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Permanent URI for this collectionhttps://cris.usm.cl/handle/123456789/1399
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Browsing Artículos by Department "Centro Avanzado de Ingeniería Eléctrica y Electrónica - AC3E"
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Publication Dark Matter Search in Missing Energy Events with NA64(2019-09-18) ;Banerjee, D. ;Burtsev, V. E. ;Cooke, D. ;Crivelli, P. ;Depero, E. ;Dermenev, A. V. ;Donskov, S. V. ;Dusaev, R. R. ;Enik, T. ;Charitonidis, N. ;Feshchenko, A. ;Frolov, V. N. ;Gardikiotis, A. ;Gerassimov, S. G. ;Gninenko, S. N. ;Hösgen, M. ;Jeckel, M. ;Karneyeu, A. E. ;Kekelidze, G. ;Ketzer, B. ;Kirpichnikov, D. V. ;Kirsanov, M. M. ;Konorov, I. V.; ;Kramarenko, V. A. ;Kravchuk, L. V. ;Krasnikov, N. V. ;Kuleshov, S. V.; ;Lysan, V. ;Matveev, V. A. ;Mikhailov, Yu V. ;Molina Bueno, L. ;Peshekhonov, D. V. ;Polyakov, V. A. ;Radics, B.; ;Rubbia, A. ;Samoylenko, V. D. ;Shchukin, D. ;Tikhomirov, V. O. ;Tlisova, I. ;Tlisov, D. A. ;Toropin, A. N. ;Trifonov, A. Yu ;Vasilishin, B. I. ;Vasquez Arenas, G. ;Volkov, P. V. ;Volkov, V. YuUlloa, P.A search for sub-GeV dark matter production mediated by a new vector boson A′, called dark photon, is performed by the NA64 experiment in missing energy events from 100 GeV electron interactions in an active beam dump at the CERN SPS. From the analysis of the data collected in the years 2016, 2017, and 2018 with 2.84×1011 electrons on target no evidence of such a process has been found. The most stringent constraints on the A′ mixing strength with photons and the parameter space for the scalar and fermionic dark matter in the mass range ≲0.2 GeV are derived, thus demonstrating the power of the active beam dump approach for the dark matter search. - Some of the metrics are blocked by yourconsent settings
Publication LaDIVA: A neurocomputational model providing laryngeal motor control for speech acquisition and production(2022-06-01) ;Weerathunge, Hasini R. ;Alzamendi, Gabriel A. ;Cler, Gabriel J. ;Guenther, Frank H. ;Stepp, Cara E.; Frédéric E. TheunissenMany voice disorders are the result of intricate neural and/or biomechanical impairments that are poorly understood. The limited knowledge of their etiological and pathophysiological mechanisms hampers effective clinical management. Behavioral studies have been used concurrently with computational models to better understand typical and pathological laryngeal motor control. Thus far, however, a unified computational framework that quantitatively integrates physiologically relevant models of phonation with the neural control of speech has not been developed. Here, we introduce LaDIVA, a novel neurocomputational model with physiologically based laryngeal motor control. We combined the DIVA model (an established neural network model of speech motor control) with the extended body-cover model (a physics-based vocal fold model). The resulting integrated model, LaDIVA, was validated by comparing its model simulations with behavioral responses to perturbations of auditory vocal fundamental frequency (fo) feedback in adults with typical speech. LaDIVA demonstrated capability to simulate different modes of laryngeal motor control, ranging from short-term (i.e., reflexive) and long-term (i.e., adaptive) auditory feedback paradigms, to generating prosodic contours in speech. Simulations showed that LaDIVA’s laryngeal motor control displays properties of motor equivalence, i.e., LaDIVA could robustly generate compensatory responses to reflexive vocal fo perturbations with varying initial laryngeal muscle activation levels leading to the same output. The model can also generate prosodic contours for studying laryngeal motor control in running speech. LaDIVA can expand the understanding of the physiology of human phonation to enable, for the first time, the investigation of causal effects of neural motor control in the fine structure of the vocal signal. - Some of the metrics are blocked by yourconsent settings
Publication Parametric identification of a linear time invariant model for a subglottal system(2021-07-01) ;Fontanet, Javier G.; Models of the human body are key in bio-engineering and medical applications. This study presents the identification, in time and frequency domains, of linear time invariant models of the human subglottal system, for the clinical assessment of vocal function. For time domain identification, the input-output data corresponds to the glottal volume velocity and the acceleration registered by a sensor on the neck skin of the patient. For frequency domain identification, the frequency response of the subglottal tract module is used. Maximum likelihood and prediction error methods are applied. Additionally, the Akaike and Bayes Information Criteria are used to select the models order.Scopus© Citations 1