A Case Study of Accident Analysis and Prevention for Coal Mining Transportation System Based on FTA-BN-PHA in the Context of Smart Mining Process
Abstract
:1. Introduction
2. Related Work
2.1. Risk and Safety Assessment and Management Techniques
2.2. Coal Mine Transportation Accidents Analysis
3. A Framework of CMTS Accident Analysis and Prevention Based on FTA-BN-PHA
3.1. Identification of Factors in Coal Mine Transportation Accidents
3.2. Theoretical Analysis and Process of FTA
3.3. Build BN Model
Algorithm 1. Algorithm for mapping FTA to BN. |
Input: Accident tree model and related nodes, relationships Output: Bayesian network model and related nodes, relationships Begin // 1.Define the fault tree node class class Fault Tree Node: def __init__(self, name): self.name = name self.parents = [] self.children = [] self.probability = 0.0 //2. Define the BN node class class Bayesian Node: def __init__(self, name): self.name = name self.parents = [] self.children = [] // 3.Define a function to convert the fault tree model to a BN model def convert_fault_tree_to_bayesian(fault_tree_root): bayesian_network_nodes = {} visited_nodes = set() def dfs(node): if node in visited_nodes: return visited_nodes.add(node) //4. Create BN nodes bayesian_node = BayesianNode(node.name) bayesian_network_nodes[node.name] = bayesian_node for parent in node.parents: // 5.Convert the parent nodes of the fault tree nodes to the parent nodes of the BN parent_bayesian_node = bayesian_network_nodes.get(parent.name) if parent_bayesian_node is None: parent_bayesian_node = Bayesian Node(parent.name) bayesian_network_nodes[parent.name] = parent_bayesian_node bayesian_node.parents.append(parent_bayesian_node) parent_bayesian_node.children.append(bayesian_node) // 6.Handle the parent node recursively dfs(parent) dfs(fault_tree_root) return bayesian_network_nodes end |
3.4. Risk Factor Analysis Based on PHA
4. Example
4.1. Example Illustration
4.2. Constructing Fault Tree Model-CMTS
4.3. Mapping the FTA to BN
4.4. PHA and Pre-Control Measures
5. Conclusions and Future Work
- (1)
- This paper introduces an integrated risk analysis model for CMTS by combining the principles of FTA, BN, and PHA. Its execution logic can be summarized as follows: a CMTS risk and safety assessment FTA model is transformed into a BN-based CMTS accident network model by calculating the posterior probabilities of various risk factors and determining the main risk factors. Then, a risk-matrix-based PHA method is used to classify the levels of danger and provide effective pre-control measures for CMTS.
- (2)
- The usability of our study holds significant practical value in the field of coal mine risk management. Through the analysis of real-world case studies, our study provides valuable insights into effective strategies and practices for mitigating risks in SMTS, which can be directly applied by coal mine operators to enhance safety measures and reduce potential hazards. Furthermore, our research offers engineering guidance by providing recommendations and guidelines for implementing risk management techniques in CMTS, which can also assist engineers and decision makers in making informed decisions to ensure the safety and efficiency of coal mining operations.
- (3)
- Due to the complex and special working environment of the coal mine conveying system, there are many types of factors that affect the safety of production, and there are various differences between different coal mines, which have the characteristics of unobserved heterogeneity [45] and ambiguity. Therefore, the risk analysis method that does not take into account the above characteristics has certain limitations in determining the degree of risk, and it is debatable whether this method can be applied to most coal mine transportation systems. In the follow-up system research, the polymorphism of risk nodes should be considered and the concepts of fuzzy state, digital twin, and game model [46] should be introduced to make the calculation of risk probability more accurate.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
- Martyushev, N.V.; Malozyomov, B.V.; Filina, O.A.; Sorokova, S.N.; Efremenkov, E.A.; Valuev, D.V.; Qi, M. Stochastic Models and Processing Probabilistic Data for Solving the Problem of Improving the Electric Freight Transport Reliability. Mathematics 2023, 11, 4836. [Google Scholar] [CrossRef]
- Miao, D.; Lv, Y.; Yu, K.; Liu, L.; Jiang, J. Research on coal mine hidden danger analysis and risk early warning technology based on data mining in China. Process Saf. Environ. Protect. 2023, 171, 1–17. [Google Scholar] [CrossRef]
