82 | −0.3313 | 2961 | −3.82 |
| λ | 0.5097 *** | 0.3247 *** | 0.5107 *** | 0.3027 *** | 0.6541 *** | ||
| R2 | 0.3511 | 0.3746 | 0.3316 | 0.4082 | 0.2086 | 0.2161 | 0.5380 |
Note: *, ** and *** indicate 10%, 5% and 1% significance levels, respectively.