1. Introduction
The Jinding lead–zinc deposit, located in Lanping County, Nujiang Prefecture, Yunnan Province, is the largest lead–zinc deposit in China (
Figure 1). Due to the complicated geological and topographical conditions of the “Three-River” metallogenic belt, there are many disputes regarding the geological genesis and metallogenic model of the Jinding lead–zinc deposit [
1,
2]. Regarding its geological genesis, Wang, 2001; Yan, 1997; Zhu, 2016; Zhang, 2010; and Zeng, 2016, among others, have conducted extensive research but with different perspectives of the origin, including hydrothermal filling metasomatic type, stratabound epigenetic deposit, syngenetic sedimentary deposit, and exhalative (hydrothermal) sedimentary deposit [
3,
4,
5,
6,
7,
8]. Among them, the viewpoint of the exhalative (hydrothermal) sedimentary deposit dominates. However, some studies have shown that the Jinding lead–zinc deposit is more likely to be an epigenetic filling-type stratabound deposit, with this view supported by geological evidence such as the paleoenvironment of the ore-bearing strata. However, these geological research achievements lack support from geophysical exploration evidence, especially in the absence of establishing a geophysical model of the ore deposit related to geological genesis and mineralization patterns.
Geophysical modeling is known to be a crucial link in both theoretical research and production practices in geophysics. With the continuous development of geophysical exploration methods and technologies, the construction and research of geophysical models have become the key to the success of geophysical exploration. By constructing and studying geophysical models and using forward numerical simulations to validate exploration methods, the multiplicity of solutions in geophysical exploration inversion and interpretation can be reduced. Therefore, constructing a geophysical model for the Jinding lead–zinc deposit is particularly important for studying the geological genesis and mineralization patterns of the deposit.
In the Jinding mining area, geological surveys at scales of 1:200,000, 1:250,000, and 1:500,000; physical property measurements of rocks; and drilling verification work have been conducted. These geological data and lithological research findings provide a solid foundation for establishing a geophysical model. However, in terms of geophysical exploration, only AMT (audio-frequency magnetotellurics) surveys and 1:500,000 gravity exploration studies (Ma, 2019) have been carried out in different sections of the Jinding lead–zinc deposit; thus, systematic geophysical research is lacking [
9]. In particular, the current success rate in exploring middle-to-deep concealed ores remains low, and mining enterprises are already facing a resource crisis. Therefore, further research on geophysical exploration methods and techniques for the Jinding deposit is essential to establish effective geophysical exploration models and prospecting strategies for future mineral resource exploration.
The controlled-source audio-frequency magnetotellurics (CSAMT) method, renowned for its robust anti-interference capabilities, extensive detection depth, and remarkable work efficiency, has emerged as a pivotal tool in deep resource exploration. Its applications (such as in Cao, 2010; Yu,1998; Wang, 2016; He, 2016) have yielded outstanding outcomes in mineral resource exploration, concealed ore body identification, and metallogenic prediction within complex geological terrains [
10,
11,
12,
13,
14]. Therefore, based on the exploration objectives and requirements for the concealed ore bodies in the middle and deep parts of the mining area, the CSAMT method can be selected as the geophysical exploration approach for the Jinding lead–zinc deposit. By combining this with a geophysical model of the deposit, forward numerical simulations can be utilized to verify the effectiveness of the exploration method. At the same time, based on the forward simulation parameters, a geophysical technical solution suitable for exploring ore bodies in the Jinding deposit can be selected and optimized.
