71 research outputs found
Modelos de conocimiento basados en ontologías para la construcción de software en el dominio de la Ingeniería de control
217 p.El tema abordado en esta tesis es la representación del conocimiento del dominio de la ingeniería de control en las aplicaciones informáticas. En concreto se presenta y estudia el uso de las técnicas de modelado del conocimiento provenientes del campo de la inteligencia artificial como forma de hacer frente a alguna de las necesidades que presenta el software en esta disciplina. Para comprobar la validez de esta aproximación se estudia y lleva a cabo la construcción de una estructura conceptual (una ontología) que recoge el conocimiento existente en un subdominio de esa disciplina, concretamente en el problema de diseño de compensadores de adelanto/retraso con las técnicas del lugar de las raíces. La tesis incluye un estado del arte sobre el software CACE / CACSD y sobre el concepto de ontología y su evolución a partir de los sistemas expertos, dentro del campo de la representación del conocimiento y la ingeniería del conocimient
An ontology-based approach to knowledge representation for Computer-Aided Control System Design
P. 107-125Different approaches have been used in order to represent and build control engineering concepts
for the computer. Software applications for these fields are becoming more and more demanding
each day, and new representation schemas are continuously being developed. This paper describes
a study of the use of knowledge models represented in ontologies for building Computer Aided
Control Systems Design (CACSD) tools. The use of this approach allows the construction of formal
conceptual structures that can be stated independently of any software application and be used
in many different ones. In order to show the advantages of this approach, an ontology and an
application have been built for the domain of design of lead/lag controllers with the root locus
method, presenting the results and benefits found
Feasibility of Social-Network-Based eHealth Intervention on the Improvement of Healthy Habits among Children
12 p.This study shows the feasibility of an eHealth solution for tackling eating habits and physical activity in the adolescent population. The participants were children from 11 to 15 years old. An intervention was carried out on 139 students in the intervention group and 91 students in the control group, in two schools during 14 weeks. The intervention group had access to the web through a user account and a password. They were able to create friendship relationships, post comments, give likes and interact with other users, as well as receive notifications and information about nutrition and physical activity on a daily basis and get (virtual) rewards for improving their habits. The control group did not have access to any of these features. The homogeneity of the samples in terms of gender, age, body mass index and initial health-related habits was demonstrated. Pre- and post-measurements were collected through self-reports on the application website. After applying multivariate analysis of variance, a significant alteration in the age-adjusted body mass index percentile was observed in the intervention group versus the control group, as well as in the PAQ-A score and the KIDMED score. It can be concluded that eHealth interventions can help to obtain healthy habits. More research is needed to examine the effectiveness in achieving adherence to these new habits.S
Multispecies bird sound recognition using a fully convolutional neural network
[EN] This study proposes a method based on fully convolutional neural networks (FCNs) to identify migratory birds from their songs, with the objective of recognizing which birds pass through certain areas and at what time. To determine the best FCN architecture, extensive experimentation was conducted through a grid search, exploring the optimal depth, width, and activation function of the network. The results showed that the optimal number of filters is 400 in the widest layer, with 4 convolutional blocks with maxpooling and an adaptive activation function. The proposed FCN offers a significant advantage over other techniques, as it can recognize the sound of a bird in audio of any length with an accuracy greater than 85%. Furthermore, due to its architecture, the network can detect more than one species from audio and can carry out near-real-time sound recognition. Additionally, the proposed method is lightweight, making it ideal for deployment and use in IoT devices. The study also presents a comparative analysis of the proposed method against other techniques, demonstrating an improvement of over 67% in the best-case scenario. These findings contribute to advancing the field of bird sound recognition and provide valuable insights into the practical application of FCNs in real-world scenarios.S
Sentiment analysis in non-fixed length audios using a Fully Convolutional Neural Network
In this work, a sentiment analysis method that is capable of accepting audio
of any length, without being fixed a priori, is proposed. Mel spectrogram and
Mel Frequency Cepstral Coefficients are used as audio description methods and a
Fully Convolutional Neural Network architecture is proposed as a classifier.
