1. Introduction
Urban road networks play a crucial role in cities’ economic and social functioning. The stability of these networks is determined by critical geographic locations such as transportation hubs, commercial centers, residential areas, and essential functional areas for transportation. Critical links, often important nodes within the road network, connect multiple major traffic routes in a geographical region. These sections typically experience a high traffic flow and complex traffic organization and are prone to congestion and accidents. Accurately identifying critical links is of great significance for urban planning and travel choices due to their decisive impact on the operational efficiency of the road network.
Transportation GIS refers to the concept of applying GIS technology in transportation research within a geographic information system [
1]. An overview of GIS-based transportation applications has been provided, along with an analysis of the outcomes of spatial data operations [
2]. GIS tools are commonly used to visualize classification outcomes by applying clearly defined rules and criteria for a functional and hierarchical classification of the road network [
3]. The resilience of transportation infrastructure plays a vital role in ensuring the continuous operation of transportation services and impacts the location and capacity of critical transportation components. Points of interest (POI) are closely associated with urban development, and using GIS tools allows for the improved analysis of point-of-interest data from a spatial perspective [
4].
Currently, numerous studies have been conducted using GIS in transportation. These studies include analyses of park accessibility, transportation network accessibility, and urban road analysis using POI data. These research endeavors have provided valuable analytical tools and reference points for our assessments and decision making [
5]. Shabir employed GIS 10.7 to perform buffer analyses and analyze the accessibility of urban parks, ultimately determining their spatial distribution [
6]. Christian utilized publicly available map data and digital elevation models to analyze existing transportation supply and identify areas with poor accessibility or blind spots within the transportation network [
7]. Ahmadzai et al., on the other hand, employed geographic information systems to analyze the accessibility of road networks by evaluating the interactions between land use and transportation networks [
8]. By establishing transportation network models within GIS and assigning cost values to features, the results of accessibility assessments can be visualized, enhancing the comprehensibility of the analysis. POIs refers to locations regularly visited, seasonally visited, or based on specific events, which can serve as significant reference points for our assessments, planning, and decision making.
Due to the large scale, broad scope, and diverse nature of road networks, numerous indicators have been proposed to identify the key components that significantly impact urban networks’ efficiency and identify the critical links of urban road networks [
9]. Iraklis reviewed measures of centrality in transportation networks and assessed their suitability for transportation-network studies. He pointed out that if critical nodes can be identified, the allocation of transportation resources in urban road networks can be more rational [
10]. Li et al. proposed a method for identifying critical links considering the index of a traffic flow gap in a user equilibrium assignment model, aiming to improve the computational efficiency of the complete scanning method [
11]. Taylor et al. introduced an indicator considering generalized travel costs, which was used to evaluate the risk and vulnerability of transportation networks [
12]. Hansen’s integral accessibility indicator and the Accessibility/Remoteness Index of Australia (ARA) have also been used to identify critical links [
13]. Oliveira et al. ranked critical links through congestion and vulnerability indicators and studied the similarities and differences between ranks and ratings [
14]. Victor et al. reviewed the existing literature and evaluated the quality of the proposed indicators [
15]. Identifying critical links facilitates the assessment of the weak links of urban-road-network schemes. Therefore, carefully selecting evaluation indicators is crucial, as different indicators may yield different results in different models [
16,
17]. The identification accuracy of critical links can be improved by considering multiple levels and aspects comprehensively. Various indicators have been proposed to identify critical links of urban road networks, and the results obtained from different models also vary. Therefore, when identifying critical links, it is necessary to carefully select appropriate evaluation indicators and consider multiple factors comprehensively to enhance accuracy [
18]. In this paper, the POI data of public facilities, road density, and accessibility are regarded as essential indicators for identifying critical links in urban road networks.
