199 research outputs found
Advances in Sensors and Sensing for Technical Condition Assessment and NDT
The adequate assessment of key apparatus conditions is a hot topic in all branches of industry. Various online and offline diagnostic methods are widely applied to provide early detections of any abnormality in exploitation. Furthermore, different sensors may also be applied to capture selected physical quantities that may be used to indicate the type of potential fault. The essential steps of the signal analysis regarding the technical condition assessment process may be listed as: signal measurement (using relevant sensors), processing, modelling, and classification. In the Special Issue entitled “Advances in Sensors and Sensing for Technical Condition Assessment and NDT”, we present the latest research in various areas of technology
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ECG analysis and classification using CSVM, MSVM and SIMCA classifiers
Reliable ECG classification can potentially lead to better detection methods and increase
accurate diagnosis of arrhythmia, thus improving quality of care. This thesis investigated the
use of two novel classification algorithms: CSVM and SIMCA, and assessed their
performance in classifying ECG beats. The project aimed to introduce a new way to
interactively support patient care in and out of the hospital and develop new classification
algorithms for arrhythmia detection and diagnosis. Wave (P-QRS-T) detection was performed
using the WFDB Software Package and multiresolution wavelets. Fourier and PCs were
selected as time-frequency features in the ECG signal; these provided the input to the
classifiers in the form of DFT and PCA coefficients. ECG beat classification was performed
using binary SVM. MSVM, CSVM, and SIMCA; these were subsequently used for
simultaneously classifying either four or six types of cardiac conditions. Binary SVM
classification with 100% accuracy was achieved when applied on feature-reduced ECG
signals from well-established databases using PCA. The CSVM algorithm and MSVM were
used to classify four ECG beat types: NORMAL, PVC, APC, and FUSION or PFUS; these
were from the MIT-BIH arrhythmia database (precordial lead group and limb lead II).
Different numbers of Fourier coefficients were considered in order to identify the optimal
number of features to be presented to the classifier. SMO was used to compute hyper-plane
parameters and threshold values for both MSVM and CSVM during the classifier training
phase. The best classification accuracy was achieved using fifty Fourier coefficients. With the
new CSVM classifier framework, accuracies of 99%, 100%, 98%, and 99% were obtained
using datasets from one, two, three, and four precordial leads, respectively. In addition, using
CSVM it was possible to successfully classify four types of ECG beat signals extracted from
limb lead simultaneously with 97% accuracy, a significant improvement on the 83% accuracy
achieved using the MSVM classification model. In addition, further analysis of the following
four beat types was made: NORMAL, PVC, SVPB, and FUSION. These signals were
obtained from the European ST-T Database. Accuracies between 86% and 94% were obtained
for MSVM and CSVM classification, respectively, using 100 Fourier coefficients for
reconstructing individual ECG beats. Further analysis presented an effective ECG arrhythmia
classification scheme consisting of PCA as a feature reduction method and a SIMCA
classifier to differentiate between either four or six different types of arrhythmia. In separate
studies, six and four types of beats (including NORMAL, PVC, APC, RBBB, LBBB, and
FUSION beats) with time domain features were extracted from the MIT-BIH arrhythmia
database and the St Petersburg INCART 12-lead Arrhythmia Database (incartdb) respectively.