- Xie, C.; Li, H.; Chen, L. A Three-Party Decision Evolution Game Analysis of Coal Companies and Miners under China’s Government Safety Special Rectification Action. Mathematics 2023, 11, 4750. [Google Scholar] [CrossRef]
- Wang, Y.; Liu, Y.; Ding, K.; Wei, S.; Zhang, X.; Zhao, Y. Dynamic Optimization Method of Knowledge Graph Entity Relations for Smart Maintenance of Cantilever Roadheaders. Mathematics 2023, 11, 4833. [Google Scholar] [CrossRef]
- Guofa, W.; Shixin, G.; Kai, S. Intelligent security control technology system and high-quality development countermeasures for coal mines. Mining Saf. Environ. Protect. 2023, 50, 1–8. [Google Scholar]
- Zhang, Y.; Wang, S.; Yao, J.; Tong, R. The impact of behavior safety management system on coal mine work safety: A system dynamics model of quadripartite evolutionary game. Resour. Policy 2023, 82, 103497. [Google Scholar] [CrossRef]
- Tang, Y.; Tan, S.; Zhou, D. An improved failure mode and effects analysis method using belief Jensen–Shannon divergence and entropy measure in the evidence theory. Arab. J. Sci. Eng. 2023, 48, 7163–7176. [Google Scholar] [CrossRef]
- Li, J.; Wang, Y.; Chen, A.; Wang, G.; Yao, X.; Wang, T. Construction and empirical testing of comprehensive risk evaluation methods from a multi-dimensional risk matrix perspective: Taking specific types of natural disasters risk in China as an example. Nat. Hazards 2023, 117, 1245–1271. [Google Scholar] [CrossRef]
- Li, X.; Hao, S.; Wu, T.; Zhou, W.; Zhang, J. Data Mining Technology and Its Applications in Coal and Gas Outburst Prediction. Sustainability 2023, 15, 11523. [Google Scholar] [CrossRef]
- Lei, K.; Qiu, D.; Zhang, S.; Wang, Z.; Jin, Y. Coal mine fire emergency rescue capability assessment and emergency disposal research. Sustainability 2023, 15, 8501. [Google Scholar] [CrossRef]
- Tutak, M.; Brodny, J. Progress towards the innovation potential of the European union member states using grey relational analysis and multidimensional scaling methods. Decis. Mak. Appl. Manag. Eng. 2023, 6, 186–218. [Google Scholar] [CrossRef]
- Cui, J.; Kong, Y.; Liu, C.; Cai, B.; Khan, F.; Li, Y. Failure probability analysis of hydrogen doped pipelines based on the Bayesian network. Eng. Fail. Anal. 2024, 156, 107806. [Google Scholar] [CrossRef]
- Wang, C.; Liu, Y.; Lian, X.; Luo, J.; Liang, C.; Ma, H. Dynamic risk assessment of plugging and abandonment operation process of offshore wells based on Dynamic Bayesian Network. Ocean. Eng. 2023, 270, 113625. [Google Scholar] [CrossRef]
- Wang, Y.; Wang, Y.; Ren, W.; Jiang, Z. Knowledge driven multiview bill of material reconfiguration for complex products in the digital twin workshop. Int. J. Adv. Manuf. Technol. 2024, 130, 3469–3480. [Google Scholar] [CrossRef]
- Roy, P.; Pal, S.C.; Chakrabortty, R.; Saha, A.; Chowdhuri, I. A systematic review on climate change and geo-environmental factors induced land degradation: Processes, policy-practice gap and its management strategies. Geol. J. 2023, 58, 3487–3514. [Google Scholar] [CrossRef]
- Chen, F.; Wang, C.; Wang, J.; Zhi, Y.; Wang, Z. Risk assessment of chemical process considering dynamic probability of near misses based on Bayesian theory and event tree analysis. J. Loss Prev. Process Ind. 2020, 68, 104280. [Google Scholar] [CrossRef]
- Mateusz, P.; Marek, M. Preliminary Risk Analysis of Low Pressure Railway Transport. J. KONBiN 2021, 51, 97–122. [Google Scholar]
- Amin, M.T.; Khan, F.; Ahmed, S.; Imtiaz, S. A data-driven Bayesian network learning method for process fault diagnosis. Process Saf. Environ. Protect. 2021, 150, 110–122. [Google Scholar] [CrossRef]
- Zeng, Z.; Fang, Y.; Zhai, Q.; Du, S. A Markov reward process-based framework for resilience analysis of multistate energy systems under the threat of extreme events. Reliab. Eng. Syst. Saf. 2021, 209, 107443. [Google Scholar] [CrossRef]
- Kabir, S. A fuzzy data-driven reliability analysis for risk assessment and decision making using Temporal Fault Trees. Decis. Anal. J. 2023, 8, 100265. [Google Scholar] [CrossRef]
- Zio, E.; Miqueles, L. Digital Twins in safety analysis, risk assessment and emergency management. Reliab. Eng. Syst. Saf. 2024, 246, 110040. [Google Scholar] [CrossRef]
- Yazdi, M.; Mohammadpour, J.; Li, H.; Huang, H.Z.; Zarei, E.; Pirbalouti, R.G.; Adumene, S. Fault tree analysis improvements: A bibliometric analysis and literature review. Qual. Reliab. Eng. Int. 2023, 39, 1639–1659. [Google Scholar] [CrossRef]
- Zhang, R.; Geng, L.; Liu, W. Research on static fault tree analysis method for inerting system safety based on random number generation. Aircr. Eng. Aerosp. Technol. 2023, 95, 649–657. [Google Scholar] [CrossRef]
