Predicting ore content throughout a machine learning procedure – An Sn-W enrichment case study
Autor:
Iglesias Comesaña, Carla
; Antunes, Margarida
; Albuquerque, Teresa
; Martínez Torres, Javier
; Taboada, Javier
Fecha:
01/2020Palabra clave:
Revista / editorial:
Journal of Geochemical ExplorationTipo de Ítem:
Articulo Revista IndexadaResumen:
The distribution patterns of trace elements are very useful for predicting mineral deposits occurrence. Machine learning techniques were used for the computation of adequate models in trace elements' prediction. The main subject of this research is the definition of an adequate model to predict the amounts of Sn and W in the abandoned mine area of Lardosa (Central Portugal). Stream sediment samples (333) were collected within the study area and their geochemical composition - As, B, Be, Cd, Co, Cr, Cu, Fe, Ni, P, Sn, U, V, W, Y, and Zn - used as input attributes. Different machine learning techniques were tested: Decision Trees (CART), Multilayer Perceptron (MLP) and Support Vector Machines (SVM). For regression and clustering, CART, MLP approaches were tested and for the classification, problem SVM was used. These algorithms used six different inputs – N1 to N6 – aiming to pick out the best-performing model. The results show that CART is the optimized predictor for Sn and W. Concerning the regression approach, correlation coefficients of 0.67 for Sn (with Input N1) and 0.70 for W (with Input N3) were obtained. Regarding the classification problem, an error rate of 0.10 was reached for both Sn (Input N1) and W (Input N2). The classification process is the best methodology to predict Sn and W, using as input the trace element concentrations in the collected stream sediment samples, Lardosa area, Portugal.
Este ítem aparece en la(s) siguiente(s) colección(es)
Estadísticas de uso
Año |
2012 |
2013 |
2014 |
2015 |
2016 |
2017 |
2018 |
2019 |
2020 |
2021 |
2022 |
2023 |
2024 |
Vistas |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
58 |
34 |
40 |
48 |
98 |
Descargas |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
Ítems relacionados
Mostrando ítems relacionados por Título, autor o materia.
-
Obtaining the sGAG distribution profile in articular cartilage color images
Iglesias Comesaña, Carla; Luo, Lu; Martínez Torres, Javier ; Taboada, Javier; Pérez, Ignacio (Biomedical Engineering / Biomedizinische Technik, 10/2019)The articular cartilage tissue is an essential component of joints as it reduces the friction between the two bones. Its load-bearing properties depend mostly on proteoglycan distribution, which can be analyzed through the ... -
Development of the HIV360 international core set of outcome measures for adults living with HIV: A consensus process
Marques-Gomes, João; Salt, Matthew J.; Pereira-Neto, Rita; Barteldes, Franca S.; Gouveia-Barros, Vera; Carvalho, Alexandre; d’Arminio-Monforte, Antonella; De-la-Torre-Rosas, Alethse; Harris, Amy; Esteves, Catarina; Maor, Carcom; Mora, Cristina; Oliveira, Carla; Sousa, Cristina; Richman, Douglas D.; Martinez, Esteban; Cota-Medeiros, Fábio; Gramacho, Filipa; Behrens, Georg M. N.; Gonçalves, Graça; Farinha, Helena; Nabais, Isabel; Vaz-Pinto, Inês; Sierra-Madero, Juan; Sousa-Gago, Joaquim; Thornhill, John; Vera, José; Erceg-Tusek, Maja; Tavares, Margarida; Vasconcelos, Miguel; Fernandes, Nuno; Gianotti, Nicola; Langebeek, Nienke; Anjos, Paulo; Couto, Raquel; Fernandes, Ricardo; Rajasuriar, Reena; Serrão, Rosário; Watson, Shaun; Branco, Teresa; Teixeira, Tiago; Soriano, Vicente (John Wiley and Sons Inc, 2022)Objectives: HIV outcomes centre primarily around clinical markers with limited focus on patient-reported outcomes. With a global trend towards capturing the outcomes that matter most to patients, there is agreement that ... -
Review: machine learning techniques applied to cybersecurity
Martínez Torres, Javier ; Iglesias Comesaña, Carla; García-Nieto, Paulino J. (International Journal of Machine Learning and Cybernetics, 10/2019)Machine learning techniques are a set of mathematical models to solve high non-linearity problems of different topics: prediction, classification, data association, data conceptualization. In this work, the authors review ...