The prediction of potential energy and matter production from biomass pyrolysis with artificial neural network

The potentiality determination of renewable energy resources is very important. The biomass is one of the alternative energy and material resources. There is great effort in their conversion to precious material but yet there is no generalized rule. Therefore, the prediction of the energy and materi...

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Main Authors: Bahattin Aydinli, Atila Caglar, Sefa Pekol, Abdulkadir Karaci
Format: Article
Language:English
Published: SAGE Publishing 2017-11-01
Series:Energy Exploration & Exploitation
Online Access:https://doi.org/10.1177/0144598717716282
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spelling doaj-8b07e058527c4adb896bb82e167641452020-11-25T04:09:45ZengSAGE PublishingEnergy Exploration & Exploitation0144-59872048-40542017-11-013510.1177/0144598717716282The prediction of potential energy and matter production from biomass pyrolysis with artificial neural networkBahattin AydinliAtila CaglarSefa PekolAbdulkadir KaraciThe potentiality determination of renewable energy resources is very important. The biomass is one of the alternative energy and material resources. There is great effort in their conversion to precious material but yet there is no generalized rule. Therefore, the prediction of the energy and material potentials of these resources has gained great importance. Also, the solution to environmental problems in real time can be found easily by predicting models. Here, the basic products of pyrolysis process, char, tar and gas were also predicted by artificial neural network modelling. The half of data obtained from real experimental process along with some content and proximate analysis were fed into artificial neural network modelling. After the training of the model with this data, the remaining half of the data were introduced into this artificial neural network model. And the model predicted the pyrolysis process products (char, tar and gaseous material). The predicted data and the real experimental data were compared. In addition, another aim of this study is to reduce the labour in identification and characterization of the pyrolysis products. For this purpose, a theoretical framework has also been sketched. The necessity of a generalized rule for generation of energy and matter production from biomass pyrolysis has been punctuated. As a result, the ANN modelling is found to be applicable in the prediction of pyrolysis process. Also, the extensive reduction in labour and saving in economy is possible.https://doi.org/10.1177/0144598717716282
collection DOAJ
language English
format Article
sources DOAJ
author Bahattin Aydinli
Atila Caglar
Sefa Pekol
Abdulkadir Karaci
spellingShingle Bahattin Aydinli
Atila Caglar
Sefa Pekol
Abdulkadir Karaci
The prediction of potential energy and matter production from biomass pyrolysis with artificial neural network
Energy Exploration & Exploitation
author_facet Bahattin Aydinli
Atila Caglar
Sefa Pekol
Abdulkadir Karaci
author_sort Bahattin Aydinli
title The prediction of potential energy and matter production from biomass pyrolysis with artificial neural network
title_short The prediction of potential energy and matter production from biomass pyrolysis with artificial neural network
title_full The prediction of potential energy and matter production from biomass pyrolysis with artificial neural network
title_fullStr The prediction of potential energy and matter production from biomass pyrolysis with artificial neural network
title_full_unstemmed The prediction of potential energy and matter production from biomass pyrolysis with artificial neural network
title_sort prediction of potential energy and matter production from biomass pyrolysis with artificial neural network
publisher SAGE Publishing
series Energy Exploration & Exploitation
issn 0144-5987
2048-4054
publishDate 2017-11-01
description The potentiality determination of renewable energy resources is very important. The biomass is one of the alternative energy and material resources. There is great effort in their conversion to precious material but yet there is no generalized rule. Therefore, the prediction of the energy and material potentials of these resources has gained great importance. Also, the solution to environmental problems in real time can be found easily by predicting models. Here, the basic products of pyrolysis process, char, tar and gas were also predicted by artificial neural network modelling. The half of data obtained from real experimental process along with some content and proximate analysis were fed into artificial neural network modelling. After the training of the model with this data, the remaining half of the data were introduced into this artificial neural network model. And the model predicted the pyrolysis process products (char, tar and gaseous material). The predicted data and the real experimental data were compared. In addition, another aim of this study is to reduce the labour in identification and characterization of the pyrolysis products. For this purpose, a theoretical framework has also been sketched. The necessity of a generalized rule for generation of energy and matter production from biomass pyrolysis has been punctuated. As a result, the ANN modelling is found to be applicable in the prediction of pyrolysis process. Also, the extensive reduction in labour and saving in economy is possible.
url https://doi.org/10.1177/0144598717716282
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