968 research outputs found
Vista general del modelado del sistema auditivo
El objetivo principal del presente proyecto es proporcionar al ingeniero de telecomunicaciones una visión general de las técnicas que se utilizan en el modelado del sistema auditivo. El modelado del sistema auditivo se realiza
con los siguientes objetivos: a) Interpretar medidas directas, b)unificar el entendimiento de diferentes fenómenos, c) guiar estrategias de amplificación
para suplir pérdidas auditivas y d) tener predicciones experimentalmente comprobables de comportamientos, con diferentes niveles de complejidad. En este trabajo se tratarán y explicarán brevemente las diferentes técnicas
utilizadas para modelar las partes del sistema auditivo, desde las analogías electroacústicas, modelos biofísicos, binaurales, hasta la implementación de filtros auditivos mediante procesado de señal. Podemos concluir que el
modelado mediante analogías electroacústicas permite una rápida implementación y entendimiento, pero tiene ciertas limitaciones. Las simulaciones mediante análisis numéricos son precisas y de gran utilidad tanto para del oído medio como para el interno. El procesado de señal es el
procedimiento más completo y utilizado ya que permite modelar oído externo y medio además de permitir la implementación de filtros cocleares muy precisos
y coherentes con la realidad incluyéndolos en modelos perceptivos.
ABSTRACT.
The main aim of the Project is to provide the Telecommunications Engineer an overview about the approaches for modelling the auditory system. The auditory system modelling is done for the next objectives: a) Interpret direct measures, b) Understand different phenomena c) get strategies of amplification for hearing impaired people and d) Obtain testable predictions experimentally about some behaviors with different complexity levels. Inside this document, several approaches about modeling of the auditory system parts will be explained: analog circuits, biophysics models, binaural models, and auditory filters made through signal processing. In conclusion, analog circuits are made
quickly and they are easier to understand but they have many limitations.
Simulations through numerical analysis are accurate and useful in middle and inner ear models. Signal processing is the more versatile approach because it lets to make a model of external and middle ear and then it allows to make complex auditory filters. Perceptive models can be made entirely through this method
The influence of housing location on energy ratings price premium in Alicante, Spain
Location is, along with other aspects, one of the most important characteristics when determining the sale or rental price of a residential property. Energy rating is one of the characteristics involved in determining the rent or sale price of a house. Past research has shown the importance of this attribute in numerous studies. Moreover, these studies have found mixed results regarding the magnitude, direction, and statistical significance of energy rating price premiums. This research aims to determine whether housing location influences energy rating price premium. To achieve this objective, a least squares regression model and a multilevel model were estimated using a sample of 70,170 different residences that were offered for sale in the province of Alicante. The multilevel models show that, once the differences due to the location (comarca) had been eliminated, the energy rating label itself had an effect on the asking price and also that there was an effect for the relationship of the energy rating with the location characteristics (comarca). On the other hand, the variables that defined the energy ratings were not those responsible for the differences between the average asking prices of the residences in the comarcas
Taxonomía de los estudiantes del grado en Arquitectura Técnica
Se pretende realizar un estudio que permita reconocer y clasificar los distintos perfiles de los estudiantes del grado en Arquitectura Técnica en función de sus resultados académicos. Existen estudiantes con mayores habilidades en el lenguaje escrito, en matemáticas o en dibujo, favoreciendo mejores resultados en unas asignaturas más afines a esas habilidades. Para ello se han recogido los resultados académicos de los estudiantes en las asignaturas del primer curso de la titulación, se ha realizado un estudio de correlación entre los resultados de las asignaturas y un posterior análisis de conglomerados que permite agrupar a los estudiantes en distintas agrupaciones o clases (taxonomía). Esta clasificación permite identificar en qué asignaturas destaca cada grupo de estudiantes y en cuáles tienen mayores dificultades. El conocer estos perfiles puede ayudar en la toma de decisiones para la orientación académica de los estudiantes, ayudando a identificar futuras debilidades en función de las características del alumnado
Housing Price Prediction Using Machine Learning Algorithms in COVID-19 Times
Machine learning algorithms are being used for multiple real-life applications and in research. As a consequence of digital technology, large structured and georeferenced datasets are now more widely available, facilitating the use of these algorithms to analyze and identify patterns, as well as to make predictions that help users in decision making. This research aims to identify the best machine learning algorithms to predict house prices, and to quantify the impact of the COVID-19 pandemic on house prices in a Spanish city. The methodology addresses the phases of data preparation, feature engineering, hyperparameter training and optimization, model evaluation and selection, and finally model interpretation. Ensemble learning algorithms based on boosting (Gradient Boosting Regressor, Extreme Gradient Boosting, and Light Gradient Boosting Machine) and bagging (random forest and extra-trees regressor) are used and compared with a linear regression model. A case study is developed with georeferenced microdata of the real estate market in Alicante (Spain), before and after the pandemic declaration derived from COVID-19, together with information from other complementary sources such as the cadastre, socio-demographic and economic indicators, and satellite images. The results show that machine learning algorithms perform better than traditional linear models because they are better adapted to the nonlinearities of complex data such as real estate market data. Algorithms based on bagging show overfitting problems (random forest and extra-trees regressor) and those based on boosting have better performance and lower overfitting. This research contributes to the literature on the Spanish real estate market by being one of the first studies to use machine learning and microdata to explore the incidence of the COVID-19 pandemic on house prices
Most relevant characteristics to improve residential energy efficiency
