Neural networks and microelectronics parameters distribution measurements depending on sintering temperature and applied voltage

Author:

Mitic Vojislav V.12,Ribar Srdjan3,Randjelovic Branislav4,Lu Chun-An5,Radovic Ivana6,Stajcic Aleksandar7,Novakovic Igor8,Vlahovic Branislav9

Affiliation:

1. Department of Microelectronics, Faculty of Electronic Engineering, University of Nis, Nis, Serbia

2. Institute of Technical Sciences, Serbian Academy of Sciences and Arts, University of Belgrade, Belgrade, Serbia

3. Department of Automatic Control, Faculty of Mechanical Engineering, University of Belgrade, Belgrade, Serbia

4. University of Kosovska Mitrovica, Faculty of Teachers Education, Leposavic, Serbia

5. Material and Chemical Research Laboratories (MCL), Industrial Technology Research Institute of Taiwan, ITRI, Taiwan

6. Department of Physical Chemistry, VINČA Institute of Nuclear Sciences, National Institute of the Republic of Serbia, University of Belgrade, Belgrade, Serbia

7. Center of Microelectronic Technologies, Institute of Chemistry, Technology and Metallurgy, National Institute of the Republic of Serbia, University of Belgrade, Belgrade, Serbia

8. Department of Leposavic, University of Kosovska Mitrovica, Faculty of Teachers Education, Leposavic, Serbia

9. Department of Physics, Centers for Research Excellence in Science and Technology, North Carolina Central University (NCCU), Durham, North Carolina, USA

Abstract

This research is based on the idea to design the interface structure around the grains and thin layers between two grains, as a possible solution for deep microelectronic parameters integrations. The experiments have been based on nano-BaTiO3 powders with Y-based additive. The advanced idea is to create the new observed directions to network microelectronic characteristics in thin films coated around and between the grains on the way to get and compare with global results on the samples. Biomimetic similarities are artificial neural networks which could be original method and tools that we use to map input–output data and could be applied on ceramics microelectronic parameters. This mapping is developed in the manner like signals that are processed in real biological neural networks. These signals are processed by using artificial neurons, which have a simple function to process input signal, as well as adjustable parameter which represents sensitivity to inputs. The integrated network output presents practically the large number of inner neurons outputs sum. This original idea is to connect analysis results and neural networks. It is of the great importance to connect microcapacitances by neural network with the goal to compare the experimental results in the bulk samples measurements and microelectronics parameters. The result of these researches is the study of functional relation definition between consolidation parameters, voltage (U), consolidation sintering temperature and relative capacitance change, from the bulk sample surface down to the coating thin films around the grains.

Publisher

World Scientific Pub Co Pte Lt

Subject

Condensed Matter Physics,Statistical and Nonlinear Physics

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