- Ren, X.; Du, Z.; Wang, J.; Yang, F.; Su, T.; Wei, W. Safety decision analysis of collapse accident based on “accident tree–analytic hierarchy process”. Nonlinear Eng. 2023, 12, 20220295. [Google Scholar] [CrossRef]
- Cheng, X.; Long, M.; He, W.; Zhu, H. Milling Fault Detection Method Based on Fault Tree Analysis and Hierarchical Belief Rule Base. Comput. Syst. Sci. Eng. 2023, 46, 2821. [Google Scholar] [CrossRef]
- He, L.; Tang, T.; Hu, Q.; Cai, Q.; Li, Z.; Tang, S.; Wang, Y. Integration of interpretive structural modeling with fuzzy Bayesian network for risk assessment of tunnel collapse. Math. Probl. Eng. 2021, 2021, 1–14. [Google Scholar] [CrossRef]
- Li, X.; Chen, C.; Yang, F. Exploring hazardous chemical explosion accidents with association rules and Bayesian networks. Reliab. Eng. Syst. Saf. 2023, 233, 109099. [Google Scholar] [CrossRef]
- Dao, U.; Sajid, Z.; Khan, F.; Zhang, Y. Safety analysis of blended hydrogen pipelines using dynamic object-oriented bayesian network. Int. J. Hydrogen Energy 2024, 52, 841–856. [Google Scholar] [CrossRef]
- Hunte, J.L.; Neil, M.; Fenton, N.E. A hybrid Bayesian network for medical device risk assessment and management. Reliab. Eng. Syst. Saf. 2024, 241, 109630. [Google Scholar] [CrossRef]
- Sakar, C.; Sokukcu, M. Dynamic analysis of pilot transfer accidents. Ocean. Eng. 2023, 287, 115823. [Google Scholar] [CrossRef]
- Yang, J.; Zhao, J.; Shao, L. Risk Assessment of Coal Mine Gas Explosion Based on Fault Tree Analysis and Fuzzy Polymorphic Bayesian Network: A Case Study of Wangzhuang Coal Mine. Processes 2023, 11, 2619. [Google Scholar] [CrossRef]
- Wang, Y.; Zhang, J.; Wu, G. Bayesian-based traffic safety evaluation study for driverless infiltration. Appl. Sci. 2023, 13, 12291. [Google Scholar] [CrossRef]
- Zhang, D.; Han, Z.; Zhang, K.; Zhang, J.; Zhang, M.; Zhang, F. Use of Hybrid Causal Logic Method for Preliminary Hazard Analysis of Maritime Autonomous Surface Ships. J. Mar. Sci. Eng. 2022, 10, 725. [Google Scholar] [CrossRef]
- Zhu, T.; Hu, J.; Wen, G.; Zhou, T. Research on Detection and Safety Analysis of Unfavorable Geological Bodies Based on OCTEM-PHA. Remote Sens. 2023, 15, 3888. [Google Scholar] [CrossRef]
- Dos Santos Nicolau, A.; Souto, E.J.; Melo, P.F.F. A Radiological and Chemical Fuzzy Risk Analysis of a Uf6 Enrichment Facility. SSRN 2024, 4686113. [Google Scholar] [CrossRef]
- Xing, Z.; Zhao, S.; Guo, W.; Meng, F.; Guo, X.; Wang, S.; He, H. Coal resources under carbon peak: Segmentation of massive laser point clouds for coal mining in underground dusty environments using integrated graph deep learning model. Energy 2023, 285, 128771. [Google Scholar] [CrossRef]
- Zhang, C.; Wang, P.; Wang, E.; Chen, D.; Li, C. Characteristics of coal resources in China and statistical analysis and preventive measures for coal mine accidents. Int. J. Coal Sci. Technol. 2023, 10, 22. [Google Scholar] [CrossRef] [PubMed]
- Wu, B.; Wang, J.; Zhong, M.; Xu, C.; Qu, B. Multidimensional Analysis of Coal Mine Safety Accidents in China–70 Years Review. Min. Metall. Explor. 2023, 40, 253–262. [Google Scholar] [CrossRef]
- Wang, Y.; Fu, G.; Lyu, Q.; Li, X.; Chen, Y.; Wu, Y.; Xie, X. Modelling and analysis of unsafe acts in coal mine gas explosion accidents based on network theory. Process Saf. Environ. Protect. 2023, 170, 28–44. [Google Scholar]
- Wei, B.; Li, Y.; Liu, G.; Zhao, Y. Risk Assessment for Vehicle Injury Accidents in Non-Coal Mines Based on Bow-Tie Model. Int. J. Wire. Mob. Comput. 2023, 24, 101–111. [Google Scholar] [CrossRef]
- Pandey, B.P.; Mishra, D.P. Developing an Alternate Mineral Transportation System by Evaluating Risk of Truck Accidents in the Mining Industry—A Critical Fuzzy DEMATEL Approach. Sustainability 2023, 15, 6409. [Google Scholar] [CrossRef]
- Andrews, J.; Tolo, S. Dynamic and dependent tree theory (D2T2): A framework for the analysis of fault trees with dependent basic events. Reliab. Eng. System Saf. 2023, 230, 108959. [Google Scholar] [CrossRef]
- Shi, D.; Gan, S.; Zurada, J.; Wang, F.; Wang, Y.; Guan, J. Research on the causes of earthwork foundation pit collapse based on Fault tree and Bayesian network. In Proceedings of the 57th Hawaii International Conference on System Sciences, Waikiki, HI, USA, 3–6 January 2024. [Google Scholar]
- Xiao, Q.; Li, Y.; Luo, F.; Liu, H. Analysis and assessment of risks to public safety from unmanned aerial vehicles using fault tree analysis and Bayesian network. Technol. Soc. 2023, 73, 102229. [Google Scholar] [CrossRef]
- Hamed, M.M.; AlShaer, A. Analysis of duration between crashes using a hazard-based duration approach with heterogeneity in means and variances: Some new evidence. Anal. Methods Accid. Res. 2023, 39, 100283. [Google Scholar] [CrossRef]
