6 research outputs found

    Tartu Ülikooli toimetised. Tööd semiootika alalt. 1964-1992. 0259-4668

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    http://www.ester.ee/record=b1331700*es

    Guidage non-intrusif d'un bras robotique à l'aide d'un bracelet myoélectrique à électrode sÚche

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    Depuis plusieurs annĂ©es la robotique est vue comme une solution clef pour amĂ©liorer la qualitĂ© de vie des personnes ayant subi une amputation. Pour crĂ©er de nouvelles prothĂšses intelligentes qui peuvent ĂȘtre facilement intĂ©grĂ©es Ă  la vie quotidienne et acceptĂ©e par ces personnes, celles-ci doivent ĂȘtre non-intrusives, fiables et peu coĂ»teuses. L’électromyographie de surface fournit une interface intuitive et non intrusive basĂ©e sur l’activitĂ© musculaire de l’utilisateur permettant d’interagir avec des robots. Cependant, malgrĂ© des recherches approfondies dans le domaine de la classification des signaux sEMG, les classificateurs actuels manquent toujours de fiabilitĂ©, car ils ne sont pas robustes face au bruit Ă  court terme (par exemple, petit dĂ©placement des Ă©lectrodes, fatigue musculaire) ou Ă  long terme (par exemple, changement de la masse musculaire et des tissus adipeux) et requiert donc de recalibrer le classifieur de façon pĂ©riodique. L’objectif de mon projet de recherche est de proposer une interface myoĂ©lectrique humain-robot basĂ© sur des algorithmes d’apprentissage par transfert et d’adaptation de domaine afin d’augmenter la fiabilitĂ© du systĂšme Ă  long-terme, tout en minimisant l’intrusivitĂ© (au niveau du temps de prĂ©paration) de ce genre de systĂšme. L’aspect non intrusif est obtenu en utilisant un bracelet Ă  Ă©lectrode sĂšche possĂ©dant dix canaux. Ce bracelet (3DC Armband) est de notre (Docteur Gabriel Gagnon-Turcotte, mes co-directeurs et moi-mĂȘme) conception et a Ă©tĂ© rĂ©alisĂ© durant mon doctorat. À l’heure d’écrire ces lignes, le 3DC Armband est le bracelet sans fil pour l’enregistrement de signaux sEMG le plus performant disponible. Contrairement aux dispositifs utilisant des Ă©lectrodes Ă  base de gel qui nĂ©cessitent un rasage de l’avant-bras, un nettoyage de la zone de placement et l’application d’un gel conducteur avant l’utilisation, le brassard du 3DC peut simplement ĂȘtre placĂ© sur l’avant-bras sans aucune prĂ©paration. Cependant, cette facilitĂ© d’utilisation entraĂźne une diminution de la qualitĂ© de l’information du signal. Cette diminution provient du fait que les Ă©lectrodes sĂšches obtiennent un signal plus bruitĂ© que celle Ă  base de gel. En outre, des mĂ©thodes invasives peuvent rĂ©duire les dĂ©placements d’électrodes lors de l’utilisation, contrairement au brassard. Pour remĂ©dier Ă  cette dĂ©gradation de l’information, le projet de recherche s’appuiera sur l’apprentissage profond, et plus prĂ©cisĂ©ment sur les rĂ©seaux convolutionels. Le projet de recherche a Ă©tĂ© divisĂ© en trois phases. La premiĂšre porte sur la conception d’un classifieur permettant la reconnaissance de gestes de la main en temps rĂ©el. La deuxiĂšme porte sur l’implĂ©mentation d’un algorithme d’apprentissage par transfert afin de pouvoir profiter des donnĂ©es provenant d’autres personnes, permettant ainsi d’amĂ©liorer la classification des mouvements de la main pour un nouvel individu tout en diminuant le temps de prĂ©paration nĂ©cessaire pour utiliser le systĂšme. La troisiĂšme phase consiste en l’élaboration et l’implĂ©mentation des algorithmes d’adaptation de domaine et d’apprentissage faiblement supervisĂ© afin de crĂ©er un classifieur qui soit robuste au changement Ă  long terme.For several years, robotics has been seen as a key solution to improve the quality of life of people living with upper-limb disabilities. To create new, smart prostheses that can easily be integrated into everyday life, they must be non-intrusive, reliable and inexpensive. Surface electromyography provides an intuitive interface based on a user’s muscle activity to interact with robots. However, despite extensive research in the field of sEMG signal classification, current classifiers still lack reliability due to their lack of robustness to short-term (e.g. small electrode displacement, muscle fatigue) or long-term (e.g. change in muscle mass and adipose tissue) noise. In practice, this mean that to be useful, classifier needs to be periodically re-calibrated, a time consuming process. The goal of my research project is to proposes a human-robot myoelectric interface based on transfer learning and domain adaptation algorithms to increase the reliability of the system in the long term, while at the same time reducing the intrusiveness (in terms of hardware and preparation time) of this kind of systems. The non-intrusive aspect is achieved from a dry-electrode armband featuring ten channels. This armband, named the 3DC Armband is from our (Dr. Gabriel Gagnon-Turcotte, my co-directors and myself) conception and was realized during my doctorate. At the time of writing, the 3DC Armband offers the best performance for currently available dry-electrodes, surface electromyographic armbands. Unlike gel-based electrodes which require intrusive skin preparation (i.e. shaving, cleaning the skin and applying conductive gel), the 3DC Armband can simply be placed on the forearm without any preparation. However, this ease of use results in a decrease in the quality of information. This decrease is due to the fact that the signal recorded by dry electrodes is inherently noisier than gel-based ones. In addition, other systems use invasive methods (intramuscular electromyography) to capture a cleaner signal and reduce the source of noises (e.g. electrode shift). To remedy this degradation of information resulting from the non-intrusiveness of the armband, this research project will rely on deep learning, and more specifically on convolutional networks. The research project was divided into three phases. The first is the design of a classifier allowing the recognition of hand gestures in real-time. The second is the implementation of a transfer learning algorithm to take advantage of the data recorded across multiple users, thereby improving the system’s accuracy, while decreasing the time required to use the system. The third phase is the development and implementation of a domain adaptation and self-supervised learning to enhance the classifier’s robustness to long-term changes

    Denison University Bulletin, A College of Liberal Arts and Sciences Founded in 1831, 151st-152nd Academic Years - 1981-83

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    Denison University Course Catalog 1981-1983https://digitalcommons.denison.edu/denisoncatalogs/1075/thumbnail.jp

    Gas cooled fuel cell systems technology development

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    The first phase of a planned multiphase program to develop a Phosphoric is addressed. This report describes the efforts performed that culminated in the: (1) Establishment of the preliminary design requirements and system conceptual design for the nominally rated 375 kW PAFC module and is interfacing power plant systems; (2) Establishment of PAFC component and stack performance, endurance, and design parameter data needed for design verification for power plant application; (3) Improvement of the existing PAFC materials data base and establishment of materials specifications and process procedes for the cell components; and (4) Testing of 122 subscale cell atmospheric test for 110,000 cumulative test hours, 12 subscale cell pressurized tests for 15,000 cumulative test hours, and 12 pressurized stack test for 10,000 cumulative test hours
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