Application of the Electromagnetic Method to the Spatial Distribution of Subsurface Saline and Fresh Water in the Coastal Mudflat Area of Jiangsu Province
Abstract
:1. Introduction
2. Study Area Overview
2.1. Landform Overview
2.2. Geological Overview
2.3. Geoelectric Characteristics
3. Data Collection
3.1. Instrument Modification
3.2. Drag-and-Drop Mobile Reception System
4. Methodology
5. Profile Interpretation Method
5.1. Drill Hole Data Analysis
5.2. Analysis of Profile Results
5.3. Interpretation
6. Spatial Distribution of Saline and Fresh Water
7. Conclusions
- The modified electromagnetic sensors can adapt to the high-salt and highly corrosive environment of tidal flat areas. The water–land amphibious dragging platform can quickly collect data and obtain reliable data. Under the geological conditions of thick and low-resistivity cover in tidal flat areas, the CSAMT detection depth can reach 200 m, and the AMT can reach 500 m. In terms of the resolution of shallow subsurface layers, CSAMT has the stronger detection capability.
- By combining electromagnetic data with other information, such as shallow seismic exploration, the characteristics of the main structure of the Neogene strata and the distribution of underground brackish and fresh water in the Yangkou Port area can be interpreted. Through the subdivision of the top and bottom boundaries of the main aquifers in the Neogene strata and the thickness of clay aquitards, the salinity and water content of the strata water can be effectively evaluated. The distribution of regional clay aquitards can further analyze the replacement relationship of the quality of fresh water and brackish water in the aquifers.
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
References
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Areas | Electrical Layer | ρs/(Ω·m) | Geological Properties |
---|---|---|---|
Freshwater areas | ρ1 | 10–30 | Quaternary topsoil layer |
ρ2 | 20–60 | Quaternary sand and clay interbeds | |
ρ3 | 10–20 | Quaternary bottom clay, Neoproterozoic mudstone | |
ρ4 | 5–15 | Paleocene to Middle Triassic | |
ρ5 | >200 | Paleozoic | |
Saline water areas | ρ1 | 10–30 | Quaternary topsoil layer |
ρ2 | 2–12 | Quaternary, Neoproterozoic, and Paleocene sands | |
ρ3 | 15–50 | Cretaceous to Middle Triassic | |
ρ4 | >200 | Paleozoic |
Stratigraphic | Starting Depth (m) | Final Depth (m) | Thickness (m) | Lithological Description |
---|---|---|---|---|
Series 4 Q | 0 | 15 | 15 | Silt |
15 | 30 | 15 | Coarse-grained sand | |
35 | 100 | 65 | Light grey fine sand, quartz sand | |
100 | 125 | 25 | Large-grained sandstone, ginger gravel, pale white quartz sand | |
125 | 165 | 40 | Large grains of sea sand | |
165 | 250 | 85 | Miscellaneous sandstone | |
250 | 290 | 40 | Grey mudstone, medium-grained sandstone | |
290 | 301 | 11 | Coarse-grained sea sand | |
301 | 304 | 3 | Coarse sand | |
306 | 316 | 10 | Light yellow clay with minor sandstone | |
318 | 324 | 6 | Grey soft mudstone, sandstone | |
Neophyte system N | 324 | 336 | 12 | Light yellow clayey mud, light grey sandstone, conglomerate |
338 | 384 | 46 | Light grey muddy sandstone, fine sandstone | |
386 | 398 | 12 | Yellow soft mudstone, coarse-grained sandstone | |
400 | 406 | 6 | Grey muddy sandstone | |
408 | 430 | 22 | Grey clayey mud, large-grained sandstone, gravel | |
432 | 444 | 12 | Light yellow mudstone, coarse-grained sandstone, gravel | |
446 | 464 | 18 | Greyish yellow mudstone, quartz sand, gravel | |
