Concurrent artificial neural network modeling of single-crystal and bulk-ceramics ferroelectric-hysteresis: An application to barium titanate
This paper proposed an application of Artificial Neural Network (ANN) to concurrently model ferroelectric hysteresis properties of Barium Titanate in both single-crystal and bulk-ceramics forms. In the ANN modeling, there are 3 inputs, which are type of materials (single or bulk), field amplitude an...
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th-cmuir.6653943832-500882018-09-04T04:30:11Z Concurrent artificial neural network modeling of single-crystal and bulk-ceramics ferroelectric-hysteresis: An application to barium titanate Wimalin Laosiritaworn Natthapong Wongdamnern Rattikorn Yimnirun Yongyut Laosiritaworn Materials Science Physics and Astronomy This paper proposed an application of Artificial Neural Network (ANN) to concurrently model ferroelectric hysteresis properties of Barium Titanate in both single-crystal and bulk-ceramics forms. In the ANN modeling, there are 3 inputs, which are type of materials (single or bulk), field amplitude and frequency, and 1 output, which is hysteresis area. Appropriate number of hidden layer and hidden node were achieved through a search of up to 2 layers and 30 neurons in each layer. After ANN had been properly trained, a network with highest accuracy was selected. Query file of unseen input data was then input to the selected network to obtain the predicted hysteresis area. From the results, the target and predicted data were found to match very well. This therefore suggests that ANN can be successfully used to concurrently model ferroelectric hysteresis property even though the considered ferroelectrics are with different domains, grains and microscopic crystal structures. Copyright © Taylor &Francis Group, LLC. 2018-09-04T04:23:34Z 2018-09-04T04:23:34Z 2011-07-29 Journal 15635112 00150193 2-s2.0-79960719572 10.1080/00150193.2011.577313 https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=79960719572&origin=inward http://cmuir.cmu.ac.th/jspui/handle/6653943832/50088 |
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Materials Science Physics and Astronomy Wimalin Laosiritaworn Natthapong Wongdamnern Rattikorn Yimnirun Yongyut Laosiritaworn Concurrent artificial neural network modeling of single-crystal and bulk-ceramics ferroelectric-hysteresis: An application to barium titanate |
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This paper proposed an application of Artificial Neural Network (ANN) to concurrently model ferroelectric hysteresis properties of Barium Titanate in both single-crystal and bulk-ceramics forms. In the ANN modeling, there are 3 inputs, which are type of materials (single or bulk), field amplitude and frequency, and 1 output, which is hysteresis area. Appropriate number of hidden layer and hidden node were achieved through a search of up to 2 layers and 30 neurons in each layer. After ANN had been properly trained, a network with highest accuracy was selected. Query file of unseen input data was then input to the selected network to obtain the predicted hysteresis area. From the results, the target and predicted data were found to match very well. This therefore suggests that ANN can be successfully used to concurrently model ferroelectric hysteresis property even though the considered ferroelectrics are with different domains, grains and microscopic crystal structures. Copyright © Taylor &Francis Group, LLC. |
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author |
Wimalin Laosiritaworn Natthapong Wongdamnern Rattikorn Yimnirun Yongyut Laosiritaworn |
author_facet |
Wimalin Laosiritaworn Natthapong Wongdamnern Rattikorn Yimnirun Yongyut Laosiritaworn |
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Wimalin Laosiritaworn |
title |
Concurrent artificial neural network modeling of single-crystal and bulk-ceramics ferroelectric-hysteresis: An application to barium titanate |
title_short |
Concurrent artificial neural network modeling of single-crystal and bulk-ceramics ferroelectric-hysteresis: An application to barium titanate |
title_full |
Concurrent artificial neural network modeling of single-crystal and bulk-ceramics ferroelectric-hysteresis: An application to barium titanate |
title_fullStr |
Concurrent artificial neural network modeling of single-crystal and bulk-ceramics ferroelectric-hysteresis: An application to barium titanate |
title_full_unstemmed |
Concurrent artificial neural network modeling of single-crystal and bulk-ceramics ferroelectric-hysteresis: An application to barium titanate |
title_sort |
concurrent artificial neural network modeling of single-crystal and bulk-ceramics ferroelectric-hysteresis: an application to barium titanate |
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2018 |
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https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=79960719572&origin=inward http://cmuir.cmu.ac.th/jspui/handle/6653943832/50088 |
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