TOD Parking Demand Models for New Urban Areas in China
Abstract
:1. Introduction
2. Influencing Factors of Parking Demand
2.1. Land Development Type and Density
2.2. Block Layout and Road Network Planning
2.3. Motor Vehicle Ownership and Travel Level
2.4. Parking Management Policies and Strategies
2.5. Public Transportation Service Level (Rail, Bus, and Bus Rapid Transit)
3. Travel Structure Measurement Model at Different Distances Based on Travel Cost
3.1. Single-Way Travel Cost Structure
3.1.1. Travel Cost for Walking
3.1.2. Travel Cost for Bicycle
3.1.3. Travel Cost for Electric Bicycle
3.1.4. Travel Cost for Car
- The depreciation cost of a single car trip is obtained as follows:
- The insurance cost of a single car trip is obtained as follows:
- The average maintenance cost of a single car trip is as follows:
- The fuel cost of a single car trip is obtained as follows:
- The parking cost of a single car trip is obtained as follows:
- The travel time cost of a single car trip is affected by the road traffic status. The travel time is related to the traffic flow of the road network. The calculation formula is as follows:
- Time reliability is the probability that travel demand (OD) pairs can arrive at a specified time under certain traffic demand characteristics. It mainly explores the fluctuation of travel time from the perspective of travelers [25]. According to research, the reliability cost of a single car trip is .
3.1.5. Travel Cost for Bus
3.1.6. Travel Cost for Rail Transit
3.1.7. Travel Cost for Taxi
3.2. Travel Chain Cost Structure
3.3. Travel Structure
4. TOD Parking Demand Model in New Urban Areas
4.1. Travel Demand
4.2. Parking Demand
5. Case Study of Binhai New City in Hangzhou Bay New Area
5.1. Background
5.2. Parking Demand
5.2.1. Analysis on Travel Structure and Travel Cost
5.2.2. Analysis of Parking Demand at Rail Stations
5.2.3. Parking Demand Accounting Under Standardized Conditions
6. Conclusions
- Among the seven single-way travel modes, the travel proportions of car and bus are the most insensitive to travel distance, while the proportion of walking sharply decreases as the travel distance rises.
- When travel distance goes beyond 2 km, travel chains involving two travel modes become more adopted by residents, among which the combination of bicycle and rail transit are the most popular.
- In the TOD-oriented new urban area, travel demand by cars is discouraged and residents are more willing to travel in greener ways.
- Parking demand in the TOD-oriented new urban area is reduced by 17.71% compared with that of the standard method, which helps to alleviate parking pressure in the area.
- In terms of urban sustainability, the mixed land use resulting from TOD can apparently reduce the parking demand in the neighborhood, making the land-use pattern more effective. Meanwhile, the travel structure of the residents influenced by the TOD mode turns out to be more green and low carbon, which is in line with the sustainable development strategy.
- External cost can be taken into consideration when it involves government policy management in further researches.
- Travel chains made up of three or more travel modes can be considered in order to improve the model to reflect the situations in real life better.
- More case studies involving the other three types of TOD can be conducted to reinforce the universality and authority that the TOD mode is effective in reducing parking demand.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Travel Mode | Cost Structure | Cost Model |
---|---|---|
Walking | Travel time cost | |
Bicycle | Depreciation cost + maintenance cost + travel time cost | |
Electric bicycle | Depreciation cost + maintenance cost + travel time cost + power consumption cost | |
Bus | Ticket fee + travel time cost + walking cost + waiting cost + congestion cost + reliability cost | |
Rail transit | Ticket fee + travel time cost + walking cost + waiting cost + congestion cost | |
Car | Depreciation cost + insurance cost + maintenance cost + fuel cost + parking cost + travel time cost + reliability cost | |
Taxi | Taxi fare + travel time cost + waiting cost + reliability cost |
Travel Chain | 0–500 m | 500 m–1 km | 1–3 km | 3–6 km | Above 6 km |
---|---|---|---|---|---|
Walking | √ 1 | √ | √ | — 2 | — |
Bicycle | √ | √ | √ | √ | — |
Bicycle + rail transit | — | — | — | √ | √ |
Bicycle + bus | — | — | — | √ | √ |
