11 results on '"Teodoro, Ana C."'
Search Results
2. Enhancing Forest Site Classification in Northwest Portugal: A Geostatistical Approach Employing Cokriging.
- Author
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Pavani-Biju, Barbara, Borges, José G., Marques, Susete, and Teodoro, Ana C.
- Abstract
Forest managers need inventory data and information to address sustainability concerns over extended temporal horizons. In situ information is usually derived from field data and computed using appropriate equations. Nonetheless, fieldwork is time-consuming and costly. Thus, new technologies like Light Detection and Ranging (LiDAR) have emerged as an alternative method for forest assessment. In this study, we evaluated the accuracy of geostatistical methods in predicting the Site Index (SI) using LiDAR metrics as auxiliary variables. Since primary variables, which were obtained from forestry inventory data, were used to calculate the SI, secondary variables obtained from LiDAR surveying were considered and multivariate kriging techniques were tested. The ordinary cokriging (CK) method outperformed the simple cokriging (SK) and Inverse Distance Weighted (IDW) methods, which was interpolated using only the primary variable. Aside from having fewer SI sample points, CK was proven to be a trustworthy interpolation method, minimizing interpolation errors due to the highly correlated auxiliary variables, highlighting the significance of the data's spatial structure and autocorrelation in predicting forest stand attributes, such as the SI. CK increased the SI prediction accuracy by 36.6% for eucalyptus, 62% for maritime pine, 72% for pedunculate oak, and 43% for cork oak compared to IDW, outperforming this interpolation approach. Although cokriging modeling is challenging, it is an appealing alternative to non-spatial statistics for improving forest management sustainability since the results are unbiased and trustworthy, making the effort worthwhile when dense secondary variables are available. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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3. The INOVMineral Project's Contribution to Mineral Exploration—A WebGIS Integration and Visualization of Spectral and Geophysical Properties of the Aldeia LCT Pegmatite Spodumene Deposit.
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Cardoso-Fernandes, Joana, Santos, Douglas, Almeida, Cátia Rodrigues de, Vasques, Julia Tucker, Mendes, Ariane, Ribeiro, Ricardo, Azzalini, Antonio, Duarte, Lia, Moura, Rui, Lima, Alexandre, and Teodoro, Ana C.
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SPODUMENE ,DATA visualization ,LANDSAT satellites ,LITERATURE reviews ,REMOTE sensing ,PROSPECTING ,PETROLEUM prospecting - Abstract
Due to the current energetic transition, new geological exploration technologies are needed to discover mineral deposits containing critical materials such as lithium (Li). The vast majority of European Li deposits are related to Li–Cs–Ta (LCT) pegmatites. A review of the literature indicates that conventional exploration campaigns are dominated by geochemical surveys and related exploration tools. However, other exploration techniques must be evaluated, namely, remote sensing (RS) and geophysics. This work presents the results of the INOVMINERAL4.0 project obtained through alternative approaches to traditional geochemistry that were gathered and integrated into a webGIS application. The specific objectives were to: (i) assess the potential of high-resolution elevation data; (ii) evaluate geophysical methods, particularly radiometry; (iii) establish a methodology for spectral data acquisition and build a spectral library; (iv) compare obtained spectra with Landsat 9 data for pegmatite identification; and (v) implement a user-friendly webGIS platform for data integration and visualization. Radiometric data acquisition using geophysical techniques effectively discriminated pegmatites from host rocks. The developed spectral library provides valuable insights for space-based exploration. Landsat 9 data accurately identified known LCT pegmatite targets compared with Landsat 8. The user-friendly webGIS platform facilitates data integration, visualization, and sharing, supporting potential users in similar exploration approaches. [ABSTRACT FROM AUTHOR]
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- 2023
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4. Detecting Lithium (Li) Mineralizations from Space: Current Research and Future Perspectives.
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Cardoso-Fernandes, Joana, Teodoro, Ana C., Lima, Alexandre, Perrotta, Mônica, and Roda-Robles, Encarnación
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OPTICAL remote sensing ,SPACE research ,REMOTE sensing ,IMAGE processing - Abstract
Optical and thermal remote sensing data have been an important tool in geological exploration for certain deposit types. However, the present economic and technological advances demand the adaptation of the remote sensing data and image processing techniques to the exploration of other raw materials like lithium (Li). A bibliometric analysis, using a systematic review approach, was made to understand the recent interest in the application of remote sensing methods in Li exploration. A review of the application studies and developments in this field was also made. Throughout the paper, the addressed topics include: (i) achievements made in Li exploration using remote sensing methods; (ii) the main weaknesses of the approaches; (iii) how to overcome these difficulties; and (iv) the expected research perspectives. We expect that the number of studies concerning this topic will increase in the near future and that remote sensing will become an integrated and fundamental tool in Li exploration. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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5. Remote sensing data in lithium (Li) exploration: A new approach for the detection of Li-bearing pegmatites.
