The Influence of Built-Environment Factors on Connectivity of Road Networks in Residential Areas: A Study Based on 204 Samples in Nanjing, China
Abstract
:1. Introduction
2. Literature Review
2.1. Street Pattern and Connectivity (“Grid” or “Tree” Road Network)
2.2. Road Network Density and Road Connectivity
2.3. Relevant Study on Connectivity Measurement
3. Analysis Method and Framework
3.1. Research Object and Area
3.2. Data Acquisition Method
- Using the API (application programming interface) interface of a public map website and the national geographic database to obtain the road network data of the research area and the location coordinates of the center point of the residential area sample and screening samples of research significance.
- Using a satellite map as the base map in ArcGIS software to draw the urban road network map of the research area and establishing a database for the sample of the residential area, then inputting the basic information and coordinate positions.
- Drawing a road network map of the residential area containing points (such as intersections, entrances and exits) and lines (residential roads) for each sample, then connecting it spatially with the urban road network map in ArcGIS software (Figure 1); establishing a network analysis dataset in ArcGIS software and using the spatial analysis tool to count and calculate the road network shape indicators of the residential area sample. For example, by means of spatially analyzing the number of line elements connected to each node element, we can distinguish and count the number of culs-de-sac, T-junctions, and X-junctions; finally, summarizing and graphical representation are performed in Excel.
- In the ArcGIS software, the path analysis tool is used to calculate the linear distance and the shortest path distance (D) from the geometric central point to the adjacent city intersection of each residential area sample, and the PRD is calculated.
3.3. Analysis Framework
4. Analysis and Discussion
4.1. Quantitative Calculation of Indicators of Built Environment of Residential Areas
4.1.1. Number of Entrances and Exits
4.1.2. Scale of Residential Areas
4.1.3. Road Network Density
4.1.4. Combined Plot
4.1.5. Node Gram
4.1.6. Link–Node Ratio
4.2. Quantitative Calculation of Road Network “Connectivity” Index
4.2.1. Path Distance (D)
4.2.2. Pedestrian Route Directness (PRD)
5. Establish a Predictive Analysis Model
5.1. Pearson Correlation Analysis
5.2. Multiple Linear Regression Analysis to Establish a Comprehensive Model of Connectivity
5.2.1. Establish Equation of Path Distance
5.2.2. Establish Equation of Pedestrian Route Directness
- The area size of the residential area and road network complexity have the greatest impact on the path distance, and they are positively correlated. The larger the scale is, and the more plentiful the internal elements are, the larger the egression distance will be;
- The density of the residential road network elements affects the path distance secondarily and is negatively correlated. The denser the distribution (increase in the intersection density, road network density, and the number of entrances and exits), the shorter the travel distance will be, and the accessibility can be improved;
- The boundary shape of the residential area is positively correlated with the path distance, indicating that the larger the ratio of long and short sides, the closer the shape of the residential area is to the long strip, and the longer the travel distance; the connectivity of the residential road network is negatively correlated with the path distance, and the better the connectivity (the higher the X ratio, the higher the cell ratio), the shorter the travel distance.
5.3. Binary Logistic Regression Analysis and Connectivity Judgement Model
6. Conclusions and Suggestions for Improvement
6.1. Conclusions
- Although road network density inside the residential area is high, the status quos generated by the closed residential area mode, such as the large scale of residential area, few entrances and exits, low road connectivity, low connectivity between internal roads and urban roads, and internal roads unable to participate in urban road traffic, are triggering traffic congestions in urban roads.
- The path distance D is significantly related to the size of the residential area. The larger the residential area, the further the travel distance. More than 60% of the residential areas in the three districts mentioned above in Nanjing have a travel distance of more than 450 m, making it difficult for residents to walk.
- The directness levels of the residential road network in the three districts are all unsatisfactory, and the average value is greater than 1.5. More than 50% of the residential areas in these three districts have a PRD greater than 1.6, indicating the presence of significant travel detours.
- Pearson linear correlation analysis shows that the length of the long side, the area size, and the total road length are significantly correlated with the path distance (D) index, whereas the number of entrances and exits, the intersection density, and the X ratio are significantly correlated with pedestrian route directness (PRD).
- The results of multiple regression analysis show that the area size of the residential area and road network complexity have the greatest impact on the path distance, and they are positively correlated. The larger the scale, and the more plentiful the internal elements, the larger the egression distance will be; the density of residential road network elements affects the path distance secondarily, and it is negatively correlated.