For general geoelectric models, CSAMT methods do not have simple numerical solutions and often require reliable numerical solutions to be sought. Traditional methods for solving CSAMT numerical solutions can be summarized into four main algorithms: the volume integral method, the boundary integral method, the finite difference method, and the finite element method. The finite element method has been adopted by many scholars (Jiang 2018; Tang 2014, Ren 2012, 2014, Yonghyun 2014, Yin 2014, Octavio 2015, Hunag 2016) due to its characteristics such as grid diversity and high calculation accuracy [
15,
16,
17,
18,
19,
20,
21,
22]. However, these studies share a common characteristic: the finite element calculations predominantly adopt traditional truncated boundaries, which approximate infinite boundary problems within a relatively large region as finite ones. This approach often leads to issues such as large calculation areas, high node counts, significant storage requirements, and time-consuming computations. A more reasonable boundary-handling strategy should limit the calculation area to a smaller target region, reducing the number of elements and nodes and thereby conserving computational resources and improving computational speed. The finite element–infinite element coupling method offers the possibility to implement this strategy. The core idea of finite element–infinite element coupling is to replace traditional truncated boundaries with “infinite elements.” By using coordinate mapping, “infinite elements” are infinitely extended in a certain direction, enabling the electromagnetic field to rapidly decay to zero within these elements. Finally, by combining finite elements to discretize the internal small region, rapid forward simulations can be achieved [
23,
24]. In the field of geophysics, the infinite element method is primarily applied in seismic exploration, well logging, and direct current (DC) resistivity methods. Gong (2019) successfully implemented this technique in numerical simulations of DC resistivity [
25], but its application remains relatively limited in electromagnetic methods. Only Tang (2014) has conducted simple research on the application of infinite elements in CSAMT [
16]. Therefore, conducting research on the geophysical model of the Jinding lead–zinc mining area with the coupled finite element–infinite element method has important guiding significance for the selection of geophysical exploration methods.
In traditional CSAMT field surveys, due to the complexity of electromagnetic theory and a lack of technical training, most operators can only follow the equipment manufacturer’s manual for fieldwork and data processing. Hence, a major challenge is the lack of effective quality control and evaluation of CSAMT data. For example, operators often focus on transmitter signal strength alone and neglect the quantitative evaluation of receiver signal strength. On the other hand, to improve efficiency, single-cycle data acquisition is commonly used, so the importance of time stacking for enhancing low-frequency data quality is often overlooked, leading to unclear or incorrect near-field characteristics in resistivity sounding curves. These practices significantly reduce the effectiveness of CSAMT exploration.
Therefore, in this study, the exploration of the Jinding lead–zinc mine was taken as an example. Firstly, based on existing geological survey results, geological models, and resistivity measurements of rocks in the mining area, research was conducted to construct a 3D geophysical model of the Jinding lead–zinc mine. Then, 3D forward modeling based on the finite element–infinite element method was used to numerically simulate the constructed geophysical model in order to verify the effectiveness of the CSAMT exploration method in the Jinding lead–zinc mine. Meanwhile, an optimal technical scheme for the CSAMT exploration of the mine was rationally designed based on the forward numerical simulation scheme.
Secondly, field exploration using CSAMT was carried out in the Jinding mine to validate the field application’s effectiveness. Through noise testing experiments and acquisition time trials, optimal transmission intensity and acquisition time parameters were determined, significantly improving the quality of CSAMT field data acquisition. A new method for calculating the signal-to-noise ratio (SNR) using the electromagnetic background signals in the mining area as the noise source was proposed to quantitatively evaluate the quality of data acquisition. Additionally, methods for qualitatively evaluating data quality based on the transition zone and near-zone characteristics of the CSAMT Cagniard resistivity sounding curves were proposed.
Finally, the data obtained from the field exploration were inverted using a continuous medium inversion method to derive the 2D electrical structure characteristics of the deep part of the Jinding deposit, which were then interpreted. This provides rigorous geophysical evidence for the in-depth exploration of the deep metallogenic geological background and environment of the Jinding lead–zinc deposit.
The entire set of CSAMT geophysical exploration technical schemes mentioned above can provide geophysical exploration models, directions, and ore-finding ideas for mineral resource exploration in the Jinding and similar deposits.
