1. Introduction
Due to high land prices in central city areas, there is often a migration of populations and a redistribution of industry between urban and rural areas [
1]. Suburbs, which are typically remote areas, are becoming more attractive for industrial agglomerations, with many plants, colleges, universities, and research institutes being relocated there [
2]. However, these areas often have low population density and low travel demand in their early stages of development, resulting in infrequent public transit services and longer walking and waiting times for travelers compared to urban areas [
3]. These challenges hinder the development of remote areas.
On-demand buses offer a viable solution to the problem described above. Travelers who require more flexibility and are time-sensitive are often willing to pay higher ticket prices for on-demand services, as it can result in shorter waiting times and reduced walking distances [
4]. Examples of such services include taxis and online car-hailing [
5], which are typically available in city centers but not in remote areas. Consequently, travelers in remote areas often face long waiting times for these services. The traditional “bus + taxi” service model in remote areas is not able to meet the diverse needs of travelers, resulting in a significant loss of market share for bus operators.
Under the above context, this paper proposes an on-demand bus model that takes into account the spatial and temporal distribution of travel demand in remote areas as well as the willingness of travelers to pay for on-demand services. This mode aims to address the difficulties faced by travelers traveling in remote areas. Furthermore, recognizing the variability in travel demand across different time windows and partially overlapping bus routes, this paper proposes a joint optimization of the frequency of bus departures and ticket prices for on-demand services. The objective of this optimization is to minimize the operational cost of buses and the time cost incurred by travelers in remote areas.
The remaining sections of this paper are organized as follows.
Section 2 conducts a literature review.
Section 3 presents a problem description.
Section 4 constructs the bi-level model.
Section 5 presents a case analysis, and
Section 6 summarizes the main conclusions and provides policy recommendations.
2. Literature Review
As early as the 1960s, Cole and Merritt explored possible modes of transportation services to provide convenient travel services for residents of low-density travel areas. One of the systems they proposed was an on-demand transit (ODT) system that combines the characteristics of conventional bus and taxi systems, which can be considered as the epitome of on-demand bus service [
6]. Subsequently, the United States enacted the Americans with Disabilities Act in the 1990s, which stipulates that public transportation-related agencies must provide travel services for specific groups such as people with disabilities, further promoting the development of ODT [
7]. Since then, scholars have studied ODT services, and the existing literature on ODT mainly covers three aspects: the characteristics and advantages of on-demand transit, bus frequency, and ticket price.
In the study of the characteristics and advantages of ODT, Daganzo proposes the on-demand travel mode and demonstrates its effectiveness in low-density areas in the study of ODT features and advantages [
8]. Schasché et al. conduct a literature review on ODT and conclude that on-demand service could effectively address the difficulties and inefficiencies in public transit service in rural areas [
9]. Li et al. introduce a flexible ODT and develope a public transit scheduling model to meet public transit travel needs. The results show that the flexible ODT service can reduce operating costs by 9.5% and running time by 9% [
10]. Nourbakhsh and Ouyang compare the performance of flexible route transit and traditional transit for different demand levels and found that the former usually has the lowest system cost when the demands mild [
11]. Mageean and Nelson evaluate ODT in urban and rural areas in Europe based on order service and route planning flexibility, and investigate the reasons for its increasing popularity [
12]. Davison et al. survey ODT providers and find that they mostly use small vehicles to save operating costs [
13]. Schlueter et al. analyze the challenges of on-demand public transit in rural areas using data from 38,000 trips in rural areas in Germany, and find that ODT services could improve mobility in such areas [
14]. Tellez et al., Molenbruch et al., and Diana et al. point out that due to the high operating cost of the ODT system, it is mostly used as a supplement to conventional public transit in areas with low public transit coverage [
15,
16,
17]. These research works indicate that ODT is characterized by small-sized vehicles, un-fixed routes, and short departure times, making it primarily suitable for areas with lower travel demand.
In studies on ODT departure times, Chen et al. and Wu et al. propose a comprehensive optimization method that considers bus routes, departure times, and stopping sites to enhance traveler accessibility and minimize bus operating costs [
18,
19]. Xiong et al. develop flexible ODT routes and optimize bus routes based on departure times for improved service [
20]. Wu et al. address a routing problem of ODT with time-dependent travel time and late customers and proposed a periodic optimization approach to collect traveler demands and optimize bus routes for a given period. The numerical results indicate that a wider time window allowed for serving more travelers and lowering bus operating costs [
21]. Tong et al. formulate an optimization model based on multi-commodity network flow, which not only optimizes bus capacity but also travel routes and schedules of public transit to generate long-term profit for bus companies while meeting specific traveler constraints [
22]. Wang et al. propose a two-step coordinated optimization method that considers both scheduled and real-time travel demands for optimizing bus routing and departure times [
23]. Sun et al. formulate a mixed-integer nonlinear model for optimizing bus timetables, fleet size, and bus routing to boost bus utilization and reduce bus operating costs [
24]. Azadeh et al. propose a mixed-integer linear problem to integrate ODT and conventional bus vehicles’ departure times and travel routes, demonstrating that the integrated public transit network enhances the public transit system’s service [
25]. Gkiotsalitis and Stathopoulos optimize the bus schedule to improve ODT service quality and attract more travelers [
26]. Wang et al. and Kim et al. jointly optimize the departure interval and the area covered by bus stops to reduce ODT operating costs [
27,
28]. Li et al. propose an opportunity charging strategy for electric ODT and coordinated charging plans with flexible bus service scheduling, reducing bus operating costs by 11% compared to full charging strategy [
29]. Shen et al. propose an application-based ODT system design framework for optimizing bus stops, departure frequencies, and other elements and have applied it in Qingdao, China. The results show that the modified ODT system provides better public transit services [
30]. This research indicates that flexible scheduling can enhance travel demand and achieve lower operating costs for ODT services. However, the difference in travel demand distribution in different time windows is not considered, and the departure frequency optimization of some overlapping routes is not explored.