Between 10 and 30 PCs, coefficients were selected for reconstructing individual ECG beats in
the feature selection phase. The average classification accuracy of the proposed scheme was
98.61% and 97.78 % using the limb lead and precordial lead datasets, respectively. In addition,
using MSVM and SIMCA classifiers with four ECG beat types achieved an average
classification accuracy of 76.83% and 98.33% respectively. The effectiveness of the proposed
algorithms was finally confirmed by successfully classifying both the six beat and four beat
types of signal respectively with a high accuracy ratio
Intelligent Circuits and Systems
ICICS-2020 is the third conference initiated by the School of Electronics and Electrical Engineering at Lovely Professional University that explored recent innovations of researchers working for the development of smart and green technologies in the fields of Energy, Electronics, Communications, Computers, and Control. ICICS provides innovators to identify new opportunities for the social and economic benefits of society. This conference bridges the gap between academics and R&D institutions, social visionaries, and experts from all strata of society to present their ongoing research activities and foster research relations between them. It provides opportunities for the exchange of new ideas, applications, and experiences in the field of smart technologies and finding global partners for future collaboration. The ICICS-2020 was conducted in two broad categories, Intelligent Circuits & Intelligent Systems and Emerging Technologies in Electrical Engineering
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Intelligent Devices for IoT Applications
Internet of Things (IoT) devices refer to a vast network of physical devices that are connected to the internet and can communicate with each other through sensors and software. These devices range from simple household appliances, like smart thermostats and security cameras, to more complex industrial equipment, such as sensors used in manufacturing and logistics. Specially, IoT enabled wireless gas sensing systems which can withstand harsh environments without compromising the performance are getting popular day by day, which necessitates adequate developments in this field. By being the essential components of a wireless gas sensing system, both the sensor and the elements for communication should be agile and resilient when it comes to tackle unfavorable scenario. Moreover, gas sensors are prone to drift, which can lead to inaccurate readings and decreased reliability over time. Again, recent advancements in antenna design, such as fractal antennas and metamaterial structures, have shown promises in improving the bandwidth and gain parameters of the antennas built on top of high temperature tackling substrates. This piece of research targets three fundamental sections: demonstration of recent advances in data driven techniques for gas sensing system optimization, designing of antennas for different applications, and device design as well as fabrication. The Dimatix DMP-2831 inkjet printer has been optimized to operate with six different inks and two different substrates including PET and 3 mol yttria-stabilized zirconia (3YSZ) based ceramic substrate. Later, the feature oriented gas sensor data analysis to investigate correlations among stability, selectivity and long term drift is illustrated, which should significant relations among those parameters that can be considered while designing different intelligent data driven models to compensate drift. Moreover, a subspace transfer based approach is proposed to classify drifted gas sensor response to detect particular gas with higher accuracy. The model achieved an average accuracy greater than 87% while using only 40% of the total dataset to be trained. In the field of antenna technology, a co-planar waveguide (CPW) fed super wideband antenna is proposed which can cover C, X, Ku, K, Ka, Q, V, and W bands according to the simulated performance with high gain and radiation efficiency. Again, a high temperature tolerant antenna based on 3YSZ substrate is proposed which achieved good alignment between the simulated and fabricated device performance
Optimization Methods Applied to Power Systems Ⅱ
Electrical power systems are complex networks that include a set of electrical components that allow distributing the electricity generated in the conventional and renewable power plants to distribution systems so it can be received by final consumers (businesses and homes). In practice, power system management requires solving different design, operation, and control problems. Bearing in mind that computers are used to solve these complex optimization problems, this book includes some recent contributions to this field that cover a large variety of problems. More specifically, the book includes contributions about topics such as controllers for the frequency response of microgrids, post-contingency overflow analysis, line overloads after line and generation contingences, power quality disturbances, earthing system touch voltages, security-constrained optimal power flow, voltage regulation planning, intermittent generation in power systems, location of partial discharge source in gas-insulated switchgear, electric vehicle charging stations, optimal power flow with photovoltaic generation, hydroelectric plant location selection, cold-thermal-electric integrated energy systems, high-efficiency resonant devices for microwave power generation, security-constrained unit commitment, and economic dispatch problems
Recent Applications in Graph Theory
