Predictive Models for Modulus of Rupture and Modulus of Elasticity of Particleboard Manufactured in Different Pressing Conditions

Determining the mechanical properties of particleboard has gained a great importance due to its increasing usage as a building material in recent years. This study aims to develop artificial neural network (ANN) and multiple linear regression (MLR) models for predicting modulus of rupture (MOR) and...

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Main Authors: Tiryaki Sebahattin, Aras Uğur, Kalaycıoğlu Hülya, Erişir Emir, Aydın Aytaç
Format: Article
Language:English
Published: De Gruyter 2017-07-01
Series:High Temperature Materials and Processes
Subjects:
Online Access:https://doi.org/10.1515/htmp-2015-0203
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author Tiryaki Sebahattin
Aras Uğur
Kalaycıoğlu Hülya
Erişir Emir
Aydın Aytaç
author_facet Tiryaki Sebahattin
Aras Uğur
Kalaycıoğlu Hülya
Erişir Emir
Aydın Aytaç
author_sort Tiryaki Sebahattin
collection DOAJ
description Determining the mechanical properties of particleboard has gained a great importance due to its increasing usage as a building material in recent years. This study aims to develop artificial neural network (ANN) and multiple linear regression (MLR) models for predicting modulus of rupture (MOR) and modulus of elasticity (MOE) of particleboard depending on different pressing temperature, pressing time, pressing pressure and resin type. Experimental results indicated that the increased pressing temperature, time and pressure in manufacturing process generally improved the mechanical properties of particleboard. It was also seen that ANN and MLR models were highly successful in predicting the MOR and MOE of particleboard under given conditions. On the other hand, a comparison between ANN and MLR revealed that the ANN was superior compared to the MLR in predicting the MOR and MOE. Finally, the findings of this study are expected to provide beneficial insights for practitioners to better understand usability of such composite materials for engineering applications and to better assess the effects of pressing conditions on the MOR and MOE of particleboard.
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spelling doaj.art-3b5aa8ed45d248c898d18efa6bcc178b2022-12-21T20:03:39ZengDe GruyterHigh Temperature Materials and Processes0334-64552191-03242017-07-0136662363410.1515/htmp-2015-0203Predictive Models for Modulus of Rupture and Modulus of Elasticity of Particleboard Manufactured in Different Pressing ConditionsTiryaki Sebahattin0Aras Uğur1Kalaycıoğlu Hülya2Erişir Emir3Aydın Aytaç4Department of Forest Industry Engineering, Faculty of Forestry, Karadeniz Technical University, 61080Trabzon, TurkeyDepartment of Forest Industry Engineering, Faculty of Forestry, Karadeniz Technical University, 61080Trabzon, TurkeyDepartment of Forest Industry Engineering, Faculty of Forestry, Karadeniz Technical University, 61080Trabzon, TurkeyDepartment of Forest Industry Engineering, Faculty of Forestry, Karadeniz Technical University, 61080Trabzon, TurkeyDepartment of Forest Industry Engineering, Faculty of Forestry, Karadeniz Technical University, 61080Trabzon, TurkeyDetermining the mechanical properties of particleboard has gained a great importance due to its increasing usage as a building material in recent years. This study aims to develop artificial neural network (ANN) and multiple linear regression (MLR) models for predicting modulus of rupture (MOR) and modulus of elasticity (MOE) of particleboard depending on different pressing temperature, pressing time, pressing pressure and resin type. Experimental results indicated that the increased pressing temperature, time and pressure in manufacturing process generally improved the mechanical properties of particleboard. It was also seen that ANN and MLR models were highly successful in predicting the MOR and MOE of particleboard under given conditions. On the other hand, a comparison between ANN and MLR revealed that the ANN was superior compared to the MLR in predicting the MOR and MOE. Finally, the findings of this study are expected to provide beneficial insights for practitioners to better understand usability of such composite materials for engineering applications and to better assess the effects of pressing conditions on the MOR and MOE of particleboard.https://doi.org/10.1515/htmp-2015-0203model comparisonmodulus of elasticitymodulus of ruptureparticleboardpredictionwood
spellingShingle Tiryaki Sebahattin
Aras Uğur
Kalaycıoğlu Hülya
Erişir Emir
Aydın Aytaç
Predictive Models for Modulus of Rupture and Modulus of Elasticity of Particleboard Manufactured in Different Pressing Conditions
High Temperature Materials and Processes
model comparison
modulus of elasticity
modulus of rupture
particleboard
prediction
wood
title Predictive Models for Modulus of Rupture and Modulus of Elasticity of Particleboard Manufactured in Different Pressing Conditions
title_full Predictive Models for Modulus of Rupture and Modulus of Elasticity of Particleboard Manufactured in Different Pressing Conditions
title_fullStr Predictive Models for Modulus of Rupture and Modulus of Elasticity of Particleboard Manufactured in Different Pressing Conditions
title_full_unstemmed Predictive Models for Modulus of Rupture and Modulus of Elasticity of Particleboard Manufactured in Different Pressing Conditions
title_short Predictive Models for Modulus of Rupture and Modulus of Elasticity of Particleboard Manufactured in Different Pressing Conditions
title_sort predictive models for modulus of rupture and modulus of elasticity of particleboard manufactured in different pressing conditions
topic model comparison
modulus of elasticity
modulus of rupture
particleboard
prediction
wood
url https://doi.org/10.1515/htmp-2015-0203
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