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Real-Time Low-Cost Drift Compensation for Chemical Sensors Using a Deep Neural Network With Hadamard Transform and Additive Layers
Journal article   Peer reviewed

Real-Time Low-Cost Drift Compensation for Chemical Sensors Using a Deep Neural Network With Hadamard Transform and Additive Layers

Diaa Badawi, Agamyrat Agambayev, Sule Ozev and A. Enis Cetin
IEEE sensors journal, Vol.21(16), pp.17984-17994
15/08/2021

Abstract

chemical sensor Chemical sensor drift Chemical sensors Convolution convolutional neural networks discrete cosine transform Discrete cosine transforms Estimation Hadamard transform Neural networks Sensor phenomena and characterization time series analysis Transforms

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