- The denser the distribution (increase in the intersection density, road network density, and the number of entrances and exits), the shorter the travel distance will be, and the accessibility can be improved.
- The boundary shape of the residential area is positively correlated with the path distance, indicating that the larger the ratio of long and short sides, the closer the shape of the residential area is to the long strip, and the longer the travel distance.
- The connectivity of the residential road network is negatively correlated with the path distance, and the better the connectivity (the higher the X ratio, the higher the cell ratio), the shorter the travel distance.
- The results of binary logistic regression analysis show that the level of connectivity is positively correlated with the number of entrances and exits, the area size, the intersection density, and the X ratio, and it is negatively correlated with the length of the long side, the length of the short side, and the culs-de-sac. The path distance and PRD of 204 residential areas are directly measured and tested, and the correct rate of the prediction model is about 80%.
6.2. Applications
- First, in terms of openings and borders, the bypass distance can be effectively reduced by increasing the number of entrances and exits, and the utilization efficiency of the road network in residential areas can be improved. The result of multiple linear regression shows that the square residential area is more conducive to shortening the travel distance than the long strip residential area. Therefore, in the planning process, the boundary length and proportion of the residential area should be strictly controlled to avoid using the narrow and long marginal plots as residential land and reduce the practice of incorporating the urban landscape belt into the residential side.
- Second, in terms of scale and density, the planning department should properly control the size of the residential area within a certain range and require designers to ensure the connectivity level of the road network within the residential area, so as to effectively reduce the travel distance and promote the occurrence of walking behavior. When the area of the residential area is limited, increasing the number of intersections can create more path choices, and giving priority to increasing X intersections has a more obvious effect on improving connectivity. Under the condition that the road form is limited, appropriately reducing the residential area can also achieve the effect of improving the intersection density, but it should ensure that the overall traffic and functional layout are not affected.
- Third, in terms of morphology, the results of correlation analysis and mathematical modeling show that the road network connectivity of a grid shape is better than that of a tree shape. During the design process, connectivity can be improved by appropriately increasing the X-shape ratio. The most common method is to increase the connectivity of the road network by increasing the connection of a parallel road network through branch roads or converting some T-intersections into X-intersections. On the other hand, in the design process of ring roads and culs-de-sac, the number of culs-de-sac is generally controlled to improve connectivity by reducing culs-de-sac or making the culs-de-sac into open loops. However, it is also found in the research that the culs-de-sac have the function of improving privacy in the design of residential areas. Therefore, in the process of design optimization, the roads in front of residential buildings should not be reduced blindly, but the culs-de-sac that are discontinuous due to road layout defects or occupy unnecessary land should be optimized.
6.3. Limitations
6.4. Further Works
- The calculation method of the size of the residential area needs great improvement: “length of the long side * length of the short side = area of the residential area” is the maximum diagonal method of the residential area [47].
- In view of the reality in China, a distinction should be made between two types of travel modes when calculating entrances and exits: driving and walking. It is recommended to increase the density of the calculation of entrances and exits instead of a simple quantity index of entrances and exits, as well as to distinguish the density of entrances and exits for cars and pedestrians.
- Only the relevant indicators of the road network pattern of the built-environment indicators are measured, and the building capacity index of the residential area, such as the plot ratio, building density, and resident population, are not included. It is recommended to add this part of the calculation of the built-environment indicators.
- In the calculation of road network density, only the road network density in the residential area was calculated previously, and the road connectivity value of the block scale (1–3 km radius) was not calculated. It is recommended to increase the road network density calculation at the block level.
