The ceramics materials density defined by artificial neural networks
Authors
Ribar, SrđanMitić, Vojislav V.
Ranđelović, Branislav

Milošević, Dušan

Paunović, Vesna

Fecht, Hans-Jörg

Vlahović, Branislav

Conference object (Published version)
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Predicting the ceramic materials properties and designing the desired microstructures characteristics are very important objectives in ceramic samples consolidating process. The goal of our research is to calculate the density within consolidated BaTiO3-ceramic samples for different consolidation parameters, like sintering temperature, using obtained experimental data from the material’s surface, by applying back propagation neural network (BP). This method, as a very powerful tool, provides the possibility to calculate the exact values of desired microelectronic parameter at the level of the grains’ coating layers. The artificial neural networks, which have biomimetic similarities with biological neural networks, propagate the input signal forward, unlike the output signal, designated as error, which is propagated backwards spreading throughout the whole network, from output to input neuron layers. Between these two neuron layers, there are usually one or more hidden layers, where the... grains of the sintered material are represented by network neurons. Adjustable coefficients, called weights, are forward propagated, like input signals, but they modify the calculated output error, so the neural network training procedure is necessary for reducing the error. Different consolidated samples density values, measured on the bulk, substituted the errors, which are calculated as contribution of all network elements, thus enabling the density calculation of all constituents of ceramic structure presented by neural network. In our future research we plan to increase the number of neurons and hidden layers in order to improve this method to become even more accurate and precise.
Keywords:
artificial neural networks / ceramic materials / BaTiO3Source:
Program and the Book of abstracts / Serbian Ceramic Society Conference Advanced Ceramics and Application IX : New Frontiers in Multifunctional Material Science and Processing, Serbia, Belgrade, 20-21. September 2021, 2021, 42-42Publisher:
- Belgrade : Serbian Ceramic Society
Institution/Community
Институт техничких наука САНУ / Institute of Technical Sciences of SASATY - CONF AU - Ribar, Srđan AU - Mitić, Vojislav V. AU - Ranđelović, Branislav AU - Milošević, Dušan AU - Paunović, Vesna AU - Fecht, Hans-Jörg AU - Vlahović, Branislav PY - 2021 UR - https://dais.sanu.ac.rs/123456789/11909 AB - Predicting the ceramic materials properties and designing the desired microstructures characteristics are very important objectives in ceramic samples consolidating process. The goal of our research is to calculate the density within consolidated BaTiO3-ceramic samples for different consolidation parameters, like sintering temperature, using obtained experimental data from the material’s surface, by applying back propagation neural network (BP). This method, as a very powerful tool, provides the possibility to calculate the exact values of desired microelectronic parameter at the level of the grains’ coating layers. The artificial neural networks, which have biomimetic similarities with biological neural networks, propagate the input signal forward, unlike the output signal, designated as error, which is propagated backwards spreading throughout the whole network, from output to input neuron layers. Between these two neuron layers, there are usually one or more hidden layers, where the grains of the sintered material are represented by network neurons. Adjustable coefficients, called weights, are forward propagated, like input signals, but they modify the calculated output error, so the neural network training procedure is necessary for reducing the error. Different consolidated samples density values, measured on the bulk, substituted the errors, which are calculated as contribution of all network elements, thus enabling the density calculation of all constituents of ceramic structure presented by neural network. In our future research we plan to increase the number of neurons and hidden layers in order to improve this method to become even more accurate and precise. PB - Belgrade : Serbian Ceramic Society C3 - Program and the Book of abstracts / Serbian Ceramic Society Conference Advanced Ceramics and Application IX : New Frontiers in Multifunctional Material Science and Processing, Serbia, Belgrade, 20-21. September 2021 T1 - The ceramics materials density defined by artificial neural networks SP - 42 EP - 42 UR - https://hdl.handle.net/21.15107/rcub_dais_11909 ER -
@conference{ author = "Ribar, Srđan and Mitić, Vojislav V. and Ranđelović, Branislav and Milošević, Dušan and Paunović, Vesna and Fecht, Hans-Jörg and Vlahović, Branislav", year = "2021", abstract = "Predicting the ceramic materials properties and designing the desired microstructures characteristics are very important objectives in ceramic samples consolidating process. The goal of our research is to calculate the density within consolidated BaTiO3-ceramic samples for different consolidation parameters, like sintering temperature, using obtained experimental data from the material’s surface, by applying back propagation neural network (BP). This method, as a very powerful tool, provides the possibility to calculate the exact values of desired microelectronic parameter at the level of the grains’ coating layers. The artificial neural networks, which have biomimetic similarities with biological neural networks, propagate the input signal forward, unlike the output signal, designated as error, which is propagated backwards spreading throughout the whole network, from output to input neuron layers. Between these two neuron layers, there are usually one or more hidden layers, where the grains of the sintered material are represented by network neurons. Adjustable coefficients, called weights, are forward propagated, like input signals, but they modify the calculated output error, so the neural network training procedure is necessary for reducing the error. Different consolidated samples density values, measured on the bulk, substituted the errors, which are calculated as contribution of all network elements, thus enabling the density calculation of all constituents of ceramic structure presented by neural network. In our future research we plan to increase the number of neurons and hidden layers in order to improve this method to become even more accurate and precise.", publisher = "Belgrade : Serbian Ceramic Society", journal = "Program and the Book of abstracts / Serbian Ceramic Society Conference Advanced Ceramics and Application IX : New Frontiers in Multifunctional Material Science and Processing, Serbia, Belgrade, 20-21. September 2021", title = "The ceramics materials density defined by artificial neural networks", pages = "42-42", url = "https://hdl.handle.net/21.15107/rcub_dais_11909" }
Ribar, S., Mitić, V. V., Ranđelović, B., Milošević, D., Paunović, V., Fecht, H.,& Vlahović, B.. (2021). The ceramics materials density defined by artificial neural networks. in Program and the Book of abstracts / Serbian Ceramic Society Conference Advanced Ceramics and Application IX : New Frontiers in Multifunctional Material Science and Processing, Serbia, Belgrade, 20-21. September 2021 Belgrade : Serbian Ceramic Society., 42-42. https://hdl.handle.net/21.15107/rcub_dais_11909
Ribar S, Mitić VV, Ranđelović B, Milošević D, Paunović V, Fecht H, Vlahović B. The ceramics materials density defined by artificial neural networks. in Program and the Book of abstracts / Serbian Ceramic Society Conference Advanced Ceramics and Application IX : New Frontiers in Multifunctional Material Science and Processing, Serbia, Belgrade, 20-21. September 2021. 2021;:42-42. https://hdl.handle.net/21.15107/rcub_dais_11909 .
Ribar, Srđan, Mitić, Vojislav V., Ranđelović, Branislav, Milošević, Dušan, Paunović, Vesna, Fecht, Hans-Jörg, Vlahović, Branislav, "The ceramics materials density defined by artificial neural networks" in Program and the Book of abstracts / Serbian Ceramic Society Conference Advanced Ceramics and Application IX : New Frontiers in Multifunctional Material Science and Processing, Serbia, Belgrade, 20-21. September 2021 (2021):42-42, https://hdl.handle.net/21.15107/rcub_dais_11909 .