Exploring the Spatial Patterns of Accessibility to Metro Services Considering the Locations of Station Entrances/Exits
Abstract
:1. Introduction
2. Literature Review
2.1. Entrance Space
2.2. Metro Supply-and-Demand Relationship
2.2.1. The Calculation of Supply and Demand
2.2.2. Metro Accessibility Measurement
3. Methods and Data
3.1. Study Data
3.2. Methods
3.2.1. Land-Use Data-Processing Process
3.2.2. Demand Scale Calculation
3.2.3. Accessibility Measurement Methodology
3.2.4. Imbalance Index of Entrance and Exit
3.3. Study Area
4. Results
4.1. Supply Space and Demand Space
4.2. Spatial Heterogeneity of Accessibility
4.3. Supply and Demand Characteristics of the Station
4.4. Station Classification and Characteristics
- (i)
- The LU stations are mainly office function stations with special location environments, and the passenger aggregation at these stations shows a clear direction.
- (ii)
- The entrance density of LB stations is insufficient.
- (iii)
- The HU stations mainly serve public functions, and the connection between the passenger flow channels and entrances/exits of these stations is inadequate.
- (iv)
- The HB stations are associated with a higher level of development, and the potential demand at these stations corresponds well with their entrance/exit settings.
5. Discussion
5.1. The Land-Use Difference Should Be Considered in Metro Service Accessibility
5.2. The Application Potential of Taking Entrances/Exits as the Research Object
6. Conclusions and Suggestion
6.1. Conclusions
6.2. Suggestion
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Method | Basic Principle | Application Scope | Advantages and Limitations | References |
---|---|---|---|---|
Space Syntax | Analyzes the geometric and topological relationships of spatial structures to evaluate accessibility and fluidity. | Mainly used to analyze how building interiors or urban-level spatial design affects accessibility. | It analyzes the multi-level impacts of spatial layout on accessibility in depth, primarily focusing on geometric characteristics while neglecting socio-economic factors. | Wu et al. [11], Li et al. [31] |
The Gravity Model | Based on Newton’s law of gravity, considers the distance decay effect and the service capacity of facilities. | Widely used in geographical research, particularly suitable for evaluating the attractiveness of services and regional accessibility. | It can quantify the distance decay effect and has a wide range of applications, but it mainly relies on the accuracy of assumptions and requires substantial data. | Wu et al. [33], Song et al. [34] |
The 2SFCA Method | Calculates accessibility in two steps: first, service providers search for demanders within their service area; and, second, demanders search for service providers. | Suitable for evaluating the accessibility of public services such as healthcare and educational institutions. | It balances service supply and demand well, providing a relatively precise accessibility assessment. | Guo et al. [10], Yuan et al. [19], Liu et al. [35] |
Cumulative Opportunities Model | Based on the number of service facilities that individuals can reach within a certain distance or time frame. | Suitable for evaluating the distribution of public transport facilities within walking distance. | It is simple and intuitive, and easy to understand and implement, but it focuses mainly on quantity rather than quality and ignores the differences in services. | Zhai et al. [38] |
Spatial Barrier Model | Considers the impact of physical barriers (e.g., rivers and mountains) in geographical space on accessibility. | Suitable for evaluating service accessibility in complex terrain areas. | It quantifies the impeding effect of physical barriers but only considers physical factors and ignores socio-economic factors. | Weng et al. [39] |
ID | Major Category | Category | Peak Travel Rate | Unit of Calculation | Land-Use Type | Formulae |
---|---|---|---|---|---|---|
1 | Dwelling | Common residential | 2.5 | Person/100 m2 building area | R2, R3 | (1) |
2 | Village | 2 | Person/100 m2 building area | R4, H14 | ||
3 | Villa | 1.5 | Person/100 m2 building area | R1 | ||
4 | Office institutions | Governmental agency | 3 | Person/100 m2 building area | A1, U, A8, H4 | |
5 | Scientific research institution | 4 | Person/100 m2 building area | A35, B29 | ||
