The Research on Complex Lithology Identification Based on Well Logs: A Case Study of Lower 1st Member of the Shahejie Formation in Raoyang Sag
Abstract
:1. Introduction
2. Geological Setting and Sample
3. Method
3.1. Preprocessing
3.2. The FDA Principle
3.3. The BP Neural Network
3.4. The Classification and Regression Tree (C&RT)
4. Results
5. Discussion
5.1. Logging Characteristics of Lithology
5.2. Comparison of the Three Models
5.3. Application
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Function | Eigenvalues | Percent Variance (%) | Cumulative Percentage (%) | Canonical Correlation |
---|---|---|---|---|
1 | 0.731 | 74.6 | 74.6 | 0.65 |
2 | 0.178 | 18.1 | 92.7 | 0.388 |
3 | 0.054 | 5.5 | 98.2 | 0.226 |
4 | 0.018 | 1.8 | 100 | 0.131 |
No. | Lithology | FDA | BP Neural Network | C&RT | ||
---|---|---|---|---|---|---|
Prediction of Lithology | Prediction of Lithology | Sample Type | Prediction of Lithology | Sample Type | ||
1 | sandstone | sandstone | sandstone | training | sandstone | training |
2 | sandstone | sandy mudstone | sandstone | test | sandstone | training |
3 | sandstone | sandy mudstone | sandstone | training | sandstone | training |
4 | sandstone | sandstone | sandstone | training | sandstone | training |
5 | sandstone | sandstone | sandstone | test | sandstone | training |
6 | sandstone | sandstone | sandstone | training | sandstone | training |
7 | sandstone | sandstone | sandstone | training | sandstone | training |
8 | sandstone | sandstone | sandstone | training | sandstone | training |
9 | sandstone | sandstone | sandstone | training | sandstone | training |
10 | sandstone | sandstone | sandstone | training | sandstone | training |
11 | sandstone | sandstone | sandstone | training | sandstone | training |
12 | sandstone | sandstone | sandstone | training | sandstone | training |
13 | sandstone | sandstone | dolomite | test | sandstone | training |
14 | sandstone | sandstone | sandstone | training | sandstone | training |
15 | sandstone | sandstone | sandstone | test | sandstone | training |
16 | sandstone | sandstone | sandstone | training | sandstone | training |
17 | sandstone | sandstone | sandstone | test | sandstone | training |
18 | sandstone | sandstone | sandstone | training | mudstone | training |
19 | sandstone | shale | sandstone | training | sandstone | training |
20 | sandstone | sandstone | sandstone | training | sandstone | training |
21 | sandstone | shale | sandstone | training | sandstone | test |
22 | sandstone | sandstone | sandstone | training | sandstone | training |
23 | sandstone | sandstone | sandstone | training | sandstone | training |
24 | sandstone | sandstone | sandstone | training | sandstone | training |
25 | sandstone | sandstone | sandstone | training | sandstone | training |
26 | sandstone | sandstone | sandstone | training | sandstone | training |
27 | sandstone | sandstone | sandstone | training | sandstone | training |
28 | sandstone | sandstone | sandstone | training | sandstone | training |
29 | sandstone | mudstone | sandstone | training | sandstone | training |
30 | sandstone | sandstone | sandstone | training | sandstone | training |
31 | sandstone | sandstone | sandstone | training | sandstone | training |
32 | sandstone | shale | sandstone | test | sandstone | training |
33 | sandstone | sandstone | sandstone | training | sandstone | training |
34 | sandstone | shale | sandstone | training | sandstone | training |
35 | sandstone | sandstone | sandstone | training | sandstone | training |
36 | sandstone | sandstone | sandstone | training | sandstone | training |
37 | sandstone | sandstone | sandstone | training | sandstone | training |
38 | sandy mudstone | limestone | sandy mudstone | training | sandy mudstone | training |
39 | sandy mudstone | shale | dolomite | training | dolomite | training |
40 | sandy mudstone | sandstone | sandy mudstone | training | sandy mudstone | training |
41 | sandy mudstone | sandy mudstone | sandy mudstone | training | sandstone | training |
42 | sandy mudstone | sandy mudstone | sandstone | training | sandstone | test |
43 | sandy mudstone | shale | sandy mudstone | training | sandy mudstone | training |