2. Geological Overview and Geophysical Model
2.1. Geological Overview of the Deposit
The Jinding lead–zinc deposit is prominently situated within the densely compressed middle segment of the Sanjiang fold system, which is positioned precisely at the northern terminus of the Lanping–Simao Meso-Cenozoic depression. It is strategically positioned between the north–south-oriented faults tightly hemmed in by the Mishahe Fault Zone and the Lancang River Fault Zone and is found to the western flank of the Bihe River Fault Zone, within the ancient Lanping–Yunlong Paleocene graben basin. The deposit is divided into seven distinct mining sections, including Beichang, Jiayashan, Fengzishan, Paomaping, Xipo, Nanchang, and Baicaoping. The mining area exposes a succession of strata ranging from older to younger deposits, comprising the Upper Triassic Sanhedong Formation (T3s) of marine limestones (including brecciated limestones, dolomitic limestones, argillaceous limestones, and limestone mudstones), the Maichuqing Formation (T3m, the core strata of the syncline, with alternating layers of quartz sandstones and carbonaceous mudstones), the Middle Jurassic Huakaizuo Formation (J2h, interbedded layers of argillaceous siltstones, siltstones, and mudstones), the Upper Jurassic Bazhulu Formation (J2b, consisting of mudstones, argillaceous siltstones, and calcareous conglomerates), the Lower Cretaceous Jingxin Formation (K1j, with alternating layers of quartz sandstones, silty mudstones, and intercalated limestone conglomerates), the Upper Cretaceous Nanxin Formation (K2n, composed of argillaceous conglomerates, fine sandstones, siltstones, and mudstones), the Upper Cretaceous Hutousi Formation (K2h, characterized by long quartz sandstones), the Lower Tertiary Paleocene Yunlong Formation (E1y, interbedded layers of muddy gravelly rocks and argillaceous siltstones), the Guolang Formation (E2g, with alternating layers of argillaceous siltstones, silty mudstones, and intercalated fine sandstones), the Eocene Baoxiangsi Formation (Eb, featuring long quartz sandstones, conglomerates, sandstones, mudstones, and quartzites), the Upper Tertiary Pliocene Sanying Formation (N2s, with interbedded layers of conglomerates, sandy conglomerates, sandstones, and mudstones), and the Quaternary Pleistocene (Qp, with sand and gravel layers) and Holocene (Qh, comprising gravels, sand grains, and sandy clays).
The primary geological structure of the mining area is a thrust nappe tectonic assemblage, which constitutes a significant component of the large-scale thrust nappe structure that formed during the Paleocene Yunlong period in the Lanping Basin. Klippe structures, or flysch formations, exist in numerous segments throughout the mining area. Furthermore, thrust-sliding planes have also been incorporated into the tectonic domes, resulting in the formation of dome structures that are characterized by the co-deformation of both thrust tectonics and in situ systems. In accordance with these findings, it can be concluded that the thrust tectonics predate the formation of the dome structures, with their inception likely commencing as early as the late Yunlong period. In summary, the geological structures of the Jinding mining area are complex, characterized by well-developed folds and faults that exhibit multiple stages of activity. This underscores the dynamic and protracted geological history of the region. The geological structures of the mining area are primarily characterized by the Gaoping–Laomujing syncline, the Bihe River Fault, horizontal thrust faults, transverse faults, oblique faults, and secondary fault structures.
2.2. Geological and Geophysical Model of the Ore Deposit
Based on existing geological data and previous research, our research group conducted an in-depth study on the geological model of the Jinding lead–zinc deposit and proposed a two-dimensional geological model of the deposit[], as shown in
Figure 2.
In
Figure 2, the shallow surface is a thin layer of soil and sand–gravel rock. Below it is a dome structure and a sliding surface mainly composed of mudstone and argillaceous silt. Between the sand–gravel rock and the dome structure, there are tabular, layered, and stratoid sandstone-type ore bodies. Below the fault structure are limestone and breccia ore bodies, and below these bodies is limestone. There are deep fractures between the limestone layers. To establish a geophysical model of the deposit, it is necessary to measure the electrical parameters of the geological model. For the resistivity parameters of rock ore, the SQ-3C dual-channel lightweight-induced polarization instrument is used to measure the resistivity and polarization amplitude/frequency of the rock samples using the forced current method.
Table 1 shows the electrical properties of the rocks in the Jinding mining area. The resistivity of various rocks in the mining area can be divided into five levels. Limestone has the highest resistivity, above 10,000 Ω·m. Pure sandstone comes next, with a resistivity of around 6000 Ω·m. Limestone breccia-type sulfide ore has a resistivity of approximately 3000 Ω·m. Lead–zinc oxide ore has a resistivity of about 1500 Ω·m, and sandstone-type sulfide ore has a resistivity of 400–500 Ω·m. The lowest resistivity is found in mudstone, argillaceous siltstone, and fine sandstone, at approximately 200 Ω·m. The polarizability of mudstone, argillaceous siltstone, sandstone, and limestone is around 1.0%. Lead–zinc oxide ore has a polarizability of about 3.0%, and limestone breccia-type sulfide lead–zinc ore has a polarizability of about 4.5%. Primary sandstone-type sulfide ore has the highest polarizability, at around 20.0%.
