The Influence of Strip-City Street Network Structure on Spatial Vitality: Case Studies in Lanzhou, China
<p>Location of the study area.</p> "> Figure 2
<p>Baidu heatmaps of the study area.</p> "> Figure 3
<p>Street network accessibility metrics calculated by Axwoman. (<b>a</b>) Connect, (<b>b</b>) Control, (<b>c</b>) TotalDepth, (<b>d</b>) MeanDepth, (<b>e</b>) GInteg, (<b>f</b>) LInteg.</p> "> Figure 4
<p>Characteristics of the Temporal Distribution of Spatial Vitality.</p> "> Figure 5
<p>Spatial Distribution Characteristics of Vitality. Note: FLL = Fuli Road, LZZX = Lanzhou Center, XGSZ = Xiguan Cross, DFHGC = Dongfang Hong Square, WQGC = Wuquan Square, RDDD = Ruide Avenue, WDGC = Wanda Mall, YTGXQ = Yan Tan High-Tech Zone.</p> ">
Abstract
:1. Introduction
2. Regions and Dataset
2.1. Regional Overview
2.2. Dataset
2.2.1. Dataset of Streets
2.2.2. Point of Interest Data
2.2.3. Baidu Heatmap Data
3. Methods
3.1. Street Network Accessibility Evaluation
3.2. Spatial Vitality Measurement
3.3. Hotspot Analysis (Getis-Ord Gi*)
3.4. Relevance Exploration
3.5. Spatial Doberman Model
4. Results
4.1. Street Network Structure Based on Space Syntax
4.2. Temporal and Spatial Distribution Characteristics of Spatial Vitality
4.2.1. Temporal Characteristics of Spatial Vitality
- On weekdays and weekends, based on spatial vitality, the concentration of vitality during the day is significantly greater than that at night. This is in line with common sense that the concentration of people in residential areas is lower than that of areas with public activities, thus providing the facial validity of our research results.
- Regarding the degree of population concentration, the vitality value of the city center during workdays is generally higher than that on weekends, and the crowd on workdays is more concentrated than on weekends. After 11:00 pm, the trend of gathering vitality on weekends is higher than that on weekdays. The vitality of streets at night mainly comes from weekend activities.
- Comparing the volatility of the vitality aggregation curve, the volatility of most working days is greater than that of the weekend, which is related to urban commuting. Comparing the curvature of the morning and afternoon curves shows that people gather and disperse faster on weekdays than on weekends.
4.2.2. Spatial Characteristics of Urban Vitality
4.3. Correlation Analysis of Street Accessibility and Spatial Vitality
4.4. The Influencing Mechanism of Street Accessibility on Space Vitality
4.4.1. Overall Spatial Effect
4.4.2. Temporal Heterogeneity Effect
5. Discussion and Conclusions
- The temporal distribution of urban vitality is consistent with the law of crowd activities, showing highly similar spatial aggregation and dispersion, and the spatial distribution of vitality mostly coincides with the location of street intersections.
- At the level of urban spatial neighborhoods, the better the connectivity of the street network, the more vibrantly the city gathers. For streets with high controllability, and with more transfer steps, the more scattered the urban vitality is. Certain factors, for instance shopping and services in the spatial dimension, have influenced urban vitality to a large extent.
- According to travel habits on weekdays and weekends, the GInteg and LInteg are significantly related to urban vitality, but there is a temporal heterogeneity effect.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Category | Type Description | Counting |
---|---|---|
Healthcare | Hospitals/Healthcare services/Clinics/Accessible facilities | 2331 |
Recreation | Sports and leisure services /Tourist attractions/Cultural facilities/Place name and address information | 2729 |
Life Services | Living Services/Car Sales/Public Facilities/Indoor Facilities/Gazette and Address Information | 3055 |
Company Business | Office facilities/Place name and address information | 3280 |
Transportation Services | Transportation facilities and services/Subway stations/Bus stops/Place name address information | 2254 |
Car Service | Auto repair/Parking/Place name address information | 2545 |
Financial Services | Financial and insurance services/Security facilities | 1929 |
Catering Services | Catering Services | 3188 |
Shopping Service | Shopping services/Car or motorcycle sales/Access to facilities/Place name and address information | 13,800 |
