Weight Assignment Method and Application of Key Parameters in Shale Gas Resource Evaluation
Abstract
:1. Introduction
2. Resource Evaluation Methods and Parameters
3. Key Parameter Weights
4. Weight Conversion Model
5. Case Applications
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Evaluation Scope | Evaluation Time | Geological Resource Quantity | Exploitable Resources | Evaluation Unit | Main Evaluation Methods |
---|---|---|---|---|---|
China (major regions) | 2002 | —— | 15~30 | Colorado School of Mines | Mainly using analogical methods |
China (major basins) | 2009 | 30.7 | 10~20 | China Petroleum Exploration and Development Research Institute | Mainly using volumetric and analogical methods |
China (Sichuan, Tarim Basin) | 2011 | 144.5 | 36.1 | US Energy Information Agency | Mainly using analogical methods |
China | 2011 | —— | 15.2 | China Petroleum Exploration and Development Research Institute | Mainly using volumetric and analogical methods |
China | June 2012 | 83.3 | 10~13 | Chinese Academy of Engineering | Mainly using volumetric and analogical methods |
China (excluding Qinghai–Tibet) | November 2012 | 134.42 | 25.08 | The Ministry of Natural Resources of China | Mainly using volumetric and analogical methods |
China (major basins) | 2013 | 134.3 | 31.55 | US Energy Information Agency | Mainly using analogical methods |
China (excluding Qinghai–Tibet) | October 2017 | 121.86 | 21.81 | The Ministry of Natural Resources of China | Mainly using volumetric and analogical methods |
Shale Gas Resource Evaluation Method | Basic Evaluation Method | |
---|---|---|
Static method | Genesis method | Geochemical method |
Basin simulation method | ||
Statistical method | Volumetric method | |
Forspan model method | ||
Random simulation method | ||
Trend analysis method | ||
Analogy | Resource Abundance Analogy | |
EUR Analogy | ||
Gas content analogy method | ||
Dynamic method | Material balance method | |
Decline curve method | ||
Numerical simulation method | ||
Comprehensive method | Delphi method | |
Expert system method |
Primary Influencing Factors | Secondary Influencing Factors | Third-Level Influencing Factors |
---|---|---|
Tectonic action | Basin formation | Basin types |
Basin area | ||
Basin evolution | ||
Thermal history | Terrestrial heat flow | |
Thermal maturity | ||
Hydrocarbon formation | ||
Tectonic deformation | Fracturing | |
History of buried depth | ||
Sedimentation | Shale distribution | Shale thickness |
Shale area | ||
Organic geochemistry | Organic matter type | |
Organic matter abundance | ||
Rock minerals | Mineral composition | |
Clay minerals | ||
Brittle mineral | ||
Diagenesis | Storage physical properties | Porosity |
Pore structure | ||
Permeability | ||
Density | ||
Comprehensive geological processes | Gas content | Gas content |
Gas-bearing structure | ||
Reserve recoverability |
Method Category | Specific Methods | Direct Parameters |
---|---|---|
Genesis method | Saturated residual hydrocarbon method | Shale burial depth, hydrocarbon generation potential index, thickness, area, density |
TOC method | Shale thickness, area, density, TOC, TOC recovery coefficient | |
Total hydrocarbon method | Shale thickness, area, density, total hydrocarbon content, kerogen content | |
Hydrocarbon production rate method | Shale thickness, area, density, hydrocarbon production rate, exhaust coefficient | |
Analogy | Area abundance analogy method | Shale area, abundance of standard area resources, analogy coefficient |
Gas content analogy method | Shale area, standard area resource abundance, analogy coefficient | |
EUR analogy method | Shale area, EUR, analogy coefficient | |
Statistical method | Volumetric method | Shale area, thickness, density, gas content |
Probability volume method | Probability area, probability thickness, probability density, and probability gas content of shale | |
Evaluation unit division method | Shale area, gas content, unit area, analogy coefficient | |
Synthesis | Delphi method | Multiple evaluation results, weight assignment |
Source of Weight | Basic Evaluation Method | Remarks |
---|---|---|
Experience weight | Expert scoring method | Determine weights based on relative importance of evaluation indicators |
Analytic hierarchy process | Provide quantitative representations based on relative importance of various factors at different levels | |