There have been numerous studies on the methods to identify critical links. Munikoti et al. proposed an expandable neural-network framework to identify critical links by predicting scores of road sections in network graphs using a model [
19]. This approach can avoid excessive computational iterations. Scott et al. proposed an integrated method to identify critical links using traffic flow, link capacity, and network topology [
20]. Chalkiadakis et al. conducted simulation experiments on central urban road networks, quantifying efficiency, vulnerability, and criticality indicators and studying the impact of these indicators on traffic-network efficiency [
21]. Wang et al. proposed a global optimization-solving method to identify critical links by computing cost values in transportation networks [
22]. Feng et al. comprehensively considered static network topology and dynamic traffic flow characteristics, along with the visualization of spatial–temporal variations of traffic flow using GPS data, enabling the more accurate identification of critical links in urban road networks [
23]. Rupi et al. proposed a hybrid indicator to identify critical links by analyzing the connectivity of road sections and the impact of their discontinuation on the entire network. Amirmasoud developed a new measurement method that simultaneously considered traffic characteristics and network topology to identify critical links [
24]. Eduardo utilized TransCAD (version 7.0) with GIS features to identify critical links by analyzing congestion indicators with equal weights assigned to two attributes. However, assigning equal weights to attributes may lead to varying results. Thus, assigning weights after indicator analysis is a more rigorous analysis approach. Sohn used the distance and traffic flow volume as parameter indicators for calculating accessibility to identify critical links in Maryland’s highway network [
16]. However, in the calculation, he replaced county areas with city center points and only considered the highway road network, resulting in significant discrepancies between the computed accessibility values and actual values. In summary, a comprehensive consideration and analysis from multiple perspectives can facilitate the faster and more accurate identification of critical links [
25,
26,
27].
The commonly used evaluation indicators for critical links often reflect specific characteristics of urban road networks from a single perspective, resulting in potential discrepancies between the evaluation results and actual outcomes. Moreover, most methods for identifying critical links rely on iterative approaches, where each node in the graph is repeatedly explored, leading to high computational complexity. To address these issues, this study analyzes and evaluates the distribution of transportation infrastructure, road density, and network accessibility in the Anning District of Lanzhou City from micro, meso, and macro levels, based on GIS. Subsequently, by establishing a network topology, the comprehensive scores of each road section are calculated to identify the critical links of the urban road network. This method considers indicators from multiple levels, enabling a more accurate assessment and identification of critical links. Furthermore, this approach avoids the iterative process, reducing computational complexity. This research proposes a new method for identifying critical links of urban road networks using GIS tools and spatial analysis methods, taking Lanzhou City as an example. By conducting analysis and evaluation from micro, meso, and macro perspectives, this study provides a theoretical basis for decision making and measures related to transportation optimization, resource allocation, infrastructure planning, land use planning, and traffic safety, thus achieving sustainable and efficient urban development.
This method provides necessary theoretical support for urban planning and development by optimizing urban road planning, enhancing traffic flow, improving transportation network accessibility, and supporting decision making. By evaluating the distribution of road facilities, the road density, and network accessibility, and conducting a comprehensive assessment and ranking of critical links, this method assists planners in adapting to urban growth, reducing congestion bottlenecks, improving transportation efficiency, and providing scientific foundations for decision making. Ultimately, it contributes to cities’ sustainable development and enhances residents’ transportation quality.
Section 1 of this paper introduces the research background and comprehensively reviews domestic and international studies.
Section 2 primarily focuses on the research area and data processing, and evaluation methods for distributing public facilities, the road density, accessibility, and a total evaluation. In
Section 3, critical links are identified, and the comprehensive scores of each section are evaluated from the micro, meso, and macro levels.
Section 4 and
Section 5 are dedicated to the discussion and conclusions, respectively.
2. Materials and Methods
This study aims to identify critical links by comprehensively analyzing urban road networks at the micro, meso, and macro levels. The analysis process is illustrated in
Figure 1 below.
2.1. Research Area and Data Preprocessing
Lanzhou, located in the northwest region of China, is the capital city of Gansu Province. This study focuses on the road segments in the Anning District of Lanzhou City, Gansu Province, to identify critical links within the urban road network.
The data for this study were sourced from OpenStreetMap, an open-source mapping platform, which includes vector electronic maps of the road network and point-of-interest (POI) data. The vector data were in a UTM WGS1984 coordinate system with 48S projection, and the units were in meters. Preprocessing of POI data mainly involves data cleaning and standardization. Firstly, duplicated, missing, or erroneous POI data entries are removed. Then, the categories of POI data are standardized, and facilities are classified and labeled accordingly. Data scaling and unit conversion are also performed to ensure consistent units and meters for subsequent spatial analysis and visualization [
28].
The road network data covered 2086 ground road segments within the Anning District of Lanzhou City, including arterial roads, collector roads, and local roads, distributed primarily within a concentrated length range. The dataset also included 591 traffic-infrastructure data points consisting of intersections and transportation stations, and 121 data points representing locations with a high population concentration, such as restaurants and supermarkets. The data included information such as names, categories, and coordinates.
2.2. Distribution Evaluation of Public Facilities
Urban transportation infrastructure consists of facilities and equipment that support the regular operation of a city’s transportation system. Around critical links, there are typically numerous transportation infrastructures such as roads, bus stops, subway stations, and parking lots. The presence of these facilities increases the traffic volume in those sections, thus affecting traffic flow and congestion. Commercial facilities refer to buildings or locations used for conducting business activities. The distribution of commercial facilities also influences the demand for the road network, with more commercial facilities leading to increased traffic flow. Failure to effectively manage traffic can result in congestion in those critical links.
