Multi-Scale Spectroscopy and In Situ X-Ray Fluorescence Data Applied to Geoenvironmental Models: Assessing Contamination at the Trimpancho Mining Site (Iberian Pyrite Belt)
Abstract
1. Introduction
2. Materials and Methods
2.1. Field Sample Collection
2.2. Hyperspectral Reflectance Spectroscopy
2.3. Portable X-Ray Fluorescence (pXRF)
2.4. UAV Data
2.5. Satellite Image
3. Results
3.1. Hyperspectral Results
- Samples singularly defined by the vibrational overtones (OH, H2O, and Al-OH).
- Samples with low reflectance.
- Samples defined by characteristic 500–1000 nm absorption bands and vibrational overtones.
- Samples with high reflectance, pronounced 432 nm absorptions, and doublet OH absorption.
3.2. Remote Sensing Results
3.2.1. Multispectral UAV Sensor Dataset Validation
3.2.2. Sentinel-2
3.3. Geochemistry Results
3.3.1. Spatial Distribution
3.3.2. Exploratory Data Analysis
4. Discussion
- Most samples of Group 1 are outside the mine limits, showing a clay-dominated mineralogy (montmorillonite, illite and/or muscovite) with low PTEs and high Mn concentrations, representing the uncontaminated regional spectral and geochemical signatures.
- Group 2 samples revealed the presence of sulphide minerals, supported by low reflectance and USGS reference matches, with the highest PTEs and Mn concentrations, most likely representing the original ore waste piles.
- Group 3 samples are found in all mines, showing the presence of hematite/goethite mixed with white micas and clay minerals, and accessory jarosite. The medium-to-high PTEs and low Mn concentrations indicate that this group represents late-stage alteration minerals derived from the sulphide-rich mine wastes [11].
- Group 4 samples showed the presence of jarosite, hematite/goethite and white micas/clay minerals. Geochemically, it is marked by high PTEs and low Mn concentrations, including some of the highest PTEs outliers. The similarities with Group 3 and the inferred mineralogy indicate that this group represents alteration minerals from the first stages of the sulphide oxidation process, with the precipitation of sulphates in very acidic pH conditions [11].
Environmental Model
5. Conclusions
- Spectral signatures of contaminated samples reached the maximum reflectance before non-contaminated (below 1350 nm and above 1850 nm, respectively). Together with background and contamination trends in geochemical data, these provide path-traces for contamination sources.
- Combining hyperspectral and geochemical datasets refines the geoenvironmental model, enabling the distinction between background, sulphide-rich and alteration minerals mine waste signatures.
- Multispectral UAV imagery is consistent with ground-truth observations; custom false colour compositions allow high-resolution identification of potential contamination sources.
- Adapting band ratios to Sentinel-2 provides a streamlined, scalable solution for preliminary environmental monitoring.
- The false colour composition can be applied independently of hyperspectral and geochemical data, broadening its practical use.
- The proposed methodology is transferable to other IPB mines and VHMS deposits; future works will validate it at São Domingos (Portugal) and Rio Tinto (Huelva, Spain) under different environmental and operational scenarios.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| IPB | Iberian Pyrite Belt |
| AMD | Acid mine drainage |
| VHMS | Volcanogenic Hosted Massive Sulphides |
| TMC | Trimpancho mining complex |
| NSdC | Nuestra Señora del Carmen |
| LC | La Condesa |
| TG | Trimpancho Group |
| VF | Volta Falsa |
| F | Fronteriza |
| Ch | Chança (mine) |
| VSC | Volcano-sedimentary complex |
| pXRF | Portable X-ray fluorescence |
| PTEs | Potentially toxic elements |
| IDW | Inverse distance weight |
| EDA | Exploratory data analysis |
| SAM | Spectral angle mapper |
| RMSE | Root mean square error |
| cBSI | Custom Bare Soil Index |
| IOI | Iron oxide index |
| NDVI | Normalised difference vegetation index |
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| Group | Reference Name | Main Mineral | SAM | RMSE | Spectra |
|---|---|---|---|---|---|