Graph theory, being a rigorously investigated field of combinatorial mathematics, is adopted by a wide variety of disciplines addressing a plethora of real-world applications. Advances in graph algorithms and software implementations have made graph theory accessible to a larger community of interest. Ever-increasing interest in machine learning and model deployments for network data demands a coherent selection of topics rewarding a fresh, up-to-date summary of the theory and fruitful applications to probe further. This volume is a small yet unique contribution to graph theory applications and modeling with graphs. The subjects discussed include information hiding using graphs, dynamic graph-based systems to model and control cyber-physical systems, graph reconstruction, average distance neighborhood graphs, and pure and mixed-integer linear programming formulations to cluster networks
Brain-Computer Interface
Brain-computer interfacing (BCI) with the use of advanced artificial intelligence identification is a rapidly growing new technology that allows a silently commanding brain to manipulate devices ranging from smartphones to advanced articulated robotic arms when physical control is not possible. BCI can be viewed as a collaboration between the brain and a device via the direct passage of electrical signals from neurons to an external system. The book provides a comprehensive summary of conventional and novel methods for processing brain signals. The chapters cover a range of topics including noninvasive and invasive signal acquisition, signal processing methods, deep learning approaches, and implementation of BCI in experimental problems
Reports on industrial information technology. Vol. 12
The 12th volume of Reports on Industrial Information Technology presents some selected results of research achieved at the Institute of Industrial Information Technology during the last two years.These results have contributed to many cooperative projects with partners from academia and industry and cover current research interests including signal and image processing, pattern recognition, distributed systems, powerline communications, automotive applications, and robotics
EmoEEG - recognising people's emotions using electroencephalography
Tese de mestrado integrado em Engenharia Biomédica e Biofísica (Sinais e Imagens Médicas), Universidade de Lisboa, Faculdade de Ciências, 2020As emoções desempenham um papel fulcral na vida humana, estando envolvidas numa extensa variedade de processos cognitivos, tais como tomada de decisão, perceção, interações sociais e inteligência. As interfaces cérebro-máquina (ICM) são sistemas que convertem os padrões de atividade cerebral de um utilizador em mensagens ou comandos para uma determinada aplicação. Os usos mais comuns desta tecnologia permitem que pessoas com deficiência motora controlem braços mecânicos, cadeiras de rodas ou escrevam. Contudo, também é possível utilizar tecnologias ICM para gerar output sem qualquer controle voluntário. A identificação de estados emocionais é um exemplo desse tipo de feedback. Por sua vez, esta tecnologia pode ter aplicações clínicas tais como a identificação e monitorização de patologias psicológicas, ou aplicações multimédia que facilitem o acesso a músicas ou filmes de acordo com o seu conteúdo afetivo. O interesse crescente em estabelecer interações emocionais entre máquinas e pessoas, levou à necessidade de encontrar métodos fidedignos de reconhecimento emocional automático. Os autorrelatos podem não ser confiáveis devido à natureza subjetiva das próprias emoções, mas também porque os participantes podem responder de acordo com o que acreditam que os outros responderiam. A fala emocional é uma maneira eficaz de deduzir o estado emocional de uma pessoa, pois muitas características da fala são independentes da semântica ou da cultura. No entanto, a precisão ainda é insuficiente quando comparada com outros métodos, como a análise de expressões faciais ou sinais fisiológicos. Embora o primeiro já tenha sido usado para identificar emoções com sucesso, ele apresenta desvantagens, tais como o fato de muitas expressões faciais serem "forçadas" e o fato de que as leituras só são possíveis quando o rosto do sujeito está dentro de um ângulo muito específico em relação à câmara. Por estes motivos, a recolha de sinais fisiológicos tem sido o método preferencial para o reconhecimento de emoções. O uso do EEG (eletroencefalograma) permite-nos monitorizar as emoções sentidas sob a forma de impulsos elétricos provenientes do cérebro, permitindo assim obter uma ICM para o reconhecimento afetivo. O principal objetivo deste trabalho foi estudar a combinação de diferentes elementos para identificar estados afetivos, estimando valores de valência e ativação usando sinais de EEG. A análise realizada consistiu na criação de vários modelos de regressão para avaliar como diferentes elementos afetam a precisão na estimativa de valência e ativação. Os referidos elementos foram os métodos de aprendizagem automática, o género do indivíduo, o conceito de assimetria cerebral, os canais de elétrodos utilizados, os algoritmos de extração de características e as bandas de frequências analisadas. Com esta análise foi possível criarmos o melhor modelo possível, com a combinação de elementos que maximiza a sua precisão. Para alcançar os nossos objetivos, recorremos a duas bases de dados (AMIGOS e DEAP) contendo sinais de EEG obtidos durante experiências de desencadeamento emocional, juntamente com a autoavaliação realizada pelos respetivos participantes. Nestas experiências, os participantes visionaram excertos de vídeos de conteúdo afetivo, de modo a despoletar emoções sobre eles, e depois classificaram-nas atribuindo o nível de valência e ativação experienciado. Os sinais EEG obtidos foram divididos em epochs de 4s e de seguida procedeu-se à extração de características através de