Development of Rockburst Research: A Comprehensive Review
Abstract
:1. Introduction
2. Rockburst Definition and Types
2.1. Rockburst Definition
- Whether rockburst occurs only in hard brittle rock mass.
- Whether static failure, such as spalling and splicing, is rockburst.
- Whether pressure bump can be attributed to rockburst.
- Rockburst failure is a dynamic instability phenomenon, which is essentially different from static failure. Simple static failure does not belong to rockburst, but the precursory phenomenon of rockburst may be static failure.
- Pressure bump has the characteristics of high intensity, long lag time and large influence range, but its essence is the same as rockburst and thus it can be generalized as rockburst.
2.2. Rockburst Types
3. Technologies and Methods for Rockburst Research
3.1. Theoretical Research
3.2. Numerical Simulation Techniques
3.3. Physical Model Tests
- A cylinder core is preinserted into a test specimen and then pulled out after the test specimen dries to complete the tunnel specimen. The effect of tunnel formation is good, but it does not well simulate the process of tunnel excavation and the characteristics of stress redistribution.
- A cylinder core consisting of several small sections (the mechanical properties, such as elastic modulus, should be as consistent with the test specimen as possible) is preinserted into a test specimen and then pushed out in sequence (simulating sectional excavation) after the test specimen dries and is loaded to initial stress. The difficulty is that it is necessary to make the deformation of small sections consistent with the test specimen and small sections are difficult to be pushed out under high stress.
- After the test specimen dries and is loaded to the initial stress, the specimen is manually excavated to create a tunnel by a drilling rig or small excavation machine. However, when the tunnel is long and there is concealed excavation, it is difficult to excavate manually in a narrow space.
- The advantage is high efficiency, but there is still a great difference between a simple mechanical rock breaking mechanism and an in situ machine, which makes the accuracy of the test result low. Therefore, the interaction mechanism of the TBM excavation rate, cutter head thrust, torque, shoe pressure, shield pressure to rockburst, reasonable selection of explosive, similarity index of the blasting effect evaluation for drilling and blasting method are the keys to increasing the accuracy of the test result.
3.4. In Situ Monitoring
4. Rockburst Mechanism
5. Rockburst Intensity Classification and Prediction
5.1. Empirical Criteria for Rockburst Intensity Classification and Prediction
5.2. Microseismic Monitoring Technology for Rockburst Prediction
Name | Basic Equations | MS Aspects | Key References | Common Features |
---|---|---|---|---|
b value | logN(M) = a − bM N(M) is the cumulative number of MS events having magnitude larger than M and a and b are constants. It has been shown in laboratory studies, field observations and numerical simulations that the slope of this distribution curve depends on stress conditions. | Magnitude | Gutenberg et al. (1944) [117]; Li et al. (2017) [118]; Cao et al. (2018) [119] | Statistical feature indices. |
Lack of shock bL | bL = loge/(Mmean − Mmin) Mmean is the mean magnitude and Mmin is the minimum magnitude of given MS events. | Magnitude | Aki (1965) [120] | |
Fractal dimension | D | Spatial | Xie et al. (1993) [36] | |
C(r) is the correlation integral of the energy or number of MS events and r is the energy or spatial radio scale. | Magnitude | Feng et al. (2016) [114] | ||
Moment tensor | Percentage of the shear component of moment tensor. | Magnitude | Gibowicz et al. (1994) [121]; Xiao et al. (2016) [122] | Source mechanism parameters. |
Energy ratio | Ratio of the S-wave and P-wave energies (ES/EP). | Magnitude | Gibowicz et al. (1994) [121] | |
Seismic diffusivity | is the mean distance between consecutive events and t is the mean time between events. | Temporal and spatial | Mendecki 1996 [123] | |
Apparent stress/volume | σA = μEA/M0 μ is the shear rigidity modulus, EA is the MS energy and M0 is the MS moment. | Magnitude | Mendecki 1996; [123] Tang et al.(2010) [124] | |