44 | mudstone | shale | mudstone | training | mudstone | training |
45 | mudstone | mudstone | mudstone | training | mudstone | training |
46 | mudstone | mudstone | mudstone | training | mudstone | training |
47 | mudstone | mudstone | mudstone | training | mudstone | training |
48 | mudstone | mudstone | mudstone | training | mudstone | training |
49 | mudstone | shale | mudstone | test | mudstone | training |
50 | mudstone | shale | mudstone | training | mudstone | training |
51 | mudstone | sandstone | mudstone | training | mudstone | training |
52 | mudstone | sandstone | mudstone | training | sandstone | training |
53 | mudstone | sandy mudstone | mudstone | test | shale | training |
54 | mudstone | sandy mudstone | mudstone | training | mudstone | test |
55 | mudstone | sandy mudstone | sandstone | training | mudstone | training |
56 | mudstone | sandy mudstone | mudstone | training | mudstone | training |
57 | mudstone | sandstone | sandstone | training | mudstone | training |
58 | mudstone | sandstone | mudstone | training | mudstone | training |
59 | mudstone | shale | shale | training | mudstone | training |
60 | mudstone | shale | mudstone | training | mudstone | training |
61 | mudstone | shale | mudstone | training | mudstone | training |
62 | mudstone | sandstone | mudstone | training | mudstone | training |
63 | mudstone | shale | mudstone | training | mudstone | training |
64 | mudstone | shale | Calcareous mudstone | training | mudstone | training |
65 | mudstone | shale | mudstone | training | sandstone | training |
66 | mudstone | shale | mudstone | training | mudstone | training |
67 | mudstone | shale | shale | training | mudstone | training |
68 | Calcareous mudstone | mudstone | Calcareous mudstone | training | mudstone | training |
69 | Calcareous mudstone | mudstone | Calcareous mudstone | test | Calcareous mudstone | training |
70 | Calcareous mudstone | sandstone | Calcareous mudstone | training | Calcareous mudstone | training |
71 | Calcareous mudstone | shale | shale | training | shale | training |
72 | Calcareous mudstone | shale | Calcareous mudstone | training | Calcareous mudstone | training |
73 | Calcareous mudstone | shale | shale | training | Calcareous mudstone | test |
74 | Calcareous mudstone | shale | sandstone | training | Calcareous mudstone | training |
75 | Calcareous mudstone | sandstone | sandstone | training | sandstone | training |
76 | Calcareous mudstone | shale | shale | training | mudstone | training |
77 | Calcareous mudstone | shale | mudstone | test | Calcareous mudstone | training |
78 | Calcareous mudstone | shale | mudstone | training | Calcareous mudstone | training |
79 | Calcareous mudstone | shale | Calcareous mudstone | training | Calcareous mudstone | test |
80 | dolomite | shale | dolomite | training | dolomite | test |
81 | dolomite | shale | shale | training | dolomite | training |
82 | dolomite | shale | shale | training | dolomite | training |
83 | dolomite | shale | dolomite | training | dolomite | training |
84 | dolomite | sandstone | dolomite | training | shale | training |
85 | dolomite | shale | dolomite | training | dolomite | training |
86 | dolomite | shale | dolomite | training | dolomite | training |
87 | dolomite | shale | dolomite | test | dolomite | training |
88 | dolomite | sandstone | dolomite | training | sandstone | training |
89 | dolomite | sandstone | dolomite | training | dolomite | training |
90 | dolomite | sandstone | dolomite | training | dolomite | training |
91 | dolomite | shale | dolomite | training | dolomite | training |
92 | dolomite | shale | shale | training | shale | test |
93 | dolomite | shale | dolomite | test | dolomite | training |
94 | dolomite | shale | dolomite | training | dolomite | training |
95 | dolomite | shale | shale | training | shale | training |
96 | dolomite | mudstone | dolomite | training | dolomite | test |
97 | limestone | sandy mudstone | limestone | training | limestone | training |
98 | limestone | limestone | limestone | training | shale | training |
99 | limestone | shale | limestone | training | limestone | training |
