In the experimental design, 14 independent variables were initially selected, with the dependent variable being daily morning rush hour passenger flow from 1 January to 25. First, multiple collinearity tests and spatial correlation analyses were conducted on the independent variables to evaluate their linear relationships and spatial data interdependencies. Based on these findings, a Multi-Scale Geographical Weighted Regression (MGTWR) model was further developed to reveal the spatiotemporal heterogeneity effects of each variable on the dependent variable.
5.3. Results of the MGTWR Model at URT Site
Based on the selected 14 independent variables and 1 dependent variable, we constructed the MGTWR combined model (MGTWR). The exponential spatiotemporal weight function was selected, with the parameter
in the convergence criterion SOC set to
. The influence coefficients of each variable in the model are shown below. The statistics in
Table 6 include: minimum value, lower quartile, median, upper quartile, and maximum value.
The regression results of the model reveal that all eight independent variables—catering services, living services, accommodation services, healthcare services, business residences, transportation facilities, and population distribution—display positive parameter estimates. Notably, business residences exhibit the highest values across all indicators, indicating their significant positive correlation with morning rush hour passenger flow. This demonstrates that expanded availability of these service facilities enhances regional appeal and functionality, thereby driving increased passenger traffic during peak hours.
Contrary to expectations, the parameter estimates for five independent variables—shopping services, sports and leisure facilities, scenic attractions, government agencies and social organizations, as well as science, education, culture, and financial insurance services—all showed negative correlations. Notably, all indicators related to scenic attractions ranked lowest, indicating that increased availability of these services had a suppressive effect on morning rush hour passenger flow, with scenic attractions demonstrating the most significant impact. This inverse relationship suggests that expanding these service types may not effectively boost passenger numbers during peak hours under specific spatiotemporal conditions. Furthermore, variations in regional distribution patterns or differences in passenger demand patterns could potentially lead to reduced traffic volumes.
Furthermore, the parameter estimates of the corporate enterprise variable exhibit both positive and negative values under different scenarios, indicating a complex dual effect on morning rush hour passenger flow. This bidirectional influence may stem from significant temporal and spatial variations in the corporate enterprise’s impact, reflecting how its role in passenger flow dynamics shifts across contexts. This demonstrates the spatiotemporal heterogeneity inherent in the model.
In conclusion, these regression results not only reveal the complex relationship between independent variables and dependent variables, but also emphasize that the influence of variables may be nonstationary or heterogeneous when considering the time-space dimension.
To investigate the spatiotemporal heterogeneity of morning rush-hour passenger flow at URT stations in built environments, this study analyzes three representative influencing factors: First, commercial-residential properties demonstrate significant positive effects on station entry passenger flow; second, scenic attractions exhibit strong inhibitory effects on passenger flow; third, corporate entities show complex spatiotemporal variations due to their non-stationary characteristics across different time periods. Through temporal-spatial analysis of these variables’ coefficients, we aim to reveal the spatiotemporal differences and underlying mechanisms of built environment elements affecting URT passenger flow during peak hours.
- (1)
Time characteristic analysis of the influence coefficient of specific variables
In order to explore the variation trend of the influence coefficient of the independent variable company enterprise over different times, the average coefficient values of each station from 7 January (Monday) to 13 January (Sunday) were selected, and the results are shown in
Figure 1:
As shown in
Figure 1a, the corporate presence variable exhibits positive coefficients from Monday to Thursday, with its impact peaking on Tuesday. The weekday coefficient significantly outperforms weekend levels, demonstrating that corporate establishments around stations substantially boost morning rush hour passenger flow during these hours. However, the coefficient turns negative and shows a continuous decline from Friday to Sunday, indicating that corporate presence acts as a counterforce during weekends. Most companies are closed during weekends, reducing commuting demand and causing a sharp drop in URT morning peak passenger numbers. Weekend travel patterns predominantly consist of non-work-related activities like leisure, socializing, and shopping. These dispersed demands lack the concentration seen during weekdays, thus failing to effectively drive morning peak traffic.