At the micro-level, this study utilized a GIS network and buffer-analysis tools to accurately calculate the distribution and quantity of the transportation infrastructure and commercial facilities on each road. Currently, many scholars employ buffering techniques for micro-level accessibility assessment. This paper uses buffer analysis techniques to identify critical links at the micro-level. Creating usable areas around roads based on linear distances makes the impact of public facilities within a 100 m range on both sides of the road significant [
29].
Firstly, buffer analysis tools were used to generate a 100 m buffer range as the standard for the extent of influence. Subsequently, spatial joins were employed to aggregate the number of transportation infrastructures and commercial facilities within the buffer zones formed by each road. Then, the attribute table of the road data was processed through a merge operation to obtain the total value of facilities within the impact range of each road. Finally, the statistical results were classified using the natural-breaks method to obtain a specific evaluation of each road. The specific process is illustrated in the following figure,
Figure 2.
The research method combines network-analysis tools and buffer-analysis tools in GIS to achieve accurate calculations of the distribution of transportation infrastructure and commercial facilities around roads. Using these tools makes it possible to accurately calculate the quantity of facilities and determine the impact range of the roads. While traditional micro-level evaluations primarily utilize buffering techniques, this study proposes a novel approach to employing buffer analysis for identifying critical links. Critical links can be identified by quantifying the transportation infrastructure and commercial facilities within the buffer zones formed by each road. Moreover, this research method comprehensively considers the influence of the transportation infrastructure and commercial facilities. By integrating spatial data and statistical results, an overall assessment of the situation of each road can be conducted, enabling the evaluation of the importance of road sections.
The micro-level analytical approach allows for the precise calculations of the distribution of transportation-related elements on each road, providing a reliable basis for further analysis and the identification of critical links. Through integrating spatial data and statistical results, a comprehensive evaluation of the transportation infrastructure and commercial facilities for each road can be conducted, enabling an understanding of the importance of road sections.
2.3. Road Density Evaluation
The road density refers to the ratio of the total length of roads in a particular area to the area of the area. It is one indicator for evaluating the area’s traffic conditions. Its formula is as follows:
where
is the road density in area
i (m/m
2),
is the road length (m) in area
i and
is the land area in area I confirm
i (m
2).
The road density is an essential concept in urban planning and transportation planning. It provides information about the level of development and congestion of a transportation network, assisting in assessing the load and capacity of the road system. By analyzing the road density, the degree of road congestion, the locations of traffic bottlenecks, and recommendations for new road additions or improvements to existing ones can be determined. The concept of road density plays a crucial role in improving road conditions. By increasing road density, congestion can be alleviated, and traffic efficiency can be improved.
Furthermore, the rational planning and design of road density can also reduce traffic accidents and enhance road safety. In summary, road density is critical for evaluating the transportation network and road conditions. It can help address traffic congestion, optimize traffic flow, and improve road safety.
At the mesoscopic level, the calculation and analysis of road density distribution are carried out in GIS using fishnet tools [
30]. Specific steps are shown in
Figure 3.
Step 1: The road network length is measured in meters, and the urban planning layer of the city is used as the source layer. The fishnet data and parameters are set, and the total area of the administrative district is divided into 100 × 100 grid cells as the unit for data processing and analysis. Vector fishnet data are created, and the “network” and “network center points” are generated. The road-network vector data are divided by grid cells, using road intersections as boundaries.
Step 2: After road fusion, the attribute table of the road density map is obtained through attribute table joining. The road density is calculated in the attribute table. The natural-breaks method is used to classify and display road density values, resulting in a road-network density distribution map for the Anning district.
The above research method utilizes the fishnet tool for calculating and analyzing the distribution of road density. It employs attribute table joining and the natural breaks method for classification and display. Compared to traditional point density methods, using the fishnet tool allows for a more detailed spatial-scale analysis of road density. Integrating attribute tables and classification displays provides a more precise understanding and visualization of the variation and distribution of road density. Additionally, this research method can reflect the aggregation of the road network. By examining the road density map, areas with a higher road density can be identified, enabling an assessment of the degree of road-network aggregation.