Urban areas play a crucial role in global energy demand and in policies to mitigate climate change. Energy use in residential buildings is one of the main sources of greenhouse gas emissions in cities. Spain has more than 25.8 million dwellings, of which around 9.3 million are more than 50 years old. Of these, 16.4% are in a poor or deficient state of conservation (INE, Population and Housing Census 2011). This situation of obsolescence and poor conservation of the building stock requires a major structural, functional and energy refurbishment. As a research hypothesis, it is proposed that the current Spanish building stock has a great potential for energy savings and CO2 reduction and that with an appropriate selection of interventions aimed at refurbishment it is possible to increase the energy efficiency of buildings and make them more sustainable. The main objective proposed is to identify the architectural, design and building system or installation factors that are most relevant for improving the energy efficiency of existing residential buildings in Spain. A large database with geo-referenced observations of housing energy certificates is used for this purpose. The certificates correspond to individual dwellings located in blocks of buildings in the city of Barcelona (C2 climate zone according to the CTE). From these certificates, information on energy consumption and CO₂ emissions, as well as the technical characteristics of the envelope and heating/cooling systems, can be obtained for each dwelling. The dataset contains information on energy consumption and CO₂ emissions with their rating (energy letter); in addition to the characteristics of the buildings such as the surfaces and transmittances of the envelope (opaque and glazed enclosures), the climate zone, type of dwelling, year and building code, heating and air-conditioning installations, percentage of windows according to orientation, etc. Using a linear regression model, the influence of each housing characteristic on energy consumption and CO₂ emissions can be estimated. The interpretation of the regression coefficients allows determining to what extent energy consumption can be reduced, for example by improving the envelope (opaque or glazed), systems/installations, thermal bridges, among other aspects. The linear regression analysis has shown promising results due to its reasonable accuracy for model estimation, and the relative simplicity of its application and interpretation compared to other methods (Fumo et al., 2015).Financiado por la Generalitat Valenciana: Conselleria de Innovación, Universidades, Ciencia y Sociedad Digital (GV/2021/131)
Factores determinantes del rendimiento académico en el grado de Arquitectura Técnica de la Universidad de Alicante
El rendimiento académico de los estudiantes universitarios está influenciado por una gran diversidad de factores y es uno de los elementos que influye principalmente al abandono de las enseñanzas universitarias. Conocer los factores que pueden estar interviniendo en el rendimiento académico de los estudiantes puede resultar de vital importancia para mejorar el proceso de enseñanza-aprendizaje y la calidad universitaria. En esta investigación se pretende determinar los posibles factores que influyen en el rendimiento académico de los estudiantes universitarios del grado en Arquitectura técnica de la Universidad de Alicante. El estudio se ha centrado en determinar el poder explicativo y predictivo de siete variables para pronosticar el rendimiento académico de los estudiantes. Los resultados arrojan que cinco de las variables estudiadas son estadísticamente significativas y que dos de ellas tienen una gran influencia sobre el rendimiento académico
Factors involved in the academic performance of students of Technical Architecture degree from the University of Alicante
The academic performance of university students is influenced by a wide variety of factors and is one of the main elements which influence students’ leaving their university studies. Knowing which factors and, to what extent they may be taking part in students’ academic performance, would be of the utmost importance in improving the teaching-learning process, the university excellence and the students’ academic performance. It is the aim of this study to identify the potential factors which influence in the academic performance of the students of the degree in Technical Architecture. The study focuses on determining the explanatory and predictive power of seven variables so as to predict the students’ academic performance throughout three academic courses. We used the statistical technique of multiple linear regression, in which statistically significant variables and the relative importance each of them has upon the academic performance of students have been identified.This research has been supported financially under the “University Teaching Research Networks Project 2013-2014”, supported by the Pro-Vice-Chancellor of Strategic Planning and Quality and the Institute of Education Sciences at the University of Alicante
Online Teaching in Construction of Structures: Participative Tools
In the last years, traditional teaching has turned around to blended teaching, enabling students and teachers to have a continuous exchange of documentation by using new technologies in the classroom. This kind of teaching is increasingly significant as it combines traditional methods with innovative applications that allow online tracking. This proposal is applied in the subjects “Construction of Structures I and II” of the Degree in Building Engineering; it implements new methodologies as an alternative to traditional education, strengthening theoretical and practical contents by performing exercises that are corrected in a participatory way using online tools. The aim of this paper is to analyse the use of these tools (such as online tests, participation in forums, virtual tutorials, download of documentation, etc.) in the Moodle platform to encourage interaction and learning. The delivery of online exercises reinforces the acquisition of specific skills and facilitates communication both between teacher-student and between the students themselves. In conclusion, the use of these online tools offered by the Moodle platform has enabled continuous and participatory learning in Construction of Structures; this new proposal is highly valued by students as it allows direct and personalized monitoring by teachers
Teachers’ Features in the Degree of Building Engineering at the University of Alicante
All new university degrees (implemented a few years ago) are undergoing a process to renew the accreditation of qualifications (ACREDITA program) by quality assessment and accreditation agencies. This process aims to "check whether the results of the degree are suitable and guarantee the continuity of their teaching until the next reaccreditation"; to do so, the assessment is structured in two main phases. First, a self-evaluation is performed where each university describes and assesses the situation of the degree considering several guidelines and criteria. Second, there is an external evaluation in which an accrediting agency makes a valuation of the situation to verify the degree of compliance with the conditions mentioned above. There are three internationally recognized quality principles which are valued in the ACREDITA program: title management, resources and results; at the same time, these dimensions are subdivided into seven criteria. One of these criteria is to assess the academic profile of teachers who teach in every university degree, a key feature throughout the entire teaching process. The present research aims to contextualize the evolution and current situation of the academic staff who teaches and has taught in the Degree of Building Engineering at the University of Alicante, to establish proposals for the improvement during the monitoring of the title. To this end, we have analysed the results of the main indicators used by quality agencies, as well as other characteristics proposed by the authors to draw conclusions about the reality of university teachers
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