Assessment of the Interconnection for Multi-Transfer Facilities: A Perspective from Coupling Coordination
Abstract
:1. Introduction
2. Literature Review
2.1. MaaS and Transit Behavior
2.2. Transfer Integration Assessment
2.3. Application of Coupling Relationship
3. Methodology
3.1. Conception of DCC-MTF
3.2. Evaluation Model of DCC-MTF
3.2.1. Indicator of DCC-MTF by the Entropy Weight Method
3.2.2. Child Indicator of DCC-MTF
- (1)
- Diversity
- (2)
- Selectivity
- (3)
- Accessibility
- (4)
- Continuity
4. Application Example
4.1. Study Area Description
4.2. Analysis Results
4.2.1. Difference of a Single Indicator among All Transfer Facilities
4.2.2. Multivariable Clustering and Spatial Distribution Analysis
4.2.3. Difference of the Composite Indicator
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Glossary
Symbol | Implication |
---|---|
The diversity indicator of transfer facility node i within the buffer zone | |
The selectivity indicator of transfer facility node i within the buffer zone | |
The accessibility indicator of transfer facility node i within the buffer zone | |
The continuity indicator of transfer facility node i within the buffer zone | |
The ratio of the number of transfer facility node i to the total number of transfer facility nodes | |
The number of transfer facility node i by transport modes | |
The ratio of the number of transfer facility node i to the maximum number of transfer facility nodes that are interchangeable | |
The number of transfer facility nodes that are interchangeable with node i | |
The maximum acceptable distance from transfer facility node i to all nodes k | |
The average walking distance from transfer facility node i to all nodes k | |
The ideal distance from transfer facility node i to all nodes k | |
The frequency of the hardware connection carrier in this path for transfer facility node i | |
The number of hardware connection carriers of type l in the path from transfer facility node i to j | |
The weight value of the l-th type hardware connection carrier | |
The number of turn occurrences in the path from transfer facility node i to j | |
The weight constant of the cross point of the path | |
i,j | Transfer facility node index, i∈N, j∈N |
n | The maximum number of transfer facility node samples within the buffer zone |
m | The maximum number of transfer facility node samples by transport modes within the buffer zone |
l | The type index of the hardware connection carrier |
u | The maximum number of hardware connection carrier types to node i |
k | The transfer facility node index with hardware connection carriers to node i, k∈N |
N | The total transfer facility nodes set within the buffer zone |
T | The frequency set of each hardware connection carrier that passengers pass through in the same path |
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Step | Formula | Remarks |
---|---|---|
2. The proportion of the sample i value of indicator j | ||
3. Calculation of entropy value e of indicator j | ||
4. Calculation of information entropy redundancy d | is, the more important the indicator is. | |
5. Calculation of the weight w of each indicator | ||
6. Calculation of the comprehensive score of each sample |
Transfer Facility | Abbreviation Code | Transfer Facility | Abbreviation Code |
---|---|---|---|
Metro | M1, M2, M3, M4 | B&R | BP1, BP2, BP3, BP4, BP5 |
Bus | B1, B2 | P&R | PR |
Train | T1, T2, T3, T4 | Tram | P1, P2 |
Taxi | TP | K&R | TC |
Indicator Type | Diversity | Selectivity | Accessibility | Continuity |
---|---|---|---|---|
Entropy weight | 0.926 | 0.929 | 0.908 | 0.903 |
Transfer Facility | B1 | B2 | BP1 | BP2 | BP3 | BP4 | BP5 |
---|---|---|---|---|---|---|---|
DCC-MTF | 9.32 | 9.57 | 6.17 | 12.68 | 8.59 | 8.53 | 10.57 |
Mean DCC-MTF | 9.45 | 9.31 | |||||
Transfer Facility | M1 | M2 | M3 | M4 | P1 | P2 | PR |
DCC-MTF | 9.62 | 9.15 | 9.06 | 9.46 | 7.01 | 6.75 | 6.9 |
Mean DCC-MTF | 9.07 | 6.88 | 6.90 | ||||
Transfer Facility | T1 | T2 | T3 | T4 | TC | TP | —— |
DCC-MTF | 5.30 | 7.92 | 10.06 | 10.49 | 10.30 | 10.83 | |
Mean DCC-MTF | 9.44 | 10.30 | 10.83 |
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Chen, L.; Zhang, H.; Lu, W. Assessment of the Interconnection for Multi-Transfer Facilities: A Perspective from Coupling Coordination. Sustainability 2022, 14, 5803. https://doi.org/10.3390/su14105803
Chen L, Zhang H, Lu W. Assessment of the Interconnection for Multi-Transfer Facilities: A Perspective from Coupling Coordination. Sustainability. 2022; 14(10):5803. https://doi.org/10.3390/su14105803
Chicago/Turabian StyleChen, Lijun, Haiping Zhang, and Weike Lu. 2022. "Assessment of the Interconnection for Multi-Transfer Facilities: A Perspective from Coupling Coordination" Sustainability 14, no. 10: 5803. https://doi.org/10.3390/su14105803
APA StyleChen, L., Zhang, H., & Lu, W. (2022). Assessment of the Interconnection for Multi-Transfer Facilities: A Perspective from Coupling Coordination. Sustainability, 14(10), 5803. https://doi.org/10.3390/su14105803