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Jianye District | Jiangning District | Pukou District | |
Completion time | 2006–2016 | 1998–2010 | 2010–2016 |
Planning mode | Exploitation before planning | Planning before exploitation | Old renewal |
Mode | Blocks | Neighborhood units | Housing estates |
Scale | Medium plot | Oversized and large plot | Oversized and large plot |
Residential type | High-rise and a few multi-story buildings | Multi-story and a few high-rise buildings | Multi-story and a few high-rise buildings |
Number of residential areas | 76 | 61 | 67 |
Variable | Indicators | Variable | Indicators |
N1 | number of entrances and exits | N10 | intersection density |
N2 | length of the long side of the residential area | N11 | number of X-junctions |
N3 | length of the short side of the residential area | N12 | number of T-junctions |
N4 | ratio of the long and short sides | N13 | X ratio |
N5 | area size of the residential area | N14 | cell road |
N6 | total road length | N15 | cul-de-sac |
N7 | road network density | N16 | cell ratio |
N8 | number of nodes | D | path distance indicator |
N9 | number of links | PRD | pedestrian route directness |
Number of Residential Areas | Minimum(M) | Maximum(X) | Average(E) | SD | |
Jianye District | 76 | 1 | 6 | 2.97 | 1.296 |
Jiangning District | 61 | 1 | 6 | 3.44 | 1.409 |
Pukou District | 67 | 1 | 8 | 3.19 | 1.417 |
Total | 204 | 1 | 8 | 3.19 | 1.377 |
Number of Residential Areas | Minimum (M) | Maximum (X) | Average(E) | Standard Deviation | |
Jianye District | 76 | 0.0223 | 0.1893 | 0.070612 | 0.038861 |
Jiangning District | 61 | 0.0325 | 0.6051 | 0.149537 | 0.127645 |
Pukou District | 67 | 0.033 | 0.4611 | 0.127061 | 0.083733 |
Total | 204 | 0.0223 | 0.6051 | 0.112752 | 0.093767 |
Number of Residential Areas | Minimum(M) | Maximum(X) | Average(E) | Standard Deviation | |
Jianye District | 76 | 10 | 49 | 26.42 | 8.849 |
Jiangning District | 61 | 11 | 44 | 27.2 | 8.54 |
Pukou District | 67 | 8 | 39 | 21.59 | 6.779 |
Total | 204 | 8 | 49 | 25.07 | 8.454 |
Number of Residential Areas | Minimum(M) | Maximum(X) | Average(E) | Standard Deviation | |
Jianye District | 76 | 8 | 67 | 23.17 | 11.769 |
Jiangning District | 61 | 15 | 152 | 44.25 | 26.99 |
Pukou District | 67 | 10 | 70 | 27.12 | 13.292 |
Total | 204 | 8 | 152 | 30.77 | 20.113 |
Path Distance | Jianye District | Jiangning District | Pukou District | |||
<200 | 6 | 7.89% | 1 | 1.64% | 1 | 1.49% |
200 ≤ 400 | 45 | 59.21% | 27 | 44.26% | 24 | 35.82% |
400 ≤ 600 | 24 | 31.58% | 22 | 36.07% | 26 | 38.81% |
600 ≤ 800 | 0 | 0.00% | 8 | 13.11% | 10 | 14.93% |
800 ≤ 1000 | 1 | 1.32% | 3 | 4.92% | 6 | 8.96% |
Total | 76 | 100.00% | 61 | 100.00% | 67 | 100.00% |
PRD | Jianye District | Jiangning District | Pukou District | |||
<1.2 | 1 | 1.32% | 0 | 0.00% | 1 | 1.49% |
1.2 ≤ 1.4 | 6 | 7.89% | 16 | 26.23% | 11 | 16.42% |
1.4 ≤ 1.6 | 21 | 27.63% | 19 | 31.15% | 11 | 16.42% |
1.6 ≤ 1.8 | 20 | 26.32% | 9 | 14.75% | 21 | 31.34% |
1.8 ≤ 2.0 | 13 | 17.11% | 7 | 11.48% | 7 | 10.45% |
2.0 ≤ 3.0 | 14 | 18.42% | 9 | 14.75% | 13 | 19.40% |
3.0 ≤ 5.0 | 1 | 1.32% | 1 | 1.64% | 3 | 4.48% |
Total | 76 | 100.00% | 61 | 100.00% | 67 | 100.00% |
PRD | Path Distance | |||
Pearson | Sig. | Pearson | Sig. | |