- Wang, Y.; Wang, Y.; Zhang, J.; Li, J.; Wu, Y. Research on the decision-making method of coal order price and coal purchase quantity based on prediction. Comput. Ind. Eng. 2024, 188, 109885. [Google Scholar] [CrossRef]
Level | Assigned Value | Deviation Frequency | Safety Inspection | Operating Procedures | Miner Competency (Awareness, Skills, Experience) |
---|---|---|---|---|---|
Improbable | 1 | Never occurred | Standards are well established and checked according to the standards during operations | Comprehensive and strictly followed operating procedures with documented records | Highly competent (holds valid certification, received effective training, possesses extensive experience, strong skills and safety awareness) |
Occasional | 2 | Occurs every year or has occurred in the past | Standards are well established but occasionally not checked according to the standards during operations | Comprehensive operating procedures but occasionally not followed | Competent (holds valid certification, received effective training, has experience and good skills, but occasional errors may occur) |
Very Likely | 3 | Occurs every quarter | Partial or infrequent checking of standards during operations | Incomplete or infrequent execution of operating procedure | Insufficiently competent (holds certification, but has not received effective training, lacks adequate operating skills) |
Frequent | 4 | Occurs every task or every month | No standards or failure to check according to the standards during operations | No operating procedures or complete disregard of operating procedures | Incompetent (lacks certification, no training, no operating skills) |
Level | Assigned Value | Personnel Fatalities | Personnel Serious Injuries | Property Damage | Workplace Environment Destruction |
---|---|---|---|---|---|
Negligible | 1 | 3 or fewer | more than 3 but less than 10 | Less than 10 million RMB | Impact limited to the vicinity of the accident |
Marginal | 2 | More than 3 but less than 10 | More than 10 but less than 50 | Between 10 million and 50 million RMB | Extends beyond the accident site, affecting nearby ecosystems and communities |
Hazardous | 3 | More than 10 but less than 30 | More than 50 but less than 100 | Between 50 million and 100 million RMB | Disrupts ecological balance, leading to long-term environmental degradation |
Catastrophic | 4 | More than 30 | More than 100 | More than 100 million RMB | Causes devastating impact on the ecological environment |
Risk Matrix (RM) | Likelihood Levels of Hazard Occurrence (L) | ||||
---|---|---|---|---|---|
1 | 2 | 3 | 4 | ||
Severity grade of risk consequences (S) | 1 | 1 | 2 | 3 | 4 |
2 | 2 | 4 | 6 | 8 | |
3 | 3 | 6 | 9 | 12 | |
4 | 4 | 8 | 12 | 16 |
Risk Value Range | Risk Level | Risk Status | Possible Consequences |
---|---|---|---|
1~2 | I | Safe | No accidents expected, no immediate action required. |
3~4 | II | Critical | Accident likely to occur but without significant harm or losses at present. Precautionary measures should be taken. |
6~9 | III | Hazardous | Accident occurrence could result in personnel injuries and system damage. Immediate risk control measures are necessary. |
12~16 | IV | Catastrophic | Potential for catastrophic accidents causing major personnel injuries and severe damage to the system. Immediate elimination of risks and focused prevention measures are essential. |
X CMTS Division | The Components of the X CMTS |
---|---|
Level Transport System | The common transportation system: 3 (DTL160 main roadway belt conveyor), 4 (DTL140 secondary roadway belt conveyor), 9 (DSJ100 belt conveyor), 10 (DSJ140 telescopic belt conveyor) 4,2115 comprehensive mining working face: 5 (DSJ140 telescopic belt conveyor),6 (SZZ1350 loader), 7 (PLM4500 crusher), 8 (SGZ1000 flexible scraper conveyor) 42,201 working face: 11 (SGB-40T scraper conveyor), 12 (DSJ80 belt conveyor) 42,202 working face: 13 (SGB630 scraper conveyor), 14 (DSJ00 belt conveyor) 42,203 working face: 15 (DSJ140 telescopic belt conveyor), 16 (SZZ1350 loader), 17 (PLM4500 crusher), 18 (SGZ1000 flexible scraper conveyor) |
Incline Transport System | 2 (DTL160 main inclined shaft belt conveyor) |
Vertical Shaft Hoisting System | 1 (upper bunker conveyor) |
Code | Event | Code | Event |
---|---|---|---|
A1 | Human factor | X5 | Improper equipment protection |
A2 | Machine factor | X6 | Not renovated in time |
A3 | Environmental factor | X7 | Failure of sand spreading device |
A4 | Operator problem | X8 | Acoustooptic signal failure |
A5 | Supervision and dispatching personnel issues | X9 | The type of work does not match the post |
