A. Ermachikhin, V. Litvinov, Y. Vorobyov, Aleksei Maslov
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Application of Adaptive Algorithms for Measuring Temperature Current-Voltage Characteristics of Electronic Elements
Several different algorithms to measure physical parameters (especially, current-voltage characteristics) under fixed and variable temperature are presented here. Specifically, these algorithms are intended to achieve the uniform density of experimental data over the used bias voltage interval independent on the measured characteristic representation. Model and experimental data, obtained by using these algorithms are shown. The method of outliers detection during a current- voltage characteristic measurement are shown as well. Application of the adaptive algorithms during scientific experiment allows achieving better results by variation of investigating according to the input data.