N1 | −0.330 ** | 0.000 | −0.248 ** | 0.000 |
N2 | −0.051 | 0.466 | 0.647 ** | 0.000 |
N3 | 0.020 | 0.772 | 0.597 ** | 0.000 |
N4 | −0.101 | 0.151 | 0.098 | 0.165 |
N5 | −0.042 | 0.554 | 0.618 ** | 0.000 |
N6 | −0.057 | 0.416 | 0.597 ** | 0.000 |
N7 | −0.157 * | 0.025 | 0.434 ** | 0.000 |
N8 | −0.164 * | 0.019 | 0.415 ** | 0.000 |
N9 | −0.064 | 0.360 | −0.381 ** | 0.000 |
N10 | −0.189 ** | 0.007 | −0.406 ** | 0.000 |
N11 | −0.185 ** | 0.008 | 0.302 ** | 0.000 |
N12 | −0.089 | 0.207 | 0.422 ** | 0.000 |
N13 | −0.274 ** | 0.000 | −0.102 | 0.145 |
N14 | −0.139 * | 0.047 | 0.370 ** | 0.000 |
N15 | 0.011 | 0.880 | 0.481 ** | 0.000 |
N16 | −0.102 | 0.147 | −0.130 | 0.063 |
Main Component | ||||
F1 | F2 | F3 | F4 | |
N8 | 0.950 | 0.233 | 0.065 | 0.019 |
N9 | 0.946 | 0.261 | 0.008 | −0.032 |
N6 | 0.938 | −0.065 | −0.086 | −0.029 |
N14 | 0.890 | 0.293 | −0.093 | −0.100 |
N12 | 0.867 | 0.192 | −0.308 | −0.029 |
N5 | 0.866 | −0.371 | −0.104 | −0.029 |
N11 | 0.811 | 0.332 | 0.310 | −0.050 |
N2 | 0.799 | −0.310 | −0.211 | 0.406 |
N3 | 0.780 | −0.457 | −0.028 | −0.319 |
N15 | 0.674 | −0.243 | 0.518 | 0.121 |
N10 | −0.037 | 0.905 | −0.007 | −0.070 |
N7 | −0.160 | 0.852 | 0.069 | −0.066 |
N1 | 0.029 | 0.477 | 0.154 | 0.191 |
N13 | 0.185 | 0.299 | 0.768 | 0.047 |
N16 | 0.134 | 0.565 | 0.624 | −0.188 |
N4 | 0.062 | 0.182 | −0.184 | 0.947 |
Model | Standardized Coefficients | t | Sig. | Collinear Statistics | ||
Standard Error | Beta | Permission | VIF | |||
(constant) | 7.869 | 54.357 | 0.000 | |||
Principal component F1 | 7.890 | 0.617 | 12.824 | 0.000 ** | 1.000 | 1.000 |
Principal component F2 | 7.890 | −0.401 | −8.332 | 0.000 ** | 1.000 | 1.000 |
Principal component F4 | 7.890 | 0.134 | 2.792 | 0.006 ** | 1.000 | 1.000 |
Principal component F3 | 7.890 | −0.096 | −1.995 | 0.047 * | 1.000 | 1.000 |
Model | Standardized Coefficients | t | Sig. | Collinear Statistics | ||
Standard Error | Beta | Permission | B | |||
(constant) | 0.028 | 62.258 | 0.000 | |||
Principal component F2 | 0.028 | −0.237 | −3.390 | 0.001 ** | 1.000 | 1.000 |
Principal component F3 | 0.028 | −0.167 | −2.399 | 0.017 * | 1.000 | 1.000 |
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Zhang, Y.; Wang, R.; Wu, Y.; Chu, G.; Wu, X. The Influence of Built-Environment Factors on Connectivity of Road Networks in Residential Areas: A Study Based on 204 Samples in Nanjing, China. Buildings 2023, 13, 301. https://doi.org/10.3390/buildings13020301
Zhang Y, Wang R, Wu Y, Chu G, Wu X. The Influence of Built-Environment Factors on Connectivity of Road Networks in Residential Areas: A Study Based on 204 Samples in Nanjing, China. Buildings. 2023; 13(2):301. https://doi.org/10.3390/buildings13020301
Chicago/Turabian StyleZhang, Yu, Rui Wang, Yue Wu, Guanlong Chu, and Xiaomin Wu. 2023. "The Influence of Built-Environment Factors on Connectivity of Road Networks in Residential Areas: A Study Based on 204 Samples in Nanjing, China" Buildings 13, no. 2: 301. https://doi.org/10.3390/buildings13020301
APA StyleZhang, Y., Wang, R., Wu, Y., Chu, G., & Wu, X. (2023). The Influence of Built-Environment Factors on Connectivity of Road Networks in Residential Areas: A Study Based on 204 Samples in Nanjing, China. Buildings, 13(2), 301. https://doi.org/10.3390/buildings13020301