A6 | Belt conveyor failure | X10 | Illegal car jacking |
A7 | Locomotive failure | X11 | Illegal parking |
A8 | Safety device failure | X12 | Pay no attention to the warning signal |
A9 | Uncomfortable working environment | X13 | Did not observe the surrounding environment |
A10 | Operation violation | X14 | Transporter deviation |
A11 | Operator mistake | X15 | Belt conveyor belt breakage |
A12 | Brake failure | X16 | Abnormal speed |
X1 | Insufficient lighting in roadway | X17 | Controller failure |
X2 | Unreasonable deployment | X18 | Corrosion of parts |
X3 | Lack of supervision | X19 | Small space |
X4 | Inadequate information communication | X20 | Presence of obstacles |
Code | Event | Code | Event |
---|---|---|---|
B1 | Human factor | Y6 | Mine car derailment |
B2 | Machine factor | Y7 | Axle breakage |
B3 | Environmental factor | Y8 | Hazardous gas |
B4 | Personnel violation | Y9 | Dust pollution |
B5 | Skill errors | Y10 | Pedestrians during operation |
B6 | Rope breakage | Y11 | Fail to avoid in time |
B7 | Mine car failure | Y12 | Unauthorized leaving the post |
B8 | Connection device issues | Y13 | Overspeed or overloaded driving |
B9 | Poor ventilation | Y14 | Excessive acceleration |
B10 | Personnel in danger zone | Y15 | Sudden interruption of operation |
B11 | Violation of construction schedule | Y16 | Wear or corrosion |
B12 | Rope impact force | Y17 | Insufficient strength |
B13 | Quality issues | Y18 | Rope entanglement |
B14 | Incorrect usage | Y19 | Failure to use safety rope |
B15 | Connecting device failure | Y20 | Unlatched or improperly inserted |
Y1 | Unsuitable temperature | Y21 | Failure to hang hooks or chains |
Y2 | Severe noise pollution | Y22 | Chain link fracture |
Y3 | Failure to issue warning signals | Y23 | Pin ejection or fracture |
Y4 | Improper personnel deployment | Y24 | Hook, chain or rope buckle failure |
Y5 | Poor emergency response |
Code | Event | Code | Event |
---|---|---|---|
C1 | Human factor | Z6 | Signal device failure |
C2 | Machine factor | Z7 | Machine body not repaired |
C3 | Environmental factor | Z8 | Container overwinding |
C4 | Operator error | Z9 | Excessive inclination |
C5 | Other personnel errors | Z10 | Narrow passage |
C6 | Protection device failure | Z11 | Driver’s violation |
C7 | Hoist failure | Z12 | Fatigue driving |
C8 | Wire rope fault | Z13 | Overspeed and overweight |
C9 | Inappropriate transport space | Z14 | Failure to issue warning signals |
C10 | Violation of regulations in operation | Z15 | Failure to handle emergencies according to regulations |
C11 | Poor emergency response capability | Z16 | Misalignment of brake disc |
C12 | Brake system failure | Z17 | Brake shoe wear |
C13 | Circuit problems | Z18 | Spring fatigue |
C14 | Quality issues | Z19 | Electrical leakage |
C15 | Connection failure | Z20 | Failure of electrical leakage protection |
Z1 | Inadequate lighting | Z21 | Wear |
Z2 | Mining depth discrepancy | Z22 | Corrode |
Z3 | Illegal traffic | Z23 | Pin fracture |
Z4 | Illegal ride | Z24 | Chain link fracture |
Z5 | Illegal operation | Z25 | Connector failure |
CMTS | The First-Order Minimal Cut Sets | The Second-Order Minimal Cut Sets |
---|---|---|
Coal mine level roadway transportation system | , , , , , , , , , , , , , | , |
Coal mine inclined roadway transportation system | , , , , , | |
Coal mine vertical shaft lifting transportation system | , , , , , , , , , , , , , , , , , , | , , , , , |
Event | Importance | Event | Importance | Event | Importance |
---|---|---|---|---|---|
X11 | 1.5 | X5 | 1.5 | X18 | 1 |
X12 | 1.5 | X6 | 1 | X2 | 1 |
X4 | 1.5 | X1 | 1 | X7 | 1 |
X15 | 1.5 | X3 | 1 | X10 | 0.5 |
X17 | 1.5 | X9 | 1 | X16 | 0.5 |
X19 | 1.5 | X8 | 1 | X13 | 0.5 |
X20 | 1.5 | X14 | 1 |
Event | Importance | Event | Importance | Event | Importance |
---|---|---|---|---|---|
Y6 | 1.5 | Y2 | 1.5 | Y7 | 1 |
Y10 | 1.5 | Y18 | 1.5 | Y8 | 1 |
Y3 | 1.5 | Y19 | 1.5 | Y9 | 1 |
Y12 | 1.5 | Y21 | 1.5 | Y22 | 0.5 |
Y13 | 1.5 | Y24 | 1.5 | Y11 | 0.5 |
Y16 | 1.5 | Y1 | 1 | Y14 | 0.5 |
Y17 | 1.5 | Y4 | 1 | Y15 | 0.5 |
Y23 | 1.5 | Y5 | 1 | Y20 | 0.5 |
Event | Importance | Event | Importance | Event | Importance |
---|---|---|---|---|---|
Z3 | 1.5 | Z24 | 1.5 | Z17 | 1 |
Z6 | 1.5 | Z20 | 1.5 | Z1 | 1 |
Z11 | 1.5 | Z22 | 1.5 | Z9 | 1 |
Z13 | 1.5 | Z8 | 1.5 | Z15 | 1 |
Z25 | 1.5 | Z4 | 1.5 | Z23 | 0.5 |
Z2 | 1.5 | Z16 | 1 | Z10 | 0.5 |
Z5 | 1.5 | Z12 | 1 | Z18 | 0.5 |
Z7 | 1.5 | Z19 | 1 | Z21 | 0.5 |
Z14 | 1.5 |
CMTS | First-Tier Ranking ) | Second-Tier Ranking ) | Third-Tier Ranking ) |
---|---|---|---|
Coal mine level roadway transportation system | , , | , , , | |