| 1 | Montmorillonite-Na CU93-52A | Montmorillonite-Na | 0.03 | 0.03 | Continuum-removed |
| Montmorillonite + Illite CM37 | Montmorillonite + Illite | 0.03 | 0.04 | Continuum-removed | |
| Illite IL105 (1Md) | Illite | 0.09 | 0.04 | Raw reflectance | |
| Goethite MPCMA2-B FineGr adj | Goethite | 0.10 | 0.05 | Raw reflectance | |
| 2 | Illite IL105 (1Md) | Illite | 0.03 | 0.04 | Continuum-removed |
| Pyrite S142-1 | Pyrite | 0.03 | 0.04 | Continuum-removed | |
| Arsenopyrite HS262.3B | Arsenopyrite | 0.03 | 0.03 | Continuum-removed | |
| Goethite HS36.3 | Goethite | 0.05 | 0.06 | Continuum-removed | |
| 3 | Goethite0.02 + Quartz GDS240 | Goethite (coating) | 0.04 | 0.04 | Continuum-removed |
| Muscov + Jaros CU93-314 coatng | Altered Muscovite + Jarosite | 0.05 | 0.04 | Continuum-removed | |
| Goeth + qtz.5 + Jarosite.5 AMX11 | Goethite (coating) + Jarosite | 0.06 | 0.06 | Raw reflectance | |
| Montmorillonite + Illite CM37 | Montmorillonite + Illite | 0.05 | 0.05 | Raw reflectance | |
| 4 | Illite IL105 (1Md) | Illite | 0.04 | 0.05 | Continuum-removed |
| Goeth + qtz.5 + Jarosite.5 AMX11 | Goethite + Quartz + Jarosite | 0.08 | 0.08 | Continuum-removed | |
| Montmorillonite CM26 | Montmorillonite | 0.06 | 0.06 | Continuum-removed | |
| Muscov + Jaros CU93-314 coatng | Muscovite + Jarosite | 0.14 | 0.09 | Raw reflectance |
| Name | Ratio/Index | Reference |
|---|---|---|
| Normalised Difference Vegetation Index (NDVI) 1 | [47,48] | |
| Custom Bare Soil Index (cBSI) 1,2 | Adapted from [47] | |
| Iron Oxide Index (IOI) 1 | [47] |
| Groups | Fe (%) | As (ppm) | Cu (ppm) | ||||||
| M | σ | Range | M | σ | Range | M | σ | Range | |
| Group 1 | 4.23 | 0.70 | 2.03–5.41 | 20 | 24 | 8–140 | 60 | 49 | 23–421 |
| Group 2 | 17.35 | 4.14 | 10.18–20.58 | 189 | 314 | 165–1031 | 637 | 1459 | 471–4421 |
| Group 3 | 5.43 | 3.52 | 2.19–25.76 | 110 | 213 | 16–1569 | 124 | 259 | 36–2023 |
| Group 4 | 6.02 | 1.62 | 3.07–8.4 | 151 | 454 | 28–1431 | 184 | 180 | 68–604 |
| APA | - | 18 | 92 | ||||||
| Groups | Pb (ppm) | Zn (ppm) | Mn (ppm) | ||||||
| M | σ | Range | M | σ | Range | M | σ | Range | |
| Group 1 | 41 | 60 | 23–378 | 134 | 43 | 90–396 | 1248 | 310 | 420–1895 |
| Group 2 | 227 | 657 | 152–1955 | 178 | 1214 | 34–3116 | 1251 | 230 | 767–1364 |
| Group 3 | 124 | 428 | 30–2561 | 160 | 266 | 85–1847 | 762 | 349 | 339–1707 |
| Group 4 | 275 | 1164 | 61–3552 | 117 | 1863 | 60–5706 | 449 | 143 | 345–801 |
| APA | 120 | 290 | - | ||||||
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Silva, M.G.; Roseiro, J.; São Pedro, D.; Santos, D.; Nogueira, P.; Araújo, J.F.; da Silva, R.; Teodoro, A.C.; Gonçalves, M.A.; Henriques, R.; et al. Multi-Scale Spectroscopy and In Situ X-Ray Fluorescence Data Applied to Geoenvironmental Models: Assessing Contamination at the Trimpancho Mining Site (Iberian Pyrite Belt). Sustainability 2026, 18, 6038. https://doi.org/10.3390/su18126038
Silva MG, Roseiro J, São Pedro D, Santos D, Nogueira P, Araújo JF, da Silva R, Teodoro AC, Gonçalves MA, Henriques R, et al. Multi-Scale Spectroscopy and In Situ X-Ray Fluorescence Data Applied to Geoenvironmental Models: Assessing Contamination at the Trimpancho Mining Site (Iberian Pyrite Belt). Sustainability. 2026; 18(12):6038. https://doi.org/10.3390/su18126038
Chicago/Turabian StyleSilva, Marcelo Godinho, José Roseiro, Diogo São Pedro, Douglas Santos, Pedro Nogueira, Joana Fonseca Araújo, Roberto da Silva, Ana Cláudia Teodoro, Mário Abel Gonçalves, Renato Henriques, and et al. 2026. "Multi-Scale Spectroscopy and In Situ X-Ray Fluorescence Data Applied to Geoenvironmental Models: Assessing Contamination at the Trimpancho Mining Site (Iberian Pyrite Belt)" Sustainability 18, no. 12: 6038. https://doi.org/10.3390/su18126038
APA StyleSilva, M. G., Roseiro, J., São Pedro, D., Santos, D., Nogueira, P., Araújo, J. F., da Silva, R., Teodoro, A. C., Gonçalves, M. A., Henriques, R., & Fonseca, R. (2026). Multi-Scale Spectroscopy and In Situ X-Ray Fluorescence Data Applied to Geoenvironmental Models: Assessing Contamination at the Trimpancho Mining Site (Iberian Pyrite Belt). Sustainability, 18(12), 6038. https://doi.org/10.3390/su18126038

