The Social Risk of High-Speed Rail Projects in China: A Bayesian Network Analysis
Abstract
:1. Introduction
2. Literature Review
2.1. The Social Risk of Mega Projects
2.2. Modeling the Risk-Generation Mechanism
3. Methodology
4. Research Process
4.1. Risk Identification
- The case needs to involve events that happened no more than a decade ago.
- It needs to have been reported by mainstream media, such that data about the case are readily available.
- It needs to have caused widespread social concern and had a long-lasting effect on public opinion.
- It needs to have been associated with an individual incident or mass incident—that is, an incident in which a large group of people participated.
4.2. BN Model Building
4.2.1. Establishing the BN Structure
4.2.2. Determining the BN Parameters
4.2.3. Model Validation
5. Results
5.1. Reverse Inference
5.1.1. Key Risk Factors
5.1.2. Maximum Causal Chain
5.2. Sensitivity Analysis
6. Discussion of Results and Description of Countermeasures
6.1. First Countermeasure: Increase the Transparency of and Democratize HSR Planning
6.2. Second Countermeasure: Improve the Mechanism by Which Local Governments can Express Interest in HSR Projects
6.3. Third Countermeasure: Enhance Emergency Management Mechanisms
7. Conclusions and Future
- Through a risk-identification process drawing on typical cases, a risk list containing 20 risk factors, three risk events, and one risk consequence was created; in this list, the risks are divided into three levels according to their source. Based on the causal relationship among the risks identified by the study of typical cases and through interviews with experts, a BN structure was constructed. Using an expert-based grading system, parameters were assigned to each node. The BN model was then applied to two case studies for validation purposes. The results yielded a valid BN model of the generation of social risk for HSR projects.
- Results from the reverse inference and sensitivity analysis functions of the BN model indicated that nodes A1, A2, A8, A9, A17, A19, and A20 in the model were the key risk factors; that nodes A4, A6, A13, and A14 were the sensitive risk factors; and that B1→B2→B3 was the maximum causal chain. The study then considered ways in which social risk might be effectively controlled. Bringing the above results to bear on the risk sources, including the planning system, local populations, and local governments, the paper proposed three countermeasures: namely, increase the transparency of and democratize HSR planning, improve the mechanism by which local governments can express interest in HSR projects, and enhance emergency management mechanisms.
Author Contributions
Funding
Conflicts of Interest
References
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Project Name | HSR Contender (Indicated by the Name of the Administrative Region) | Behavior of Local People | Response of Local Government | Initial Decision of HSR Station | Final Decision of HSR Station |
---|---|---|---|---|---|
Shanghai–Kunming HSR | Shaoyang, Loudi | Demonstrations and petition signing; displaying banners and demonstrations against local government | Supporting the demonstrators and actively striving to capture the project | Station in Loudi | Stations in both cities |
Zhengzhou–Chongqing HSR (1) | Shiyan, Xiangyang | Demonstrations and large-scale petition signing; online voting | Supporting the demonstrators and actively striving to capture the project | Undecided | Station in Xiangyang |
Zhengzhou–Chongqing HSR (2) | Dengzhou, Xinye | Setting up nongovernmental organizations; demonstrations and petition signing; displaying banners all over the area | Supporting the demonstrators and actively striving to capture the project | Station in Dengzhou | Station located between the two cities |
Shanghai–Hangzhou–Rong River HSR | Jingzhou, Jingmen | Organizing initiatives in multiple locations; petition signing (more than 10,000 signatures) | Following the planning directives of the superior Planning Department | Undecided | Station in Jingmen |
Dazhou–Chongqing HSR | Linshui, Guang’an | Mass demonstrations; displaying banners and demonstrations against government officials; petition signing (more than 10,000 signatures); conflicts between police and civilians | Supporting the demonstrators and actively striving to capture the project | Undecided | Stations in both cities |
Chongqing–Xi’an HSR | Wanzhou, Dazhou | Massive social network campaigns and disputes; massive use of online voting | Supporting the demonstrators and actively striving to capture the project | Station in Wanzhou | Undecided |
