Cláudia Theis da Silveira, Thales Exenberger Becker, Pedro Augusto Böckmann Alves, Gilson Inácio Wirth
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Implementation and Comparison of Algorithms for the extraction of RTN Parameters
The study of noise generated internally by devices, such as the Random Telegraph Noise (RTN), provides important information about the physical and atomistic properties of micro and nanoelectronic devices, among which are Resistive Random Access Memory (ReRAM) and MOSFET. In this work, we developed two methods to extract the RTN signal parameters. The first method is an algorithm based on Hidden Markov Model (HMM), a tool widely used to analyze stochastic signals. The second method is an algorithm based on the discretization of measurements. These algorithms perform the extraction of RTN signal parameters from synthetic and experimental data measured in electronic devices, such as ReRAM and MOSFET. In addition, a comparison between the methods is carried out. Finally, by comparing the results extracted by each method, a performance analysis of both implemented algorithms, in the presence of Gaussian (white) noise is made.