| Literature DB >> 30103514 |
Qiang Niu1, Ye Wang2, Yuan Xia3, Hao Wu4, Xi Tang5.
Abstract
This article employs two indexes-accessibility and effective service ratio (ESR)-to assess the spatial distribution of urban parks with the consideration of both equity and efficiency. Traditional approaches to calculate these two indexes are often based on the shortest distance to the park within its service radius by network analysis. Such approaches cannot reflect the actual travel behaviors of urban residents and require extensive data collection of road networks and complex parameter setting. To avoid these defects, this study directly acquires travel time data for various travel modes in a specific time period to the park through web mapping API (Application Program Interface), then calculates the accessibility and ESR of urban parks based on these detailed data. This method gets closer to actual park usage situation and avoids the cumbersome process of road network model building. At last, a case study is conducted on the assessment of spatial distribution of main parks in Wuhan, finding that districts with poor park accessibility in Wuhan can be divided into three types: districts with an absence of parks, districts with an insufficiency with parks, and districts separated from parks by traffic. Then, pertinent improvement suggestions are proposed, which provide some bases for decisions on future park planning and construction.Entities:
Keywords: accessibility; assessment of spatial distribution; effective service ratio; urban parks; web mapping API
Mesh:
Year: 2018 PMID: 30103514 PMCID: PMC6122078 DOI: 10.3390/ijerph15081725
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Recommended travel routes of AMap.
Figure 2The distribution of main parks in Wuhan.
Main outputs of AMap’s walking route planning API.
| Name | Type | Meaning | |||
|---|---|---|---|---|---|
| count | numerical value | total number of returned routes | |||
| route | object | routes information list | |||
| origin | numerical value | coordinate of starting point | |||
| destination | numerical value | coordinate of end point | |||
| paths | array | paths information list | |||
| distance | numerical value | walking distance of the path | |||
| duration | numerical value | estimated walking time | |||
| steps | array | walking steps list | |||
| step | object | each section of walking path, include their road names, distances, time expense and coordinate points | |||
Walking accessibility scale.
| Accessibility | Area (ha.) | Percentage |
|---|---|---|
| within 10 min | 4694.80 | 6.21% |
| 10–20 min | 16,726.95 | 22.13% |
| 20–30 min | 15,601.55 | 20.64% |
| more than 30 min | 38,570.33 | 51.02% |
| total | 75,593.63 | 100.00% |
Figure 3(a) Spatial distribution of walking accessibility to parks; (b) Spatial distribution of walking ESR.
Car accessibility scale.
| Accessibility | Area on Workday (ha.) | Percentage | Area on Weekend (ha.) | Percentage |
|---|---|---|---|---|
| within 15 min | 55,073.03 | 72.85% | 59,775.13% | 79.07% |
| 15–30 min | 17,452.13 | 23.09% | 14,779.96 | 19.55% |
| 30–60 min | 2624.19 | 3.47% | 649.82 | 0.86% |
| more than 60 min | 444.28 | 0.59% | 388.71 | 0.51% |
| total | 75,593.63 | 100% | 75,593.63 | 100% |
Figure 4(a) Spatial distribution of car accessibility on workdays; (b) Spatial distribution of car ESR on workdays; (c) Spatial distribution of car accessibility on weekends; (d) Spatial distribution of car ESR on weekends.
Public transport accessibility scale.
| Accessibility | Area on Workday (ha.) | Percentage | Area on Weekend (ha.) | Percentage |
|---|---|---|---|---|
| within 15 min | 5952.56 | 7.87% | 6191.76 | 8.19% |
| 15–30 min | 26,681.32 | 35.30% | 26,817.50 | 35.48% |
| 30–60 min | 35,638.52 | 47.14% | 35,359.93 | 46.78% |
| more than 60 min | 7321.23 | 9.68% | 7224.44 | 9.56% |
| total | 75,593.63 | 100.00% | 75,593.63 | 100.00% |
Figure 5(a) Spatial distribution of public transport accessibility on workdays; (b)Spatial distribution of public transport ESR on workdays; (c) Spatial distribution of public transport accessibility on weekdays; (d) Spatial distribution of public transport ESR on weekends.
Typical district classification.
| Types | Districts |
|---|---|
| Districts absence of parks | Zhangjiawan (NO. 12), Fozuling (NO. 32), Bajifu (NO. 76), Shekou (NO. 44) |
| Districts insufficiency with parks | Zhuankou (NO. 10), Jiangdi (NO. 27), Zhoutou (NO. 60), Heping (NO. 40), Bashazhou (NO. 50), Hongshan (NO. 61), Tazihu (NO. 7) |
| Districts separated from parks by traffic | Chenjiaji (NO. 2), Zongguan (NO. 64), Zhongnan (NO. 19), Luonan (NO. 73), Zhuodaoquan (NO. 90), Xujiapeng (NO. 74) |
Figure 6Typical district classification.