Beijing–Kowloon HSR | Gushi, Huangchuan | Petition signing (more than 10,000 signatures); displaying banners all over the area | Supporting the demonstrators and actively striving to capture the project | Station in Huangchuan | Undecided |
Chengdu–Guiyang HSR | Luzhou, Yibin | Petition signing (more than 10,000 signatures); “netizens” write to the ministry of railways; massive social network campaigns and disputes | Supporting the demonstrators and actively striving to capture the project | Undecided | Station in Yibin |
Huhehaote-Nanning HSR | Jiyuan, Luoyang | Large-scale petitions organized online | Supporting the demonstrators and actively striving to capture the project | Undecided | Station in both cities |
Rizhao–Lankao HSR | Zoucheng, Qufu | Smaller-scale petitions organized online by individuals | Following the planning directives of the superior Planning Department | Undecided | Station in Qufu |
Risk Factor/Event/Consequence | Risk Performance | Name |
---|---|---|
Risk factor | Before being classified as part of Guang’an, Linshui had a larger population and a more developed economy than Guang’an. After Linshui was classified as part of Guang’an, the pace of its economic development and the quality of its former residents’ welfare were not as good as they were for the long-term residents of Guang’an, resulting in discord between the former residents of Linshui and the original Guang’an people. | Regional conflicts |
In the master plan of Linshui County 2009–2030, Linshui County is positioned as the transportation hub of eastern Sichuan and northern Chongqing. Railway lines and railway stations have been planned for the southeast portion of the county. However, there is no railway in Linshui County currently. | Incompatibility between regional and local levels of planning for economic development | |
People believe that the railway can utilize the geographical advantages of Linshui County and improve what is perceived as the economic backwardness of Linshui. Therefore, the local population has built up large expectations for the Dazhou-Chongqing HSR. | The local population’s desire for transportation facilities | |
Officials of the Guang’an municipal government visited the superior Planning Department and demanded that the route of the Dazhou-Chongqing HSR be changed to Guang’an. | The influence of rent-seeking by the local government | |
Individuals set up “road-protecting” QQ groups to divide up online the tasks undertaken in support of the HSR. | The influence of civic organizations and group leaders | |
Sentence in the petition: “We don’t want a few people to determine the historical fate of the two counties off the top of their heads. Instead, a fair, carefully reasoned decision is urgently needed.” | The local population’s sense of injustice and relative deprivation | |
Leaders of Guang’an City state that they will only accept the western line plan. At the same time, leaders of Linshui County are also striving to capture the project. | Fierce intergovernmental competition | |
In the process of HSR planning, there is no effective social risk assessment and no formal way for people to express their demands. | Poor public access to participation in the planning process | |
A total of 68 people (including police and civilians) are injured, several vehicles are burned, and property is lost. The credibility of the local government is seriously diminished. | Insufficient emergency management capacity of local government | |
Risk event | Some people wrote letters and paid visits to the county party committee and county government. Some initiated petitions on community websites such as “Spicy Community.” On May 12, a small-scale petition signing initiative was launched in Huangtongshu Park. | Local population involved in an individual incident |
Over the next two days, neither the petition on the Internet nor the petition signing event was responded to by the government. | Local government fails to provide an immediate response to the individual incident | |
On May 14, the voices of those organizing demonstrations and expressing appeals on the streets became mainstream. On May 16, tens of thousands of people gathered and marched in the streets. Later, police–civilian clashes occur and traffic trunk roads were blocked. | Local population involved in a mass incident | |
Risk consequence | A total of 68 people (including police and civilians) were injured, several vehicles were burned, and property was lost. The credibility of the local government was seriously diminished. | Social instability |