Energy index | is the average energy released by events of the same MS moment. | Magnitude | Mendecki 1996; [123] Tang et al.(2010) [124] Xu et al. (2011) [125] | |
Number of events ΣN | Total number of MS events in a given time window. | Temporal | Srinivasan et al. (1997) [126] | |
Amount of energy ΣE | Total amount of MS energy in a given time window. | Magnitude | ||
Source concentration degree | λ1, λ2 and λ3 are standard orthogonal eigenvectors of the covariance matrix of MS hypocentre parameters x, y, z. | Spatial | Cai et al. (2014) [127] | |
Fault total area | k0 is the lower limit of the statistical MS energy level and k is the energy level of each event. N(k) is the event count of MS energy level k. | Magnitude | Lu et al. (2015) [128] |
5.3. Mathematical Model Approaches for Rockburst Classification and Prediction
5.3.1. Uncertainty Theory Techniques
5.3.2. Machine Learning
5.4. Rockburst Chart
6. Rockburst Prevention and Control
Country | Location | Buried Depth of Main Rockburst Sites/m | Rock Types | Main Prevention and Control Measures |
---|---|---|---|---|
China | Jinchuan No.2 Mine [174] | 470~800 | Marble, Granite, Migmatite | Strengthen support, in situ monitoring, stress relief |
Dongguashan Copper Mine [175] | 800~1150 | Skarn | Optimize mining method, sequence and parameters; monitoring, flexible support | |
Erdaogou Gold Mine [176] | 1050 | Diorite | Improve mining technology and methods, optimize mining sequence and support | |
Ling Long Gold Mine [177] | 650~1100 | Granite | Optimize mining sequence, filling mining, improve support, blasting methods, in situ monitoring | |
Dahongshan Iron Mine [178] | 807~1301 | Marble, Schist Gabbro diabase, Metasodic lava, | Controlled blasting, watering and softening, optimize and strengthen support | |
Changba Lead–Zinc mine [179] | 700~1082 | Quartz schist, Marble | Change mining methods, fill goaf and stope | |
Jiguanzui Gold Mine [180] | 1024 | Quartz monzonite, Long porphyrite | Improve excavation process sequence, strengthen support | |
Erlang mountain Tunnel of Sichuan-Tibet highway [181] | 770 | Mudstone, Siltstone, Marlstone, Sandstone | Surrounding rock monitoring, high-pressure watering, optimization of excavation scheme, combined support | |
Qinling Zhongnanshan Tunnel [182] | 1640 | Migmatitic gneiss, Granite | Stress relief by drilling, excavation of small sections, select the best support time | |
Cangling Mountain Tunnel [183] | Tuff, Granite | Improve excavation methods, advance bolt reinforcement, high-pressure watering | ||
Jinping II Hydropower Station, Diversion Tunnel [184] | 2525 | Sandstone, Slate, Limestone, Marble | Improve stress state of surrounding rock, combined support and construction methods | |
Yebatan Hydropower Station, Tailrace Tunnel [185] | 709 | Quartzite, Granite | Optimize excavation method, advance stress relief, strengthen support | |
Canada | Kirkland Lake Gold Mine [186] | 630~2520 | Porphyry, Alkaline Syenite | Central stress relief by blasting, change mining technology, strengthen shaft support |
Creighton Mine [186] | 700~2400 | Granite, Gabbro Norite | Stress relief by blasting, optimize mining sequence, filling mining, improve support methods, strengthen rock mechanics research, microseismic monitoring | |
New Brunswick Lead–Zinc Mine [186] | 892 | Sulfide ore | Change mining technology and support methods, stress relief, real-time monitoring of surrounding rock stress | |
America | Star Lead–Zinc Mine Burke, Idaho [2] | 1120~2440 | Quartzite | Advance stress relief by blasting, microseismic monitoring |
Sunshine Siderite Mine Kellogg, Idaho [2] | 2100 | Quartzite, Pelitic siltstone | Limit the number of stopes, single shift operation, microseismic monitoring, diversification of support methods | |
Galena Silver Mine Wallace, Idaho [2] | 2400~3000 | Quartzite | Improve mining methods and technology, optimize mining sequence, stress relief by blasting, monitoring of surrounding rock stress | |
Lucky Friday Silver-Lead Mine, Mullan, Idaho [2] | 1808 | Quartzite | Change mining geometry and monitoring of surrounding rock stress | |
Brunswick Mine Bathust, New Brunswick [2] | 725~1000 | Tuff | Change of mining method, modified cone bolts, real-time quantitative seismic system | |
Strathcona Mine Onaping, Ontario [2] | 2300~2500 | Breccia, Granite gneiss | Microseismic system, shotcrete, support system | |