The above analysis shows that mudstone, argillaceous siltstone, and fine sandstone have basically the same electrical characteristics, with a resistivity of between 100 and 200 Ω·m and a polarizability of less than 1%, indicating low resistivity and low polarizability. However, regardless of whether it is primary sulfide ore or oxidized ore, the resistivity of the ore body is between 400 and 500 Ω·m, and the polarizability is approximately 4–20%. As can be seen from the typical exploration profile in
Figure 1, mudstone and argillaceous siltstone basically constitute the surrounding rocks of the lead–zinc ore body. Therefore, the lead–zinc ore body in the area should exhibit relatively high resistivity and high polarizability characteristics. When the surrounding rock is locally limestone, it exhibits low resistivity and high polarizability characteristics.
Therefore, based on the 2D geological model that uses the electrical parameters of rocks in the Jinding lead–zinc deposit (
Table 1), a 3D geophysical model is constructed, as shown in
Figure 3. In the figure, the first layer represents the surface covering layer with a thickness of 100 m. Its main component is sand and gravel strata, and it has an average resistivity of 200
. Beneath the covering layer lie domes and concealed deep fault structures with a resistivity of 100
. On both sides of the fault are high-resistance surrounding rocks with a resistivity of 1000
. The ore bodies are hosted within the dome structure, primarily consisting of sandstone-type and limestone breccia ore bodies. The sandstone ore body resembles a platy form, with a resistivity of 500
. Its dimensions are 300 m in length, 100 m in width, and 300 m in height. The limestone breccia ore bodies often appear as inclined or vertical thin layers, also with a resistivity of 500
, and their dimensions are 100 m in length, 300 m in width, and 300 m in height. The limestone breccia ore bodies often occur as inclined or vertical thin layers with a resistivity of 500
. Their dimensions are typically 100 m in length, 300 m in width, and 300 m in height.
3. Numerical Simulation of CSAMT
Numerical simulation research not only enhances people’s understanding and knowledge about the exploration methods but also assists in selecting the correct exploration approach and setting appropriate field acquisition parameters. Therefore, we employed a three-dimensional CSAMT forward modeling program based on the coupled finite element–infinite element method to conduct a numerical simulation on the geophysical model of the Jinding lead–zinc mine. Three-dimensional CSAMT forward modeling using the coupled finite element–infinite element method is an efficient numerical simulation technique for electromagnetic fields, which combines the advantages of the finite element method in handling complex geological structures and boundary conditions with the characteristics of the infinite element method in simulating infinite far-field attenuation. This method achieves rapid and high-precision forward modeling, reduces the computation domain and the number of nodes, accelerates the computation, and is of great significance to the development of exploration geophysics [
20,
21].
3.1. Fundamental Equation
The electric field generated by a horizontal electric dipole (time factor
, angular frequency
) in an isotropic conductive medium satisfies the double curl equation [
26]:
where
is the resistivity,
is the current density vector of the electric dipole, and the magnetic permeability
of both the air and the subsurface medium is taken as the vacuum magnetic permeability, while the dielectric constant
is the vacuum dielectric constant.
The electric dipole source exhibits singularity. The total electric field is decomposed into the sum of the background field
(primary field) and the induced field
(secondary field). The background field
is directly solved using a one-dimensional geoelectric model [
27], while the induced field
is solved using the finite element method to avoid the calculation of source singularity.
The background field
also satisfies the double curl equation of the electric field. Equations (1) and (2) can be used to derive the double curl equation based on the secondary field
:
where
. We know that on an electrical interface, the normal component of the electric field is discontinuous, while nodal finite elements require the electromagnetic field to be continuous in the normal direction. Therefore, the obtained finite element solution is often inaccurate and needs to be corrected. In the source region, the electric field solution of nodal finite elements does not satisfy condition
; in the source-free region, it does not satisfy condition
. A divergence correction condition needs to be added to Equation (3) [
28].
3.2. Weak Solution Integral Form
Based on the weighted residual finite element method (Jin 2014) [
28], the residual formula for Equation (4) is established:
Take any test function
on the region
:
Let S be the outer boundary surface of the region
. Instead of using traditional truncated boundary conditions, infinite elements are employed. Within the infinite elements, the electromagnetic field decays to zero, so we have
By applying Green’s theorem to the first vector, Equation (6) can be simplified to
The finite element method is used to discretize the internal computation domain. Assuming there are
n nodes in the internal computation domain, the j-th test function can be taken as
3.3. Coupled Finite Element–Infinite Element Method
The coupled finite element–infinite element method divides the entire solution domain into a finite element region and an infinite element region, replacing the traditional outer boundary with the infinite element region. Finite element analysis and infinite element analysis are performed in the two regions, respectively, and they are combined through the assembly of the overall stiffness matrix to obtain the numerical solution.
