Study on the Correlation Characteristics between Scenic Byway Network Accessibility and Self-Driving Tourism Spatial Behavior in Western Sichuan
Abstract
:1. Introduction
2. Literature Review
2.1. Scenic Byway
2.2. Accessibility
2.3. Self-Driving Spatial Behavior
2.4. Transportation and Tourism
3. Materials and Methods
3.1. Study Area
3.2. Data Sources
3.3. Research Methods
3.3.1. Accessibility Calculation
3.3.2. Social Network Analysis (SNA)
- Centrality
- 2.
- Structural holes
3.3.3. Bivariable Moran’s I
3.3.4. Spatial Durbin Model
4. Results
4.1. Calculation of Scenic Byway Accessibility
4.2. Analysis of Self-Driving Travel Spatial Behavior on Scenic Byways
4.2.1. Overall Network Analysis
- (a)
- Overall Density and Clustering Coefficient: The overall density of the tourism flow network is 0.233, indicating a relatively low density. The clustering coefficient is 0.423, suggesting a higher level of clustering within the network.
- (b)
- Coverage and Connectivity: The theoretical number of tourism flow paths in the network is 11,025, but only 2638 paths were observed in reality, accounting for 23.93%. This indicates that the coverage of the network is extensive but relatively concentrated in a few core cities. The network exhibits a low level of connectivity and weak links between nodes and towns.
- (c)
- Degree Centrality: The outward degree centrality is 85.41%, the inward degree centrality is 83.65%, and the intermediate degree centrality is 26.83%. The higher outward degree centrality indicates an imbalance in the overall network structure, with significant aggregation and diffusion effects of core tourism nodes. The diffusion effect is better than the aggregation effect, and there is a clear spatial clustering trend in the network. Most nodes have one-way tourism connections, and there are several core nodes in the network.
- (d)
- Intermediate Degree Centrality: The relatively low value of the intermediate degree centrality suggests that most nodes are connected to only a few core nodes in terms of tourism flows. These nodes hold strong control over the tourism connections of other districts and counties. However, such nodes are relatively few, indicating a weak overall transit capacity in the self-driving tourism flow network in Western Sichuan. Transfers require the aggregation and diffusion of multiple intermediate nodes, which are generally the core nodes in the network structure. This indicates a core–periphery structure in the network.
4.2.2. Self-Driving Tourism Network Centrality Analysis
4.2.3. Node Structural Characteristics Analysis
4.3. Bivariate Global Autocorrelation Tests
4.4. Spatial Durbin Models Empirical Analysis
5. Discussion
5.1. Scenic Byway Accessibility
5.2. Network Structure Characteristics of Self-Driving Tourism Flows on Scenic Byways
5.3. Spatial Spillover Effects between Scenic Byway Network Accessibility and Self-Driving Spatial Behavior
6. Conclusions
6.1. Conclusions
- (1)
- The high accessibility areas of the scenic byways in Western Sichuan exhibited a spatial structure of “two axes and four belts”. The coordination of accessibility among the “core–edge” regions varied significantly. While the core cities of Chengdu and Ya’an had relatively well-developed scenic byway accessibility, most areas in the region required further connectivity and optimization of the scenic byway road network. The accessibility of scenic byway nodes also followed a “core–edge” spatial structure, gradually decreasing outward from Chengdu and Ya’an. There was significant spatial variation in the accessibility level within the study area, with the majority of regions having moderate to low accessibility levels, accounting for approximately 65.85%.
- (2)
- The spatial behavior network of self-driving tourism in Western Sichuan exhibited characteristics of relatively low overall network density, high clustering coefficient, and short average path length, indicating a significant small-world phenomenon. There was an observable imbalance in the indicators of each network node, with core nodes showing significant clustering tendencies. Nodes with strong outward centrality also exhibited strong inward centrality.
- (3)
- The overall association pattern between the accessibility of scenic byways in Western Sichuan and the spatial behavior of self-driving tourism demonstrated clustering and dependence characteristics, with spatial effects playing a crucial role. There was a spatial spill-over effect between the level of scenic byway accessibility and self-driving tourism behavior. Regional efficacy scale had a significant positive direct effect and a negative spillover effect. For every 1% increase in local efficacy scale, it promoted a 0.222% increase in local accessibility and a −0.02% decrease in neighboring areas’ accessibility. Local efficacy scale was an important factor in promoting the improvement of local scenic byway infrastructure and the potential growth of scenic byway accessibility. However, it had an inhibiting effect on improving accessibility in neighboring areas. Betweenness centrality had a positive direct effect on accessibility and a significant positive spillover effect. For every 1% increase in local betweenness centrality, it promoted a 0.038% increase in local accessibility and a 1.320% increase in neighboring areas’ accessibility, strengthening the connectivity between regions from “weak relationships” to “strong relationships”.