Coal mine inclined roadway transportation system | |||
Coal mine vertical shaft hoisting transportation system | , , , , , , , , , , , , , | , , , , , , | , , , |
Root node | Frequency | Prior Probability | Root Node | Frequency | Prior Probability |
---|---|---|---|---|---|
X1 | 12 | 0.201 | X11 | 18 | 0.300 |
X2 | 10 | 0.167 | X12 | 10 | 0.167 |
X3 | 12 | 0.201 | X13 | 12 | 0.201 |
X4 | 13 | 0.217 | X14 | 9 | 0.150 |
X5 | 10 | 0.167 | X15 | 13 | 0.217 |
X6 | 9 | 0.150 | X16 | 10 | 0.167 |
X7 | 10 | 0.167 | X17 | 14 | 0.233 |
X8 | 11 | 0.183 | X18 | 10 | 0.167 |
X9 | 8 | 0.133 | X19 | 12 | 0.201 |
X10 | 15 | 0.250 | X20 | 9 | 0.150 |
Root node | Frequency | Prior Probability | Root node | Frequency | Prior Probability |
---|---|---|---|---|---|
Y2 | 10 | 0.161 | Y14 | 10 | 0.126 |
Y3 | 10 | 0.161 | Y15 | 11 | 0.177 |
Y4 | 9 | 0.145 | Y16 | 13 | 0.210 |
Y5 | 12 | 0.194 | Y17 | 10 | 0.161 |
Y6 | 18 | 0.290 | Y18 | 9 | 0.145 |
Y7 | 14 | 0.226 | Y19 | 11 | 0.177 |
Y8 | 8 | 0.129 | Y20 | 13 | 0.210 |
Y9 | 7 | 0.113 | Y21 | 8 | 0.129 |
Y10 | 14 | 0.226 | Y22 | 10 | 0.161 |
Y11 | 15 | 0.242 | Y23 | 9 | 0.145 |
Y12 | 10 | 0.161 | Y24 | 6 | 0.106 |
Root Node | Frequency | Prior Probability | Root Node | Frequency | Prior Probability |
---|---|---|---|---|---|
Z2 | 9 | 0.115 | Z15 | 10 | 0.126 |
Z3 | 25 | 0.316 | Z16 | 14 | 0.183 |
Z4 | 12 | 0.152 | Z17 | 16 | 0.202 |
Z5 | 8 | 0.101 | Z18 | 9 | 0.115 |
Z6 | 17 | 0.215 | Z19 | 15 | 0.194 |
Z7 | 14 | 0.183 | Z20 | 13 | 0.162 |
Z8 | 15 | 0.194 | Z21 | 9 | 0.115 |
Z9 | 11 | 0.141 | Z22 | 10 | 0.126 |
Z10 | 10 | 0.126 | Z23 | 12 | 0.146 |
Z11 | 18 | 0.225 | Z24 | 14 | 0.183 |
Z12 | 12 | 0.146 | Z25 | 15 | 0.194 |
Z13 | 16 | 0.202 |
Root Node | Posterior Probability | Importance Ranking | Root Node | Posterior Probability | Importance Ranking |
---|---|---|---|---|---|
X1 | 0.203 | 1 | X11 | 0.314 | 6 |
X2 | 0.171 | 3 | X12 | 0.172 | 4 |
X3 | 0.204 | 2 | X13 | 0.201 | 0 |
X4 | 0.226 | 5 | X14 | 0.153 | 3 |
X5 | 0.172 | 4 | X15 | 0.231 | 6 |
X6 | 0.154 | 3 | X16 | 0.169 | 1 |
X7 | 0.169 | 1 | X17 | 0.242 | 5 |
X8 | 0.186 | 2 | X18 | 0.171 | 3 |
X9 | 0.137 | 3 | X19 | 0.206 | 4 |
X10 | 0.252 | 1 | X20 | 0.156 | 4 |
Root Node | Posterior Probability | Importance Ranking | Root Node | Posterior Probability | Importance Ranking |
---|---|---|---|---|---|
Y1 | 0.133 | 3 | Y13 | 0.279 | 4 |
Y2 | 0.166 | 4 | Y14 | 0.129 | 2 |
Y3 | 0.233 | 5 | Y15 | 0.181 | 3 |
Y4 | 0.149 | 3 | Y16 | 0.217 | 5 |
Y5 | 0.196 | 1 | Y17 | 0.166 | 4 |
Y6 | 0.306 | 6 | Y18 | 0.149 | 3 |
Y7 | 0.229 | 2 | Y19 | 0.180 | 2 |
Y8 | 0.131 | 1 | Y20 | 0.215 | 4 |
Y9 | 0.115 | 1 | Y21 | 0.133 | 3 |
Y10 | 0.241 | 6 | Y22 | 0.163 | 1 |
Y11 | 0.246 | 3 | Y23 | 0.154 | 5 |
Y12 | 0.167 | 4 | Y24 | 0.112 | 4 |
Root Node | Posterior Probability | Importance Ranking | Root Node | Posterior Probability | Importance Ranking |
---|---|---|---|---|---|
Z1 | 0.258 | 3 | Z14 | 0.132 | 4 |
Z2 | 0.121 | 4 | Z15 | 0.130 | 4 |
Z3 | 0.331 | 6 | Z16 | 0.187 | 2 |
Z4 | 0.157 | 3 | Z17 | 0.205 | 2 |
Z5 | 0.107 | 4 | Z18 | 0.121 | 4 |
Z6 | 0.227 | 6 | Z19 | 0.198 | 2 |
Z7 | 0.189 | 4 | Z20 | 0.167 | 3 |
Z8 | 0.198 | 2 | Z21 | 0.121 | 4 |
Z9 | 0.146 | 3 | Z22 | 0.131 | 3 |
Z10 | 0.128 | 1 | Z23 | 0.148 | 1 |
Z11 | 0.235 | 5 | Z24 | 0.185 | 1 |
Z12 | 0.150 | 2 | Z25 | 0.202 | 5 |
Z13 | 0.212 | 5 |
No. | Factor | Causes | Consequences | Level | Countermeasures |
---|---|---|---|---|---|
1 | Unauthorized riding (R = 8) | 1. Loose labor discipline and habitual violation of regulations. 2. Insufficient inspection personnel leading to workers having a sense of luck. | Workers disregard coal mine safety regulations and supervision responsibilities, posing a threat to personnel safety. | III | 1. Standardize training to ensure that new mine employees receive no less than 72 h of training, and job changers also need to undergo retraining. 2. Strictly implement the job responsibility system and follow-up system, supervising employees to operate in accordance with the Coal Mine Safety Regulations. |
2 | Belt transport machine belt breakage (R = 3) | 1. Damage or fracture of belt joint, failure of belt protection. 2. Belt deviation or being scraped by foreign objects. | Belt damage, deviation, and failure of protection device may cause accidents and injuries. | II | 1. Strictly implement low-speed belt verification system, strengthen dynamic monitoring of running belt, and timely and accurately determine the working status of belt joints. 2. Strengthen maintenance and repair of equipment such as iron removers and crushers, ensure their normal operation, and avoid damage to the conveyor belt caused by large iron objects or gangue. |