Statistical weight | Nemerow index | Calculate comprehensive index based on mean and extreme values of evaluation indicators |
Grey correlation analysis method | Calculate correlation degree based on similarity of geometric shapes of curves formed by numerical sequences | |
Correlation method | Determine indicator weights based on correlation coefficients to reflect sensitivity of indicators | |
Principal component analysis | Screen based on cumulative contribution rate of variance and determine weights based on common factor variance | |
Experience weight and statistical weight | Comprehensive weighting method | Balance experience weight and statistical weight |
Degree of Freedom | Independent Variable (m) Significant Level: α = 0.01 | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
(df) | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 |
1 | 4052.181 | 4999.500 | 5403.352 | 5624.583 | 5763.650 | 5858.986 | 5928.356 | 5981.070 | 6022.473 | 6055.847 |
2 | 98.503 | 99.000 | 99.166 | 99.249 | 99.299 | 99.333 | 99.356 | 99.374 | 99.388 | 99.399 |
3 | 34.116 | 30.817 | 29.457 | 27.710 | 28.237 | 27.911 | 27.672 | 27.489 | 27.345 | 27.229 |
4 | 21.198 | 18.000 | 16.694 | 15.977 | 15.522 | 15.207 | 14.976 | 14.799 | 14.659 | 14.546 |
5 | 16.258 | 13.274 | 2.060 | 11.392 | 10.967 | 10.672 | 10.456 | 10.289 | 10.158 | 10.051 |
6 | 13.745 | 10.925 | 9.780 | 9.148 | 8.746 | 8.466 | 8.260 | 8.102 | 7.976 | 7.874 |
7 | 12.246 | 9.547 | 8.451 | 7.847 | 7.460 | 7.191 | 6.993 | 6.840 | 6719.000 | 6.620 |
8 | 11.259 | 8.649 | 7.591 | 7.006 | 6.632 | 6.371 | 6.178 | 6.029 | 5.911 | 5.814 |
9 | 10.561 | 8.022 | 6.992 | 6.422 | 6.057 | 5.802 | 5.613 | 5.467 | 5.351 | 5.257 |
10 | 10.044 | 7.559 | 6.552 | 5.994 | 5.636 | 5.386 | 5.200 | 5.057 | 4.942 | 4.849 |
11 | 9.646 | 7.206 | 6.217 | 5.668 | 5.316 | 5.069 | 4.886 | 4.744 | 4.632 | 4.539 |
12 | 9.330 | 6.927 | 5.953 | 5.412 | 5.064 | 4.821 | 4.640 | 4.499 | 4.388 | 4.296 |
13 | 9.074 | 6.701 | 5.739 | 5.205 | 4.862 | 4.620 | 4.441 | 4.302 | 4.191 | 4.100 |
14 | 8.862 | 6.515 | 5.564 | 5.035 | 4.695 | 4.456 | 4.278 | 4.140 | 4.030 | 3.939 |
15 | 8.683 | 6.359 | 5.417 | 4.893 | 4.556 | 4.318 | 4.142 | 4.004 | 3.895 | 3.805 |
16 | 8.531 | 6.226 | 5.292 | 4.773 | 4.437 | 4.202 | 4.026 | 3.890 | 3.780 | 3.691 |
17 | 8.400 | 6.112 | 5.185 | 4.669 | 4.336 | 4.102 | 3.927 | 3.791 | 3.682 | 3.593 |
18 | 8.285 | 6.013 | 5.092 | 4.579 | 4.248 | 4.015 | 3.841 | 3.705 | 3.597 | 3.508 |
19 | 8.185 | 5.926 | 5.010 | 4.500 | 4.171 | 3.939 | 3.765 | 3.631 | 3.523 | 3.434 |
20 | 8.096 | 5.846 | 4.938 | 4.431 | 4.103 | 3.871 | 3.699 | 3.564 | 3.457 | 3.368 |
Range of Correlation Coefficient Values | r = 0 | < 0.3 | = 0.3~0.5 | = 0.5~0.8 | > 0.5 | = 1 |
Relevant Degree | no relevance | weak correlation | low correlation | significant correlation | high correlation | complete correlation |
Influence Factor | q (Gas Content) m3/t | h (Effective Shale Thickness) m | ρ (Shale Density) g/cm3 | A (Gas-Bearing Shale Area) km2 |
---|---|---|---|---|
Gas content | 2.75 | 47 | 2.65 | 613 |
1.74 | 28.9 | 2.67 | 550 | |
1.84 | 32.2 | 2.68 | 513.5 | |
1.6 | 31.6 | 2.67 | 415.5 | |
0.48 | 35.2 | 2.6 | 414.4 |
Influence Factor | q (Gas Content) m3/t | h (Effective Shale Thickness) m | ρ (Shale Density) g/cm3 | A (Gas-Bearing Shale Area) km2 |
---|---|---|---|---|
Partial correlation coefficient β value | 0.219 | 0.205 | 0.166 | 0.166 |
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Yuan, T.; Zhang, J.; Yu, B.; Tang, X.; Niu, J.; Sun, M. Weight Assignment Method and Application of Key Parameters in Shale Gas Resource Evaluation. Appl. Sci. 2024, 14, 8518. https://doi.org/10.3390/app14188518
Yuan T, Zhang J, Yu B, Tang X, Niu J, Sun M. Weight Assignment Method and Application of Key Parameters in Shale Gas Resource Evaluation. Applied Sciences. 2024; 14(18):8518. https://doi.org/10.3390/app14188518
Chicago/Turabian StyleYuan, Tianshu, Jinchuan Zhang, Bingsong Yu, Xuan Tang, Jialiang Niu, and Menglian Sun. 2024. "Weight Assignment Method and Application of Key Parameters in Shale Gas Resource Evaluation" Applied Sciences 14, no. 18: 8518. https://doi.org/10.3390/app14188518
APA StyleYuan, T., Zhang, J., Yu, B., Tang, X., Niu, J., & Sun, M. (2024). Weight Assignment Method and Application of Key Parameters in Shale Gas Resource Evaluation. Applied Sciences, 14(18), 8518. https://doi.org/10.3390/app14188518