Ana Okariz
University of the Basque Country
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Featured researches published by Ana Okariz.
database and expert systems applications | 2010
Juan López-de-Uralde; Iraide Ruiz; Igor Santos; Agustín Zubillaga; Pablo García Bringas; Ana Okariz; Teresa Guraya
Nano-technology is the study of matter behaviour on atomic and molecular scale (i.e. nano-scale). In particular, carbon black is a nano-material generally used for the reinforcement of rubber compounds. Nevertheless, the exact reason behind its success in this concrete domain remains unknown. Characterisation of rubber nano-aggregates aims to answer this question. The morphology of the nano-aggregate takes an important part in the final result of the compound. Several approaches have been taken to classify them. In this paper we propose the first automatic machine-learning-based nano-aggregate morphology categorisation system. This method extracts several geometric features in order to train machine-learning classifiers, forming a constellation of expert knowledge that enables us to foresee the exact morphology of a nano-aggregate. Furthermore, we compare the obtained results and show that Decision Trees outperform the rest of the counterparts for morphology categorisation.
Ultramicroscopy | 2017
Ana Okariz; Teresa Guraya; Maider Iturrondobeitia; Julen Ibarretxe
The SIRT (Simultaneous Iterative Reconstruction Technique) algorithm is commonly used in Electron Tomography to calculate the original volume of the sample from noisy images, but the results provided by this iterative procedure are strongly dependent on the specific implementation of the algorithm, as well as on the number of iterations employed for the reconstruction. In this work, a methodology for selecting the iteration number of the SIRT reconstruction that provides the most accurate segmentation is proposed. The methodology is based on the statistical analysis of the intensity profiles at the edge of the objects in the reconstructed volume. A phantom which resembles a a carbon black aggregate has been created to validate the methodology and the SIRT implementations of two free software packages (TOMOJ and TOMO3D) have been used.
Micron | 2017
Ana Okariz; Teresa Guraya; Maider Iturrondobeitia; Julen Ibarretxe
A method is proposed and verified for selecting the optimum segmentation of a TEM reconstruction among the results of several segmentation algorithms. The selection criterion is the accuracy of the segmentation. To do this selection, a parameter for the comparison of the accuracies of the different segmentations has been defined. It consists of the mutual information value between the acquired TEM images of the sample and the Radon projections of the segmented volumes. In this work, it has been proved that this new mutual information parameter and the Jaccard coefficient between the segmented volume and the ideal one are correlated. In addition, the results of the new parameter are compared to the results obtained from another validated method to select the optimum segmentation.
Applied Mechanics and Materials | 2017
Roberto Fernandez Martinez; Pello Jimbert; Ana Okariz; Teresa Guraya
The goal in this work is to build a multivariate linear model to predict tensile strength since is one of the most significant mechanical properties of carbon-black reinforced rubber blends. This model is based in the relationship between the final mechanical properties and the material composition, with the advantage of using this model to improve the design of the composition of the blend. In order to predict this relevant physical attribute of rubber blends a linear regression is performed, but previously a multivariate analysis of the data is done to get a better accuracy in the validation of the model. The number of used instances and the values are determined by a Taguchi design of experiments, and the output values are obtained from the tensile strength test following the corresponding standard. After the performance of the multivariate analysis where the input variables are under a detail study, a selection of the best features help to improve the accuracy of the model, passing from a 24.80% to a 20.60% of error.
Macromolecular Chemistry and Physics | 2013
Miren Aguirre; Maria Paulis; Jose R. Leiza; Teresa Guraya; Maider Iturrondobeitia; Ana Okariz; Julen Ibarretxe
Chemical Engineering Journal | 2015
Miren Aguirre; Mariano Barrado; Maider Iturrondobeitia; Ana Okariz; Teresa Guraya; Maria Paulis; Jose R. Leiza
Computational Materials Science | 2014
Roberto Fernandez Martinez; Ana Okariz; Julen Ibarretxe; Maider Iturrondobeitia; Teresa Guraya
Journal of Applied Polymer Science | 2014
Maider Iturrondobeitia; Ana Okariz; Teresa Guraya; Ane-Miren Zaldua; Julen Ibarretxe
Chemical Engineering Journal | 2017
Alicia De San Luis; Audrey Bonnefond; Mariano Barrado; Teresa Guraya; Maider Iturrondobeitia; Ana Okariz; Maria Paulis; Jose R. Leiza
Journal of Polymer Science Part A | 2015
Miren Aguirre; Maria Paulis; Mariano Barrado; Maider Iturrondobeitia; Ana Okariz; Teresa Guraya; Julen Ibarretxe; Jose R. Leiza