3 | Controller malfunction (R = 6) | 1. Breakage of collector, automatic switch, or starting resistor. 2. Fragmentation of controller positioning mechanism or loss of rollers. | Controller breakage, improper installation of pressure roller fragments, and uneven force may cause control failure, leading to accidents and casualties. | III | 1. Regularly check the position of control valve handle, foot pedal, and other accessories and promptly replace damaged parts. 2. Replace the pressure roller fragment structure with a positioning lever structure, and conduct heat treatment on the rollers and positioning cam to enhance their strength. |
4 | Delayed information communication (R = 6) | 1. Signal worker lacks professional skills, and signal system is not perfect. 2. Signal devices have malfunctions and repairs are not timely. | Incorrect information transmission or inability to transmit signals due to malfunctions may prevent personnel from taking preventive measures against hazards. | III | 1. Install independent audio, visual signal systems, and communication devices at each working point underground to ensure effective operation of the signal system. 2. Establish a safety management model, strengthen hazard screening, accurately grasp risk information, in order to timely develop effective preventive measures. |
No. | Factor | Causes | Consequences | Level | Countermeasures |
---|---|---|---|---|---|
1 | Wheel derailment (R = 6) | 1. Foreign objects blocking the bearing pipeline, severe bearing wear. 2. Poor lubrication, sliding at bends causing excessive wear on the wheels. | Increased friction between the wheels and track due to bearing blockage and wear, leading to wheel derailment. | III | 1. Adopt new sealing components to maintain tight contact between bearings, automatically compensate for clearances, and prevent water and mud from entering. 2. Use lithium-based grease with good mechanical stability and water resistance. Widening the track gauge and raising the outer rail at bends to reduce operational resistance and wear. |
2 | Pedestrians during operation (R = 4) | 1. Lack of safety awareness, failure to enter refuge chambers. 2. Failure to observe surroundings during vehicle operation. | Employees ignoring safety regulations, pedestrians or drivers not paying attention to their surroundings during operation, resulting in accidents. | II | 1. Strictly enforce the “No pedestrians during vehicle operation” rule, prohibiting any personnel from working while vehicles are in operation. 2. Ensure refuge chambers are available every 40 m in dual-purpose roadways, and personnel are prohibited from leaving refuge chambers when vehicles are not fully stopped. |
3 | Failure to issue warning signals (R = 8) | 1. Lack of concentration by signal workers or drivers, leading to operational errors. 2. Signal devices malfunctioning, lack of backup equipment. | Poor concentration by operators or malfunctioning signal devices, resulting in delayed or absent warning signals, making it difficult for pedestrians or vehicles to detect hazards in a timely manner. | III | 1. Strictly require drivers to slow down and observe surroundings when entering construction areas and issue warnings in advance. 2. Conduct pre-transportation checks to ensure sensitivity and completeness of signal systems and provide backup equipment as planned. |
4 | Bolt popping out or breaking (R = 6) | 1. Careless operation by personnel, incomplete connection of bolts. 2. Poor quality of bolts. | Incomplete connection or poor-quality bolts popping out or suddenly breaking, causing equipment failure and accidents. | III | 1. Improve the skills of operators through regular skill training and effective assessments. 2. Each vehicle unit must conduct inspections and maintenance of all connecting devices according to regulations every quarter, with no unauthorized disassembly allowed. |
5 | Equipment damage or corrosion (R = 3) | 1. Poor equipment performance, incomplete components. 2. Poor operating environment or inadequate lubrication. | Equipment damage or corrosion due to poor equipment performance or operating environment, resulting in accidents and casualties. | II | 1. Strengthen equipment performance inspections and testing, ensuring that newly acquired equipment has “Coal Safety Mark” and prohibiting the use of unqualified equipment. 2. Further implement regular inspections and daily checks of transportation equipment and facilities. |
No. | Factor | Causes | Consequences | Level | Countermeasures |
---|---|---|---|---|---|