Creighton Mine Sudbury, Ontario [2] | 1200~2000 | Granites, Gabbros, Quartz diorite | Change of mining method, improved microseismic and seismic systems | |
Chile | El Teniente Copper Mine [187] | Diorite, Andesite | Strengthen support, change mining methods | |
Australia | Mount Charlotte Gold Mine [188] | 1200 | Dolerite | Improve and strengthen support, strengthen monitoring |
Poland | Lubin Copper Mine [189] | 600~1000 | Sandstone, Dolomite, Shale | Stress relief by blasting, filling mining, control of structural parameters |
Norway | Diversion Tunnel of Sima Hydropower Station [190] | 700 | Granite | Optimize support, adjust geometry of underground cavern section |
7. Discussions
- Regarding numerical simulations, most numerical simulation studies of rockburst adopt a continuous media mechanics model, which has the deficiency of being unable to simulate the large deformation mechanical behavior of discontinuous media in rockburst development. DEM can make up for this deficiency, but the shortcoming of DEM is also obvious. The three elements, namely, motion, force and deformation, need artificial assumptions, resulting in more input parameters and calibration. Complex data structure, grid retrieval, determination of adjacent blocks and detection of generation or cancellation for block contact will consume a large computational cost.
- Regarding the physical model tests, due to loading conditions and the similarity relationship that needs to be met, the strength of similar materials is usually lower than that of the original rock with rockburst, so it is difficult to accumulate high energy. Coupled with an unclear brittle similarity relationship, whether the structure surface of similar materials can truly reflect the influence of the structure surface on rockburst is worthy of further discussion. On the other hand, owing to the complexity of the simulated excavation operation and the lack of dynamic similarity theory, it is also debatable whether it can truly reflect the influence of excavation dynamic disturbance on rockburst.
- Regarding the empirical criteria, although some influencing factors of rockburst have been considered in the comprehensive criteria, there are many influencing factors in practical engineering, not only the static stress of surrounding rock but also other unpredictable dynamic disturbance. Moreover, the occurrence of rockburst is sudden and random, and the existing criteria are still difficult to accurately evaluate and predict rockburst. In addition, some empirical criteria are not unified, which causes trouble for researchers.
- Regarding the mathematical model approaches for rockburst classification and prediction, whether using uncertainty algorithm models or machine learning, the crux for the accuracy of classification and prediction results is the amount and availability of data for rockburst. In actuality, the amount of existing rockburst data makes it difficult to ensure the high accuracy of model. The imbalance of training samples (such as “rockburst occurrence” records being far fewer in number than “no rockburst” records), leads to poor generalization capability of the model. On the other hand, there are few selected index factors in uncertainty algorithm models and input indices (rockburst influencing factors) in machine learning. Whether it can represent the most important influencing factors of rockburst is still worth discussing.
- Regarding microseismic monitoring, due to the unpredictable distribution of underground strata, anisotropy of medium and the sudden change of wave velocity between two various rock formations, it is difficult to ensure the accuracy of microseismic source location results. On the other hand, with deep learning as a black box model, the mapping relationship between data and results is hard to explain; in addition, modeling is complex and the computational cost is high, which is not realistic to be applied in engineering.
- Regarding rockburst support, the existing evaluation methods of support demand have great uncertainty, and the evaluation and test methods of support systems cannot fully simulate the actual situation of surrounding rock; hence, it is difficult to have a quantitative evaluation of support effect.