466 | 472 | 6 | Large-grained sandstone, quartz sand, gravel | |
474 | 498 | 24 | Greyish light grey coarse-grained, fine-grained sandstone, gravel, quartz sand | |
502 | 510 | 8 | Grey clay, coarse sand, fine sand, gravel | |
512 | 526 | 14 | Light yellow clayey mud, coarse-grained sandstone, gravelly with more gravel | |
528 | 538 | 10 | Large gravel | |
540 | 564 | 24 | Light yellow soft mudstone, large-grained quartz sand | |
566 | 598 | 32 | Light grey clay, fine sand | |
598 | 610 | 12 | Grey clay, fine sand | |
612 | 616 | 4 | Coarse-grained quartz sand | |
618 | 626 | 8 | Yellow soft clay, large-grained quartz sand | |
628 | 646 | 18 | Grey clay, medium to coarse quartz sand | |
648 | 686 | 38 | Large to medium coarse-grained quartz sand with nodule agglomerates | |
688 | 688.5 | 0.5 | Light yellow clay, large quartz sand | |
690 | 698 | 8 | Soft yellow clay, a little grit | |
700 | 732 | 32 | Light grey soft clay, muddy sand | |
734 | 746 | 12 | Dark red soft clay, large-grained quartz sand | |
748 | 758 | 10 | Grey clay sand, coarse-grained quartz sand | |
760 | 760.5 | 0.5 | Grey soft clay sand | |
762 | 762.5 | 0.5 | Brownish-black hard mud slate, coarse-grained quartz sand | |
764 | 776 | 12 | Brownish-black carbonaceous rigid mudstone, pinkish-white calcareous siltstone, coarse-grained quartz sand, sandstone with a little gravel | |
788 | 794 | 6 | Light yellow-grey muddy sand, gravel | |
Paleocene E | 796 | 818 | 22 | Black carbonaceous hard mudstone, minor off-white calcareous sandstone, large-grained quartz sand |
828 | 840 | 12 | Light yellow soft clay, silt | |
842 | 848 | 6 | Light grey fine sandstone, clay, quartz sand | |
850 | 856 | 6 | Light red soft mudstone, greyish white calcareous sandstone, quartz sand, gravel | |
858 | 866 | 8 | Quartz sand, pale yellow gravel, minor sand grains, transformed to brownish-black hard mud slate, quartz sand, minor sand grains | |
868 | 1008 | 140 | Yellow sandstone, gravel, quartz sand, fine sand, brown hard mudstone | |
1010 | 1018 | 8 | Pink mudstone, quartz sand, fine sand, gravel, brown hard mudstone | |
1020 | 1058 | 38 | Gravel | |
Cretaceous K | 1058 | 1073 | 15 | Sandstone |
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Zhu, W.; Wang, W.; Wang, D.; Wang, G.; Cui, A.; Xi, Y.; Li, F.; Zhang, B.; Zhang, G. Application of the Electromagnetic Method to the Spatial Distribution of Subsurface Saline and Fresh Water in the Coastal Mudflat Area of Jiangsu Province. Sensors 2023, 23, 6405. https://doi.org/10.3390/s23146405
Zhu W, Wang W, Wang D, Wang G, Cui A, Xi Y, Li F, Zhang B, Zhang G. Application of the Electromagnetic Method to the Spatial Distribution of Subsurface Saline and Fresh Water in the Coastal Mudflat Area of Jiangsu Province. Sensors. 2023; 23(14):6405. https://doi.org/10.3390/s23146405
Chicago/Turabian StyleZhu, Wei, Wenguo Wang, Dayong Wang, Gang Wang, Aiming Cui, Yongzai Xi, Fei Li, Baowei Zhang, and Gege Zhang. 2023. "Application of the Electromagnetic Method to the Spatial Distribution of Subsurface Saline and Fresh Water in the Coastal Mudflat Area of Jiangsu Province" Sensors 23, no. 14: 6405. https://doi.org/10.3390/s23146405
APA StyleZhu, W., Wang, W., Wang, D., Wang, G., Cui, A., Xi, Y., Li, F., Zhang, B., & Zhang, G. (2023). Application of the Electromagnetic Method to the Spatial Distribution of Subsurface Saline and Fresh Water in the Coastal Mudflat Area of Jiangsu Province. Sensors, 23(14), 6405. https://doi.org/10.3390/s23146405