1 | Violation of regulations by personnel (R = 8) | 1. Inadequate safety education and training, employees unable to identify workplace hazards. 2. Weak enforcement of regulations. | Employees not following regulations during operations or passage, resulting in underground transportation accidents and causing casualties and losses. | III | 1. Conduct weekly safety training and assessments, and provide rewards or punishments based on assessment results. 2. Strictly prohibit the mixing of personnel and cargo, and vehicles must honk and slow down when there are people ahead. 3. Establish refuge chambers and require personnel to correctly wear and use protective equipment. |
2 | Signal device failure (R = 4) | 1. Inadequate maintenance of audio and visual signal devices, long repair periods. 2. Signal workers lacking professional skills or making operational errors. | Signal devices malfunctioning or failing to function properly due to maintenance issues or operator errors, resulting in failure to provide timely warnings to personnel. | II | 1. Regularly inspect and maintain safety signal devices, and have backup devices available. 2. Clearly define signal instruction systems, ensuring that different instructions have distinct characteristics, especially emergency signals that must be effectively received by all personnel. |
3 | Violation of regulations by drivers (R = 8) | 1. Poor mental state of employees, lack of concentration. 2. Drivers leaving their posts without authorization, inadequate skill training. | Drivers violating regulations leading to improper control of the main hoist or winch, compromising the safety of the lifting transportation system and causing casualties and losses. | III | 1. Drivers must be certified and proficient in emergency measures to handle unexpected situations and undergo regular skill assessments. 2. According to the requirements of the lifting position, there must be a main and assistant driver on each shift, with a minimum of two personnel, one operating the vehicle and the other supervising. |
4 | Overloading and overspeeding (R = 6) | 1. T Inaccurate calculation of the maximum load capacity of the hoist, improper design. 2. Inappropriate track slope design. | Overloading and overspeeding can cause the mine car to lose control and result in runaway accidents, causing casualties. | III | 1. Check the loading conditions of the mine car before operation, strictly adhere to loading standards, and ensure the actual load is less than or equal to the rated load. 2. Improve the working environment on site, ensure that track design meets safety requirements, and use safety protective devices. |
5 | Failure of connecting components (R = 4) | 1. Inappropriate use of connecting components, presence of wear and corrosion. 2. Poor on-site equipment management and inadequate hazard identification. | Wear or corrosion of connecting components can affect the safe and reliable operation of the lifting equipment, potentially causing lifting transportation accidents. | II | 1. Strictly follow safety rules for equipment use, regularly clean the connecting components to reduce the wear caused by oil and dirt, and extend their service life. 2. Before maintenance, maintenance personnel must enter the hoist room to dynamically inspect and inquire about the operation of the hoist from the driver, and take necessary safety precautions during maintenance. |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2024 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
He, L.; Pan, R.; Wang, Y.; Gao, J.; Xu, T.; Zhang, N.; Wu, Y.; Zhang, X. A Case Study of Accident Analysis and Prevention for Coal Mining Transportation System Based on FTA-BN-PHA in the Context of Smart Mining Process. Mathematics 2024, 12, 1109. https://doi.org/10.3390/math12071109
He L, Pan R, Wang Y, Gao J, Xu T, Zhang N, Wu Y, Zhang X. A Case Study of Accident Analysis and Prevention for Coal Mining Transportation System Based on FTA-BN-PHA in the Context of Smart Mining Process. Mathematics. 2024; 12(7):1109. https://doi.org/10.3390/math12071109
Chicago/Turabian StyleHe, Longlong, Ruiyu Pan, Yafei Wang, Jiani Gao, Tianze Xu, Naqi Zhang, Yue Wu, and Xuhui Zhang. 2024. "A Case Study of Accident Analysis and Prevention for Coal Mining Transportation System Based on FTA-BN-PHA in the Context of Smart Mining Process" Mathematics 12, no. 7: 1109. https://doi.org/10.3390/math12071109
APA StyleHe, L., Pan, R., Wang, Y., Gao, J., Xu, T., Zhang, N., Wu, Y., & Zhang, X. (2024). A Case Study of Accident Analysis and Prevention for Coal Mining Transportation System Based on FTA-BN-PHA in the Context of Smart Mining Process. Mathematics, 12(7), 1109. https://doi.org/10.3390/math12071109