8. Conclusions
- It is necessary to develop a new type of similar material with “low strength and high brittleness” and also to explore and summarize the brittleness similarity criterion especially suitable for rockburst and quantify the brittleness similarity of materials. In addition, to improve the excavation efficiency and accuracy of the test results, it is necessary to develop a set of TBM excavation machines with a simple structure, which can accurately simulate the breaking process of a cutterhead and comprehensively consider the complex rock–machine interaction. Further, for the test of drilling and blasting excavation, how to reasonably determine the blasting scheme and appropriate parameters to evaluate the blasting effect is also a crux.
- It is necessary to develop and establish a rockburst database system including a microseismic waveform database, rockburst case database and a microseismic event sequence database. An upload portal is provided to collect accurate historical rockburst data from engineering cases around the world, which is convenient for researchers and engineers to use rockburst data more conveniently, economically and efficiently. More data are conducive to improve the generalization capacity of the mathematical models of rockburst classification and prediction and further lay a data foundation for the application of deep learning in the future.
- It is necessary to introduce information-fusion technology into microseismic source location based on multimethod combinations and establish a scientific evaluation model for a reasonable data-fusion algorithm. In addition, an anomaly detection method based on machine learning may be used for in situ signal monitoring. The abnormal changes of all monitoring signal type near rockburst can used to establish the model relationship between the abnormal signal and the occurrence of rockburst, further predicting the occurrence time of rockburst.
- It is necessary to develop high stress utilization technology. High stress is one of the main factors causing rockburst, which may be used for high-efficiency rock breaking with superposition of a stress wave to transfer most of the energy and prevent rockburst.
- It is necessary to develop a high damping energy absorbing bolt with small strain, high energy absorption and antirepeated impact with high damping rubber material for rockburst support of deep hard rock.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
σθ | Maximum tangential stress of surrounding rock, MPa | Uimin | Valley elastic strain energy density |
σ1 | Axial stress of surrounding rock, MPa | E0 | Initial elastic modulus |
σL | Axial stress of tunnel, MPa | σ′rm | Triaxial rockmass strength based on the Hoek–Brown strength criterion |
σc | Uniaxial compressive strength of rock, MPa | σ’3 | Minimum principal stress at failure, MPa |
σRB | Rockburst maximum stress, MPa | Uh | Energy dissipated to overcome frictional and support resistance during rockburst, kJ·m−3 |
H | is the buried depth of rock sample, m | Ud | Energy dissipated by failing the rock mass during rock burst, kJ·m−3 |
Kv | Rock mass intact coefficient | σmax | Maximum tangential stress on the boundary of acircular opening (or σθ), MPa |
Wet | Elastic energy index, kJ·m−3 | RERI | Relative energy release index |
Ue | Peak elastic energy density | RVI | Rockburst vulnerability index |
Ua | Failure energy density of post peak | S | Stress index |
Uimax | Peak elastic strain energy density | RPI | Rockburst proneness index |