As shown in
Figure 1b, commercial residential variables demonstrate significant positive impacts on both weekday and weekend morning rush hour station passenger flows. Specifically, the influential coefficients of commercial residential variables show a gradual upward trend throughout the week, reaching their peak on Sundays. This phenomenon reflects the continuous and time-sensitive effects of commercial residential areas as built environment elements on public transportation demand across different periods. During weekdays, residents in commercial residential zones exhibit regular commuting patterns, leading to a gradual increase in morning rush hour passenger flows over time, demonstrating strong connectivity with surrounding transportation systems. On weekends, despite most workplaces being closed, residents within these zones maintain robust travel demands for leisure, entertainment, and social activities, driving increased passenger flow. Particularly on Sundays, when influencing factors reach their maximum value, this may be closely related to intensified weekend activity concentration and higher frequency of outings, highlighting the unique role of commercial residential areas in URT (Urban Rail Transit) passenger flow during non-working days. Overall, commercial residential variables not only significantly impact morning rush hour commuter flows during weekdays but also amplify URT passenger demand through diversified resident activities during weekend hours. This pattern reveals the complex influence of commercial residential variables on URT morning rush hour station passenger flows.
As shown in
Figure 1c, scenic area variables exhibit a negative impact on both weekday and weekend passenger flows. Specifically, the negative coefficient of scenic area variables on passenger flow reaches its minimum value on Tuesday, indicating that during this period, the variable exerts the most significant suppression effect on URT morning peak passenger flow. Moreover, the influential coefficient on weekdays is significantly lower than that on weekends, suggesting that scenic area variables have a more pronounced suppressive effect on weekday traffic demand. Furthermore, the degree of negative impact on the URT morning peak passenger flow shows notable temporal variations across different periods.
This phenomenon can be analyzed from multiple perspectives. Firstly, scenic area variables significantly influence passenger leisure and tourism activities. During weekdays, when most people are engaged in regular work routines, travel demand remains relatively stable and limited, resulting in a smaller negative impact of scenic area variables on URT morning peak passenger flow. In contrast, weekends, characterized by widespread rest periods, see concentrated travel demands from residents, particularly increased tourism demand for scenic areas. This heightened demand volatility amplifies weekend URT morning peak passenger flow, thereby weakening the negative impact of scenic area variables on passenger traffic.
It is worth noting that Tuesday, being the mid-point of the week, typically sees relatively stable passenger flow during most weekdays with sparse tourism demand and lower visitor numbers at scenic spots. This could explain why the negative impact coefficient of scenic spot variables shows minimal influence on passenger flow during this period. The varying negative coefficients across different time periods reflect shifts in residents’ travel habits, social activity patterns, and transportation demands.
- (2)
Spatial characteristic analysis of influence coefficients of specific variables
ArcGIS 10.2 was employed to conduct spatial visualization analysis of morning rush hour passenger flow patterns at stations during weekday and non-working day periods. As shown in
Figure 2a,b, corporate variables significantly boost URT (Urban Rail Transit) ridership at most stations during weekdays. However, during non-working days, these corporate variables suppress morning rush hour passenger flow across all stations, with the suppression intensity gradually decreasing from central to peripheral areas, reaching its minimum at northeastern regional stations. Spatially, the impact of corporate variables shows distinct gradient characteristics across different regions. Stations located in urban centers and commercial hubs demonstrate more pronounced effects from corporate variables, particularly during working hours. During non-working days, while passenger flow decreases substantially at these stations, the inhibitory effect diminishes as the distance from the city center increases. This indicates that travel patterns in peripheral areas may be more influenced by alternative factors such as leisure activities.
In terms of spatial dimensions, there are significant differences in passenger travel patterns between working and non-working days. Specifically, as shown in
Figure 3a,b, the promoting effect of commercial residential variables on URT (urban rail transit) trips during morning rush hours exhibits distinct spatiotemporal variations across different time periods and regions.