2.4. Road-Network Accessibility Evaluation
Road-network accessibility refers to the ease of reaching other destinations through the road network from a specific location [
31,
32]. Critical links often have high accessibility and significant impacts on the entire road network. By identifying critical links with poor road-network accessibility [
33], traffic bottlenecks can be identified, leading to the recognition of road sections that require better connectivity or improved transportation infrastructure. This aids in developing more rational road planning and transportation layouts to optimize the overall efficiency and accessibility of the transportation system.
The specific process of calculating accessibility at the macro level is depicted in
Figure 4.
Step 1: A network dataset is created, and road network features are imported into the dataset. The connectivity and directionality between road network features are established. GIS-network analysis tools are used to set time and distance costs, assigning cost values to each road segment. Considering different design speeds on arterial roads, sub-arterial roads, and local roads, this study set the design speed for arterial roads as 60 km/h, sub-arterial roads as 30 km/h, and local roads as 20 km/h. Finally, a network topology is established to construct the urban road network traffic model.
Step 2: Since this study focuses on road segments, the centroid of each road segment represented the segment. Then, using network analysis tools, an OD cost matrix was created, loading the locations of the origin and destination points.
Step 3: Using the time cost as the indicator value, the statistical results of accessibility for OD points are obtained. The time-cost values of accessibility are input, and interpolation analysis is conducted using the inverse distance weighting method, with the influence range of other points on the elevation values of the interpolation points decaying as the distance from the interpolation points increases.
Computing the accessibility of a traffic-network node can be used to evaluate its connectivity and importance, and the traffic accessibility of the entire road network is the average of the traffic accessibility of each node [
34]. In this paper, the spatial barrier model was used to solve the traffic accessibility of each node, and the formula is as follows:
where
represents the accessibility of network node
i;
represents the minimum impedance between nodes
i and
j.
This study quantified minimum impedance by using the time cost of the shortest path from each node to other nodes. The accessibility indicator value of each node was quantified by calculating the average time cost of the shortest paths from that node to all other nodes. The calculated accessibility indicator values were discrete and multiple. Therefore, spatial-data processing techniques in the GIS were employed to infer the accessibility values of unknown locations, thereby estimating the accessibility values of the entire road network. Interpolation analysis, which can transform discrete data points into a smooth surface, was used to visualize the accessibility of the entire road network by applying the inverse distance weighting method.
The formula for calculating the inverse distance weight is as follows:
where
is the coordinate value of other points.
- 2.
Calculate the weight of other points:
- 3.
Calculate the elevation value of the interpolated point:
where
is the time-cost value of other points.
From the perspective of transportation networks, a transportation network model is constructed by establishing a network dataset, setting time and distance costs, and assigning cost values to indicator costs. This allows for the creation of a transportation network. The road network can be analyzed and simulated using traffic models and network analysis tools to identify critical links with necessary paths, connectivity, or transfer functions.
This research method utilized network analysis tools for connectivity and importance analysis of the road network, evaluated the accessibility of transportation network nodes using a spatial impedance model, and visualized the accessibility of the road network using inverse-distance-weighting interpolation analysis. Compared to traditional methods, network analysis based on network-analysis tools is more accurate and comprehensive. By quantifying the traffic accessibility of nodes and analyzing the time cost of the shortest paths, the accessibility of nodes can be better evaluated. Additionally, visualization through interpolation analysis can intuitively display the accessibility of the entire road network.
2.5. Comprehensive Evaluation of Entropy Value Method
The distribution of the number of transportation infrastructures and catering facilities, the distribution of road density, and the accessibility of the road network were, respectively, analyzed at the micro, meso, and macro levels, providing multiple indicators for comprehensive evaluation. To determine the weight of the indicators, the entropy method was used [
35]. The entropy value method is based on the concept of information entropy. By calculating the entropy value and weight of the index, the importance and contribution of each index in the comprehensive evaluation are determined. This method can objectively measure the importance of indicators and give a more accurate weight value [
36,
37]. By comprehensively analyzing the weight values of these indicators, a comprehensive evaluation result can be obtained to evaluate the traffic situation more comprehensively and provide decision-making reference. The steps of the entropy method are as follows:
- Step 1:
Normalize each factor according to the number of each option:
- Step 2:
Calculate the entropy value of the j indicator:
, ;
- Step 3:
Calculate information entropy redundancy:
- Step 4:
Calculate the weight of each indicator:
- Step 5:
Calculate the comprehensive score of each sample:
where
is the normalized data. According to the score of each influencing factor, the importance ranking of the above three factors can be obtained.