Car | — | √ | √ | √ | √ |
Car + rail transit | — | — | — | — | √ |
Bus | — | √ | √ | √ | √ |
Bus + rail transit | — | — | — | √ | √ |
Rail transit | — | — | √ | √ | √ |
Taxi | — | √ | √ | √ | √ |
Taxi + rail transit | — | — | — | — | √ |
Travel Chain | 0–500 m | 500 m–1 km | 1–3 km | 3–6 km | Above 6 km |
---|---|---|---|---|---|
Walking | — | — | |||
Bicycle | — | ||||
Bicycle + rail transit | — | — | — | ||
Bicycle + bus | — | — | — | ||
Car | — | ||||
Car + rail transit | — | — | — | — | |
Bus | — | ||||
Bus + rail transit | — | — | — | ||
Rail transit | — | — | |||
Taxi | — | ||||
Taxi + rail transit | — | — | — | — |
Travel Mode | Travel Time Cost (yuan) | Travel Distance Limit |
---|---|---|
Walking | 2.04 | l ≤ 3 km |
Bicycle | 0.65l | l ≤ 6 km |
Bus | Off peak: 0.56l; Peak: 0.93l | l ≥ 500 m |
Rail transit | 0.25l | l ≥ 1 km |
Car | Off peak: 0.31l; Peak: 0.36l | l ≥ 500 m |
Taxi | Off peak: 0.31l; Peak: 0.36l | l ≥ 500 m |
Bicycle + rail transit | 0.90l | l ≥ 3 km |
Bicycle + bus | 1.58l | l ≥ 3 km |
Car + rail transit | 0.52l | l ≥ 6 km |
Taxi+ rail transit | 0.52l | l ≥ 6 km |
Travel Structure | Travel Range Travel Distance | 0–500 m 300 m | 0.5–1 km 800 m | 1–3 km 2 km | 3–6 km 5 km | Above 6 km 10 km |
---|---|---|---|---|---|---|
Travel chain mode | Walking | 26.24% | 33.67% | 24.30% | ||
Bicycle | 73.76% | 39.26% | 33.21% | 24.61% | ||
Bus | 11.99% | 10.43% | 8.87% | 8.71% | ||
Car | 7.56% | 6.31% | 5.33% | 5.25% | ||
Taxi | 7.51% | 8.94% | 11.45% | 14.44% | ||
Rail transit | 16.82% | 15.59% | 15.99% | |||
Bicycle + rail transit | 15.81% | 16.13% | ||||
Bus + rail transit | 8.66% | 11.22% | ||||
Bicycle + bus | 9.67% | 9.17% | ||||
Car + rail transit | 8.72% | |||||
Taxi+ rail transit | 10.36% | |||||
Total | 1 | 1 | 1 | 1 | 1 |
ID | Land Use Type | Residence | Floor Area Ratio | Commerce | Floor Area Ratio | Office | Floor Area Ratio | Total Construction Area |
---|---|---|---|---|---|---|---|---|
5316 | Residence | 20,144 | 1.1 | — 1 | — | — | — | 20,144 |
5319 | Residence | 29,013 | 1.1 | — | — | — | — | 29,013 |
5310 | Residence + Commerce + office | 27,817 | 1.5 | 10,000 | 2 | 4605 | 2 | 42,423 |
5309 | Residence + Commerce | 20,001 | 1.5 | 12,088 | 2 | 32,089 | ||
5307 | Commerce + office | — | — | 20,000 | 2.8 | 16,797 | 2.8 | 36,797 |
5308 | Commerce + office | 20,000 | 2 | 15,337 | 2.8 | 12,127 | 2.8 | 47,464 |
5304 | Residence | 75,686 | 0.8 | — | — | — | — | 75,686 |
5303 | Residence | 35,185 | 1.2 | — | — | — | — | 35,185 |
5302 | Residence + Commerce | 40,246 | 1.4 | 6133 | 2 | — | — | 46,379 |
5301 | Residence + Commerce | 24,970 | 1.4 | 10,000 | 2 | — | — | 34,970 |
5320 | Residence | 124,337 | 0.9 | — | — | — | — | 124,337 |
5321 | Residence | 26,396 | 1.2 | — | — | — | — | 26,396 |
Total | 443,797 | 73,558 | 33,530 | 550,884 |
Within 500 Meters of the Rail Station | ||||||||||||
Traffic District | 5301 | 5302 | 5303 | 5304 | 5307 | 5308 | 5309 | 5310 | 5316 | 5319 | 5320 | 5321 |
Travel demand (person–time) | 7236 | 6500 | 7863 | 9950 | 11,119 | 12,200 | 6684 | 9111 | 3973 | 5368 | 14,115 | 5093 |
Total | 99,212 |
Within 500 Meters of the Rail Station | ||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Traffic District | 5301 | 5302 | 5303 | 5304 | 5307 | 5308 | 5309 | 5310 | 5316 | 5319 | 5320 | 5321 |
Parking spaces | 406 | 406 | 438 | 556 | 621 | 685 | 379 | 513 | 221 | 299 | 789 | 284 |
Total | 5597 |
Within 500 Meters of the Rail Station | ||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Traffic District | 5301 | 5302 | 5303 | 5304 | 5307 | 5308 | 5309 | 5310 | 5316 | 5319 | 5320 | 5321 |
Parking spaces | 490 | 649 | 422 | 605 | 721 | 867 | 469 | 602 | 222 | 319 | 1119 | 317 |
Total | 6802 |
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Mei, Z.; Kong, L.; Zheng, W. TOD Parking Demand Models for New Urban Areas in China. Sustainability 2020, 12, 8406. https://doi.org/10.3390/su12208406
Mei Z, Kong L, Zheng W. TOD Parking Demand Models for New Urban Areas in China. Sustainability. 2020; 12(20):8406. https://doi.org/10.3390/su12208406
Chicago/Turabian StyleMei, Zhenyu, Liang Kong, and Wenchao Zheng. 2020. "TOD Parking Demand Models for New Urban Areas in China" Sustainability 12, no. 20: 8406. https://doi.org/10.3390/su12208406
APA StyleMei, Z., Kong, L., & Zheng, W. (2020). TOD Parking Demand Models for New Urban Areas in China. Sustainability, 12(20), 8406. https://doi.org/10.3390/su12208406