diferentes algoritmos: o primeiro, segundo e terceiro parâmetros de Hjorth; entropia espectral; energia e entropia de wavelets; energia e entropia de FMI (funções de modos empíricos) obtidas através da transformada de Hilbert-Huang. Estes métodos de processamento de sinal foram escolhidos por já terem gerado resultados bons noutros trabalhos relacionados. Todos estes métodos foram aplicados aos sinais EEG dentro das bandas de frequência alfa, beta e gama, que também produziram bons resultados de acordo com trabalhos já efetuados. Após a extração de características dos sinais EEG, procedeu-se à criação de diversos modelos de estimação da valência e ativação usando as autoavaliações dos participantes como “verdade fundamental”. O primeiro conjunto de modelos criados serviu para aferir quais os melhores métodos de aprendizagem automática a utilizar para os testes vindouros. Após escolher os dois melhores, tentámos verificar as diferenças no processamento emocional entre os sexos, realizando a estimativa em homens e mulheres separadamente. O conjunto de modelos criados a seguir visou testar o conceito da assimetria cerebral, que afirma que a valência emocional está relacionada com diferenças na atividade fisiológica entre os dois hemisférios cerebrais. Para este teste específico, foram consideradas a assimetria diferencial e racional segundo pares de elétrodos homólogos. Depois disso, foram criados modelos de estimação de valência e ativação considerando cada um dos elétrodos individualmente. Ou seja, os modelos seriam gerados com todos os métodos de extração de características, mas com os dados obtidos de um elétrodo apenas. Depois foram criados modelos que visassem comparar cada um dos algoritmos de extração de características utilizados. Os modelos gerados nesta fase incluíram os dados obtidos de todos os elétrodos, já que anteriormente se verificou que não haviam elétrodos significativamente melhores que outros. Por fim, procedeu-se à criação dos modelos com a melhor combinação de elementos possível, otimizaram-se os parâmetros dos mesmos, e procurámos também aferir a sua validação. Realizámos também um processo de classificação emocional associando cada par estimado de valores de valência e ativação ao quadrante correspondente no modelo circumplexo de afeto. Este último passo foi necessário para conseguirmos comparar o nosso trabalho com as soluções existentes, pois a grande maioria delas apenas identificam o quadrante emocional, não estimando valores para a valência e ativação. Em suma, os melhores métodos de aprendizagem automática foram RF (random forest) e KNN (k-nearest neighbours), embora a combinação dos melhores métodos de extração de características fosse diferente para os dois. KNN apresentava melhor precisão considerando todos os métodos de extração menos a entropia espectral, enquanto que RF foi mais preciso considerando apenas o primeiro parâmetro de Hjorth e a energia de wavelets. Os valores dos coeficientes de Pearson obtidos para os melhores modelos otimizados ficaram compreendidos entre 0,8 e 0,9 (sendo 1 o valor máximo). Não foram registados melhoramentos nos resultados considerando cada género individualmente, pelo que os modelos finais foram criados usando os dados de todos os participantes. É possível que a diminuição da precisão dos modelos criados para cada género seja resultado da menor quantidade de dados envolvidos no processo de treino. O conceito de assimetria cerebral só foi útil nos modelos criados usando a base de dados DEAP, especialmente para a estimação de valência usando as características extraídas segundo a banda alfa. Em geral, as nossas abordagens mostraram-se a par ou mesmo superiores a outros trabalhos, obtendo-se valores de acurácia de 86.5% para o melhor modelo de classificação gerado com a base de dados AMIGOS e 86.6% usando a base de dados DEAP.Emotion recognition is a field within affective computing that is gaining increasing relevance and strives to predict an emotional state using physiological signals. Understanding how these biological factors are expressed according to one’s emotions can enhance the humancomputer interaction (HCI). This knowledge, can then be used for clinical applications such as the identification and monitoring of psychiatric disorders. It can also be used to provide better access to multimedia content, by assigning affective tags to videos or music. The goal of this work was to create several models for estimating values of valence and arousal, using features extracted from EEG signals. The different models created were meant to compare how various elements affected the accuracy of the model created. These elements were the machine learning techniques, the gender of the individual, the brain asymmetry concept, the electrode channels, the feature extraction methods and the frequency of the brain waves analysed. The final models contained the best combination of these elements and achieved PCC values over 0.80. As a way to compare our work with previous approaches, we also implemented a classification procedure to find the correspondent quadrant in the valence and arousal space according to the circumplex model of affect. The best accuracies achieved were over 86%, which was on par or even superior to some of the works already done
Advanced techniques for aircraft bearing diagnostics
The task is the creation of a method able to diagnose and monitor bearings healthy, mainly in case of varying external conditions. The ability of the technique is verified through data acquisition on a laboratory test rig, where various operating conditions could be checked (load, speed, temperature). Signal processing techniques and data mining techniques are applied to analyse the data
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