1. Introduction
With the continuing urbanization and rapid growth of cities around the world, traffic demands are increasing faster than traffic supplies. Therefore, it is critical to understand the changing land use structure and transport conditions to identify poorly accessible areas and improve their accessibility [
1]. Accessibility is an appropriate indicator to evaluate the interaction between traffic and land use, which can simultaneously consider the travel road network and travel demand. It considers not only travel efficiencies but also the distribution of land-use and activity locations across the transport network [
1]. Accessibility was first defined as a measure of the potential for interaction [
2]. Conventionally, the accessibility measure is based on survey data, census geodemographics, and transport data, which cost large quantities of time and money. In addition, the available data are limited, making it difficult to capture daily fluctuations in accessibility.
Taxis are flexible and are spread around the urban area of a city. The increasing availability of taxi global positioning system (GPS) data makes it easier to measure the taxi accessibility, meaning the number of opportunities reachable from each grid cell within the given time threshold in this study, which can reflect the accessibility of the urban road network. Although metro trains and buses play the most important role in intra-city travel, they can only provide service in fixed stations of routes, and some service gaps exist. Taxis provide the flexible door-to-door service and 24 h operations, and have wider coverage than other modes of transportation from the temporal and spatial perspectives [
3].
This study aims to combine the large-scale taxi GPS data with the cumulative opportunity measure to calculate taxi accessibility. The method can attain the real-time taxi accessibility in grid cell level. With more available travel data, the method provides a new approach to measure accessibility which is easy to implement.
The remainder of this paper is organized as follows. An overview of the state-of-the-art for accessibility is provided in
Section 2. The study area and related data are presented in detail in
Section 3. The methodology used to measure taxi accessibility is introduced in
Section 4. Then, the results of the application are presented in
Section 5. Finally, the conclusions and future work are presented in
Section 6.
2. Literature Review
After the concept of accessibility was first defined [
2], accessibility was seen as a measure of “the average number of opportunities which the residents of the area possesses to take part in a particular activity or set of activities” [
4], within a given travel time, distance, or generalized cost [
5]. A simple measure of accessibility is the cumulative opportunity measure, which is also known as the contour measure [
6] or isochronic measure [
7], counting the number of opportunities available within a given travel time, distance or cost (fixed costs). This measure is easy to calculate and understand, and all destinations are weighted equally [
8]. The cumulative opportunity measures are relatively undemanding of data and easy for researchers and policy makers to interpret because no assumptions are made based on a personal perception of transport, land-use, and their interactions [
6]. The cumulative opportunity measure is a method used to calculate the location-based accessibility, which is a useful tool for transportation planning and assessing transportation systems at an aggregated level. This measure is quite useful for understanding the relationship between transportation and land use [
9].
At the early stage, the cumulative opportunity measures focused on the structure of urban road network and transit schedules, or relied upon travel times from a travel demand model. A tool called Urban.Access, based on a geographic information system, was proposed to model the road network to calculate the access area within the given travel time [
10]. Besides, the travel speed depends on the road congestion. Similarly, the cumulative opportunity accessibility by car with different congestion levels was calculated and it was used for the interactive design of integrated transport and land use plans [
11]. The individual public transportation accessibility areas were calculated within 30, 45, and 60 min [
12]. It was suggested accessibility should be measured for each mode and for different traffic conditions [
11].
In recent years, the temporal factors are taken into consideration for cumulative opportunity measures. The isochrones were formally defined for multimodal spatial networks that can be discrete or continuous in space and time, respectively [
13]. Accessibility has been calculated continuously over time and used to evaluate transit systems [
14]. Moreover, the spatial and temporal constraints and a set of transit features that affected access to transit systems to develop a conceptual framework for transit accessibility measurements in a potential transit-oriented development location were employed [
15]. In addition, opportunities also have their own diurnal rhythms that may or may not coincide with the rhythms of the transportation networks, which might impact the accessibility [
16]. An opportunity-based transit accessibility measure was proposed, in which indicators are sensitive to the availability of opportunities for travelers within a day [
17]. Three kinds of opportunities are used to conduct a cumulative opportunity measure for five time periods, including constant service and constant number of jobs, variable transit service and constant number of job, variable service, and variable number of available jobs [
8]. The historical speed profiles measuring the performance of the transport network and the Twitter data reflecting the attractiveness of the destinations are combined to analyze the urban dynamic accessibility [
18]. The relationship between the cumulative accessibility within 30 min travel time by rail and transit-oriented development level was explored, which demonstrated that cumulative rail-based accessibility is higher in cities with a higher transit-oriented development degree, almost in direct proportion [
11].
Furthermore, there have been studies that utilized taxi GPS data to explore accessibility. A stochastic methodology was proposed for GIS-based accessibility modeling using GPS-based floating car data and Monte Carlo simulation, which was illustrated using a case study on medical emergency service accessibility [
19]. A novel integrated access measure was introduced to compute the accessibility to points of interest (POIs), which was able to capture the temporal dynamics by taking into account the speed variability using floating car data during peak and off-peak hours on weekdays and weekends [
20]. Furthermore, a geographically weighted spatial regression model was applied to find that a higher relationship between taxi and metro ridership in the regions where lower accessibility to metro stations existed [
21]. Furthermore, a strong link between demand for taxi, land use patterns, and accessibility to other modes is found [
22]. A high-resolution grid was imposed over the study area to compute accessibility at a high disaggregation level. It was observed that the travel time threshold and POI weights had a profound influence on the final accessibility values. Moreover, a method was developed to systematically examine the current urban land use and road network conditions as well as to identify poorly connected regions, using GPS data collected from taxis [
1]. Changes in automobile accessibility over the course of the day—as coursed by congestion of the road network in eight metropolitan areas of the European Union—were studied, which indicated that congestion most notably affects accessibility distribution inside each city [
23].