- Author
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Cardoso-Fernandes, Joana, Teodoro, Ana C., and Lima, Alexandre
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REMOTE sensing , *OPTICAL remote sensing , *LITHIUM , *MULTIPLE correspondence analysis (Statistics) , *ELECTRIC batteries , *LITHIUM-ion batteries - Abstract
Highlights • Developed innovative remote sensing methodologies capable of identifying Li-pegmatites through alteration mapping. • Direct identification of Li-bearing minerals. • Different remote sensing data used (Landsat-5, Landsat-8, Sentinel-2 and ASTER images). • Comparison of the results provided for the different remote sensing sensors. • New self-proposed RGB combinations, band ratio and subsets for selective PCA. Abstract Remote sensing has proved to be a powerful resource in geology capable of delineating target exploration areas for several deposit types. Only recently, these methodologies have been used for the detection of lithium (Li)-bearing pegmatites. This happened because of the growing importance and demand of Li for the construction of Li-ion batteries for electric cars. The objective of this study was to develop innovative and effective remote sensing methodologies capable of identifying Li-pegmatites through alteration mapping and through the direct identification of Li-bearing minerals. For that, cloud free Landsat-5, Landsat-8, Sentinel-2 and ASTER images with low vegetation coverage were used. The image processing methods included: RGB (red, green, blue) combinations, band ratios and selective principal component analysis (PCA). The study area of this work is the Fregeneda (Salamanca, Spain)-Almendra (Vila Nova de Foz Côa, Portugal) region, where different known types of Li-pegmatites have been mapped. This study proposes new RGB combinations, band ratios and subsets for selective PCA capable of differentiating the spectral signatures of the Li-bearing pegmatites from the spectral signatures of the host rocks. The potential and limitations of the methodologies proposed are discussed, but overall there is a great potential for the identification of Li-bearing pegmatites using remote sensing. The results obtained could be improved using sensors with a better spatial and spectral resolution. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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6. A Semi-Automatic Approach for the Extraction of Sandy Bodies (Sand Spits) From IKONOS-2 Data.
- Author
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Teodoro, Ana C. and Goncalves, Hernâni
- Abstract
The automatic or semi-automatic extraction of features from satellite images has always become a challenge for remote sensing researchers. The analysis of satellite imagery of natural scenes presents many unique problems, because they cannot be represented easily by regular rules or grammars. A sand spit does not present a well-defined topographic boundary, because they are influenced by tides, waves and wind. Moreover, the bubbles and foam caused by the breaking waves and the turbidity of the water difficult an accurate extraction of the boundary between land (sand spit) and water. This paper presents different approaches in order to extract sand spits from IKONOS-2 data. A novel semi-automatic approach is proposed, which is based on global thresholding through the Otsu's method, further refined through detected edges (GThE). The performance of GThE is compared with traditional pixel-based and object-based classification algorithms. The dataset is composed by six IKONOS-2 images, acquired between 2001 and 2007, covering a sand spit (Cabedelo) located in Portugal. The performance of the three methods used in the estimation of the sand spit area was evaluated through two sets of reference values of the sand spit area. The proposed GThE method presented better results than the other traditional methods, with a clear advantage of a considerable faster performance, beyond requiring a minimum operator intervention. Finally, the relation of the sand spit area with several hydrodynamic and agitation parameters was investigated, where it was demonstrated that the river discharge was the parameter with higher influence in the Cabedelo area. [ABSTRACT FROM PUBLISHER]
- Published
- 2012
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7. Retrieving TSM Concentration From Multispectral Satellite Data by Multiple Regression and Artificial Neural Networks.