In the realm of ODT ticket pricing, Liu et al. investigate the impact of ticket prices on public transit ridership and find that reducing ticket prices for normal bus service could increase public transit ridership and lead to a gain in overall revenue. However, the effectiveness of ticket price reductions varies among user groups, and factors such as the population density, destination accessibility, and distance to CBD also affect public transit ridership [
31]. Kaddoura et al. analyze the relationship between ticket prices and the travel distance and determine bus ticket prices through a microsimulation of user interactions [
32]. Li et al. and Amirgholy and Gonzales study the effect of normal bus ticket pricing on ODT ticket prices and conclude that ODT should consider social welfare to attract travelers to achieve overall benefits when normal bus operators set high prices. Conversely, ODT can adopt higher prices to maintain overall benefits when normal bus operators aim to maximize social welfare [
33,
34]. Liu et al. develop an elastic demand framework to optimize the ODT fleet size and ticket price to maximize public transit company profits [
35]. Kamel et al. propose a time-based ticket price optimization method and evaluate people’s responses to changes in ticket prices, finding that optimal time-based ticket prices could help spread transit demand to off-rush hours [
36]. Li et al., propose a differentiated ticket pricing strategy based on bus routes and time to improve the profit and traveler utility of the public transit system [
37]. Kim and Schonfeld, Chen et al., and Guo et al. focus on maximizing social welfare through ticket price optimization [
38,
39,
40]. Khattak and Yim and Nyga et al. study travelers’ propensity to use ODT services and their willingness to pay, finding that travelers are willing to pay more for more flexible travel services [
41,
42]. Ticket pricing is a crucial determinant influencing travelers’ modal choice. However, existing studies have not considered the need for jointly optimizing ticket prices and departure frequency across distinct time intervals. Moreover, such studies overlook the impact of travelers’ willingness to pay on intermodal transfers, which directly affects the service quality provided by operators.
In conclusion, the existing literature on the departure time and ticket price for ODT often fails to account for the effects of variations in traveler demand across different time periods, as well as the potential impact of several bus routes that may overlap in certain areas on the departure frequency. On this basis, this study introduces the concept of the time window to the ODT optimization problem, which incorporates factors such as travelers’ willingness to pay for on-demand services, as well as the unique characteristics of overlapping bus routes. By jointly optimizing the departure frequency across different time windows and the ticket prices for on-demand services, this study presents an optimal operation plan for public transit in remote areas.
6. Conclusions
This paper proposes an on-demand bus mode to improve bus service quality in remote areas, taking into consideration the attributes of dispersed travel demand, time-sensitive travelers, and those with urgent travel needs. A bi-level model is constructed to optimize bus departure frequency and ticket price of on-demand service, with the objective of minimizing the total generalized cost, which includes the bus operating cost and the value of travelers’ travel time. A case study is conducted using actual data from Meishan Island (Ningbo), and the results show that:
- (1)
Supplying on-demand service can reduce total generalized costs by 30.36% and 15.35% in rush and off-rush hours, respectively, with the value of travelers’ time decreasing by 37.08% and 20.33%. This indicates that on-demand bus modes can effectively re-duce the travel time and improve bus service quality in remote areas when considering the value of travelers’ time cost.
- (2)
Travelers are inclined to choose on-demand stops in both rush and off-rush hours. The on-demand bus mode not only reduces the total generalized cost of bus operation and traveler time but also satisfies a diversified travel demand and enriches the bus service.
- (3)
Bus companies can improve service quality in remote areas and generate additional revenue by taking travelers’ time cost into account when providing bus services.
Based on the above findings, it can be concluded that implementing on-demand bus service in remote areas not only reduces the travel time of local residents, improving their living standards, but also meets the travel needs of travelers seeking low-cost and efficient travel options, providing high-quality public transport services to residents in remote areas. Therefore, the government and bus companies could consider residents’ travel time and bus operating costs holistically, and optimize bus services in remote areas based on the unique needs of local residents across different regions and different time windows. This will effectively meet the diverse needs of travelers, enhance residents’ happiness, and increase social welfare.
When optimizing bus services in remote areas, this paper assumes that the total number of bus trips taken by residents before and after optimization remains constant, without considering the potential impact of changes in bus service modes on residents’ choice of transportation mode (i.e., bus or car), which may lead to changes in the total number of bus trips taken by residents. Therefore, analyzing the impact of on-demand bus services on residents’ transportation mode choices and developing bus operation modes that better meet the actual needs of residents are important future research directions.