Figure 4 is a schematic diagram of the division of finite element and infinite element calculation regions. In the figure, the finite element region is the target region, which includes the field source, target body, measurement points, etc.; the infinite element region extends from the boundary of the finite element region to infinity, serving as the boundary calculation region. Infinite element analysis involves using infinite element mapping and shape functions in a certain direction within this region to map the global coordinates to local coordinates. Its principle is the same as that of finite element analysis.
When performing finite element analysis, the rectangular hexahedron is used for regional discretization, and the element node numbering and coordinates are shown in
Figure 5.
In
Figure 5, the corresponding relationship between the coordinates of the parent and child elements is as follows:
where
,
, and
represent the midpoint of the child element and a, b, and c represent the three side lengths of the child element. The expression for the shape function of the rectangular hexahedron is as follows:
In the equation, , , and represent the coordinates of node i in the child element within the parent element.
- 2.
Infinite Element Analysis
When performing infinite element analysis, a three-dimensional eight-node Astley-type infinite element is used [
29].
Figure 6 presents a schematic diagram of three-dimensional infinite element mapping, where nodes 1, 2, 3, 4, 5, 6, 7, and 8 are the basic elements of the infinite element. P is the coordinate origin, and nodes 1, 2, 3, and 4 are the four nodes of a finite element on the boundary. The distances from point P to nodes 5, 6, 7, and 8 are twice the distances from point P to nodes 1, 2, 3, and 4, respectively. Infinite element analysis involves mapping infinite coordinates to the local coordinates in
Figure 6b through infinite element mapping. In
Figure 6b, the four outermost nodes of the infinite element represent infinity, and their field values are zero.
In
Figure 6b,
represents the mapping direction of the infinite element. Within plane
, the infinite element and the finite element adopt the same mapping form and shape function. The coordinate mapping for the infinite element is as follows:
represents the area of the quadrilateral, .
Combining the coordinate mapping relationship in direction
, the coordinate mapping function for the eight-node infinite element can be obtained:
where
is the quadrilateral surface element mapping, and is the linear interpolation of area coordinates.
For the shape function of the infinite element, its specific expression is as follows:
This shape function is the product of coefficient A, which is used in the shape function adopted in the Astley mapped infinite element theory (Astley, 1994) and a second-order Lagrange interpolation polynomial [
29].
The finite element and infinite element analyses are basically consistent, with both being eight-node elements. Therefore, in numerical simulations, the infinite elements and finite elements can be perfectly combined to ensure the symmetry of the stiffness matrix, making the solution simple and convenient.
3.4. Solving the Equation System
In the three-dimensional numerical simulation of CSAMT, each node has three degrees of freedom in the x, y, and z directions. Therefore, we take
where
is the shape function of the j-th measurement point, and its specific form is detailed in Equations (11) and (13).
Equation (9) can be written as follows:
Using the vector curl formula and the divergence formula, Equation (17) above can be simplified and written in matrix form as follows:
where
Equation (18) is a large, sparse, and symmetric complex coefficient linear equation system. In this system, matrix A represents the overall stiffness matrix of the coupled finite element–infinite element method, which is a square matrix. Here, , , and denote the total number of nodes in the x, y, and z directions, respectively. Each row in matrix A has a maximum of 81 non-zero elements. x represents the electric field values at each node that need to be solved; b is the right-hand side term, which includes the anomalous body and the primary field. For solving large-scale sparse linear equation systems, this study adopts Pardiso, an open-source solver with excellent performance and high parallelization. Pardiso uses LU decomposition for direct solving, making it particularly suitable for handling multi-source CSAMT problems.
3.5. Forward Modeling of the Jinding Lead–Zinc Geophysical Model
The coupled finite element–infinite element method was used for the following numerical simulation and forward modeling calculation parameters:
In the x direction, the subdivision area ranges from −3000 to 15,000. Within the survey line area, the grid size is set to 50 m, resulting in a total of 121 nodes.
In the y direction, the subdivision area ranges from −3000 to 3000. Within the survey line area, the grid size is set to 50 m, resulting in a total of 63 nodes. Near the field source and the target body, the grid subdivision is relatively dense.
In the z direction, the subdivision area ranges from −3200 to 3000, with a total of 36 nodes. The air region spans from −3200 to 0 and is subdivided into six layers. Due to the rapid attenuation of the field in underground media, the grid subdivision size is smaller, and the grid size is set to 25 m.