4. Discussion
According to
Table 1, the top five roads in terms of the number of public facilities in the Annin District of Lanzhou City are Anning East Road, Beibin Hexi Road, Jianning West Road, Anning West Road, and Jian’an West Road, with 30, 29, 22, 19, and 12 public facilities, respectively. However, as observed in
Figure 2, the areas where Zhongbang Avenue, Renshou Mountain Street, and Lanke Road are located had a lower distribution of public facilities. Nevertheless,
Figure 8 shows that these areas have a high road density. Therefore, urban planners may consider adjusting the route layout, increasing the number of public transportation routes, or adding facilities such as dining venues in these areas to improve the accessibility of public transportation.
From
Table 2, the top five roads with the highest road density in the Annin District of Lanzhou City are Beibin Hexi Road, Anning West Road, Anning East Road, Jian’an West Road, and Yin’an Road, with road densities of 44.13483, 13.86996, 12.10526, 10.66426, and 6.13525, respectively. As shown in
Figure 8, Beibin Hexi Road had the highest road density, mainly due to its role as a major expressway. However, despite its high road density, Beibin Hexi Road had relatively lower accessibility and fewer public facilities, so it was not identified as a critical section. Planners could consider extending public transportation routes near expressways to provide more convenient and efficient transportation options. Additionally, it is essential to plan and construct public facilities in suitable locations to meet the daily needs of residents and commuters. However, the construction of these facilities should consider the traffic flow and speed of the expressways to ensure a reasonable layout and convenience of transportation facilities.
As seen in
Table 3, the top five roads in the Annin District of Lanzhou City with the lowest to highest time cost values are Yin’an Road, Jianning West Road, Fuqiang Road, Wanxin South Road, and Yintan Road, with values of 3.529315, 3.539626, 3.665739, 3.665739, and 3.675806 m per minute, respectively. Based on
Figure 10 and
Figure 11, it is evident that the area near Yin’an Road has the highest network accessibility. However, this area has a relatively minor number of public facilities and was not identified as a critical section. Therefore, road planners may consider collaborating with private enterprises or other partners to develop commercial complexes near Yin’an Road.
Based on the research results, as shown in the network topology diagram in
Figure 11, using the entropy method, five critical links were identified in the Annin District of Lanzhou City, namely Jianning West Road, Anning West Road, and Xing’an Road, with section numbers 44, 30, 29, 28, and 18, with comprehensive scores of 0.641, 0.571, 0.570, and 0.519, respectively. These critical links significantly impact the stability of the city’s road network. In particular, the main arterial road, Anning West Road, experiences a high traffic volume in the Annin District, necessitating careful planning and management by road planners and administrators.
In urban planning, the layout of public facilities, road density, and network accessibility are crucial factors that need to be considered comprehensively. Selecting these three indicators is based on their importance and practical feasibility in urban transportation planning and management. Public facilities, the road density, and network accessibility are essential elements in urban transportation systems, as they mutually influence and collectively determine the criticality of road sections. However, solely considering public facilities, road density, or network accessibility has limitations. By solely focusing on public facilities, the traffic-flow situation of road sections may be overlooked. Some roads may have more public facilities but still experience congestion due to heavy traffic volumes. If only road density were emphasized, the connectivity and timeliness of road sections may be disregarded. Some roads may have a high density but do not necessarily carry significant traffic flow, thus lacking criticality. Likewise, only focusing on network accessibility may neglect factors like the traffic flow and road density.
A single indicator cannot accurately and comprehensively identify critical road sections. The comprehensive evaluation using the entropy method can quantify and compare the impact of different indicators, yielding a comprehensive score to identify critical links. This approach adequately considers the weights and relationships of different indicators, thereby avoiding biases caused by a single indicator. Hence, comprehensive evaluation can provide more objective and accurate results in identifying road sections and provide valuable support for urban public transportation development and transportation planning. Furthermore, this research presented a novel method for identifying critical road sections in the urban road network and analyzed the road network from the micro, meso, and macro perspectives. It also reveals the distribution of public facilities and road density and analyzes the factors influencing the identification of road sections in urban areas. These results offer valuable information and guidance for urban transportation planning.
However, this study still has some issues that need further exploration. This study mainly considered indicators such as the number of public facilities, road density, and network accessibility, but did not incorporate factors such as traffic flow. Additionally, more limitations in data availability restrict opportunities to validate network and POI data, making obtaining permits more challenging. Future research could expand on studying traffic flow and distribution to identify critical road sections more accurately.
In conclusion, by considering multiple indicators comprehensively and using the entropy method to analyze the urban road network, this study provided valuable information and guidance for urban transportation planning and management. It also presented a new approach to identifying critical road sections. However, further research is necessary to broaden its scope and depth, enabling a comprehensive assessment of the criticality of urban road networks.