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Teodoro, Ana C., Veloso-Gomes, Fernando, and Gonçalves, Hernâni
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FREE-space optical technology , *REMOTE sensing , *MULTISPECTRAL imaging , *REFLECTANCE , *SEAWATER , *MULTIPLE regression analysis , *EARTH sciences , *GEOLOGY - Abstract
In this paper, we present different methodologies to estimate the total suspended matter (TSM) concentration in a particular area of the Portuguese coast, from remotely sensed multispectral data, based on single-band models, multiple regression, and artificial neural networks (ANNs). Simulations on different beaches of the study area were performed to determine a relationship between the TSM concentration and the spectral response of the seawater. Based on the in situ measurements, empirical models were established in order to relate the seawater reflectance with the TSM concentration for TERRA/ASTER, SPOT HRVIR, and Landsat/TM. Seven images of these three sensors were calibrated and atmospherically and geometrically corrected. Single-band models, multiple regression, and ANNs were applied to the visible and near-infrared (NIR) bands of these sensors in order to estimate the TSM concentration. Statistical analysis using correlation coefficients and error estimation was employed, aiming to evaluate the most accurate methodology. The chosen methodology was further applied to the seven processed images. The analysis of the root-mean-square errors achieved by both the linear and nonlinear models supports the hypothesis that the relationship between the seawater reflectance and TSM concentration is clearly nonlinear. The ANNs have been shown to be useful in estimating the TSM concentration from reflectance of visible and NIR bands of ASTER, HRVIR, and TM sensors, with better results for ASTER and HRVIR sensors. Maps of TSM concentration were produced for all satellite images processed. [ABSTRACT FROM AUTHOR]
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- 2007
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8. Lithium Potential Mapping Using Artificial Neural Networks: A Case Study from Central Portugal.
- Author
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Köhler, Martin, Hanelli, Delira, Schaefer, Stefan, Barth, Andreas, Knobloch, Andreas, Hielscher, Peggy, Cardoso-Fernandes, Joana, Lima, Alexandre, and Teodoro, Ana C.
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ARTIFICIAL neural networks ,GEOLOGICAL mapping ,LITHIUM-ion batteries ,RIVER sediments ,GEOLOGICAL maps ,REMOTE-sensing images ,MAP design ,REMOTE sensing - Abstract
The growing importance and demand of lithium (Li) for industrial applications, in particular rechargeable Li-ion batteries, have led to a significant increase in exploration efforts for Li-bearing minerals. To ensure and expand a stable Li supply to the global economy, extensive research and exploration are necessary. Artificial neural networks (ANNs) provide powerful tools for exploration target identification. They can be cost-effectively applied in various geological settings. This article presents an integrated approach of Li exploration targeting using ANNs for data interpretation. Based on medium resolution geological maps (1:50,000) and stream sediment geochemical data (1 sample per 0.25 km
2 ), the Li potential was calculated for an area of approximately 1200 km2 in the surroundings of Bajoca Mine (Northeast Portugal). Extensive knowledge about geological processes leading to Li mineralisation (such as weathering conditions and diverse Li minerals) proved to be a determining factor in the exploration model. Furthermore, Sentinel-2 satellite imagery was used in a separate ANN model to identify potential Li mine sites exposed on the ground surface by analysing the spectral signature of surface reflectance in well-known Li locations. Finally, the results were combined to design a final map of predicted Li mineralisation occurrences in the study area. The proposed approach reveals how remote sensing data in combination with geological and geochemical data can be used for delineating and ranking exploration targets of almost any deposit type. [ABSTRACT FROM AUTHOR]- Published
- 2021
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9. Interpretation of the Reflectance Spectra of Lithium (Li) Minerals and Pegmatites: A Case Study for Mineralogical and Lithological Identification in the Fregeneda-Almendra Area.
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Cardoso-Fernandes, Joana, Silva, João, Perrotta, Mônica M., Lima, Alexandre, Teodoro, Ana C., Ribeiro, Maria Anjos, Dias, Filipa, Barrès, Odile, Cauzid, Jean, and Roda-Robles, Encarnación
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MUSCOVITE ,MINERALS ,PEGMATITES ,SPODUMENE - Abstract
Reflectance spectroscopy has been used to identify several deposit types. However, applications concerning lithium (Li)-pegmatites are still scarce. Reflectance spectroscopic studies complemented by microscopic and geochemical studies were employed in the Fregeneda–Almendra (Spain–Portugal) pegmatite field to analyze the spectral behavior of Li-minerals and field lithologies. The spectral similarity of the target class (Li-pegmatites) with other elements was also evaluated. Lepidolite was discriminated from other white micas and the remaining Li-minerals. No diagnostic feature of petalite and spodumene was identified, since their spectral curves are dominated by clays. Their presence was corroborated (by complementary techniques) in petalite relics and completely replaced crystals, although the clay-related absorption depths decrease with Li content. This implies that clays can be used as pathfinders only in areas where argillic alteration is not prevalent. All sampled lithologies present similar water and/or hydroxide features. The overall mineral assemblage is very distinct, with lepidolite, cookeite, and orthoclase exclusively identified in Li-pegmatite (being these minerals crucial targets for Li-pegmatite discrimination in real-life applications), while chlorite and biotite can occur in the remaining lithologies. Satellite data can be used to discriminate Li-pegmatites due to distinct reflectance magnitude and mineral assemblages, higher absorptions depths, and distinct Al–OH wavelength position. The potential use of multi- and hyperspectral data was evaluated; the main limitations and advantages were discussed. These new insights on the spectral behavior of Li-minerals and pegmatites may aid in new Li-pegmatite discoveries around the world. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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10. Semi-Automatization of Support Vector Machines to Map Lithium (Li) Bearing Pegmatites.