Cg | is the competency factor | UCS | Unconfined compressive strength, MPa |
σc/σt | Rock brittleness coefficient | RMR | Rock mass rating |
δ0 | Radial displacement, m | PES | Elastic strain energy, kJ·m−3 |
mi | Intact rock parameter (Hoek–Brown constant) | σt | Tensile strength of rock mass, MPa |
σcm | Rock mass strength | B3 | Rock brittleness coefficient (σc/σt) |
rp | Plastic radius, m | Wqx | Rockburst energy tendency index |
r0 | Cavity radius, m |
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Researchers (Year) | Rockburst Definition and Its Description |
---|---|
Cook (1965) [5] |
|
Blake (1972) [1] |
|
Zhang (1991) [6] |
|
Ortlepp et al. (1994) [7] |
|
Kaiser et al. (1996) [8] |
|
Singh et al. (1999) [9] |
|
Blake et al. (2003) [10] |
|
He et al. (2007) [11] |
|
Solak (2009) [12] |
|
Li (2014) [13] |
|
Zhou et al. (2017) [14] |
|
Dietz et al. (2018) [15] |
|
Feng et al. (2019) [16] |
|
Zhao et al. (2020) [17] |
|
Farhadian (2021) [18] |
|
Researchers (Year) | Classification Basis | Types of Classification |
---|---|---|
Hoek (1980) [19] | Sliding of fracture surface and degree of rock fracture | (a) strain rockburst (b) fracture rockburst |
Ryder (1988) [20] | Mechanical characteristics and seismic signatures of rockburst | (a) rockburst caused by crushing of highly stressed rocks (b) rockburst associated with slip or rupture along planes of weakness |
Tan (1991) [21] | In situ stress action pattern | (a) horizontal stress type (b) vertical stress type (c) mixed stress type |
Ortlepp et al.(1994) [7] | Characteristics of mine rockburst and focal mechanism | (a) strain rockburst (b) bending failure rockburst (c) pillar failure rockburst (d) shear failure rockburst (e) fault slip rockburst |
Kaiser et al. (1996) [8] | Triggering mechanism | (a) remotely triggered (b) self-initiated |
Damage mechanism | (a) bulking (b) ejection (c) seismically induced fall of ground | |
Tang (2000) [22] | Rockburst mechanism | (a) strainburst (b) fault-slip burst (c) combined mechanisms |
Blake et al. (2003) [10] | Potential causes of rockburst | (a) strain rockburst (b) pillar failure rockburst (c) fault-slip rockburst |
He et al. (2012) [23] | Time from unloading to rockburst | (a) instant rockburst (b) standard rockburst (c) delayed rockburst |
Characteristics of mine rockburst | (a) strainburst (b) impact-induced rockburst | |
Feng et al. (2012) [24,25] | Time of rockburst occurrence | (a) immediate rockburst (b) time-delayed rockburst |
Development mechanism | (a) strain rockburst (b) strain structural plane sliding rockburst (c) fracture slip rockburst | |
Wu et al. (2013) [26] | Control factors of surrounding rock failure | (a) strain rockburst (b) discontinuity rockburst |
Qian (2014) [27] | Stress release mode of rockburst | (a) pillar strain rockburst (b) enclosing rock strain rockburst (c) fault-slip rockburst |
Li et al. (2017) [28] | Geomechanical characteristics of rockburst | (a) tensile cracking and spalling (b) tensile cracking and toppling (c) tensile cracking and sliding (d) tensile shearing and bursting (e) buckling and breaking (f) arc shearing and bursting |
Deng et al. (2018) [29] | In accordance with the magnitude of stimulation force | (a) induced rockburst (b) triggered rockburst (c) inherent rockburst |
Type | Evaluating Indicator | Characteristics of Indicator |
---|---|---|
Indicators based on the strength theory | Excess shear stress (ESS) |
|
Failure approach index (FAI) |
| |
Indicators based on the energy theory | Energy release rate (ERR) |
|