The results have been validated using three well known datasets: EMODB,
RAVDESS, and TESS. The results obtained were promising, outperforming the
state-of-the-art methods. Also, thanks to the fact that the proposed method
admits audios of any size, it allows a sentiment analysis to be made in near
real time, which is very interesting for a wide range of fields such as call
centers, medical consultations, or financial brokers
Sentiment analysis in non-fixed length audios using a Fully Convolutional Neural Network
.In this work, a sentiment analysis method that is capable of accepting audio of any length, without being fixed a priori, is proposed. Mel spectrogram and Mel Frequency Cepstral Coefficients are used as audio description methods and a Fully Convolutional Neural Network architecture is proposed as a classifier. The results have been validated using three well known datasets: EMODB, RAVDESS and TESS. The results obtained were promising, outperforming the state-of–the-art methods. Also, thanks to the fact that the proposed method admits audios of any size, it allows a sentiment analysis to be made in near real time, which is very interesting for a wide range of fields such as call centers, medical consultations or financial brokers.S
A Semantic Social Network Analysis Tool for Sensitivity Analysis and What-If Scenario Testing in Alcohol Consumption Studies
Social Network Analysis (SNA) is a set of techniques developed in the field
of social and behavioral sciences research, in order to characterize and study
the social relationships that are established among a set of individuals. When
building a social network for performing an SNA analysis, an initial process of
data gathering is achieved in order to extract the characteristics of the
individuals and their relationships. This is usually done by completing a
questionnaire containing different types of questions that will be later used
to obtain the SNA measures needed to perform the study. There are, then, a
great number of different possible network generating questions and also many
possibilities for mapping the responses to the corresponding characteristics
and relationships. Many variations may be introduced into these questions (the
way they are posed, the weights given to each of the responses, etc.) that may
have an effect on the resulting networks. All these different variations are
difficult to achieve manually, because the process is time-consuming and error
prone. The tool described in this paper uses semantic knowledge representation
techniques in order to facilitate this kind of sensitivity studies. The base of
the tool is a conceptual structure, called "ontology" that is able to represent
the different concepts and their definitions. The tool is compared to other
similar ones, and the advantages of the approach are highlighted, giving some
particular examples from an ongoing SNA study about alcohol consumption habits
in adolescents
Social network analysis for personalized characterization and risk assessment of alcohol use disorders in adolescents using semantic technologies
[EN] Alcohol Use Disorder (AUD) is a major concern for public health organizations worldwide, especially as regards the adolescent population. The consumption of alcohol in adolescents is known to be influenced by seeing friends and even parents drinking alcohol. Building on this fact, a number of studies into alcohol consumption among adolescents have made use of Social Network Analysis (SNA) techniques to study the different social networks (peers, friends, family, etc.) with whom the adolescent is involved. These kinds of studies need an initial phase of data gathering by means of questionnaires and a subsequent analysis phase using the SNA techniques. The process involves a number of manual data handling stages that are time consuming and error-prone. The use of knowledge engineering techniques (including the construction of a domain ontology) to represent the information, allows the automation of all the activities, from the initial data collection to the results of the SNA study. This paper shows how a knowledge model is constructed, and compares the results obtained using the traditional method with this, fully automated model, detailing the main advantages of the latter. In the case of the SNA analysis, the validity of the results obtained with the knowledge engineering approach are compared to those obtained manually using the UCINET, Cytoscape, Pajek and Gephi to test the accuracy of the knowledge model.S
A semantic social network analysis tool for sensitivity analysis and what-If scenario testing in alcohol consumption studies
15 páginasSocial Network Analysis (SNA) is a set of techniques developed in the field of social and
behavioral sciences research, in order to characterize and study the social relationships that are
established among a set of individuals. When building a social network for performing an SNA
analysis, an initial process of data gathering is achieved in order to extract the characteristics of the
individuals and their relationships. This is usually done by completing a questionnaire containing
different types of questions that will be later used to obtain the SNA measures needed to perform the
study. There are, then, a great number of different possible network-generating questions and also
many possibilities for mapping the responses to the corresponding characteristics and relationships.
Many variations may be introduced into these questions (the way they are posed, the weights
given to each of the responses, etc.) that may have an effect on the resulting networks. All these
different variations are difficult to achieve manually, because the process is time-consuming and
error-prone. The tool described in this paper uses semantic knowledge representation techniques in
order to facilitate this kind of sensitivity studies. The base of the tool is a conceptual structure, called
“ontology” that is able to represent the different concepts and their definitions. The tool is compared
to other similar ones, and the advantages of the approach are highlighted, giving some particular
examples from an ongoing SNA study about alcohol consumption habits in adolescents.S
Using an Ontology-based Approach to Build Open Assisting Tools in Foreign Language Writing
[EN] In today’s globalised world where there is a growing need for international communication, non-native
speakers (NNS) from a wide range of professional fields are increasingly called upon to write specialised
texts in English. More often than not, however, the linguistic competence required to do so is well beyond
that of the majority of NNS. While software applications can serve to assist NNS in their English writing
tasks, most of the applications available are designed for users of English for general purposes as opposed
to English for professional purposes. Therefore, these applications lack the specific vocabulary, style
guidelines and common structures required in more specialised documents. Necessary modifications to meet
the needs of English for professional purposes tend to be viewed as representing an overly complex and
expensive task. To overcome these challenges, we present a software called O-WEAA (Ontology-Writing
English Assistant Architecture) which makes use of an ontology that represents the knowledge which,
according to our formalisation, is required to write most types of specialised professional documents in the
English language. Our formalisation of the required knowledge is based on an exhaustive linguistic analysis
of several written genres. The proposed software is composed of two parts: i) a web application named
Acquisition Interface Module, which allows experts to populate the ontology with new data and ii) a userfriendly, general web interface named Writing Assistant Interface Module which guides the user throughout
the writing process of the English document in the specific domain described in the ontology.S
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