6 | Office | 3.5 | Person/100 m2 building area | B1, B11, B2 | (3) (1) | |
7 | Commercial facility | Service nodes | 4 | Person/100 m2 building area | B41, B4, B9 | (1) |
8 | Wholesale market | 3.5 | Person/100 m2 building area | B1, B11 | (3) (1) | |
9 | Trade market | 7.5 | Person/100 m2 building area | B1, B11 | ||
10 | Comprehensive business | 5.5 | Person/100 m2 building area | B1, B11 | ||
11 | Hotel | 2 | Person/100 m2 building area | B14, B3, B1, B11 | ||
12 | Recreational facility | Park | 0.5 | Person/100 m2 site area | G1, G3, A9, A7 | (2) |
13 | Woodland | 0 | Person/100 m2 site area | G2, G22 | (2) | |
14 | Waters | 0 | Person/100 m2 site area | E1, E11, E13 | (2) | |
15 | Theatre | 5 | Person/100 m2 building area | B3, B31 | (1) | |
16 | Stadiums and gymnasiums | 2.7 | Person/100 m2 site area | A4, A41, A42 | (2) | |
17 | Library and exhibition hall | 2.8 | Person/100 m2 building area | A2, A21, A22 | (1) | |
18 | Hospital | Comprehensive hospital | 8 | Person/100 m2 building area | A5, A51, A52, A53, A59 | (1) |
19 | Welfare institutions | 1 | Person/100 m2 building area | A6 | (1) | |
20 | School | Elementary and high (school) | 5 | Person/100 m2 building area | A33, A3 | (1) |
21 | University | 2 | Person/100 m2 building area | A31 | (1) | |
22 | Secondary specialized school | 2 | Person/100 m2 building area | A32, A34 | (1) | |
23 | Industry and warehousing | Industry | 1.1 | Person/100 m2 building area | M | (1) |
24 | Warehousing | 0.3 | Person/100 m2 building area | W, H23, H2 | (1) | |
25 | Traffic facilities | Railway and aviation hubs | 1–2 | 10,000 Person/station | H2 | & |
26 | Traffic station | 1.1 | Person/100 m2 building area | S3, S4, S41, S42, S9 | (1) | |
27 | Hub port | 0.2–0.4 | 10,000 Person/station | H3 | & | |
28 | Buildings over the metro | 2.5 | Person/100 m2 building area | S2 | (1) | |
29 | Other non-construction land | 0.1 | Person/100 m2 site area | - | (2) | |
30 | Vacant land | 0.1 | Person/100 m2 building area | Vacant land | (1) |
Legend | ||
Type | The LU stations | |
Name | Software Park Phase II | Jimei Software Park |
Example diagram | ||
Station accessibility | −1.014 | −0.799 |
Imbalance of entrance/exit | 0.141 | 0.317 |
Number of entrances/exits | 3/4 | 2/5 |
Similar feature stations | Haicang Business Center, Talent Center, Guluo | Haicang Bay Park, Cruise Center, Cross-Strait Financial Center, Wuyuan Bay |
Type | The LB stations | |
Name | Wushipu | Houpu |
Example diagram | ||
Station accessibility | 0.087 | −0.449 |
Imbalance of entrance/exit | 0.042 | 0.100 |
Number of entrances/exits | 7/7 | 4/4 |
Similar feature stations | Xinyang Avenue, Wengjiao Road, Jianye Road, Jiangtou, Xiamen Railway Station | Luozhen Road, Xinglin Village, Xingjin Road, Lingdou, Hecuo, Wetland Park, Huli Park, Huarong Road, Huli Innovation Park |
Type | The HU stations | |
Name | Haicang Administrative Center | Sport Center |
Example diagram | ||
Station accessibility | 0.406 | 1.655 |
Imbalance of entrance/exit | 0.145 | 0.145 |
Number of entrances/exits | 5/5 | 6/6 |
Similar feature stations | Yuxiu East Road, Garden Expo Park | |
Type | The HB stations | |
Name | Lu Cuo | Guanren |
Example diagram | ||
Station accessibility | 0.272 | 0.374 |
Imbalance of entrance/exit | 0.084 | 0.069 |
Number of entrances/exits | 8/9 | 4/6 |
Similar feature stations | Hubin East Road, Lianban, Torch Garden, Jimei Avenue, Maqing Road |
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Yan, C.; Gao, Y.; Yang, Y. Exploring the Spatial Patterns of Accessibility to Metro Services Considering the Locations of Station Entrances/Exits. Buildings 2024, 14, 3532. https://doi.org/10.3390/buildings14113532
Yan C, Gao Y, Yang Y. Exploring the Spatial Patterns of Accessibility to Metro Services Considering the Locations of Station Entrances/Exits. Buildings. 2024; 14(11):3532. https://doi.org/10.3390/buildings14113532
Chicago/Turabian StyleYan, Congxiao, Yueer Gao, and Yifu Yang. 2024. "Exploring the Spatial Patterns of Accessibility to Metro Services Considering the Locations of Station Entrances/Exits" Buildings 14, no. 11: 3532. https://doi.org/10.3390/buildings14113532
APA StyleYan, C., Gao, Y., & Yang, Y. (2024). Exploring the Spatial Patterns of Accessibility to Metro Services Considering the Locations of Station Entrances/Exits. Buildings, 14(11), 3532. https://doi.org/10.3390/buildings14113532