Energy storage rate (ESR) |
| |
Burst potential index (BPI) |
| |
Local energy release density (LERD) |
| |
Modelled Ground Work (MGW) |
| |
Local energy release rate (LERR) |
| |
Relative energy release index (RERI) |
|
Researchers (Year) | Index and/or Equations | No Rockburst | Light Rockburst | Medium Rockburst | Heavy Rockburst | Serious Rockburst |
---|---|---|---|---|---|---|
Qiu et al. (2011) [102] | RVI = FsFrFmFg | \ | \ | \ | \ | \ |
Tarasov et al. (2011) [103] | Brittleness index B4 = (Eu − M)/M | \ | \ | \ | \ | \ |
Castro et al. (2012) [104] | BSR = (σ1 − σ3)/σc | 0.35–0.45 | 0.45–0.6 | 0.6–0.7 | 0.7 | \ |
Shang et al. (2013) [105] | Prb = (Kvσθ)/σt | 1.7 | 1.7–3.3 | 0.3.3–9.7 | 9.7 | \ |
Zhang et al. (2013) [106] | S = tanh{[0.1648(σθ/σc)3.064(σc/σt)−0.4625(Wet)2.672](1/3.6)} | 0.25 | 0.25–0.50 | 0.50–0.75 | 0.75 | \ |
Qiu et al. (2014) [55] | RERI = [(Uimax − Uimin)/Uimax]/[Umax(p)/(Umax(p) − Ures(p))] | \ | \ | \ | \ | \ |
He et al. (2015) [107] | IRB = H/σRB | \ | 0.6 | 0.6–1.2 | 1.2–2.0 | 2.0 |
Yang et al. (2015) [108] | URLERI = [(Ui − Ui+1)/Ui]/dt/f(p) | \ | \ | \ | \ | \ |
Guo et al. (2015) [109] | Ri = A*(2E0Ue/σ2t) | 3 | 3–10 | 10–110 | 110 | \ |
Gong et al. (2018) [100] | A′CF = Ue/Ua | \ | \ | \ | \ | \ |
Ma et al. (2018) [110] | RPI = σ′rm/σmax, σ′rm = σ′3 + σci[mb(σ′3/σci) + s]α | 7 | 4–7 | 2–4 | 1–2 | |
Zhang et al. (2020) [111] | U ≥ Uh + Ud σx ≥ Rx∈[s,l-s] | \ | \ | \ | \ | \ |
Chart Type | Reference | Factor Index | Rockburst Intensity |
---|---|---|---|
1D | Palmström (1995) [161] | Cg | 3 level: mild, heavy and very heavy |
Peng et al. (1996) [93] | σc/σt | 4 level: no rockburst, light rockburst, moderate rockburst and heavy rockburst | |
2D | Barton et al. (1974) [162] Russenes (1974) [94] Hou et al.(1992) [163] | σ1/σc | 4 level: no rockburst, weak rockburst, medium rockburst and strong rockburst |
Hou et al. (1992) [163] | Wqx, σθ/σt | 4 level: no rockburst, low rockburst, medium rockburst and high rockburst | |
Diederichs (2007) [164] | UCS, mi | 4 level: low rockburst, medium rockburst, high rockburst and very high rockburst | |
Farhadian (2021) [18] | Wet, σθ/σc | 7 level: no rockburst, moderate low rockburst, low rockburst, moderate medium rockburst, medium rockburst, moderate high rockburst and high rockburst | |
Multidime-nsional | Lee et al. (2004) [165] | PES, B3, σc | 4 level: no rockburst, low rockburst, medium rockburst and high rockburst |
Shang et al. (2010) [166] | σθ, σmax, σc/σmax, σθ/σc, (σθ + σL)/σc | 4 level: no rockburst, weak rockburst, medium rockburst and strong rockburst | |
Zhang et al. (2011) [167] | σc/σt, KV, σθ/σc, σ1/σc, Wet | 4 level: no rockburst, low rockburst, medium rockburst and high rockburst | |
Russo (2014) [168] | δ0, rp/r0, σθ, σcm, RMR | 2 level: no rockburst and rockburst |
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Wu, M.; Ye, Y.; Wang, Q.; Hu, N. Development of Rockburst Research: A Comprehensive Review. Appl. Sci. 2022, 12, 974. https://doi.org/10.3390/app12030974
Wu M, Ye Y, Wang Q, Hu N. Development of Rockburst Research: A Comprehensive Review. Applied Sciences. 2022; 12(3):974. https://doi.org/10.3390/app12030974
Chicago/Turabian StyleWu, Meng, Yicheng Ye, Qihu Wang, and Nanyan Hu. 2022. "Development of Rockburst Research: A Comprehensive Review" Applied Sciences 12, no. 3: 974. https://doi.org/10.3390/app12030974
APA StyleWu, M., Ye, Y., Wang, Q., & Hu, N. (2022). Development of Rockburst Research: A Comprehensive Review. Applied Sciences, 12(3), 974. https://doi.org/10.3390/app12030974