@article{Macias-Hernadez_Orozco Granados_Chairez Oria_2021, title={Modelo no paramétrico por redes LSTM del reflejo vestíbulo-ocular en respuesta a aceleraciones inducidas}, volume={8}, url={http://memoriascnib.mx/index.php/memorias/article/view/889}, abstractNote={<p>The following work introduces a non-parametric, long-short term memory (LSTM) neural network model to represent the vestibulo-ocular reflex in response to induced accelerations. This study includes the development of a device to obtain the data required to train the model including inertial measurement units and electrocolugraph (EOG) sensors. The model seeks to mimic the biological response of the vestibular apparatus and nuclei through the obtention of accelerometer and gyroscope data while attempting to track a reference set by the EOG measurements in the training process of the LSTM identifier. The implementation of learning laws that guarantee the modeling error is converging the origin justifies the implementation of LSTMs as artificial models of the vestibulo-ocular reflexes. The modeling results show a short convergence time and a low mean squared error obtained after a cycle of measuring analysis, thus showing that the model can successfully track the proposed EOG reference and can be used to assess the response of people in induced acceleration conditions such as flying simulation, vestibular rehabilitation and some other.</p>}, number={1}, journal={Memorias del Congreso Nacional de Ingeniería Biomédica}, author={Macias-Hernadez, Antonio Alejandro and Orozco Granados, Daniela Fernanda and Chairez Oria, Jorge Isaac}, year={2021}, month={nov.}, pages={343–346} }