100 | shale | sandstone | Calcareous mudstone | training | shale | training |
101 | shale | shale | shale | training | shale | training |
102 | shale | shale | shale | training | shale | training |
103 | shale | shale | dolomite | training | shale | training |
104 | shale | shale | shale | test | shale | training |
105 | shale | shale | shale | training | shale | training |
106 | shale | shale | shale | training | shale | training |
107 | shale | shale | shale | test | shale | training |
108 | shale | shale | dolomite | training | shale | training |
109 | shale | shale | dolomite | training | dolomite | training |
110 | shale | shale | shale | test | shale | training |
111 | shale | shale | shale | training | shale | training |
112 | shale | shale | shale | training | shale | training |
113 | shale | shale | shale | training | shale | training |
114 | shale | shale | shale | training | shale | training |
115 | shale | shale | shale | training | shale | training |
116 | shale | shale | dolomite | training | shale | training |
117 | shale | shale | shale | training | shale | training |
118 | shale | shale | shale | training | shale | training |
119 | shale | shale | shale | training | shale | training |
120 | shale | shale | shale | training | shale | training |
121 | shale | shale | shale | training | shale | training |
122 | shale | shale | shale | training | shale | training |
123 | shale | shale | shale | training | shale | training |
124 | shale | shale | shale | test | shale | training |
125 | shale | shale | shale | training | shale | training |
126 | shale | shale | shale | training | shale | training |
127 | shale | shale | shale | test | shale | training |
128 | shale | sandstone | Calcareous mudstone | training | shale | training |
129 | shale | shale | shale | training | shale | training |
130 | shale | shale | shale | training | shale | training |
131 | shale | sandy mudstone | shale | training | shale | training |
132 | shale | limestone | shale | training | shale | training |
133 | shale | shale | dolomite | training | shale | training |
134 | shale | sandy mudstone | shale | training | limestone | training |
135 | shale | shale | shale | training | mudstone | training |
136 | shale | shale | shale | training | shale | training |
137 | shale | shale | shale | training | shale | training |
138 | shale | shale | shale | training | shale | training |
139 | shale | shale | shale | training | shale | training |
140 | shale | shale | shale | training | mudstone | training |
141 | shale | sandstone | shale | training | shale | training |
142 | shale | sandstone | shale | training | shale | training |
143 | shale | shale | shale | training | shale | training |
144 | shale | shale | shale | test | shale | training |
145 | shale | shale | shale | training | shale | training |
146 | shale | shale | shale | training | shale | training |
147 | shale | sandstone | shale | test | sandstone | training |
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Song, Z.; Xiao, D.; Wei, Y.; Zhao, R.; Wang, X.; Tang, J. The Research on Complex Lithology Identification Based on Well Logs: A Case Study of Lower 1st Member of the Shahejie Formation in Raoyang Sag. Energies 2023, 16, 1748. https://doi.org/10.3390/en16041748
Song Z, Xiao D, Wei Y, Zhao R, Wang X, Tang J. The Research on Complex Lithology Identification Based on Well Logs: A Case Study of Lower 1st Member of the Shahejie Formation in Raoyang Sag. Energies. 2023; 16(4):1748. https://doi.org/10.3390/en16041748
Chicago/Turabian StyleSong, Zhaojing, Dianshi Xiao, Yongbo Wei, Rixin Zhao, Xiaocheng Wang, and Jiafan Tang. 2023. "The Research on Complex Lithology Identification Based on Well Logs: A Case Study of Lower 1st Member of the Shahejie Formation in Raoyang Sag" Energies 16, no. 4: 1748. https://doi.org/10.3390/en16041748
APA StyleSong, Z., Xiao, D., Wei, Y., Zhao, R., Wang, X., & Tang, J. (2023). The Research on Complex Lithology Identification Based on Well Logs: A Case Study of Lower 1st Member of the Shahejie Formation in Raoyang Sag. Energies, 16(4), 1748. https://doi.org/10.3390/en16041748