Accommodation Services | Lodging Services/Hotels | 1896 |
Educational Facilities | Elementary School/High School/University/Other Schools | 128 |
Residential areas | Business Residence/Apartments | 1894 |
N | MAX | AVG | MIX | S.D | ANOV | |
---|---|---|---|---|---|---|
Connect | 668 | 58.00 | 4.04 | 1.00 | 5.17 | 26.73 |
Control | 668 | 20.88 | 1.00 | 0.02 | 1.72 | 2.96 |
TotalDepth | 668 | 5294.00 | 3337.73 | 2187.00 | 462.09 | 213,525.55 |
MeanDepth | 668 | 7.93 | 5.00 | 3.27 | 0.69 | 0.48 |
GInteg | 668 | 3.00 | 1.76 | 0.98 | 0.31 | 0.09 |
LInteg | 668 | 7.22 | 2.76 | 0.21 | 1.16 | 1.35 |
Connect | Control | MeanDepth | GInteg | LInteg | ||
---|---|---|---|---|---|---|
workday | pearson | 0.145 ** | 0.006 ** | −0.256 ** | 0.321 ** | 0.333 ** |
tau-b | 0.182 ** | 0.023 ** | −0.308 ** | 0.208 ** | 0.310 ** | |
Spearman | 0.220 ** | 0.106 ** | −0.263 ** | 0.363 ** | 0.466 ** | |
weekend | pearson | 0.024 * | −0.012 ** | −0.231 ** | 0.194 ** | 0.411 ** |
tau-b | 0.273 ** | −0.015 * | −0.394 ** | 0.094 ** | 0.398 ** | |
Spearman | 0.107 ** | −0.125 * | −0.245 ** | 0.345 ** | 0.450 ** |
Variable | Model | |||
---|---|---|---|---|
OSL | SLM | SEM | SDM | |
ρ | - | 0.8932 **(0.0046) | 0.8936 **(0.0047) | |
λ | - | - | 0.9053 **(0.0044) | 0.9053 **(0.0025) |
Constant | 7.3714 **(0.8896) | 0.2718(0.4240) | 2.6146*(0.5973) | 1.1332*(0.6215) |
Connect | 0.1498 **(0.0110) | 0.0155 *(0.0052) | 0.0095 **(0.0066) | 0.1423 **(0.0085) |
Control | −0.5270 **(0.0276) | −0.0856 **(0.0132) | −0.0713 **(0.0174) | −0.1514 **(0.0205) |
MeanDepth | −0.7167 **(0.1034) | −0.0539 *(0.0492) | −0.0667 * (0.0715) | −0.1264 *(0.0707) |
GInteg | −1.0927 **(0.1988) | −0.0689(0.0946) | −0.0390 *(0.1333) | −0.1476 *(0.1381) |
LInteg | 0.2241 **(0.0341) | 0.1411 **(0.0162) | 0.1848 **(0.0247) | 0.0191 *(0.0252) |
Log-likelihood | −21,314.4 | −14,534.5 | −14,522.97 | −14,641.9 |
Mean dependent var | 2.64167 | 2.64167 | 2.641669 | 2.64167 |
Akaike info criterion | 42,640.7 | 29,083 | 29,057.9 | 29,297.8 |
R² | 0.0769 | 0.7914 | 0.7940 | 0.7872 |
Robust Lagrange multiplier test | 13,559.76 (p: 0.000) | 13,582.77 (p: 0.000) | 13,011.02 (p: 0.000) | |
Breusch–Pagan test | 88.5621 (p-value: 0.000) | 64.50 (p: 0.000) | 65.7735 (p: 0.000) | 102.93 (p: 0.000) |
Variable | Model | |||
---|---|---|---|---|
OSL | SLM | SEM | SDM | |
ρ | - | 0.8966 ***(0.0045) | 0.8965 ***(0.0046) | |
λ | - | - | 0.9074 ***(0.0044) | 0.9231 ***(0.0038) |
Constant | 7.7901 ***(0.8715) | 0.2493(0.4093) | 2.1232 ***(0.5777) | 1.4183 *(0.5995) |
Connect | 0.1456 ***(0.0107) | 0.0133 **(0.0050) | 0.0052(0.0064) | 0.1409 ***(0.0081) |
Control | −0.5089 ***(0.0271) | −0.07843 ***(0.0128) | −0.0607 ***(0.0169) | −0.1446 ***(0.01971) |
MeanDepth | −0.7514 ***(0.1013) | −0.04548(0.0476) | −0.0107(0.0692) | −0.1562 *(0.0682) |
GInteg | 1.2782 ***(0.19475) | −0.07140(0.0913) | 0.0155(0.1289) | 0.2252 *(0.1332) |
LInteg | 0.2124 ***(0.0334) | 0.1312 ***(0.0157) | 0.1807 ***(0.0239) | 0.0125 *(0.0243) |
Log-likelihood | −21,093.7 | −14,173.3 | −14,168.6 | −14,254.5 |
Mean dependent var | 2.5086 | 2.5086 | 2.5086 | 2.5086 |
Akaike info criterion | 42,199.4 | 28,360.6 | 28,349.1 | 28,523.1 |
R² | 0.071 | 0.7961 | 0.7982 | 0.793 |
Robust Lagrange multiplier test | 13,840.81 (p: 0.000) | 13,850.29 (p: 0.000) | 13,338.72 (p: 0.000) | |
Breusch–Pagan test | 83.94 (p: 0.000) | 54.78 (p: 0.000) | 54.06 (p: 0.000) | 100.67 (p: 0.000) |
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Li, X.; Qian, Y.; Zeng, J.; Wei, X.; Guang, X. The Influence of Strip-City Street Network Structure on Spatial Vitality: Case Studies in Lanzhou, China. Land 2021, 10, 1107. https://doi.org/10.3390/land10111107
Li X, Qian Y, Zeng J, Wei X, Guang X. The Influence of Strip-City Street Network Structure on Spatial Vitality: Case Studies in Lanzhou, China. Land. 2021; 10(11):1107. https://doi.org/10.3390/land10111107
Chicago/Turabian StyleLi, Xin, Yongsheng Qian, Junwei Zeng, Xuting Wei, and Xiaoping Guang. 2021. "The Influence of Strip-City Street Network Structure on Spatial Vitality: Case Studies in Lanzhou, China" Land 10, no. 11: 1107. https://doi.org/10.3390/land10111107
APA StyleLi, X., Qian, Y., Zeng, J., Wei, X., & Guang, X. (2021). The Influence of Strip-City Street Network Structure on Spatial Vitality: Case Studies in Lanzhou, China. Land, 10(11), 1107. https://doi.org/10.3390/land10111107