6.2. Implications
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Outward Closeness Centrality | Inward Closeness Centrality | Betweenness Centrality | Efficacy Scale | |
---|---|---|---|---|
scenic byway route accessibility | 0.124 | 0.108 | 0.164 | 0.220 |
scenic byway node accessibility | 0.149 | 0.115 | 0.305 | 0.303 |
scenic byway global accessibility | 0.161 | 0.129 | 0.293 | 0.314 |
Route Accessibility | Node Accessibility | Scenic Byway Accessibility | ||||
---|---|---|---|---|---|---|
SDM | SDEM | SDM | SDEM | SDM | SDEM | |
CC,in | 0.941 ** | 0.919 ** | −0.787 * | −0.759 * | −0.096 | −0.088 * |
CC,out | −1.180 ** | −1.087 *** | 0.959 ** | 0.917 ** | 0.137 | 0.124 |
Cb | 0.179 *** | −0.171 *** | 0.137 ** | 0.169 ** | 0.032 ** | 0.038 * |
ES | 0.961 *** | 0.836 *** | −0.144 * | −0.173 * | 0.224 *** | 0.222 ** |
W * CC,in | 6.331 | 2.160 * | −20.109 *** | −18.178 *** | −10.944 ** | −10.058 ** |
W * CC,out | −9.951 ** | −4.930 * | 21.366 *** | 19.760 *** | 10.660 ** | 9.784 ** |
W * Cb | −1.658 ** | −1.540 *** | 2.778 *** | 3.239 *** | 1.371 * | 1.427 ** |
W * ES | 9.616 *** | 7.172 *** | −4.548 ** | −4.808 *** | −0.098 | 0.022 * |
Log-L | 37.942 | 36.625 | 36.012 | 36.468 | 43.401 | 43.421 |
R2 | 0.771 | 0.758 | 0.813 | 0.826 | 0.838 | 0.882 |
AIC | −53.855 | −51.251 | −50.025 | −52.935 | −64.803 | −64.843 |
BIC | −34.771 | −34.136 | −30.910 | −31.821 | −45.689 | −45.728 |
Route Accessibility | Node Accessibility | Scenic Byway Accessibility | |||||
---|---|---|---|---|---|---|---|
SDM | SDEM | SDM | SDEM | SDM | SDEM | ||
Direct effect | CC,in | 0.791 * | 0.919 * | −1.367 * | −0.759 * | −0.167 | −0.088 * |
CC,out | −0.929 ** | −1.087 *** | 1.577 * | 0.917 *** | 0.206 * | 0.124 * | |
Cb | −0.136 *** | −0.171 *** | 0.218 ** | 0.169 *** | 0.0414 * | 0.038 * | |
ES | 0.708 *** | 0.836 *** | −0.274 | −0.173 | 0.2234 ** | 0.222 ** | |
Indirect effect | CC,in | 1.799 | 1.998 | −36.251 * | −16.815 *** | −12.0294 * | −9.303 ** |
CC,out | −3.022 * | −4.560 | 38.624 * | 18.277 *** | 11.7254 * | 9.050 ** | |
Cb | −0.515 * | −1.425 ** | 5.032 * | 2.995 *** | 1.5104 ** | 1.320 ** | |
ES | 3.037 *** | 6.633 *** | −8.168 * | −4.447 *** | −0.067 | −0.020 * | |
Total effect | CC,in | 2.590 * | 2.917 | −37.618 * | −17.573 *** | −12.1964 * | −9.391 ** |
CC,out | −3.951 *** | −5.647 * | 40.201 * | 19.194 *** | 11.9314 * | 9.174 ** | |
Cb | −0.651 ** | −1.596 *** | 5.250 ** | 3.165 *** | 1.5514 ** | 1.357 ** | |
ES | 3.745 *** | 7.469 *** | −8.443 * | −4.620 *** | 0.156 | 0.202 * |
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Zhang, B.; Zhou, L.; Yin, Z.; Zhou, A.; Li, J. Study on the Correlation Characteristics between Scenic Byway Network Accessibility and Self-Driving Tourism Spatial Behavior in Western Sichuan. Sustainability 2023, 15, 14167. https://doi.org/10.3390/su151914167
Zhang B, Zhou L, Yin Z, Zhou A, Li J. Study on the Correlation Characteristics between Scenic Byway Network Accessibility and Self-Driving Tourism Spatial Behavior in Western Sichuan. Sustainability. 2023; 15(19):14167. https://doi.org/10.3390/su151914167
Chicago/Turabian StyleZhang, Bo, Liangyu Zhou, Zhiwen Yin, Ao Zhou, and Jue Li. 2023. "Study on the Correlation Characteristics between Scenic Byway Network Accessibility and Self-Driving Tourism Spatial Behavior in Western Sichuan" Sustainability 15, no. 19: 14167. https://doi.org/10.3390/su151914167
APA StyleZhang, B., Zhou, L., Yin, Z., Zhou, A., & Li, J. (2023). Study on the Correlation Characteristics between Scenic Byway Network Accessibility and Self-Driving Tourism Spatial Behavior in Western Sichuan. Sustainability, 15(19), 14167. https://doi.org/10.3390/su151914167