A Numerical Study on the Influence of CO2 Injection Location and Flow Rate on the Oxidation Zone in Goaf
Abstract
1. Introduction
2. Methods
2.1. Continuity Equation
2.2. Momentum Equation
2.3. Energy Equation
2.4. Seepage Parameters for the Goaf Model
3. Model Verifications
3.1. Simulation Case
3.2. Physical Model
3.3. Numerical Simulation Results
3.4. Model Validation and Comparative Analysis
4. Analysis of the Impact of CO2 Injection Parameters on Spontaneous Combustion in the Goaf
4.1. Injection Location
4.2. Injection Flow Rate
5. Conclusions
- (1)
- Using numerical simulation methods to evaluate the effectiveness of CO2 injection in the goaf, it was found that injecting CO2 at a location at least 10 m from the working face on the intake side significantly reduces oxygen concentration and shrinks the oxidation zone area, thereby mitigating the low-temperature oxidation and spontaneous combustion of residual coal.
- (2)
- Comparative analysis of different injection parameters confirmed that CO2 injection displaces oxygen within a certain range in the goaf, which is closely related to the distribution of airflow velocity in the goaf.
- (3)
- By comparing eight injection scenarios, it was determined that the most significant reduction in oxidation zone width occurs when the injection port is 15 m from the working face with a flow rate of 4.41 m3/min. This study found that, within the tested range, the injection location has a more dominant influence on the oxidation zone width than the injection flow rate. To quantitatively substantiate the claim that injection location plays a dominant role over flow rate, the average change in oxidation zone width was calculated. Varying the injection location (across 5, 10, 15 and 25 m) led to an average change in oxidation zone width of approximately 45 m per 10-m shift in location, when averaged over the two flow rates. In contrast, varying the injection flow rate (between 2.94 and 4.41 m3/min) resulted in an average change of only about 10 m per 1.47 m3/min flow rate increase, when averaged across all locations. This finding provides a significant refinement to the existing understanding. While Li et al. [12] identified an optimal location for the Jiudaoling mine and Huang et al. [13] determined optimal parameters for a coking coal mine, their studies were context-specific. Our work generalizes this concept by demonstrating that the injection location is a primary controlling factor. This implies that in practice, engineers should prioritize the precise positioning of injection ports before fine-tuning the flow rate. This strategic insight can significantly enhance the efficiency of fire prevention planning.
- (4)
- This study provides a viable methodology for researching CO2 injection technology in goaf fire prevention. However, it is important to acknowledge its limitations. The numerical model, while consistent with literature findings [11], has not been directly validated against experimental or field measurement data from the specific mine, which introduces some uncertainty to the absolute quantitative results. The model assumed a uniform initial goaf temperature of 293.15 K and zero initial CO2 concentration. These assumptions, while simplifying the analysis, may not fully represent the actual conditions in deep mining environments where higher geothermal temperatures and pre-existing CO2 could influence gas behavior. Furthermore, the range of injection parameters investigated was limited [26], and a comprehensive sensitivity or uncertainty analysis of key input parameters was not conducted. These shortcomings will be addressed in future work. Our next steps include conducting detailed parametric sensitivity studies and collaborating with industry partners to collect in situ goaf monitoring data for direct model calibration and validation. Despite these limitations, the identified trends and the dominant role of injection location provide valuable strategic insights. For practical engineering applications, the model proposed by Li et al. [13] can be referenced to calculate the adsorption-compensated injection volume based on the goaf temperature field, thereby optimizing injection parameters for more precise and cost-effective fire prevention.
- (5)
- Furthermore, this modeling framework can be seamlessly extended beyond fire prevention to evaluate the synergistic potential of integrating CO2 injection with CO2 geological sequestration, a cornerstone of green mining initiatives. The same model that simulates O2 displacement for fire inerting can simultaneously track the transport, distribution, and long-term fate of the injected CO2 within the goaf. Key sequestration performance indicators, such as the effective CO2 storage capacity of the goaf, and its adsorption by residual coal, can be incorporated and assessed. This study observed that optimal fire prevention was achieved when CO2 accumulated and persisted in the deep goaf areas (15–25 m), forming a stable barrier. This very condition is also ideal for sequestration, as it indicates minimal CO2 leakage back to the working face and maximizes the contact time and volume for adsorption and dissolution. Therefore, the pursuit of optimal fire prevention parameters using this model inherently helps identify scenarios that favor higher CO2 sequestration efficiency, creating a dual benefit. Future work will explicitly integrate these sequestration metrics into the simulation outcomes, providing a comprehensive tool for designing combined safety and environmental management strategies in coal mines.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| Parameter | Symbol | Unit | Value |
|---|---|---|---|
| The initial temperature of goaf | K | 293.15 | |
| Initial oxygen concentration in goaf | mol/m3 | 8.3142 | |
| Initial CO2 concentration in goaf | mol/m3 | 0 | |
| Attenuation rates from the working face | Dimensionless | 0.08 | |
| Attenuation rates from the solid boundaries | Dimensionless | 0.368 | |
| Distribution shape adjustment coefficient | Dimensionless | 0.323 | |
| Minimum bulk factors | Dimensionless | 1.12 | |
| Maximum bulk factors | Dimensionless | 1.5 | |
| The CO2 diffusion coefficient in the standard state | m2/s | 3.5 × 10−5 | |
| The density of coal | kg/m3 | 1410 | |
| Goaf height | m | 15 |
| Cases | Injection Location | Injection Flow Rate |
|---|---|---|
| A1 | 5 m | 2.94 m3/min |
| A2 | 5 m | 4.41 m3/min |
| B1 | 10 m | 2.94 m3/min |
| B2 | 10 m | 4.41 m3/min |
| C1 | 15 m | 2.94 m3/min |
| C2 | 15 m | 4.41 m3/min |
| D1 | 25 m | 2.94 m3/min |
| D2 | 25 m | 4.41 m3/min |
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Cheng, G.; Wei, B.; Xiao, C.; Dai, Y.; Wang, Y.; Zhang, S.; Zhang, X. A Numerical Study on the Influence of CO2 Injection Location and Flow Rate on the Oxidation Zone in Goaf. Appl. Sci. 2025, 15, 12181. https://doi.org/10.3390/app152212181
Cheng G, Wei B, Xiao C, Dai Y, Wang Y, Zhang S, Zhang X. A Numerical Study on the Influence of CO2 Injection Location and Flow Rate on the Oxidation Zone in Goaf. Applied Sciences. 2025; 15(22):12181. https://doi.org/10.3390/app152212181
Chicago/Turabian StyleCheng, Gang, Bin Wei, Chang Xiao, Yiming Dai, Yuqi Wang, Shiyi Zhang, and Xian Zhang. 2025. "A Numerical Study on the Influence of CO2 Injection Location and Flow Rate on the Oxidation Zone in Goaf" Applied Sciences 15, no. 22: 12181. https://doi.org/10.3390/app152212181
APA StyleCheng, G., Wei, B., Xiao, C., Dai, Y., Wang, Y., Zhang, S., & Zhang, X. (2025). A Numerical Study on the Influence of CO2 Injection Location and Flow Rate on the Oxidation Zone in Goaf. Applied Sciences, 15(22), 12181. https://doi.org/10.3390/app152212181