In general, most previous studies focused on the structure of an urban road network and a fixed speed to evaluate the accessibility [
7,
10,
12], which are easy to conduct but can only give a common accessibility. With the increasing availability of vehicle GPS data, such data have been incorporated to infer the average speed or speed distribution [
1,
19,
23,
24]. Then, the speed and road network were combined to measure the accessibility. However, the real-time transportation data are seldom applied to calculate accessibility. For example, the average travel speed is calculated from the taxi GPS data to measure network accessibility [
1]. It is a gap to use high resolution data to generate time-varying accessibility. In this study, we measure the accessibility by analyzing the taxi trajectories. In addition, a grid-based method is used to assist the accessibility measure. However, there are also limitations because the measure is based only on taxi mode and the data of other modes are required for further overall exploration.
6. Discussion and Conclusions
Good transport accessibility and its equity are important goals that must be achieved in the urban for transport managers and urban planners. With the rapid development of city, the measurement of accessibility is challenging. To deal with the issue, this study combined the taxi GPS data and POIs data to measure the taxi accessibility. This study applied a grid-based approach, which can simplify the calculation and deal with the complex environment, to objectively measure the level of the cumulative opportunity accessibility in the Beijing region. This approach utilized the massive taxi trajectory data from complicated real-world traffic situations to accurately reflect the true accessibility. The constant generation of the taxi GPS data and POIs data enable the results to catch up with urban expansion [
1].
The proposed method can be utilized to measure the taxi accessibility at the grid cell level, and the size of grid cell can be adjusted according to the research goal. This method provided a practical way to measure taxi accessibility. Three kinds of opportunities were employed, including the constant POIs, total drop-offs, and dynamic drop-offs. In addition, four typical time periods were selected to show the dynamic accessibility in a day. To handle the limitations of road network, land use, and taxi GPS data, a make-up method was proposed to identify the grid cells that are likely to be reachable according to their adjacent grid cells. Furthermore, the grid cells with poor accessibility in specific time periods can be identified, thus some policies can be put forward to improve the accessibility. The method can also be applied to predict accessibility conditions for future scenarios which have some changes in opportunity [
1]. In all, the proposed method can provide objective, representative, and cost-effective accessibility values, with temporal and spatial sensitivity.
The findings indicated that the three kinds of opportunities are highly concentrated in the inner part of city. However, the distribution of the POIs is more dispersed. For dynamic drop-offs, it was observed that the midday off-peak hours have a higher value. From the spatial perspective, the eastern part has the higher accessibility than the western part and the inner part of the city has better accessibility than the outer part, whereas the core areas such as Tiananmen Square do not show a high value in accessibility. In addition, it was observed that high accessibility grid cells are likely to cluster together. From a temporal perspective, the peak hours (7:00–9:00 and 17:00–19:00) had lower accessibilities in all three measures. The late-night hours had the best performance in the constant POIs measure and the total drop-offs measure. It is also found that accessibility conditions change significantly depending on the time of day [
18]. However, the dynamic drop-offs measure had the best accessibility in the midday off-peak hours. Overall, the fluctuations of accessibility are consistent with the traffic situation in a day, which is consistent with the previous findings [
18,
23]. Dynamic of accessibility in a day provide more insight to analyze the accessibility issues that is hard to find in the static accessibility [
18]. A comparison of different time periods indicated that grid cells with higher accessibility at a time period tend to have higher accessibility at other time periods. In addition, the total drop-off accessibility is similar to the constant POIs accessibility. However, the total drop-off accessibility is different from the dynamic drop-off accessibility in the four time periods, which has the largest value in the midday off-peak hours. This is not consistent with the previous study which found that the constant job accessibility and variable job accessibility are highly correlated [
8].
Most studies measuring accessibility are based on the road network and transit network [
6,
26], which utilized the GIS software to calculate accessibility with the given travel speed or schedule [
6,
8,
14]. In a previous study [
1], the GPS data were utilized to generate the average road speed, which would ignore details of different vehicles. However, this study used the taxi GPS data to measure the taxi accessibility. The study area was divided into grid cells and the size of grid cell can be adjusted according to different research objectives. Furthermore, we proposed a make-up method to deal with the limitation of data. The widely used opportunities for accessibility included the number of jobs, population, and POIs. This study innovatively introduced the total drop-offs and dynamic drop-offs as opportunities to measure taxi accessibility. Thus, taxi accessibility could be calculated by the cumulative opportunity measure with the taxi GPS data only. Besides, the POIs data and the taxi GPS data can be updated constantly, the accessibility can be updated to match the rapid development of the city [
1]. Overall, the proposed approach is easy to implement. The cumulative opportunity measure based on GPS data can be applied for taxis in other cities around the world. It is feasible to utilize this method using only the available taxi GPS data. Grid cells with low accessibility can be identified and corresponding actions can be recommended to improve it. In addition, the accessibility distribution can be applied to site selection such as for residences and hospitals. Combined with other socio-economic characteristics, this method can be adopted to show the accessibility of a specific service or activity. Furthermore, the continuous generation of taxi GPS data and the updated information on POIs can be used to derive new accessibility values, which can keep pace with the rapid development of a city.
There were also some limitations in this study. There were still some grid cells with insufficient information, especially in suburban regions. This study only concentrated on a regular urban area rather than the whole city. In future work, more data should be taken into consideration, such as the trajectories of ridesharing services. In addition, the accessibility of transit is an indispensable part of the city which can be explored using transaction and route data.