Frequencies: 8192, 4096, 2048, 1024, 512, 256, 128, 64, 32, 16, 8, 4, 2, and 1 Hz, totaling 14 frequencies. The average calculation time for each frequency point is approximately 240 s.
To demonstrate the advancement of the coupled finite element–infinite element method proposed in this paper.
Table 2 shows the computational data of the traditional large-scale finite element method and the finite element–infinite element coupling method(computation frequency: 256 Hz). In
Table 2, the coupled finite element–infinite element method has a small discrete area, accounting for only 1% of the traditional finite element method. The total number of degrees of freedom is reduced by 40%. In terms of memory, the finite element–infinite element method reduces memory usage by 57%. In terms of computation time, the finite element–infinite element method improves the calculation speed by 45%. Therefore, the coupled finite element–infinite element method has obvious advantages such as a small discrete area, fewer computational nodes, and a faster solution speed compared to the traditional large-scale finite element method.
The numerical simulation results are presented in
Figure 7. In Figure, from left to right, the vertical source–receiver distances of the five survey lines are 9600 m, 9800 m, 10,000 m, 10,200 m, and 10,400 m, respectively (
Figure 3). From the apparent resistivity pseudo-section map, it can be observed that the CSAMT 3D forward modeling results exhibit a significant response to the low-resistivity dome structure of the Jinding lead–zinc deposit, providing a clear reflection of the structure’s morphology. However, due to the boundary effects, the boundary between the dome structure and the high-resistivity limestone is relatively blurred. In addition, due to the low-resistivity shielding effect of electromagnetic methods, the relatively high-resistivity lead–zinc ore bodies show little response in the simulation. Based on the numerical simulation results, it can be seen that when exploring high-resistivity target bodies in low-resistivity surrounding rocks, the CSAMT electromagnetic response is weak, and the numerical effect is not significant. However, when exploring low-resistivity structures such as faults and fracture zones in high-resistivity surrounding rocks, the effect is very pronounced. Therefore, it is feasible to conduct CSAMT exploration research in the Jinding lead–zinc mining area to identify low-resistivity faults, dome structures, and other features within the ore deposit.
Additionally, the forward modeling parameters used in the 3D CSAMT numerical simulation, such as grid size, vertical source–receiver distance, frequency band range, survey line length, and the three-dimensional size and location of the target body, can assist us in designing the field CSAMT acquisition parameters to achieve good exploration results.
6. Conclusions
A new geophysical exploration model was proposed, which was integrated as follows: geophysical model–numerical simulation–exploration method selection– field experiments–electrical structure interpretation. Through the practical application in the Jinding lead–zinc mining area, the new geophysical exploration model could provide an effective theoretical basis for the selection and effectiveness of geophysical exploration methods, and the model improves the geological effectiveness of exploration.
A new simulation algorithm, the coupled finite element–infinite element method, was proposed in this paper. Compared to the traditional large-scale finite element method, the method has a discretization area that was only 1% of the traditional computational domain, a reduction of 40% in the total number of nodal degrees of freedom, a decrease of 57% in memory consumption, and a reduction of 45% in computation time. Therefore, we can show that the new CSAMT simulation algorithm proposed has significant advantages such as a small discretization area, fewer computational nodes, and a faster solution speed.
Compared to traditional CSAMT exploration, new signal-to-noise ratio experiments and different acquisition time experiments were conducted to obtain high-quality data. In the SNR experiments, a new noise source was defined by using the signal collected when CSAMT was not transmitting as the noise source, which included natural field source signals and noise signals. By calculating the SNR, the transmitted signal intensity was adjusted reasonably, so the quality of data acquisition could be more strictly and quantitatively evaluated. Additionally, different acquisition time experiments were compared, and the results showed that by extending the data acquisition time, the quality of CSAMT low-frequency data could be significantly improved, and the transitional and near-field characteristics of the Cagniard apparent resistivity curve could become more pronounced.
By using two-dimensional continuous medium inversion, the electrical distribution at a depth of 1 km below each survey line in the Jinding lead–zinc mining area was obtained. At the same time, by interpreting the electrical structure of the survey lines, the electrical characteristics of the lithologic system in the Jinding lead–zinc mining area were revealed. These results provide reliable data support for the geological genesis and metallogenic model of the Jinding lead–zinc deposit.