Coal Mine Goaf Interpretation: Survey, Passive Electromagnetic Methods and Case Study
Abstract
:1. Introduction
Category | Methods | Detection Basis | Detection Capability | Advantage | Defects | References |
---|---|---|---|---|---|---|
Seismic class | Reflection wave method | Wave impedances | Buried depth of 50~200 m | Small site distance, high density of data collection, high-resolution continuous measurement. | High cost, complicated process, low efficiency, unable to determine the water-rich nature of the mining area; reduced feasibility when the width of the mining area is smaller than the lateral seismic resolution. | Xue et al. [2] Xue et al. [9] Zhang et al. [12] |
Face wave method | Frequency dispersion, low-speed anomaly of P-waves | - | Convenient, fast detection, strong anti-interference ability, low requirements for exploration sites. | Xue et al. [2] Yu et al. [8] Wu et al. [44] Zhu et al. [13] | ||
Tomography imaging | Velocity and amplitude | - | Close to the target layers, high resolution, visual imaging. | |||
Radiology | Radon measurement | Radon anomaly | - | Low cost, simple process, high efficiency, not affected by the terrain of the environment. | Qualitative analysis, low detection reliability, and the depth cannot be interpreted. | Zhou et al. [14] |
Electromagnetic class | High-density resistivity method | Resistivity | Burial depth of 50~150 m | High lateral resolution, sensitive to shallow low resistive anomalies and water-bearing bodies. | Influenced by the terrain conditions. | Wu et al. [18] Bharti et al. [21] Bharti et al. [45] |
Transient electromagnetic method | Resistivity | Burial depth greater than 400 m | Versatile devices with large exploration depth, high efficiency, and low topographic influence. | Low work efficiency, easily affected by high conductors or power line interferences. | Chang et al. [22] Chang et al. [46] Wang et al. [47] Wang et al. [25] Wu et al. [18] | |
Geological radar method | Travel time, amplitude, frequency, waveform change | Burial depth less than 50 m | High resolution, high efficiency, and no damage to the target body | Noise suppression challenges. | Xu et al. [19] Xue et al. [9] | |
Controlled-source audio-magnetotelluric sounding (CSMAT) | Resistivity | Burial depth greater than 400 m | Excellent detection of conductive bodies, large detection depth. | Static displacement, and near-field effects | Xu et al. [38] | |
Excitation polarization method | Dielectric constant, polarization parameters | - | - | Little practice. | Wang et al. [26] | |
Very low frequency method (VLF) | Resistivity | Depth less than 1000 m | Low cost, portable and fast, easy devices to operate. | Little practice. | Xue et al. [9] | |
Multisource remote sensing (RS) | Land subsidence, deformation rate | Near surface | Large scale. | Not suitable for a small area, weak deformation measurement. | Li et al. [27] Fan et al. [28] Li et al. [29] Yang et al. [31] | |
Gravity | Gravity method | Density | - | Fast gravity anomaly analysis, variations of thickness. | Unable to realize depth sounding. | Xiang et al. [15] Li et al. [16] |
2. Passive Electromagnetic Detection Mechanism of Coal Mine Goafs
2.1. Typical Structure and Physical Properties of Coal Mine Goafs
2.2. Semi-Quantitative Inversion of the SLF Method
2.3. Three-Dimensional Electromagnetic Inversion of the AMT Method
3. Collapse-Type Coal Mine Goaf Interpretation
3.1. Overview of the Collapse-Type Mining Area
3.2. Stratigraphic Characteristics and Preliminary Exploration Basis
3.3. The SLF Exploration Tests
3.4. Result Interpretation and Comparative Validation
4. Water-Rich Type Coal Mine Goaf Interpretation
4.1. Overview of Hydraulic-Threat Coal Mining Areas
4.2. Stratigraphic Characteristics and Coal-Water Distribution
4.3. AMT Data Acquisition and 3D Inversion
4.4. Results and Discussions of the No. 01 Mining Area
4.5. Result Analysis of the No. 02 Mining Area
5. Conclusions
- (1)
- Geo-electrical goaf models were designed and the theoretical feasibility of interpreting goaf targets was fully explored by developing forward modeling and inversion algorithms using the finite difference method (FDM).
- (2)
- Semi-quantitative inversion of the SLF method was fully explored with a three-layer electrical model, which can efficiently perform the vertical delineation of low-resistive bodies and facilitate fault structure identification.
- (3)
- Theoretical 3D inversion analysis of “single and double target” models has been discussed systematically, and this AMT method, with appropriate initial models and data accuracy selections, was most appropriate for single low-resistive layer distribution at a depth range of 100 m–400 m.
- (4)
- In field surveys of goaf areas, the inverted depth distributions using both methods are basically consistent with the water-filled goafs and surrounding layers, as verified by known data. SLF interpretation was successfully applied in collapse-type mining goaf areas. In contrast, with regards to water-rich-type coal mine goafs, the AMT method, using stable 3D inversion, has the capability of revealing obvious low-resistive anomalies appropriate for determining the hydraulic tectonic area connected with fracture zones. These results can help industries to improve subsequent coal production.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Lithology | Resistivity Distribution (Ω·m) | Distribution Stratigraphic Code | Remarks |
---|---|---|---|
Clay | 50–200 | Q | Quaternary |
Sandstone | 100–600 | Q, P1s, C3t | Quaternary, Upper Carboniferous Taiyuan Group, Permian |
Mudstone | 30–100 | Q, P1s, C2b | Upper Carboniferous Benxi Formation, Permian |
Limestone | 900–3900 | O2f | Ordovician |
Coal seams | 1000–3000 | P1s, C3t | Samples from the study area |
Groundwater (mineralized water) | 0.1–10 |
Fault ID | Fault Feature | Extension Length (m) | Bed Attitude | Stratigraphic Fall (m) | Corresponding Sites | ||
---|---|---|---|---|---|---|---|
Strike | Dip | Dip Angle | |||||
F13 | Positive | 1700 | Near EW | S | 65° | 0~15 | 8–10 |
F12 | Positive | >3600 | NWW~SEE | NNE | 65° | 0~60 | 8–10 |
F11 | Positive | 4300 | NWW~SEE | NNE | 65° | 0~175 | 13–15 |
F10 | Positive | 1050 | NWW~SEE | SSW | 65° | 0~70 | 16–17 |
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Wang, N.; Wang, Z.; Sun, Q.; Hui, J. Coal Mine Goaf Interpretation: Survey, Passive Electromagnetic Methods and Case Study. Minerals 2023, 13, 422. https://doi.org/10.3390/min13030422
Wang N, Wang Z, Sun Q, Hui J. Coal Mine Goaf Interpretation: Survey, Passive Electromagnetic Methods and Case Study. Minerals. 2023; 13(3):422. https://doi.org/10.3390/min13030422
Chicago/Turabian StyleWang, Nan, Zijian Wang, Qianhui Sun, and Jian Hui. 2023. "Coal Mine Goaf Interpretation: Survey, Passive Electromagnetic Methods and Case Study" Minerals 13, no. 3: 422. https://doi.org/10.3390/min13030422
APA StyleWang, N., Wang, Z., Sun, Q., & Hui, J. (2023). Coal Mine Goaf Interpretation: Survey, Passive Electromagnetic Methods and Case Study. Minerals, 13(3), 422. https://doi.org/10.3390/min13030422