Risk Factor /Event/Consequence | Sources of Risk | No. | Name |
---|---|---|---|
Risk factor A | Planning system | A1 | Insufficient sharing of information |
A2 | Poor public participation | ||
A3 | Demands of different interest groups not being taken into account | ||
A4 | Obvious bias of decision-makers | ||
A5 | Incompatibility between regional and local levels of planning for economic development | ||
A6 | Negative public opinion | ||
A7 | Blind competition among regions, industries, and groups | ||
Local government | A8 | Pursuit of political achievements/reputation | |
A9 | Fierce intergovernmental competition | ||
A10 | Rent-seeking efforts by local government | ||
A11 | Inadequate emergency management capability | ||
A12 | Poor communication with the public | ||
A13 | Free-ride tendency | ||
Local population | A14 | Regional conflict | |
A15 | Desire for transportation facilities | ||
A16 | Distrust of local government | ||
A17 | Sense of injustice and relative deprivation | ||
A18 | Low level of education | ||
A19 | Civic organizations and group leaders | ||
A20 | Imitative and conformist behavior | ||
Risk event B | Local population | B1 | Individual incident |
Local government | B2 | No immediate response to individual incident | |
Local population | B3 | Mass incident | |
Risk consequence C | - | C | Social instability |
Questionnaire Value | 1 | 2 | 3 | 4 | 5 |
---|---|---|---|---|---|
Name | low | medium low | general | high | very high |
Probability | 0–0.2 | 0.2–0.4 | 0.4–0.6 | 0.6–0.8 | 0.8–1 |
Questionnaire Value | Name | Detailed Description |
---|---|---|
1 | negligible | No (or little) public opposition No negative public opinion or effect on governmental authority No property loss and no injuries |
2 | less | Individual opposition that can be resolved through effective work Minimal negative public opinion and effect on governmental authority Little property loss and no injuries |
3 | medium | Small-scale conflicts that can be immediately alleviated via on-site management Little negative public opinion and effect on governmental authority Moderate property losses and individual injuries |
4 | serious | Medium-scale conflicts that require external assistance to mitigate Considerable negative public opinion and effect on governmental authority Large property losses and some casualties |
5 | very serious | Large-scale mass incidents or extreme incidents involving individuals Widespread negative public opinion and significantly negative effect on governmental authority Extensive property damage and numerous casualties |
Rank | Risk Factor | Sensitive Value | Rank | Risk Factor | Sensitive Value |
---|---|---|---|---|---|
1 | A14 | 0.742 | 11 | A16 | 0.101 |
2 | A13 | 0.403 | 12 | A2 | 0.074 |
3 | A6 | 0.352 | 13 | A12 | 0.042 |
4 | A4 | 0.267 | 14 | A1 | 0.041 |
5 | A3 | 0.244 | 15 | A20 | 0.039 |
6 | A5 | 0.207 | 16 | A8 | 0.029 |
7 | A7 | 0.205 | 17 | A17 | 0.029 |
8 | A10 | 0.205 | 18 | A15 | 0.025 |
9 | A11 | 0.191 | 19 | A9 | 0.024 |
10 | A18 | 0.154 | 20 | A19 | 0.020 |
Sources of Risk | Key Risk Factor | Sensitive Risk Factor | Link in the Maximum Causal Chain |
---|---|---|---|
Planning system | A1 (Insufficient sharing of information) | A6 (Negative public opinion) | - |
A2 (Poor public participation) | A4 (Obvious bias of decision-makers) | ||
Local population | A17 (Sense of injustice and relative deprivation) | A14 (Regional conflict) | B1 (Individual incidents) |
A19 (Civic organizations and group leaders) | B3 (Mass incidents) | ||
A20 (Imitative and conformist behavior) | |||
Local government | A8 (Pursuit of political achievements/reputation) | A13 (Free-ride tendency) | B2 (No immediate response to individual incident) |
A9 (Fierce intergovernmental competition) | |||
A20 (Imitative and conformist behavior) |
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Xue, Y.; Xiang, P. The Social Risk of High-Speed Rail Projects in China: A Bayesian Network Analysis. Sustainability 2020, 12, 2087. https://doi.org/10.3390/su12052087
Xue Y, Xiang P. The Social Risk of High-Speed Rail Projects in China: A Bayesian Network Analysis. Sustainability. 2020; 12(5):2087. https://doi.org/10.3390/su12052087
Chicago/Turabian StyleXue, Yutong, and Pengcheng Xiang. 2020. "The Social Risk of High-Speed Rail Projects in China: A Bayesian Network Analysis" Sustainability 12, no. 5: 2087. https://doi.org/10.3390/su12052087
APA StyleXue, Y., & Xiang, P. (2020). The Social Risk of High-Speed Rail Projects in China: A Bayesian Network Analysis. Sustainability, 12(5), 2087. https://doi.org/10.3390/su12052087