- Author
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Cardoso-Fernandes, Joana, Teodoro, Ana C., Lima, Alexandre, and Roda-Robles, Encarnación
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VECTOR data , *PEGMATITES , *SUPPORT vector machines , *REMOTE sensing , *MACHINE learning , *SOLID state batteries - Abstract
Machine learning (ML) algorithms have shown great performance in geological remote sensing applications. The study area of this work was the Fregeneda–Almendra region (Spain–Portugal) where the support vector machine (SVM) was employed. Lithium (Li)-pegmatite exploration using satellite data presents some challenges since pegmatites are, by nature, small, narrow bodies. Consequently, the following objectives were defined: (i) train several SVM's on Sentinel-2 images with different parameters to find the optimal model; (ii) assess the impact of imbalanced data; (iii) develop a successful methodological approach to delineate target areas for Li-exploration. Parameter optimization and model evaluation was accomplished by a two-staged grid-search with cross-validation. Several new methodological advances were proposed, including a region of interest (ROI)-based splitting strategy to create the training and test subsets, a semi-automatization of the classification process, and the application of a more innovative and adequate metric score to choose the best model. The proposed methodology obtained good results, identifying known Li-pegmatite occurrences as well as other target areas for Li-exploration. Also, the results showed that the class imbalance had a negative impact on the SVM performance since known Li-pegmatite occurrences were not identified. The potentials and limitations of the methodology proposed are highlighted and its applicability to other case studies is discussed. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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11. Dynamic shifts of functional diversity through climate-resilient strategies and farmland restoration in a mountain protected area.
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Campos, João C., Alírio, João, Arenas-Castro, Salvador, Duarte, Lia, Garcia, Nuno, Regos, Adrián, Pôças, Isabel, Teodoro, Ana C., and Sillero, Neftalí
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ECOLOGICAL models , *AGRICULTURE , *ECOLOGICAL impact , *TRADITIONAL farming , *ECOLOGICAL niche , *WILDLIFE reintroduction - Abstract
Land-use land-cover (LULC) change contributes to major ecological impacts, particularly in areas undergoing land abandonment, inducing modifications on habitat structure and species distributions. Alternative land-use policies are potential solutions to alleviate the negative impacts of contemporary tendencies of LULC change on biodiversity. This work analyzes these tendencies in the Montesinho Natural Park (Portugal), an area representative of European abandoned mountain rural areas. We built ecological niche models for 226 species of vertebrates (amphibians, reptiles, birds, and mammals) and vascular plants, using a consensus modelling approach available in the R package 'biomod2'. We projected the models to contemporary (2018) and future (2050) LULC scenarios, under four scenarios aiming to secure relevant ecosystem services and biodiversity conservation for 2050: an afforestation and a rewilding scenario, focused on climate-smart management strategies, and a farmland and an agroforestry recovery scenario, based on re-establishing human traditional activities. We quantified the influences of these scenarios on biodiversity through species habitat suitability changes for 2018–2050. We analyzed how these management strategies could influence indices of functional diversity (functional richness, functional evenness and functional dispersion) within the park. Habitat suitability changes revealed complementary patterns among scenarios. Afforestation and rewilding scenarios benefited more species adapted to habitats with low human influence, such as forests and open woodlands. The highest functional richness and dispersion was predicted for rewilding scenarios, which could improve landscape restoration and provide opportunities for the expansion and recolonization of forest areas by native species. The recovery of traditional farming and agroforestry activities results in the lowest values of functional richness, but these strategies contribute to complex landscape matrices with diversified habitats and resources. Moreover, this strategy could offer opportunities for fire suppression and increase landscape fire resistance. An integrative approach reconciling rewilding initiatives with the recovery of extensive agricultural and agroforestry activities is potentially an harmonious strategy for supporting the provision of ecosystem services while securing biodiversity conservation and functional diversity within the natural park. • We simulated 4 future LULC scenarios to secure ecosystem services and biodiversity. • Afforestation and rewilding benefited species adapted to low human influence. • The highest functional richness and dispersion were predicted for rewilding. • Traditional farming and agroforestry provided the lowest functional richness. • An integrative approach (rewilding/agroforestry) is a potential harmonious strategy. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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