<b>The use of multilayer perceptron artificial neural networks for the classification of ethanol samples by commercialization region
Samples of automotive ethanol, marketed in the northern and eastern regions of the state of Paraná, Brazil, underwent physical and chemical tests. Rates were assessed by Multilayer Perceptron (MLP) neural network for classification. For network training, two hundred epochs, a 0.05 learning rate and...
| Published in: | Acta Scientiarum: Technology |
|---|---|
| Main Authors: | , , , , , |
| Format: | Article |
| Language: | Portuguese |
| Published: |
Universidade Estadual de Maringá
2016-04-01
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| Subjects: | |
| Online Access: | http://periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/27597 |
| _version_ | 1848651388922363904 |
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| author | Érica Signori Romagnoli Lívia Ramazzoti Chanan Silva Karina Gomes Angilelli Bruna Aparecida Denobi Ferreira Aline Regina Walkoff Dionisio Borsato |
| author_facet | Érica Signori Romagnoli Lívia Ramazzoti Chanan Silva Karina Gomes Angilelli Bruna Aparecida Denobi Ferreira Aline Regina Walkoff Dionisio Borsato |
| author_sort | Érica Signori Romagnoli |
| collection | DOAJ |
| container_title | Acta Scientiarum: Technology |
| description | Samples of automotive ethanol, marketed in the northern and eastern regions of the state of Paraná, Brazil, underwent physical and chemical tests. Rates were assessed by Multilayer Perceptron (MLP) neural network for classification. For network training, two hundred epochs, a 0.05 learning rate and a random subdivision of samples in three groups with 70 for training, 15 for test and 15% for validation were employed. Sixty networks were trained from three different initializations. Three networks, one at each start-up, were highlighted and the one with the best performance presented 8 neurons in the hidden layer, with 95 accuracy training, 96 in the test and 96% in validation. The most important variables in classifications, identified by the network, occurred in the following order: alcohol content, density, pH and electrical conductivity. Application of MLP segmented ethanol samples and identified the commercialization regions. |
| format | Article |
| id | doaj-e73e7b8e2db64ac78632ac96f5559aaf |
| institution | Directory of Open Access Journals |
| issn | 1806-2563 1807-8664 |
| language | Portuguese |
| publishDate | 2016-04-01 |
| publisher | Universidade Estadual de Maringá |
| record_format | Article |
| spelling | doaj-e73e7b8e2db64ac78632ac96f5559aaf2025-11-03T00:52:06ZporUniversidade Estadual de MaringáActa Scientiarum: Technology1806-25631807-86642016-04-0138222723210.4025/actascitechnol.v38i2.2759713482<b>The use of multilayer perceptron artificial neural networks for the classification of ethanol samples by commercialization regionÉrica Signori Romagnoli0Lívia Ramazzoti Chanan Silva1Karina Gomes Angilelli2Bruna Aparecida Denobi Ferreira3Aline Regina Walkoff4Dionisio Borsato5Universidade Estadual de LondrinaUniversidade Estadual de LondrinaUniversidade Estadual de LondrinaUniversidade Estadual de LondrinaUniversidade Estadual de LondrinaUniversidade Estadual de LondrinaSamples of automotive ethanol, marketed in the northern and eastern regions of the state of Paraná, Brazil, underwent physical and chemical tests. Rates were assessed by Multilayer Perceptron (MLP) neural network for classification. For network training, two hundred epochs, a 0.05 learning rate and a random subdivision of samples in three groups with 70 for training, 15 for test and 15% for validation were employed. Sixty networks were trained from three different initializations. Three networks, one at each start-up, were highlighted and the one with the best performance presented 8 neurons in the hidden layer, with 95 accuracy training, 96 in the test and 96% in validation. The most important variables in classifications, identified by the network, occurred in the following order: alcohol content, density, pH and electrical conductivity. Application of MLP segmented ethanol samples and identified the commercialization regions.http://periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/27597biofuelbackpropagationhidden layertraining |
| spellingShingle | Érica Signori Romagnoli Lívia Ramazzoti Chanan Silva Karina Gomes Angilelli Bruna Aparecida Denobi Ferreira Aline Regina Walkoff Dionisio Borsato <b>The use of multilayer perceptron artificial neural networks for the classification of ethanol samples by commercialization region biofuel backpropagation hidden layer training |
| title | <b>The use of multilayer perceptron artificial neural networks for the classification of ethanol samples by commercialization region |
| title_full | <b>The use of multilayer perceptron artificial neural networks for the classification of ethanol samples by commercialization region |
| title_fullStr | <b>The use of multilayer perceptron artificial neural networks for the classification of ethanol samples by commercialization region |
| title_full_unstemmed | <b>The use of multilayer perceptron artificial neural networks for the classification of ethanol samples by commercialization region |
| title_short | <b>The use of multilayer perceptron artificial neural networks for the classification of ethanol samples by commercialization region |
| title_sort | b the use of multilayer perceptron artificial neural networks for the classification of ethanol samples by commercialization region |
| topic | biofuel backpropagation hidden layer training |
| url | http://periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/27597 |
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