During weekday hours, the business residential variables show weaker boosting effects on morning rush hour passenger flow in urban core areas, while demonstrating more significant positive impacts at stations farther from central districts—particularly at terminal line endpoints. Specifically, stations located at the northernmost positions exhibit the most pronounced effects. This phenomenon likely stems from commuting demands during weekdays, especially for office workers residing in peripheral areas whose travel needs peak during morning rush hours. Consequently, business residential variables around these stations exert stronger demand stimulation effects on URTs (Urban Transport Rides).
During non-working days, the spatial distribution of business residential variables’ impact on URT morning rush hour passenger flow shows a reverse pattern compared to working days. Compared with weekdays, the positive influence coefficient of business residential variables on morning rush hour passenger flow at eastern regional stations is relatively smaller, while the positive influence coefficient at central regional stations reaches its peak. This indicates that during non-working days, the promotional effect of business residential variables on morning rush hour passenger flow at central regional stations is stronger than in other areas. This is because passenger mobility during non-working days is more driven by leisure activities, shopping, and other social engagements, which exhibit greater dispersion and lack of concentration.
From a spatial perspective, the impact of scenic spots on URT’s morning rush hour station passenger flow demonstrates significant spatiotemporal variations, with distinct differences observed between weekdays and non-working days. As shown in
Figure 4a,b, scenic areas exhibit a suppressive effect on station passenger flow across all stations during both working and non-working periods. However, the spatial distribution patterns of this inhibitory effect show notable temporal variations.
During weekday hours, scenic area variables exhibit strong spatial heterogeneity in morning rush hour passenger flow at stations. As commuting demands weekday travel, the inhibitory effect of scenic area variables on morning peak passenger flow is most pronounced in urban center areas, particularly around tourist attractions. During weekdays, morning peak passenger flow tends to be more dispersed, primarily consisting of commuters rather than tourists. In contrast, stations farther from city centers—especially those located at route endpoints—show weaker inhibitory effects. Particularly at the northernmost sections of routes, the impact of scenic area variables on passenger flow remains relatively minimal. This phenomenon reflects differences in commuting patterns during workdays.
During non-working days, the impact of scenic area variables shows a completely different trend. Particularly in central areas of tourist attractions like West Lake, the negative influence coefficient of scenic area variables on morning rush hour passenger flow at regional stations peaks and gradually increases toward peripheral areas, reaching its maximum in the northeastern route regions. This indicates that during non-working days, scenic area variables suppress morning rush hour passenger flow across all stations, with weakening intensity from the center outward, and minimal impact on northeastern regional stations. This phenomenon closely aligns with the characteristics of non-working day travel demand: passenger flow primarily depends on the appeal of scenic centers, while peripheral areas exhibit relatively weaker attractiveness, resulting in limited passenger growth at terminal stations.
- (3)
Model comparison
To verify the performance advantages of the constructed MGTWR model over other models, this study selected the GTWR model and conducted a systematic comparison using three metrics: R
2, AICc, and RSS. As shown in
Table 7, the MGTWR model demonstrated a 2.94% improvement in R
2 compared to the GTWR model, indicating its significant advantage in data fitting and ability to accurately capture underlying patterns. Additionally, the MGTWR model showed a 311-point reduction in AICc compared to the GTWR model, highlighting its higher efficiency in data interpretation and better balance between model complexity and fit. Furthermore, the MGTWR model reduced RSS by 14,170,4440 points compared to the GTWR model, significantly lowering the sum of squared residuals and further validating its improved prediction accuracy. In conclusion, considering these metrics comprehensively, the MGTWR model not only exhibits remarkable improvements in fitting, model interpretability, and prediction accuracy compared to the GTWR model but also demonstrates stronger adaptability and higher effectiveness when handling spatiotemporal data.